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Disambiguated query suggestions and personalized content-similarity and novelty ranking of clustered results to optimize web searches

机译:消除歧义的查询建议,并根据个性化内容相似度和新颖性对聚类结果进行排名,以优化网络搜索

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摘要

In this paper, we face the so called "ranked list problem" of Web searches, that occurs when users submit short requests to search engines. Generally, as a consequence of terms' ambiguity and polysemy, users engage long cycles of query reformulation in an attempt to capture relevant information in the top ranked results. The overall objective of the proposal is to support the user in optimizing Web searches, by reducing the need for long search iterations. Specifically, in this paper we describe an iterative query disambiguation mechanism that follows three main phases. (1) The results of a Web search performed by the user (by submitting a query to a search engine) are clustered. (2) Clusters are ranked, based on a personalized balance of their content-similarity to the query and their novelty. (3) From each cluster, a disambiguated query that highlights the main contents of the cluster is generated, in such a way the new query is potentially capable to retrieve new documents, not previously retrieved; the disambiguated queries are suggestions for possibly new and more focused searches. The paper describes the proposal, illustrating a sample application of the mechanism. Finally, the paper presents a user's evaluation experiment of the proposed approach, comparing it with common practice based on the direct use of search engines.
机译:在本文中,我们面临所谓的Web搜索的“排序列表问题”,当用户向搜索引擎提交简短请求时就会发生。通常,由于术语的含糊和多义性,用户需要进行较长的查询重新编制周期,以尝试在排名最高的结果中捕获相关信息。该提案的总体目标是通过减少对长搜索迭代的需求来支持用户优化Web搜索。具体来说,在本文中,我们描述了遵循三个主要阶段的迭代查询消歧机制。 (1)将用户执行的Web搜索结果(通过向搜索引擎提交查询)进行聚类。 (2)根据对查询内容相似性和新颖性的个性化平衡,对聚类进行排名。 (3)从每个群集中生成一个突出显示群集主要内容的歧义查询,以这种方式,新查询可能能够检索以前未检索到的新文档;毫无疑问的查询是可能进行新的,更集中的搜索的建议。本文介绍了该建议,并举例说明了该机制的示例应用。最后,本文介绍了该方法的用户评估实验,并将其与基于直接使用搜索引擎的常规做法进行了比较。

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