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Comparison-Based Recommendation

机译:基于比较的建议

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摘要

Recommender systems combine user profiling and filtering techniques to provide more pro-active and personal information retrieval systems, and have been gaining in popularity as a way of overcoming the ubiquitous information overload problem. Many recommender systems operate as interactive systems that seek feedback from the end-user as part of the recommendation process to revise the user's query. In this paper we examine different forms of feedback that have been used in the past and focus on a low-cost preference-based feedback model, which to date has been very much under utilised. In particular we describe and evaluate a novel comparison-based recommendation framework which is designed to utilise preference-based feedback. Specifically, we present results that highlight the benefits of a number of new query revision strategies and evidence to suggest that the popular more-like-this strategy may be flawed.
机译:推荐系统将用户分析和过滤技术组合以提供更积极主动和个人信息检索系统,并以克服无处不在的信息过载问题的方式获得受欢迎程度。许多推荐系统作为互动系统的交互式系统,作为推荐过程的一部分,用于修改用户查询的一部分。在本文中,我们研究了过去使用的不同形式的反馈,并专注于基于低成本的优先级的反馈模型,迄今为止已经利用了。特别是我们描述并评估了一种基于新的比较推荐框架,该建议框架旨在利用基于优先的反馈。具体而言,我们提出了结果,突出了许多新的查询修订策略和证据表明流行的策略可能有缺陷。

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