TY - JOUR AU1 - Zhang, Miao AU2 - He, Tingting AU3 - Dong, Ming AB - Commonsense question answering (CQA) requires understanding and reasoning over QA context and related commonsense knowledge, such as a structured Knowledge Graph (KG). Existing studies combine language models and graph neural networks to model inference. However, traditional knowledge graph are mostly concept-based, ignoring direct path evidence necessary for accurate reasoning. In this paper, we propose MRGNN (Meta-path Reasoning Graph Neural Network), a novel model that comprehensively captures sequential semantic information from concepts and paths. In MRGNN, meta-paths are introduced as direct inference evidence and an original graph neural network is adopted to aggregate features from both concepts and paths simultaneously. We conduct sufficient experiments on the CommonsenceQA and OpenBookQA datasets, showing the effectiveness of MRGNN. Also, we conduct further ablation experiments and explain the reasoning behavior through the case study. TI - Meta-path reasoning of knowledge graph for commonsense question answering JF - Frontiers of Computer Science DO - 10.1007/s11704-022-2336-6 DA - 2024-02-01 UR - https://www.deepdyve.com/lp/springer-journals/meta-path-reasoning-of-knowledge-graph-for-commonsense-question-h75PIcM6Fk VL - 18 IS - 1 DP - DeepDyve ER -