Predicting Web Search Satisfaction with Existing Community-based Answers
Source:
SIGIR'2011, ACM, Beijing, China (2011)
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.