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Case Based Reasoning for Information Personalization: Using a Context-Sensitive Compositional Case Adaptation Approach

机译:基于案例的信息个性化推理:使用上下文敏感的组合案例自适应方法

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In this paper, we present an intelligent information filtering strategy that is a hybrid of item-based Collaborative Filtering (CF) and Case Based Reasoning (CBR) methods. Information filtering is implemented in two phases: in phase I, we have developed a multi-feature item-based CF strategy that allows creating a detailed context for filtering the information and retrieving N information objects based on user's interests and also preferred by similar users with similar tastes. In phase II, we use the N retrieved items as input to the CBR information filtering system and apply CBR-based compositional adaptation technique to selectively collect distinct information components of the N retrieved past items pairs to produce a composite recommendation that better addresses the initial user's interests and needs. We show that the hybrid of context-based similarity and compositional adaptation techniques improves significantly the quality of the recommendations presented to the user in terms of accurate and precise personalized information content.
机译:在本文中,我们提出了一种智能的信息过滤策略,该策略是基于项目的协作过滤(CF)和基于案例的推理(CBR)方法的混合。信息过滤分两个阶段实施:在第一阶段,我们开发了基于多项目项的CF策略,该策略允许创建详细的上下文来过滤信息并根据用户的兴趣检索N个信息对象,并且也受到类似用户的青睐。相似的口味。在阶段II中,我们使用N个检索到的项目作为CBR信息过滤系统的输入,并应用基于CBR的成分自适应技术来选择性地收集N个检索到的过去项目对的不同信息成分,以产生更好地解决初始用户的推荐兴趣和需求。我们显示,基于上下文的相似性和构图适应技术的混合在准确和精确的个性化信息内容方面显着提高了呈现给用户的建议的质量。

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