Access the full text.
Sign up today, get DeepDyve free for 14 days.
S. McNicol (2007)
Public Libraries in the 21st Century: Defining Services and Debating the FutureNew Library World, 108
L. Golden, Mayur Sirdesai (1992)
Chernoff Faces: a Useful Technique For Comparative Image Analysis and RepresentationACR North American Advances
M. Schermann, Holmer Hemsen, Christoph Buchmüller, Till Bitter, H. Krcmar, V. Markl, T. Hoeren (2014)
Big DataWIRTSCHAFTSINFORMATIK, 56
Min Chen, L. Floridi, R. Borgo (2013)
What is Visualization Really for?ArXiv, abs/1305.5670
(2015)
XE Currency Converter
H. Chernoff (1973)
The Use of Faces to Represent Points in k- Dimensional Space GraphicallyJournal of the American Statistical Association, 68
Christopher Morris, D. Ebert (2000)
An Experimental Analysis of the Effectiveness of Features in Chernoff Faces
Revision of IFLA's Guidelines for Public Libraries
David McMenemy (2008)
The public library
Japan Library Statistics
Advances in Consumer Research, 19
Young-Seok Kim (2011)
A Study on the Comparison of the Operation of Public Libraries Among Local Governments in Seoul, 42
(2012)
Looking at the face of Korean baseball teams in 2012
(2007)
How to visualize data with cartoonish faces ala Chernoff
(2001)
The public library service : IFLA/UNESCO guidelines for development
Nathan Yau (2011)
Visualize This: The FlowingData Guide to Design, Visualization, and Statistics
M. Rahu (1989)
Graphical representation of cancer incidence data: Chernoff faces.International journal of epidemiology, 18 4
Junghoon Ki (2016)
A Big Data Analysis of Urban Statistics Expression –Chernoff Face-Based Expression of Local Community Health Index in Korea, 26
Library use falling sharply, study shows
P. Vakkari, Svanhild Aabø, R. Audunson, F. Huysmans, M. Oomes (2014)
Perceived outcomes of public libraries in Finland, Norway and the NetherlandsJ. Documentation, 70
D. Nel, L. Pitt, T. Webb (1994)
Using Chernoff faces to portray service quality dataJournal of Marketing Management, 10
Jeongeun Lee, Hye-In Jeong, Min Kim, Jihyun Kim, Y. Son (2013)
Good Bank Evaluation by Chernoff Face Analysis using SAS macro faces, 26
R. Team (2014)
R: A language and environment for statistical computing.MSOR connections, 1
(2004)
Public Libraries and Friends of the Library Groups: the influence of Friends valuation study of public libraries in Korea
Width of Hair: no. of library visits per 1,000 people 11. Shape of Hair: not allocated 12. Height of Nose: library budget($) per 1,000 people 13. Width of Nose: library budget($) per 1,000 people 14
Y. Ko, Wonsik Shim, Soon-Hee Pyo, J. Chang, Hye-Kyung Chung (2012)
An economic valuation study of public libraries in KoreaLibrary & Information Science Research, 34
J. Lott, T. Durbridge (1990)
Use of chernoff faces to follow trends in laboratory dataJournal of Clinical Laboratory Analysis, 4
Local Self-Government, 315
Taking Part focus on: libraries
PurposeThe purpose of this paper is to conduct a big data analysis of public library operations and services of two cities in two countries by using the Chernoff face method.Design/methodology/approachThe study is designed to evaluate library services by analyzing the Chernoff face. Big data on public libraries in London and Seoul were collected, respectively, from Chartered Institute of Public Finance and Accountancy and the Korean government’s website for drawing a Chernoff face. The association of variables and human facial features was decided by survey. Although limited in its capacity to handle a large number of variables (eight were analyzed in this study) the Chernoff face method does readily allow for the comparison of a large number of instances of analysis. A total of 58 Chernoff faces were drawn from the formatted data by using the R programming language.FindingsThe study reveals that most of the local governments in London perform better than those of Seoul. This consequence is due to the fact that local governments in London operate more libraries, invest more budgets, allocate more staff and hold more collections than local governments in Seoul. This administration resulted in more use of libraries in London than Seoul. The study validates the benefit of using the Chernoff face method for big data analysis of library services.Practical implicationsThe Chernoff face method for big data analysis offers a new evaluation technique for library services and provides insights that may not be as readily apparent and discernible using more traditional analytical methods.Originality/valueThis study is the first to use the Chernoff face method for big data analysis of library services in library and information research.
Journal of Documentation – Emerald Publishing
Published: May 8, 2017
Read and print from thousands of top scholarly journals.
Already have an account? Log in
Bookmark this article. You can see your Bookmarks on your DeepDyve Library.
To save an article, log in first, or sign up for a DeepDyve account if you don’t already have one.
Copy and paste the desired citation format or use the link below to download a file formatted for EndNote
Access the full text.
Sign up today, get DeepDyve free for 14 days.
All DeepDyve websites use cookies to improve your online experience. They were placed on your computer when you launched this website. You can change your cookie settings through your browser.