Predicting web searcher satisfaction with existing community-based answers

Qiaoling Liu, Eugene Agichtein, G. Dror, E. Gabrilovich, Y. Maarek, D. Pelleg, Idan Szpektor
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引用次数: 90

Abstract

Community-based Question Answering (CQA) sites, such as Yahoo! Answers, Baidu Knows, Naver, and Quora, have been rapidly growing in popularity. The resulting archives of posted answers to questions, in Yahoo! Answers alone, already exceed in size 1 billion, and are aggressively indexed by web search engines. In fact, a large number of search engine users benefit from these archives, by finding existing answers that address their own queries. This scenario poses new challenges and opportunities for both search engines and CQA sites. To this end, we formulate a new problem of predicting the satisfaction of web searchers with CQA answers. We analyze a large number of web searches that result in a visit to a popular CQA site, and identify unique characteristics of searcher satisfaction in this setting, namely, the effects of query clarity, query-to-question match, and answer quality. We then propose and evaluate several approaches to predicting searcher satisfaction that exploit these characteristics. To the best of our knowledge, this is the first attempt to predict and validate the usefulness of CQA archives for external searchers, rather than for the original askers. Our results suggest promising directions for improving and exploiting community question answering services in pursuit of satisfying even more Web search queries.
预测网络搜索者对现有社区答案的满意度
基于社区的问答(CQA)网站,如Yahoo!“答案”、“百度知道”、“Naver”和“Quora”的受欢迎程度迅速上升。在Yahoo!仅答案一项,就已经超过了10亿,并且被网络搜索引擎积极地编入索引。事实上,大量的搜索引擎用户从这些存档中受益,通过找到解决他们自己问题的现有答案。这种情况对搜索引擎和CQA站点都提出了新的挑战和机遇。为此,我们提出了一个预测网络搜索者对CQA答案满意度的新问题。我们分析了大量导致访问热门CQA网站的网络搜索,并确定了在此设置中搜索者满意度的独特特征,即查询清晰度,查询到问题匹配和回答质量的影响。然后,我们提出并评估了几种方法来预测利用这些特征的搜索者满意度。据我们所知,这是第一次尝试预测和验证CQA存档对外部搜索者的有用性,而不是对原始请求者的有用性。我们的结果为改进和开发社区问答服务以满足更多的Web搜索查询提供了有希望的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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