Improving web search ranking by incorporating user behavior information

SIGIR(2018)

引用 1527|浏览544
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摘要
We show that incorporating user behavior data can significantly improve ordering of top results in real web search setting. We examine alternatives for incorporating feedback into the ranking process and explore the contributions of user feedback compared to other common web search features. We report results of a large scale evaluation over 3,000 queries and 12 million user interactions with a popular web search engine. We show that incorporating implicit feedback can augment other features, improving the accuracy of a competitive web search ranking algorithms by as much as 31% relative to the original performance.
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关键词
popular web search engine,common web search feature,million user interaction,real web search setting,user behavior data,user behavior information,ranking process,implicit feedback,ranking algorithm,competitive web search,user feedback,improving web search ranking,web search engine
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