A classification-based approach to question answering in discussion boards (2009)
| Venue: | in Proc. of the 32nd Annual Int’l ACM SIGIR Conf. on Research and Dev. in Information Retrieval |
| Citations: | 7 - 1 self |
BibTeX
@INPROCEEDINGS{Hong09aclassification-based,
author = {Liangjie Hong and Brian D. Davison},
title = {A classification-based approach to question answering in discussion boards},
booktitle = {in Proc. of the 32nd Annual Int’l ACM SIGIR Conf. on Research and Dev. in Information Retrieval},
year = {2009}
}
OpenURL
Abstract
Discussion boards and online forums are important platforms for people to share information. Users post questions or problems onto discussion boards and rely on others to provide possible solutions and such question-related content sometimes even dominates the whole discussion board. However, to retrieve this kind of information automatically and effectively is still a non-trivial task. In addition, the existence of other types of information (e.g., announcements, plans, elaborations, etc.) makes it difficult to assume that every thread in a discussion board is about a question. We consider the problems of identifying question-related threads and their potential answers as classification tasks. Experimental results across multiple datasets demonstrate that our method can significantly improve the performance in both question detection and answer finding subtasks. We also do a careful comparison of how different types of features contribute to the final result and show that non-content features play a key role in improving overall performance. Finally, we show that a ranking scheme based on our classification approach can yield much better performance than prior published methods.







