From qestion to text: Qestion-oriented feature atention for answer selection

Heyan Huang, Xiaochi Wei*, Liqiang Nie, Xianling Mao, Xin Shun Xu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

15 Citations (Scopus)

Abstract

Understanding unstructured texts is an essential skill for human beings as it enables knowledge acquisition. Although understanding unstructured texts is easy for we human beings with good education, it is a great challenge for machines. Recently, with the rapid development of artifcial intelligence techniques, researchers put efforts to teach machines to understand texts and justify the educated machines by letting them solve the questions upon the given unstructured texts, inspired by the reading comprehension test as we humans do. However, feature effectiveness with respect to different questions signifcantly hinders the performance of answer selection, because different questions may focus on various aspects of the given text and answer candidates. To solve this problem, we propose a question-oriented feature attention (QFA) mechanism, which learns to weight different engineering features according to the given question, so that important features with respect to the specifc question is emphasized accordingly. Experiments on MCTest dataset have wellvalidated the effectiveness of the proposed method. Additionally, the proposed QFA is applicable to various IR tasks, such as question answering and answer selection. We have verifed the applicability on a crawled community-based question-answering dataset.

Original languageEnglish
Article numbera4
JournalACM Transactions on Information Systems
Volume37
Issue number1
DOIs
Publication statusPublished - Oct 2018

Keywords

  • Answer selection
  • Attention method
  • Question answering

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