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mNIR: Diversifying Search Results Based on a Mixture of Novelty, Intention and Relevance

机译:MNIR:基于新颖性,意图和相关性的混合物多样化搜索结果

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Current search engines do not explicitly take different meanings and usages of user queries into consideration when they rank the search results. As a result, they tend to retrieve results that cover the most popular meanings or usages of the query. Consequently, users who want results that cover a rare meaning or usage of query or results that cover all different meanings/usages may have to go through a large number of results in order to find the desired ones. Another problem with current search engines is that they do not adequately take users' intention into consideration. In this paper, we introduce a novel result ranking algorithm (mNIR) that explicitly takes result novelty, user intention-based distribution and result relevancy into consideration and mixes them to achieve better result ranking. We analyze how giving different emphasis to the above three aspects would impact the overall ranking of the results. Our approach builds on our previous method for identifying and ranking possible categories of any user query based on the meanings and usages of the terms and phrases within the query. These categories are also used to generate category queries for retrieving results matching different meanings/usages of the original user query. Our experimental results show that the proposed algorithm can outperform state-of-the-art diversification approaches.
机译:当他们排名搜索结果时,当前搜索引擎不会明确地考虑用户查询的不同含义和用法。因此,它们倾向于检索涵盖查询最受欢迎的含义或使用的结果。因此,希望涵盖覆盖所有不同含义/用法的罕见含义或结果的结果的用户可能必须经过大量结果以找到所需的结果。当前搜索引擎的另一个问题是他们没有充分考虑用户的意图。在本文中,我们介绍了一种新颖的结果排名算法(MNIR),明确地考虑了结果,用户意向分布和结果相关性,并将它们混合以实现更好的结果排名。我们分析了对上述三个方面的不同重点会影响结果的整体排名。我们的方法是根据我们以前的方法,用于根据查询中的术语和短语的含义和用法来识别和排序任何用户查询的类别。这些类别还用于生成类别查询,用于检索匹配原始用户查询的不同含义/ usages的结果。我们的实验结果表明,该算法可以优于最先进的多样化方法。

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