Comparable Entity Mining from Comparative Questions
- Shasha Li ,
- Chin-Yew Lin ,
- Young-In Song ,
- Zhoujun Li
IEEE Transactions on Knowledge and Data Engineering | , Vol 25(7): pp. 1498-1509
PDF | Publication | Publication | Publication
Comparing one thing with another is a typical part of human decision making process. However, it is not always easy to know what to compare and what are the alternatives. In this paper, we present a novel way to automatically mine comparable entities from comparative questions that users posted online to address this difficulty. To ensure high precision and high recall, we develop a weakly supervised bootstrapping approach for comparative question identification and comparable entity extraction by leveraging a large collection of online question archive. The experimental results show our method achieves F1-measure of 82.5 percent in comparative question identification and 83.3 percent in comparable entity extraction. Both significantly outperform an existing state-of-the-art method. Additionally, our ranking results show highly relevance to user’s comparison intents in web.