TY - JOUR AU1 - Benmelech,, Efraim AU2 - Bergman,, Nittai AU3 - Milanez,, Anna AU4 - Mukharlyamov,, Vladimir AB - Abstract This paper identifies a new channel through which bankrupt firms undergoing liquidation impose negative externalities on their nonbankrupt peers. The liquidation of a retail chain weakens the economies of agglomeration in any given local area, reducing the attractiveness of retail centers for remaining stores and leading to contagion of financial distress. We find that firms with greater geographic exposure to bankrupt retailers are more likely to close stores in affected areas. We further show that the effect of these externalities on nonbankrupt peers is higher when affected stores are smaller and are operated by firms in financial distress. Received December 16, 2015; editorial decision June 28, 2018 by Editor Philip Strahan. How do bankruptcy, liquidation, and financial distress spread? Research on bankruptcy and financial distress has documented how bankruptcy reorganizations affect firms that file for Chapter 11 themselves (e.g., Asquith, Gertner, and Scharfstein 1994; Hotchkiss 1995; Stromberg 2000). However, evidence on the effect of bankruptcy, liquidations, and financial distress on competitors and industry peers is limited. In this paper, we identify a new channel by which bankrupt firms undergoing liquidation impose negative externalities on their nonbankrupt competitors, namely, through their impact on the sales of peer firms and on their propensity to close stores. Research in industrial organization has argued that the geographic concentration of stores and the existence of clusters of stores can be explained by consumers’ imperfect information and their need to search the market (Wolinsky 1983). Indeed, both practitioners and academics argue that economies of agglomeration exist in retail since some stores—those of national name-brands or anchor department stores, in particular—draw customer traffic not only to their own stores but also to nearby stores. As a result, store-level sales may depend on the sales of neighboring stores for reasons that are unrelated to local economic conditions (Gould and Pashigian 1998; Gould, Pashigian, and Prendergast 2005). We conjecture that the externalities that exist between neighboring stores, and the economies of agglomeration they create, can be detrimental during downturns, propagating and amplifying financial distress and liquidations among firms operating in the same locality. Our main hypothesis is that retail store closures—because of firm-wide liquidation or as a result of a bankruptcy reorganization—imposes negative externalities on neighboring firm stores. The reduction in agglomeration economies reduces the economic value of neighboring stores, reducing their sales and increasing their likelihood of closure. If such negative externalities are sufficiently strong, the liquidation of a given firm’s stores will propagate within a given area, reducing the economic value of nearby stores and ultimately increasing the likelihood of further liquidations. In the extreme, beyond closing individual stores, firms experiencing neighboring store closures may be pushed into bankruptcy themselves, which may result in partial or even full liquidation of the firm’s stores. Theoretically, diseconomies of agglomeration do not require store liquidations. Financial distress at the parent level, say in bankruptcy reorganization, may adversely affect store attractiveness and costumer traffic (e.g., because of a reduction in advertising or store-specific factors, such as inventory levels), which, in turn, impose negative externalities on neighboring stores. However, our identification strategy exploits Chapter 11 bankruptcies and liquidations of national retailers that liquidate their entire store chain. We do this for two reasons. First, as explained below, this strategy of using national bankruptcies is employed to identify the causal effect of store closures that are unrelated to local economic conditions. Second, our empirical strategy also provides an important conceptual contribution, namely, a novel amplification and propagation mechanism by which firms undergoing liquidation (as a result of financial or economic distress) cause further distress in firms owning neighboring stores, thereby leading to further store closures. This result relates directly to an important question in the literature on restructuring and reorganization relating to the costs of liquidation outcomes in bankruptcy. One view is that liquidation is efficient since assets go to the best user (see, e.g., Baird 1986). The other view is that liquidation may not lead to efficient outcomes, as the first best user may be financially constrained and hence lose the auction in liquidation (Shleifer and Vishny 1992). By studying the negative externalities stemming from liquidations that lead to the destruction of agglomeration economies we point to an additional factor that should be taken into account in the reorganization versus liquidation debate. More broadly, our paper sheds light on the externalities that bankrupt firms impose on each other, and such externalities are of a particular concern, as they may give rise to self-reinforcing feedback loops that could amplify the business cycle during industry downturns. Identifying a causal link, however, from the financial distress and liquidation of one retailer to the sales and closure decisions of its neighboring retailers is made difficult by the fact that financial distress and liquidations are correlated with local economic conditions. Correlation in sales among stores in the same vicinity may therefore simply reflect weak demand in an area. Similarly, the fact that store closures tend to cluster locally may often be the outcome of underlying difficulties in the local economy, rather than the effect of negative externalities among stores. Local economic conditions will naturally drive a correlation in outcomes among stores located in the same area. Using a novel and detailed data set of all national chain store locations and closures across the United States from 2005 to 2010, we provide empirical evidence that supports the view that bankruptcies of retail companies impose negative externalities on neighboring stores owned by solvent companies. Our identification strategy consists of analyzing the effect of Chapter 11 bankruptcies of large national retailers, such as Circuit City and Linens ’N Things, that liquidate their entire store chain.1 Using Chapter 11 bankruptcies of national retailers that liquidated their entire store portfolio alleviates the concern that local economic conditions led to the demise of the company: it is unlikely that a large retail chain will suffer major financial difficulties because of a highly localized economic downturn in one of its many locations. Indeed, all of our results continue to hold even after we control for ZIP-code-by-year fixed effects, thereby controlling for unobserved time-varying heterogeneity at a fine geographical level. Further supporting our identification assumption, we show that stores of retail chains that eventually file for Chapter 11 bankruptcy are not located in areas that are worse than the location of stores operated by chains that avoid bankruptcy, along a host of economic characteristics.2 We show that stores located in proximity to stores of national chains that are liquidated are more likely to close themselves. Importantly, we find that this effect is stronger for stores in the same industry of the liquidating national chain as compared to stores in industries different from that of the liquidating chain. For example, focusing on stores located at the same address (usually mall locations), the probability that a store will close in the year following the closure of a store belonging to a liquidating national chain is approximately two times larger when operating in the same industry as compared to when the stores operate in different industries. That the negative externality is stronger among stores in the same industry is consistent with research in urban economics analyzing economies of agglomeration due to industrial clusters, for example, because of search frictions like in Wolinsky (1983) and Ellison and Glaeser (1997). We proceed by analyzing additional heterogeneity in the geographical effect of store closures. First, we examine how the negative externality of store closures interact with the financial health of solvent owners of neighboring stores. We hypothesize that the impact of national chain store liquidations will be stronger on firms in weaker financial health: external finance is plausibly more costly and more difficult to obtain for financially weaker firms, and so it is more difficult for them to smooth the economic shock stemming from the negative externality caused by neighboring store closures. Instead, they downsize by closing affected stores. Focusing on stores owned by a parent company, and measuring financial health using the profitability of the parent, we find that, consistent with our hypothesis, the geographical effect of store closures on neighboring stores is indeed more pronounced in financially weaker firms. For example, when located within a 50-m radius of a closing national chain store, stores belonging to parent firms in the 25th percentile of profitability are between 16.9% and 22.2% more likely to close. In contrast, if the parent firm is in the 75th percentile of profitability, there is no statistically significant effect on the likelihood of store closure. We continue by analyzing how the negative externality of store closers vary by store size. We hypothesize that larger stores should be more resilient to the closure of neighboring stores. This is because larger stores may be less reliant on neighboring stores to generate customer traffic or because larger stores are more profitable, implying that the negative shock does not push them toward economic distress. Consistent with our hypothesis, we find that larger stores do indeed exhibit a lower likelihood of closure following the liquidation of neighboring stores. In addition, we examine how local economic conditions affect the negative externality of store closures. We find that in lower-income ZIP codes, stores are more likely to close with the exogenous closure of their neighboring stores. Still, the negative externality of store closures appears for the vast majority of ZIP code income levels. Similar to the results based on firm-level profitability, we hypothesize that in low-income areas, stores are less able to smooth the negative externality shock stemming from neighboring store closures. Alternatively, stores in low-income areas may be closer to economic nonviability, and so are more likely to close once diseconomies of agglomeration occur. Finally, we compare the negative externality of store closures during the financial crisis period of 2008–2009, to the precrisis period of 2006–2007, showing that diseconomies of agglomeration occur outside the crisis as well. Of course, since store liquidations are more prevalent in downturns, the aggregate impact of the negative externality during these periods is likely to be larger. Our paper is closely related to a large body of work on agglomeration economies that studies how the proximity of firms and individuals in urban areas increases productivity. Prior work has shown that increases in productivity can arise for a variety of reasons, including reduced transport costs of goods, increased ability of labor specialization, better matching quality of workers to firms, and knowledge spillovers.3 Within the retail sector, agglomeration economies may arise because of the increased productivity stemming from reduced consumer search costs. By utilizing micro-level data on store locations and closures, our paper contributes to this important literature in two ways. The first contribution is our focus on the way in which liquidations both during and outside of downturns damage economies of agglomeration and the productivity enhancements they create. In contrast, prior work has focused on the creation of agglomeration economies through firm entry and employment decisions (see, e.g., Ellison and Glaeser 1997; Glaeser et al. 1992; Henderson et al. 1995; Rosenthal and Strange 2003). By focusing on downturns, our work shows how agglomeration economies can be understood to propagate liquidations and financial distress. Indeed, firm closures will naturally increase distance between agents in an urban environment, which will tend to reduce the productivity of remaining firms due to diseconomies of agglomeration. To the extent that replacing closed stores with new ones takes time—for example, because of credit constraints during downturns—the reduction in productivity may have long term consequences. In this context, our work stands in contrast to a number of other studies in the finance literature analyzing how firms in bankruptcy or financial distress affect their industry peers (see, e.g., Benmelech and Bergman 2011; Hertzel and Officer 2012; Jorion and Zhang 2007; Lang and Stulz 1992). These studies focus on contagion stemming from other sources of externality, such as changes in the cost of external capital in peer firms, information flows, or increased concentration in the competitive landscape. The second contribution of the paper is the empirical identification of agglomeration economies. The standard difficulty in identifying agglomeration effects is the endogeneity of firms’ location decisions. Namely, is firm proximity causing high productivity or, alternatively, is the proximity simply a by-product of firms choosing to locate in areas naturally predisposed to high productivity? Employing micro-level data on store locations, we address this endogeneity concern by instrumenting for variation in store location with our large retail-chain liquidation of stores instrument.4 As described above, to the extent that national chain store closures are not driven by highly localized demand-side effects, we can measure the impact of store closures on nearby stores. Agglomeration effects, and the degree to which they attenuate with distance to other stores, are therefore estimated at a micro level. Our paper also adds to the growing literature in finance on the importance of peer effects and networks for capital structure (Leary and Roberts 2014), acquisitions and managerial compensation (Shue 2013), entrepreneurship (Lerner and Malmendier 2013), and portfolio selection and investment (Cohen, Frazzini, and Malloy 2008). In particular, our paper is closely related to Almazan et al. (2010), who link financial structure to economies of agglomeration. In particular, Almazan et al. (2010) show that firms located in industry clusters are more likely to maintain financial slack in order to facilitate acquisitions within these clusters. 1. Identification Strategy Our main prediction is that, because of the economics of agglomeration, retail store closures impose negative externalities on their neighbors; that is, store sales tend to decrease with a decline in customer traffic in their area. If this effect is sufficiently large, store closures will tend to propagate geographically. However, identifying a causal link from the financial distress or bankruptcy of retailers to the decision of a neighboring solvent retailer to close its stores is difficult because financial distress is potentially correlated with underlying local economic conditions. For example, that local retailers are in financial distress can convey information about weak local demand. Similarly, that store closures tend to cluster locally does not imply a causal link but rather may simply reflect difficulties in the local economy. Our identification strategy consists of analyzing the effect of Chapter 11 bankruptcies of large national retailers, such as Circuit City and Linens ’N Things, who liquidated their entire store chain during the sample period. Using Chapter 11 bankruptcies of national retailers alleviates the concern that local economic conditions led to the demise of the company: it is unlikely that a large retail chain will suffer major financial difficulties because of a localized economic downturn in one of its many locations. Still, it is likely that national chains experiencing financial distress will restructure their operations and cherry-pick those stores they would like to remain open. According to this, financially distressed retailers will shut down their worst performing stores while keeping their best stores open, implying that a correlation between closures of stores of bankrupt chains may merely reflect poor local demand rather than negative externalities driven by financial distress. We address this concern directly by only utilizing variation driven by bankruptcy cases that result in the liquidation of the entire chain. In these cases, cherry-picking of the more successful stores is not a concern; all stores are closed regardless of local demand. In examining national chain liquidations, one concern that remains is that the stores of the liquidating chain were located in areas that experienced negative economic shocks—for example, because of poor store placement decisions made on the part of headquarters—and that it was these shocks that eventually drove the chain into bankruptcy. We address this concern in two ways. First, based on observables, we empirically show that stores of chains that eventually file for Chapter 11 bankruptcy and fully liquidate are not located in areas that are worse than the location of stores operated by chains that avoid bankruptcy. Second, because of our precise data on the location of each store and our use of area fixed effects (county, ZIP code, or ZIP-code-by-year), our identification strategy enables us to net out local economic shocks and relies on variation within the relevant geographic area. As such, the relevant endogeneity concern is not that the stores of liquidating national chains were located in areas that suffered more negative economic shocks, but rather that these stores were somehow positioned in the worse locations within each county or ZIP code. Given their firms’ success in forming a national chain of stores, this seems highly unlikely. To further alleviate concerns about store locations, we also perform a placebo test. We define a “placebo” variable that counts for each store in our sample the number of neighboring stores that are part of a national chain that will liquidate in the following year but that are currently not in bankruptcy. We find that the effect of store liquidation on subsequent store closures is not driven by the location of the retail chain-stores that will later become bankrupt but rather by the timing in which they were actually closed. This effect is consistent with the existence of a causal effect of store closures. 2. Data and Summary Statistics 2.1 Sample construction and data sources Our data set comprises several sources, which we describe in this section. The main source is Chain Store Guide (CSG), a database that contains detailed information on retail store locations in the United States and Canada. CSG data are organized in the form of annual snapshots of almost the entire retail industry at the establishment level.5 The information on each location contains the store name, its address (street number, street name, city, state, and ZIP code) and phone number, the parent company, and a CSG-defined industry.6 Our sample covers the 2005–2010 period and includes 828,792 store-year observations in the United States in the following CSG-defined industries: Apparel Stores, Department Store, Discount Stores, General Merchandise Store, Home Centers & Hardware Chains, and Value-Priced Apparel Store. Figures 1 and 2 demonstrates the coverage of our data by plotting the locations of all stores in our data set for the first year (2005 in Figure 1) and the last year of our sample (2010 in Figure 2). Figure 1 View largeDownload slide Store locations as of 2005 Figure 1 View largeDownload slide Store locations as of 2005 Figure 2 View largeDownload slide Store locations as of 2010 Figure 2 View largeDownload slide Store locations as of 2010 We clean the data and streamline store names and parent names for consistency. Large chain stores account for the bulk of the data. For example, in 2010, the 50 largest retail chains accounted for 111,655 of the 166,045 stores in the data set, representing 67.2% of the stores in the data for that year. Our empirical strategy requires us to compute distances between retail locations. To do so, we convert all street addresses into geographic coordinates using ArcGIS software. If an address is not contained in the address locator used by ArcGIS, we pass it through Google Maps API in an additional attempt to geocode it. As a result, we successfully map street addresses to geographic coordinates for 97% of the data. The information on longitudes and latitudes of full addresses—up to a street number—makes it possible for us to compute distances between retail locations to a very high precision. Since our analysis focuses on stores that are in close proximity to each other, we use the standard formula for the shortest distance between two points on a sphere (see Coval and Moskowitz 1999) without adjusting for the fact that the Earth’s surface is geoid shaped. We supplement the CSG store-level data with information on the number of employees and store selling area size from Esri’s Business Analyst. Esri’s data structure is very similar to that of CSG. We carefully merge these two databases by store/parent name and address; questionable cases are checked manually. The majority of information on the number of employees available is collected by Esri by reaching out individually to every store on a yearly basis; about 10% of the data though is populated according to the data provider’s proprietary models based on observable characteristics of a retail location. In our analysis, we use only the actual data points and discard modeled figures. We also use Esri’s Major Shopping Centers, which is a panel of major U.S. shopping centers, to group stores in our sample into malls where applicable. The included mall-level pieces of information are mall name and its address (usually up to a street intersection), gross leasable area (GLA), total number of stores, and names of anchor tenants (up to four). We merge Esri’s Major Shopping Centers to CSG data using the following multistep procedure. First, we find anchor stores in the data using the information on store/parent name and ZIP code. If several anchor stores pertaining to the same mall are identified, we confirm the match if the average distance from anchors to the implied center of the mall is less than 200 m. By doing so, we increase our confidence that we do not erroneously label stores as anchor tenants in ZIP codes containing a large number of stores. Stores located within 25 m of anchors are assigned to the same mall. Second, we geocode addresses of malls that were not found in the data using anchor tenants—for example, information about their anchors is missing—to compute distances between malls and stores. All stores within 100 m of the mall are assigned to that mall. At all stages of the algorithm, we manually check questionable cases by looking up store addresses and verifying whether they are part of a shopping mall. Next, we use SDC Platinum to identify retail Chapter 11 bankruptcies since January 2000 within the following SIC retail trade categories: general merchandise (SIC four-digit codes 5311, 5331, and 5399), apparel (5600, 5621, and 5651), home furnishings (5700, 5712, 5731, 5734, and 5735), and miscellaneous (5900, 5912, 5940, 5944, 5945, 5960, 5961, and 5990). There were 93 cases of retail Chapter 11 liquidations between 2000 and 2011.7 The largest bankruptcies in recent years include Circuit City, Goody’s, G+G Retail, KB Toys, Linens ’N Things, Mervyn’s, and The Sharper Image. Bankrupt stores are identified in our data by their respective parent name. We then merge our data with Compustat Fundamental and Industry Data. We use the Compustat North America Fundamentals Annual database to construct variables that are based on operational and financial data. These include firm size (defined as the natural log of total assets), market-to-book ratio (defined as the market value of equity and book value of assets less the book value of equity, divided by the book value of assets), profitability (defined as earnings over total assets), and leverage (defined as total current liabilities plus long-term debt, divided by the book value of assets). We supplement our database with information pertaining to the local economies from the Census, IRS, Zillow, and the BLS. We rely on the 2000 Census survey for a host of demographic variables available by ZIP code. We also use the Internal Revenue Service (IRS) data, which provide the number of filed tax returns (a proxy for the number of households), the number of exemptions (a proxy for the population), adjusted gross income (which includes taxable income from all sources less adjustments, such as IRA deductions, self-employment taxes, health insurance, alimony paid), wage and salary income, dividend income, and interest income at the ZIP code level. We use data on house prices from Zillow, an online real estate database that tracks valuations throughout the United States. We construct annual county-level and ZIP code median house values and annual changes in housing prices. 2.2 Individual store closings To construct our main dependent variable of store closings, we compare the data from one year to the next. We define a store closure if a store entry appears in a given year, but not in the subsequent one. Given that our data span the years 2005–2010, we can identify store closings for each year from 2005 up to 2009. Panel A of Table 1 provides summary statistics on store closings during our entire sample period and individually for each of the years in the sample. The number of stores in the data ranges from 84,388 individual stores in 2005 to 155,114 stores in 2009. The rate of annual store closure ranges between 1.4% in 2007 to 11.0% in 2008. During the entire sample period of 2005–2009, 6.1% of store-years represent store closures, with a standard deviation of 23.9%. Figures 3 and 4 display the geographical distribution of store closings (dark dots) relative to stores that stay open (light dots) in 2007 and 2008, respectively. Table 1 Individual store closings A. Closed stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.061 0.0 0.0 0.0 0.239 0.0 1.0 661,382 2005 0.048 0.0 0.0 0.0 0.213 0.0 1.0 84,388 2006 0.085 0.0 0.0 0.0 0.279 0.0 1.0 125,897 2007 0.014 0.0 0.0 0.0 0.116 0.0 1.0 147,551 2008 0.110 0.0 0.0 0.0 0.313 0.0 1.0 148,432 2009 0.047 0.0 0.0 0.0 0.211 0.0 1.0 155,114 B. Bankrupt stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.021 0.0 0.0 0.0 0.142 0.0 1.0 827,156 2005 0.010 0.0 0.0 0.0 0.100 0.0 1.0 84,388 2006 0.008 0.0 0.0 0.0 0.091 0.0 1.0 125,897 2007 0.029 0.0 0.0 0.0 0.167 0.0 1.0 147,551 2008 0.042 0.0 0.0 0.0 0.201 0.0 1.0 148,432 2009 0.026 0.0 0.0 0.0 0.158 0.0 1.0 155,114 2010 0.004 0.0 0.0 0.0 0.063 0.0 1.0 165,774 C. Stores closed in full liquidation bankruptcies over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.010 0.0 0.0 0.0 0.100 0.0 1.0 661,382 2005 0.002 0.0 0.0 0.0 0.049 0.0 1.0 84,388 2006 0.003 0.0 0.0 0.0 0.058 0.0 1.0 125,897 2007 0.001 0.0 0.0 0.0 0.033 0.0 1.0 147,551 2008 0.0186 0.0 0.0 0.0 0.135 0.0 1.0 148,432 2009 0.0193 0.0 0.0 0.0 0.137 0.0 1.0 155,114 A. Closed stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.061 0.0 0.0 0.0 0.239 0.0 1.0 661,382 2005 0.048 0.0 0.0 0.0 0.213 0.0 1.0 84,388 2006 0.085 0.0 0.0 0.0 0.279 0.0 1.0 125,897 2007 0.014 0.0 0.0 0.0 0.116 0.0 1.0 147,551 2008 0.110 0.0 0.0 0.0 0.313 0.0 1.0 148,432 2009 0.047 0.0 0.0 0.0 0.211 0.0 1.0 155,114 B. Bankrupt stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.021 0.0 0.0 0.0 0.142 0.0 1.0 827,156 2005 0.010 0.0 0.0 0.0 0.100 0.0 1.0 84,388 2006 0.008 0.0 0.0 0.0 0.091 0.0 1.0 125,897 2007 0.029 0.0 0.0 0.0 0.167 0.0 1.0 147,551 2008 0.042 0.0 0.0 0.0 0.201 0.0 1.0 148,432 2009 0.026 0.0 0.0 0.0 0.158 0.0 1.0 155,114 2010 0.004 0.0 0.0 0.0 0.063 0.0 1.0 165,774 C. Stores closed in full liquidation bankruptcies over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.010 0.0 0.0 0.0 0.100 0.0 1.0 661,382 2005 0.002 0.0 0.0 0.0 0.049 0.0 1.0 84,388 2006 0.003 0.0 0.0 0.0 0.058 0.0 1.0 125,897 2007 0.001 0.0 0.0 0.0 0.033 0.0 1.0 147,551 2008 0.0186 0.0 0.0 0.0 0.135 0.0 1.0 148,432 2009 0.0193 0.0 0.0 0.0 0.137 0.0 1.0 155,114 This table provides descriptive statistics on store closings and bankrupt stores. Panel A displays all store closings. Panel B presents bankrupt stores, and panel C presents store closings that result from full liquidation bankruptcies. View Large Table 1 Individual store closings A. Closed stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.061 0.0 0.0 0.0 0.239 0.0 1.0 661,382 2005 0.048 0.0 0.0 0.0 0.213 0.0 1.0 84,388 2006 0.085 0.0 0.0 0.0 0.279 0.0 1.0 125,897 2007 0.014 0.0 0.0 0.0 0.116 0.0 1.0 147,551 2008 0.110 0.0 0.0 0.0 0.313 0.0 1.0 148,432 2009 0.047 0.0 0.0 0.0 0.211 0.0 1.0 155,114 B. Bankrupt stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.021 0.0 0.0 0.0 0.142 0.0 1.0 827,156 2005 0.010 0.0 0.0 0.0 0.100 0.0 1.0 84,388 2006 0.008 0.0 0.0 0.0 0.091 0.0 1.0 125,897 2007 0.029 0.0 0.0 0.0 0.167 0.0 1.0 147,551 2008 0.042 0.0 0.0 0.0 0.201 0.0 1.0 148,432 2009 0.026 0.0 0.0 0.0 0.158 0.0 1.0 155,114 2010 0.004 0.0 0.0 0.0 0.063 0.0 1.0 165,774 C. Stores closed in full liquidation bankruptcies over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.010 0.0 0.0 0.0 0.100 0.0 1.0 661,382 2005 0.002 0.0 0.0 0.0 0.049 0.0 1.0 84,388 2006 0.003 0.0 0.0 0.0 0.058 0.0 1.0 125,897 2007 0.001 0.0 0.0 0.0 0.033 0.0 1.0 147,551 2008 0.0186 0.0 0.0 0.0 0.135 0.0 1.0 148,432 2009 0.0193 0.0 0.0 0.0 0.137 0.0 1.0 155,114 A. Closed stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.061 0.0 0.0 0.0 0.239 0.0 1.0 661,382 2005 0.048 0.0 0.0 0.0 0.213 0.0 1.0 84,388 2006 0.085 0.0 0.0 0.0 0.279 0.0 1.0 125,897 2007 0.014 0.0 0.0 0.0 0.116 0.0 1.0 147,551 2008 0.110 0.0 0.0 0.0 0.313 0.0 1.0 148,432 2009 0.047 0.0 0.0 0.0 0.211 0.0 1.0 155,114 B. Bankrupt stores over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.021 0.0 0.0 0.0 0.142 0.0 1.0 827,156 2005 0.010 0.0 0.0 0.0 0.100 0.0 1.0 84,388 2006 0.008 0.0 0.0 0.0 0.091 0.0 1.0 125,897 2007 0.029 0.0 0.0 0.0 0.167 0.0 1.0 147,551 2008 0.042 0.0 0.0 0.0 0.201 0.0 1.0 148,432 2009 0.026 0.0 0.0 0.0 0.158 0.0 1.0 155,114 2010 0.004 0.0 0.0 0.0 0.063 0.0 1.0 165,774 C. Stores closed in full liquidation bankruptcies over time Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2009 0.010 0.0 0.0 0.0 0.100 0.0 1.0 661,382 2005 0.002 0.0 0.0 0.0 0.049 0.0 1.0 84,388 2006 0.003 0.0 0.0 0.0 0.058 0.0 1.0 125,897 2007 0.001 0.0 0.0 0.0 0.033 0.0 1.0 147,551 2008 0.0186 0.0 0.0 0.0 0.135 0.0 1.0 148,432 2009 0.0193 0.0 0.0 0.0 0.137 0.0 1.0 155,114 This table provides descriptive statistics on store closings and bankrupt stores. Panel A displays all store closings. Panel B presents bankrupt stores, and panel C presents store closings that result from full liquidation bankruptcies. View Large Figure 3 View largeDownload slide Stores closings during 2007 Figure 3 View largeDownload slide Stores closings during 2007 Figure 4 View largeDownload slide Stores closings during 2008 Figure 4 View largeDownload slide Stores closings during 2008 Panel B of Table 1 provides summary statistics for stores that operated while their company was in a Chapter 11 restructuring. As panel B shows, 2.1% of the 827,156 observations were stores that their companies were operating under Chapter 11 protection. The number of bankrupt stores increased sharply from 4,231 stores in 2007 (representing 2.9% of total stores) to 6,167 bankrupt stores in 2008 (4.2% of total stores). By 2009 many of the bankrupt retailers were liquidated and their stores disappeared resulting in fewer bankrupt stores (3,963 stores representing 2.6% of the stores in our sample). By 2010 most of the remaining bankrupt companies that were not liquidated emerged from Chapter 11 and the number of bankrupt stores fell to 652, or 0.4%, of the stores in our sample. Finally, we calculate the number of stores that were closed in bankruptcies of chains that were fully liquidated. As we argue previously, these bankruptcy cases are not driven by the specific location of their stores but rather because of a failure of their business plan. Hence, as described in the Identification Strategy section, we use store closures resulting from the chain-wide liquidation of the parent firm to capture the negative externalities of bankruptcy. Panel C of Table 1 displays summary statistics for these chain-wide liquidating stores. The number of stores closed by chains that were fully liquidated in bankruptcy increases from 160 stores in 2007 (0.10% of total stores) to 2,650 (1.86% of total stores) and 2,987 (1.93% of total stores), in 2008 and 2009, respectively.8 2.3 Neighboring store closures We construct three main measures of neighboring store closures that are driven by liquidation of national retail chains. To do this, for each store in our sample and for every year we measure the distance to any other store in our sample. Specifically, for each store we define its neighboring stores in a series of concentric circles. We consider neighboring stores that are: (1) located at the same address; (2) located at a different address but are within a 50-m radius of the store under consideration; and (3) located at a different address within a radius of more than 50 m but less than or equal to 100 m from the store under consideration.9 In each of these three geographical units, for each store and each year, we then count the number of stores that were closed as a result of a full liquidation of a large retail chain. Table 2 provides summary statistics for the three measures associated with each of the three geographical units and for counts of neighboring stores outside of the 100-m radius. Panel A of Table 2 displays summary statistics for same address stores that were closed in chain liquidations. From 2005 to 2010, same-address liquidated stores ranged from 0 to 3, with an unconditional mean of 0.028 and a standard deviation of 0.181. For any given store, therefore, the maximum number of stores operating in the same address that were closed as a result of a retail-chain liquidation is three. Panel A also displays the evolution of the same-address measure over time. For example, on average, same-address equals 0 and 0.002 in 2005 and 2006, respectively.10 As the number of bankruptcies rose in 2007 same-address increased to 0.038 in 2007 (range between 0 and 2) and peaked at 0.085 (range between 0 and 3) in 2009. Table 2 Neighboring store closures A. Same address Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.028 0.0 0.0 0.0 0.181 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.045 0.0 1.0 125,897 2007 0.038 0.0 0.0 0.0 0.192 0.0 2.0 147,551 2008 0.016 0.0 0.0 0.0 0.127 0.0 2.0 148,432 2009 0.085 0.0 0.0 0.0 0.327 0.0 3.0 155,114 2010 0.009 0.0 0.0 0.0 0.100 0.0 2.0 165,774 B. Not same address and distance |$\le$| 50 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.012 0.0 0.0 0.0 0.115 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.044 0.0 1.0 125,897 2007 0.009 0.0 0.0 0.0 0.099 0.0 2.0 147,551 2008 0.003 0.0 0.0 0.0 0.055 0.0 2.0 148,432 2009 0.038 0.0 0.0 0.0 0.207 0.0 3.0 155,114 2010 0.010 0.0 0.0 0.0 0.111 0.0 2.0 165,774 C. 50 m |$<$| distance |$\le$| 100 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.008 0.0 0.0 0.0 0.094 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.001 0.0 0.0 0.0 0.030 0.0 1.0 125,897 2007 0.005 0.0 0.0 0.0 0.075 0.0 2.0 147,551 2008 0.002 0.0 0.0 0.0 0.044 0.0 1.0 148,432 2009 0.025 0.0 0.0 0.0 0.166 0.0 3.0 155,114 2010 0.008 0.0 0.0 0.0 0.103 0.0 2.0 165,774 D. Farther from store closures 2005–2010 Year Mean 25th percentile Median 75th percentile SD Min Max Observations 100–150 m 0.007 0.0 0.0 0.0 0.087 0.0 3.0 827,156 150–200 m 0.006 0.0 0.0 0.0 0.085 0.0 3.0 827,156 200–250 m 0.020 0.0 0.0 0.0 0.151 0.0 4.0 827,156 250–300 m 0.006 0.0 0.0 0.0 0.082 0.0 3.0 827,156 300–350 m 0.006 0.0 0.0 0.0 0.083 0.0 4.0 827,156 350–400 m 0.006 0.0 0.0 0.0 0.079 0.0 3.0 827,156 400–450 m 0.006 0.0 0.0 0.0 0.081 0.0 3.0 827,156 450–500 m 0.006 0.0 0.0 0.0 0.079 0.0 4.0 827,156 A. Same address Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.028 0.0 0.0 0.0 0.181 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.045 0.0 1.0 125,897 2007 0.038 0.0 0.0 0.0 0.192 0.0 2.0 147,551 2008 0.016 0.0 0.0 0.0 0.127 0.0 2.0 148,432 2009 0.085 0.0 0.0 0.0 0.327 0.0 3.0 155,114 2010 0.009 0.0 0.0 0.0 0.100 0.0 2.0 165,774 B. Not same address and distance |$\le$| 50 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.012 0.0 0.0 0.0 0.115 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.044 0.0 1.0 125,897 2007 0.009 0.0 0.0 0.0 0.099 0.0 2.0 147,551 2008 0.003 0.0 0.0 0.0 0.055 0.0 2.0 148,432 2009 0.038 0.0 0.0 0.0 0.207 0.0 3.0 155,114 2010 0.010 0.0 0.0 0.0 0.111 0.0 2.0 165,774 C. 50 m |$<$| distance |$\le$| 100 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.008 0.0 0.0 0.0 0.094 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.001 0.0 0.0 0.0 0.030 0.0 1.0 125,897 2007 0.005 0.0 0.0 0.0 0.075 0.0 2.0 147,551 2008 0.002 0.0 0.0 0.0 0.044 0.0 1.0 148,432 2009 0.025 0.0 0.0 0.0 0.166 0.0 3.0 155,114 2010 0.008 0.0 0.0 0.0 0.103 0.0 2.0 165,774 D. Farther from store closures 2005–2010 Year Mean 25th percentile Median 75th percentile SD Min Max Observations 100–150 m 0.007 0.0 0.0 0.0 0.087 0.0 3.0 827,156 150–200 m 0.006 0.0 0.0 0.0 0.085 0.0 3.0 827,156 200–250 m 0.020 0.0 0.0 0.0 0.151 0.0 4.0 827,156 250–300 m 0.006 0.0 0.0 0.0 0.082 0.0 3.0 827,156 300–350 m 0.006 0.0 0.0 0.0 0.083 0.0 4.0 827,156 350–400 m 0.006 0.0 0.0 0.0 0.079 0.0 3.0 827,156 400–450 m 0.006 0.0 0.0 0.0 0.081 0.0 3.0 827,156 450–500 m 0.006 0.0 0.0 0.0 0.079 0.0 4.0 827,156 This table provides descriptive statistics on full liquidation closings of neighboring stores. Panel A displays store closings in the same address. Panels B and C present store closings for 0- to 50-m and 50- to 100-m distances. Panel D lists summary statistics for distances between 100 and 500 m. View Large Table 2 Neighboring store closures A. Same address Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.028 0.0 0.0 0.0 0.181 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.045 0.0 1.0 125,897 2007 0.038 0.0 0.0 0.0 0.192 0.0 2.0 147,551 2008 0.016 0.0 0.0 0.0 0.127 0.0 2.0 148,432 2009 0.085 0.0 0.0 0.0 0.327 0.0 3.0 155,114 2010 0.009 0.0 0.0 0.0 0.100 0.0 2.0 165,774 B. Not same address and distance |$\le$| 50 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.012 0.0 0.0 0.0 0.115 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.044 0.0 1.0 125,897 2007 0.009 0.0 0.0 0.0 0.099 0.0 2.0 147,551 2008 0.003 0.0 0.0 0.0 0.055 0.0 2.0 148,432 2009 0.038 0.0 0.0 0.0 0.207 0.0 3.0 155,114 2010 0.010 0.0 0.0 0.0 0.111 0.0 2.0 165,774 C. 50 m |$<$| distance |$\le$| 100 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.008 0.0 0.0 0.0 0.094 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.001 0.0 0.0 0.0 0.030 0.0 1.0 125,897 2007 0.005 0.0 0.0 0.0 0.075 0.0 2.0 147,551 2008 0.002 0.0 0.0 0.0 0.044 0.0 1.0 148,432 2009 0.025 0.0 0.0 0.0 0.166 0.0 3.0 155,114 2010 0.008 0.0 0.0 0.0 0.103 0.0 2.0 165,774 D. Farther from store closures 2005–2010 Year Mean 25th percentile Median 75th percentile SD Min Max Observations 100–150 m 0.007 0.0 0.0 0.0 0.087 0.0 3.0 827,156 150–200 m 0.006 0.0 0.0 0.0 0.085 0.0 3.0 827,156 200–250 m 0.020 0.0 0.0 0.0 0.151 0.0 4.0 827,156 250–300 m 0.006 0.0 0.0 0.0 0.082 0.0 3.0 827,156 300–350 m 0.006 0.0 0.0 0.0 0.083 0.0 4.0 827,156 350–400 m 0.006 0.0 0.0 0.0 0.079 0.0 3.0 827,156 400–450 m 0.006 0.0 0.0 0.0 0.081 0.0 3.0 827,156 450–500 m 0.006 0.0 0.0 0.0 0.079 0.0 4.0 827,156 A. Same address Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.028 0.0 0.0 0.0 0.181 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.045 0.0 1.0 125,897 2007 0.038 0.0 0.0 0.0 0.192 0.0 2.0 147,551 2008 0.016 0.0 0.0 0.0 0.127 0.0 2.0 148,432 2009 0.085 0.0 0.0 0.0 0.327 0.0 3.0 155,114 2010 0.009 0.0 0.0 0.0 0.100 0.0 2.0 165,774 B. Not same address and distance |$\le$| 50 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.012 0.0 0.0 0.0 0.115 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.002 0.0 0.0 0.0 0.044 0.0 1.0 125,897 2007 0.009 0.0 0.0 0.0 0.099 0.0 2.0 147,551 2008 0.003 0.0 0.0 0.0 0.055 0.0 2.0 148,432 2009 0.038 0.0 0.0 0.0 0.207 0.0 3.0 155,114 2010 0.010 0.0 0.0 0.0 0.111 0.0 2.0 165,774 C. 50 m |$<$| distance |$\le$| 100 m Year Mean 25th percentile Median 75th percentile SD Min Max Observations 2005–2010 0.008 0.0 0.0 0.0 0.094 0.0 3.0 827,156 2005 0.0 0.0 0.0 0.0 0.0 0.0 0.0 84,388 2006 0.001 0.0 0.0 0.0 0.030 0.0 1.0 125,897 2007 0.005 0.0 0.0 0.0 0.075 0.0 2.0 147,551 2008 0.002 0.0 0.0 0.0 0.044 0.0 1.0 148,432 2009 0.025 0.0 0.0 0.0 0.166 0.0 3.0 155,114 2010 0.008 0.0 0.0 0.0 0.103 0.0 2.0 165,774 D. Farther from store closures 2005–2010 Year Mean 25th percentile Median 75th percentile SD Min Max Observations 100–150 m 0.007 0.0 0.0 0.0 0.087 0.0 3.0 827,156 150–200 m 0.006 0.0 0.0 0.0 0.085 0.0 3.0 827,156 200–250 m 0.020 0.0 0.0 0.0 0.151 0.0 4.0 827,156 250–300 m 0.006 0.0 0.0 0.0 0.082 0.0 3.0 827,156 300–350 m 0.006 0.0 0.0 0.0 0.083 0.0 4.0 827,156 350–400 m 0.006 0.0 0.0 0.0 0.079 0.0 3.0 827,156 400–450 m 0.006 0.0 0.0 0.0 0.081 0.0 3.0 827,156 450–500 m 0.006 0.0 0.0 0.0 0.079 0.0 4.0 827,156 This table provides descriptive statistics on full liquidation closings of neighboring stores. Panel A displays store closings in the same address. Panels B and C present store closings for 0- to 50-m and 50- to 100-m distances. Panel D lists summary statistics for distances between 100 and 500 m. View Large Panels B and C present similar statistics for the 0|$<$|distance|$\le$|50 and the 0|$<$|distance|$\le$|100 measures, respectively. As can be seen, both measures display similar patterns over time ranging from 0 to 3 and averaging approximately 0.01. Finally, panel D expands the concentric rings beyond 100 m and displays summary statistics for distances up to 500 m, at 50-m intervals. 3. Stores Locations 3.1 The geographical dispersion of liquidated chain stores One of the main pillars of our identification strategy is the conjecture that large bankruptcy cases of national retail chains are less likely to be driven by localized economic conditions given their diversity and geographical dispersion. We present the case for the geographical dispersion of these chains in Table A1 by listing information on the geography of operation of the retail chain bankruptcies utilized in our empirical strategy.11 In choosing these cases, we focus on those bankruptcy cases of retail chains that operated in several states and fully liquidated all their stores.12 In forming the sample of liquidating national chains used in our identification, we include only those chains where upon bankruptcy all stores were closed and in which the retail chains operated in several states. Twenty-one cases in the data affect a total of 6,418 individual stores in our sample.13 The mean (median) number of stores of these retail chains is 305.6 (113) and ranges from 18 stores (KS Merchandise Mart) to 2,831 (Movie Gallery). All retail chains operate in more than one state, with the least diversified chain operating in only two states (Joe’s Sports Outdoors More) and the most geographically dispersed chain operating in all fifty states (Movie Gallery). Finally, as the last two columns of Table A1 demonstrate, all chains, except for Joe’s Sports Outdoors More, operate in more than one region of the United States. For example, eight chains have operations in all nine census divisions, and 19 of the 21 retail chain operate stores in at least four different census divisions. While two retailers seem to be less geographically dispersed (Joe’s Sports Outdoors More and Gottschalks), they do not drive our results and excluding them from the calculation of liquidated stores does not affect our findings. Furthermore, Figures 5, 6, and 7 illustrate the geographical dispersion of the initial stores locations of three firms that ended up in full liquidation used in the empirical identification: Circuit City, Linens ’N Things, and The Sharper Image. As the figures demonstrate, and consistent with the statistics in Table A1, these retail companies had dispersed geographical operation. Figure 5 View largeDownload slide Stores locations for Circuit City Figure 5 View largeDownload slide Stores locations for Circuit City Figure 6 View largeDownload slide Stores locations for Linens ’N Things Figure 6 View largeDownload slide Stores locations for Linens ’N Things Figure 7 View largeDownload slide Stores locations for The Sharper Image Figure 7 View largeDownload slide Stores locations for The Sharper Image Given their geographic dispersion, it is unlikely that the collapse of these chains is driven by localized economic shocks related to a particular store or subarea. Of course, this does not rule out the concern that nationwide, liquidating stores were positioned in worse locations. We address this concern in the next section. 3.2 Initial location of liquidated chain stores The previous section presents evidence that most liquidated chains are geographically dispersed across states and U.S. regions. In this section we show that stores of liquidated chains were not located in ZIP codes with worse economic characteristics than the location of stores operated by nonbankrupt chains. We start by comparing the means of several local economic indicators between chains that fully liquidated and chains with similar business that avoid bankruptcy during the sample period. The local economic indicators that we use are the natural log of adjusted gross income at the ZIP code in 2006; the natural log of median house value at the ZIP code in the 2000 Census; and the percentage change in median house price during the period 2002–2006 in the ZIP code, which is based on data from Zillow. We focus on 2006, because an economic slowdown had already begun in 2007. It is important to note that we compare the locations of chains to otherwise similar chains 2 years before the liquidated chains file for bankruptcy. We present summary statistics for the three chains presented in Figures 5, 6, and 7: Circuit City, Linens ’N Things, and The Sharper Image. Each of the chains is matched to a similar chain that avoided bankruptcy and liquidation during the sample period. We compare Circuit City to Best Buy; Linens ’N Things to Bed Bath & Beyond; and The Sharper Image to Brookstone. Table 3 illustrates no statistically significant differences in the three local economic indicators that pertain to store locations between the chains that will liquidate and their comparable chains. Table 3 Comparison of store locations Company log(adjusted gross income) log(median house value) |$\Delta$|(house value 2002–2006) Number of stores Circuit City stores 4.08 11.81 0.63 607 Best Buy 4.09 11.82 0.60 729 p-value (.799) (.625) (.164) Linens ’N Things 4.12 11.91 0.61 511 Bed Bath & Beyond 4.11 11.87 0.60 700 p-value (.308) (.119) (.598) The Sharper Image 4.17 12.19 0.68 181 Brookstone 4.16 12.02 0.69 269 p-value (.983) (.00) (.635) Company log(adjusted gross income) log(median house value) |$\Delta$|(house value 2002–2006) Number of stores Circuit City stores 4.08 11.81 0.63 607 Best Buy 4.09 11.82 0.60 729 p-value (.799) (.625) (.164) Linens ’N Things 4.12 11.91 0.61 511 Bed Bath & Beyond 4.11 11.87 0.60 700 p-value (.308) (.119) (.598) The Sharper Image 4.17 12.19 0.68 181 Brookstone 4.16 12.02 0.69 269 p-value (.983) (.00) (.635) This table compares the means of log(adjusted gross income), log(median house value), and |$\Delta$|(house value 2002–2006) across all the stores of fully liquidated chains and similar chains that were not liquidated for three selected chains. Means are calculated based on store locations in 2006. p-values are calculated using a two-sample difference-in-means t-test. View Large Table 3 Comparison of store locations Company log(adjusted gross income) log(median house value) |$\Delta$|(house value 2002–2006) Number of stores Circuit City stores 4.08 11.81 0.63 607 Best Buy 4.09 11.82 0.60 729 p-value (.799) (.625) (.164) Linens ’N Things 4.12 11.91 0.61 511 Bed Bath & Beyond 4.11 11.87 0.60 700 p-value (.308) (.119) (.598) The Sharper Image 4.17 12.19 0.68 181 Brookstone 4.16 12.02 0.69 269 p-value (.983) (.00) (.635) Company log(adjusted gross income) log(median house value) |$\Delta$|(house value 2002–2006) Number of stores Circuit City stores 4.08 11.81 0.63 607 Best Buy 4.09 11.82 0.60 729 p-value (.799) (.625) (.164) Linens ’N Things 4.12 11.91 0.61 511 Bed Bath & Beyond 4.11 11.87 0.60 700 p-value (.308) (.119) (.598) The Sharper Image 4.17 12.19 0.68 181 Brookstone 4.16 12.02 0.69 269 p-value (.983) (.00) (.635) This table compares the means of log(adjusted gross income), log(median house value), and |$\Delta$|(house value 2002–2006) across all the stores of fully liquidated chains and similar chains that were not liquidated for three selected chains. Means are calculated based on store locations in 2006. p-values are calculated using a two-sample difference-in-means t-test. View Large While Table 3 presents univariate analysis for three chains, we now move to estimate the relation between local economic conditions and store location for all the liquidated chains in our data. We run a linear probability model of future store liquidation to test the relation between belonging to a chain that eventually ends up in liquidation and local economic indicators. We estimate the following regression: \begin{align} & Liquidated_{i,z,t}\nonumber\\ &\quad{} =\alpha+\beta_{1}\times log(median\,\,income)_{z,t}+\beta_{2}\times log(house\,\,value)_{z,2000}\nonumber\\ &\qquad{} +\beta_{3}\times \%\Delta house\,\,price_{2002--2006,z}+ \beta_{4}\times Mall_{i}+\mathbf{b}_{i}{\boldsymbol{\delta}}+\epsilon_{i,t},\label{eq_location} \end{align} (1) where the dependent variable is an indicator variable equal to 1 if a store is operated by a national retail chain that will liquidate at some point in the future, and 0 otherwise; log(median income)|$_{z,t}$| is the natural log of median adjusted gross income at the ZIP code in either 2005 or 2006; log(house value)|$_{z,2000}$| is the natural log of median house value at the ZIP code level in the 2000 Census; |$\%\Delta$| house price|$_{2002--2006,z}$| is the percentage change in median house price during the period 2002–2006 in the ZIP code and is based on data from Zillow; Mall is a dummy variable that equals 1 if the store is located in a large shopping mall, and 0 otherwise; and |$\mathbf{b}$| is a vector of county fixed effects. The coefficients of interest are |$\beta_{1}$|⁠, |$\beta_{2}$|⁠, and |$\beta_{3}$|⁠, which measure the effect of local economic conditions on store location. Table 4 presents the results from estimating different variants of the model and displays standard errors (in parentheses) that are clustered at the ZIP code level as we do throughout the paper. Given that the location of a specific store does not change over time, we estimate separate cross-sectional rather than panel regressions for 2005 and 2006. Table 4 Determinants of store locations (1) (2) (3) (4) (5) (6) All stores Nonmall stores Mall stores All stores Nonmall stores Mall stores log(median household income) 0.0067 0.010 –0.017 –0.007 0.001 –0.035 (0.009) (0.010) (0.035) (0.007) (0.001) (0.030) log(median house value) 0.002 0.004 –0.010 0.008*** 0.010*** –0.007 (0.003) (0.003) (0.011) (0.002) (0.002) (0.008) Median house price growth, 0.0002 –0.0004 –0.003 –0.001 –0.001 –0.003 2002–2006 (0.004) (0.004) (0.016) (0.003) (0.003) (0.009) Mall 0.037*** 0.028*** (0.003) (0.002) Year 2005 2005 2005 2006 2006 2006 Fixed effects County County County County County County Observations 52,597 44,488 8,109 76,057 62,808 13,249 Adjusted |$R^{2}$| .013 .010 .043 .002 .007 .030 (1) (2) (3) (4) (5) (6) All stores Nonmall stores Mall stores All stores Nonmall stores Mall stores log(median household income) 0.0067 0.010 –0.017 –0.007 0.001 –0.035 (0.009) (0.010) (0.035) (0.007) (0.001) (0.030) log(median house value) 0.002 0.004 –0.010 0.008*** 0.010*** –0.007 (0.003) (0.003) (0.011) (0.002) (0.002) (0.008) Median house price growth, 0.0002 –0.0004 –0.003 –0.001 –0.001 –0.003 2002–2006 (0.004) (0.004) (0.016) (0.003) (0.003) (0.009) Mall 0.037*** 0.028*** (0.003) (0.002) Year 2005 2005 2005 2006 2006 2006 Fixed effects County County County County County County Observations 52,597 44,488 8,109 76,057 62,808 13,249 Adjusted |$R^{2}$| .013 .010 .043 .002 .007 .030 This table presents coefficient estimates and standard errors in parentheses for linear probability models of stores locations in 2005 (Columns 1–3) and 2006 (Columns 4–6). The table uses ZIP-code-level economic controls. Columns 1 and 4 use data on all stores; Columns 2 and 5 use data on stores that are not located in shopping malls; and Columns 3 and 6 only focus on stores located in malls. All regressions include an intercept and county fixed effects (data not reported). Standard errors are calculated by clustering at the ZIP code level. ***|$p<.01$|⁠. View Large Table 4 Determinants of store locations (1) (2) (3) (4) (5) (6) All stores Nonmall stores Mall stores All stores Nonmall stores Mall stores log(median household income) 0.0067 0.010 –0.017 –0.007 0.001 –0.035 (0.009) (0.010) (0.035) (0.007) (0.001) (0.030) log(median house value) 0.002 0.004 –0.010 0.008*** 0.010*** –0.007 (0.003) (0.003) (0.011) (0.002) (0.002) (0.008) Median house price growth, 0.0002 –0.0004 –0.003 –0.001 –0.001 –0.003 2002–2006 (0.004) (0.004) (0.016) (0.003) (0.003) (0.009) Mall 0.037*** 0.028*** (0.003) (0.002) Year 2005 2005 2005 2006 2006 2006 Fixed effects County County County County County County Observations 52,597 44,488 8,109 76,057 62,808 13,249 Adjusted |$R^{2}$| .013 .010 .043 .002 .007 .030 (1) (2) (3) (4) (5) (6) All stores Nonmall stores Mall stores All stores Nonmall stores Mall stores log(median household income) 0.0067 0.010 –0.017 –0.007 0.001 –0.035 (0.009) (0.010) (0.035) (0.007) (0.001) (0.030) log(median house value) 0.002 0.004 –0.010 0.008*** 0.010*** –0.007 (0.003) (0.003) (0.011) (0.002) (0.002) (0.008) Median house price growth, 0.0002 –0.0004 –0.003 –0.001 –0.001 –0.003 2002–2006 (0.004) (0.004) (0.016) (0.003) (0.003) (0.009) Mall 0.037*** 0.028*** (0.003) (0.002) Year 2005 2005 2005 2006 2006 2006 Fixed effects County County County County County County Observations 52,597 44,488 8,109 76,057 62,808 13,249 Adjusted |$R^{2}$| .013 .010 .043 .002 .007 .030 This table presents coefficient estimates and standard errors in parentheses for linear probability models of stores locations in 2005 (Columns 1–3) and 2006 (Columns 4–6). The table uses ZIP-code-level economic controls. Columns 1 and 4 use data on all stores; Columns 2 and 5 use data on stores that are not located in shopping malls; and Columns 3 and 6 only focus on stores located in malls. All regressions include an intercept and county fixed effects (data not reported). Standard errors are calculated by clustering at the ZIP code level. ***|$p<.01$|⁠. View Large The first column of Table 4 demonstrates that stores of national retail chains liquidated after 2005 were located in ZIP codes with economic characteristics that are not statistically different from the ZIP codes of stores belonging to chains that avoided liquidation. The only difference between stores of chains that end in liquidations and other stores is that the former are more likely to be located in shopping malls. In Columns 2 and 3 of Table 4 we split the sample between nonmall stores (Column 2) and stores located in a mall (Column 3). Table 4 illustrates that store locations of chains that fully liquidated are again not different from the location of other stores when we stratify the data by a mall indicator. Columns 4, 5, and 6 repeat the store location analysis in Columns 1, 2, and 3 but for 2006, rather than 2005. Again, the results show that stores of liquidated retail chains were located in ZIP codes similar to the location of other stores in terms of median household income and house price appreciation. The table demonstrates that the difference between the location of liquidated chain stores and the location of nonliquidated chain stores is that stores of liquidated chains are located in ZIP codes with slightly higher median house values in 2000. In summary, Table 4 demonstrates that, along the observables, there are no significant differences between the location of liquidated chain stores and the location of stores belonging to retail chains that do not undergo liquidation in 2005. Moreover, the only slight difference in terms of location is that liquidated chain stores are more likely to be located in ZIP codes with slightly higher median house values in 2006. These results confirm that the initial location of stores of national chains that liquidated is not a likely cause of their failure. Thus, given the geographical dispersion of these chains and the ZIP codes in which they are located, these store closures are unlikely to be driven by worse local economic conditions. However, one remaining concern is that the locations of liquidating national chains suffered more during the economic downturn even though their initial location was no worse. As discussed below we address this point directly through the inclusion ZIP-code-by-year fixed effects. 4. Effect of Bankruptcy on Store Closures 4.1 Baseline regressions We begin with a simple test of the negative externalities hypothesis by estimating a linear probability model of store closures conditional on the liquidation of neighboring stores that result from a national retailer chain-wide liquidation. We estimate different variants of the following baseline specification. \begin{align} Closed_{I,t}&=\alpha+\beta_{1}\times n(same\,\,address)_{i,t-1}+\beta_{2}\times n(0