使用短期浏览上下文的网络搜索个性化

Yury Ustinovsky, P. Serdyukov
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引用次数: 35

摘要

众所周知,搜索和浏览活动是用户搜索意图的宝贵信息来源。它被大多数现代搜索引擎广泛使用,通过构建某些排名特征以及个性化搜索来提高排名。个性化旨在实现两个主要目标:提取用户和规范的稳定偏好,消除当前查询的歧义。解决这些问题的常用方法是从用户的搜索和浏览长期历史中提取信息,并利用短期历史来确定给定查询的上下文。由于缺乏长期和短期数据,在新用户的新搜索会话中对第一个查询的网络搜索进行个性化更加困难。本文主要研究短期个性化问题。更准确地说,我们将注意力限制在搜索会话的初始查询集上。由于缺乏上下文信息,这些被认为是短期个性化最具挑战性的,并且没有被先前的研究所涵盖。为了在没有搜索上下文的情况下解决这个问题,我们使用了短期浏览上下文。我们应用了基于重新排序方法的搜索结果个性化的广泛框架,并在大规模数据上评估了我们的方法。结果表明,所提出的方法显著提高了一个主要商业搜索引擎的非个性化排名。据我们所知,这是第一个解决基于最近浏览历史的短期个性化问题的研究。我们发现,给定一个查询,可以合理地预测这种重新排序方法的性能。当我们将方法的使用限制在预期收益最大的查询时,个性化带来的好处会显著增加
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Personalization of web-search using short-term browsing context
Search and browsing activity is known to be a valuable source of information about user's search intent. It is extensively utilized by most of modern search engines to improve ranking by constructing certain ranking features as well as by personalizing search. Personalization aims at two major goals: extraction of stable preferences of a user and specification and disambiguation of the current query. The common way to approach these problems is to extract information from user's search and browsing long-term history and to utilize short-term history to determine the context of a given query. Personalization of the web search for the first queries in new search sessions of new users is more difficult due to the lack of both long- and short-term data. In this paper we study the problem of short-term personalization. To be more precise, we restrict our attention to the set of initial queries of search sessions. These, with the lack of contextual information, are known to be the most challenging for short-term personalization and are not covered by previous studies on the subject. To approach this problem in the absence of the search context, we employ short-term browsing context. We apply a widespread framework for personalization of search results based on the re-ranking approach and evaluate our methods on the large scale data. The proposed methods are shown to significantly improve non-personalized ranking of one of the major commercial search engines. To the best of our knowledge this is the first study addressing the problem of short-term personalization based on recent browsing history. We find that performance of this re-ranking approach can be reasonably predicted given a query. When we restrict the use of our method to the queries with largest expected gain, the resulting benefit of personalization increases significantly
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