Personalized Search: Potential And Pitfalls

CIKM'16: ACM Conference on Information and Knowledge Management Indianapolis Indiana USA October, 2016(2016)

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摘要
Traditionally search engines have returned the same results to everyone who asks the same question. However, using a single ranking for everyone in every context at every point in time limits how well a search engine can do in providing relevant information. In this talk I present a framework to quantify the "potential for personalization" which we use to characterize the extent to which different people have different intents for the same query. I describe several examples of how we represent and use different kinds of contextual features to improve search quality for individuals and groups. Finally, I conclude by highlighting important challenges in developing personalized systems at Web scale including privacy, transparency, serendipity, and evaluation.
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关键词
Personalized search,web search,user modeling,human-computer interaction for information retrieval
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