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Finding Trending Local Topics in Search Queries for Personalization of a Recommendation System

机译:在搜索查询中查找热门本地主题以推荐系统的个性化

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In this paper, we present our approach for geographic: personalization of a content recommendation system. More specifically, our work focuses on recommending query topics to users. We do this by mining the search query logs to detect trending local topics. For a set of queries we compute their counts and what we call buzz scores, which is a metric for detecting trending behavior. We also compute the entropy of the geographic distribution of the queries as means of detecting their location affinity. We cluster the queries into trending topics and assign the topics to their corresponding location. Human editors then select a subset of these local topics and enter them into a recommendation system. In turn the recommendation system optimizes a pool of trending local and global topics by exploiting user feedback. We present some editorial evaluation of the technique and results of a live experiment. Inclusion of local topics in selected locations into the global pool of topics resulted in more than 6% relative increase in user engagement with the recommendation system compared to using the global topics exclusively.
机译:在本文中,我们介绍了我们的地理方法:内容推荐系统的个性化。更具体地说,我们的工作重点是向用户推荐查询主题。我们通过挖掘搜索查询日志来检测趋势本地主题来做到这一点。对于一组查询,我们计算它们的计数以及所谓的嗡嗡声分数,这是检测趋势行为的指标。我们还计算查询的地理分布的熵,以检测其位置亲和力。我们将查询聚类为趋势主题,然后将主题分配到其相应位置。然后,人类编辑者会选择这些本地主题的子集,并将其输入推荐系统。反过来,推荐系统通过利用用户反馈来优化趋向本地和全局主题的池。我们对技术和现场实验结果进行一些编辑评估。与仅使用全局主题相比,将所选位置中的本地主题包含在全局主题池中导致与推荐系统的用户互动相对增加了6%以上。

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