Action Word Prediction for Neural Source Code Summarization
Sakib Haque, Aakash Bansal, et al.
SANER 2021
When answering natural language questions over knowledge bases (KBs), different question components and KB aspects play different roles. However, most existing embedding-based methods for knowledge base question answering (KBQA) ignore the subtle interrelationships between the question and the KB (e.g., entity types, relation paths and context). In this work, we propose to directly model the two-way flow of interactions between the questions and the KB via a novel Bidirectional Attentive Memory Network, called BAMnet. Requiring no external resources and only very few hand-crafted features, on the WebQuestions benchmark, our method significantly outperforms existing information-retrieval based methods, and remains competitive with (hand-crafted) semantic parsing based methods. Also, since we use attention mechanisms, our method offers better interpretability compared to other baselines.
Sakib Haque, Aakash Bansal, et al.
SANER 2021
Zhen Zhang, Yijian Xiang, et al.
NeurIPS 2019
Diya Li, Mohammed J. Zaki, et al.
Journal of Web Semantics
Kai Shen, Lingfei Wu, et al.
IJCAI 2020