KEYPHRASE BASED USER PROFILES IN SHORT-TERM AND SESSION-TERM QUERY LOGS

Sara Abri, Rayan Abri
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引用次数: 4

Abstract

Personalization depends on prior knowledge about information retrieval and web search and aims to build accurate and detailed user models. Thus, in the first step, it has to present a definition of a user model and in the next step, the contexts of what type of data is used in user-profiles and the models to represent them have to be provided. The structure of the user profile always is an important issue because of its impact on ranking performance. It is clear that if the algorithms used in the user model are more accurate and robust, the user model and personalized services will result in better efficiency and quality. Therefore, creating an efficient user profile is a challenge. Our motivation is to develop a keyphrase-based profile that operates on documents to improve personalization. These profiles are created using the keyphrase based models on the query log, as long-term, short-term and session-term to consider user interest in different time intervals to compare efficiency. Besides, we conduct comparative research on topic-based user profiles, intending to compare keyphrase-based and topic-based profiles in the personalization process. The results obtained more accuracy in session-based models by 13% in mean reciprocal rank and 14% in normalized discounted cumulative gain than long-based models.
短期和会话期查询日志中基于关键字的用户配置文件
个性化依赖于对信息检索和网络搜索的先验知识,旨在建立准确和详细的用户模型。因此,在第一步中,它必须提供用户模型的定义,在下一步中,必须提供用户概要文件中使用的数据类型的上下文以及表示它们的模型。用户配置文件的结构一直是一个重要的问题,因为它影响排名性能。很明显,如果用户模型中使用的算法更准确和鲁棒,用户模型和个性化服务将带来更好的效率和质量。因此,创建一个高效的用户配置文件是一个挑战。我们的动机是开发一个基于关键短语的配置文件,它可以在文档上操作以改进个性化。这些概要文件是在查询日志上使用基于关键字短语的模型创建的,分为长期、短期和会话期,以考虑用户在不同时间间隔内的兴趣,以比较效率。此外,我们还对基于主题的用户档案进行了对比研究,旨在比较基于关键字的用户档案和基于主题的用户档案在个性化过程中的差异。结果表明,基于会话的模型比基于长期的模型在平均倒数秩和标准化贴现累积增益方面的准确率分别提高了13%和14%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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