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Personalized recommendation by matrix co-factorization with multiple implicit feedback on pairwise comparison

机译:矩阵共解的个性化推荐,对成对比较的多种隐含反馈

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摘要

Recommendation systems have been tremendously important to assist users to find relevant items. With the information-overloaded problem, it becomes crucial to understand users' behavior by learning their preferences during the interaction to construct a profile for exploitation in selecting relevant items. Relevant feedback to capture the users' behavior may not only explicitly exist but also implicitly available. In the real world, it is common that explicit feedback may be unavailable, and the recommender systems rely only on implicit feedback. When only implicit feedback exists, there are interpretability issues on performing recommender systems. In addition, multiple implicit feedback may cause diverse interpretability due to different characteristics and distributions. This study aims to propose a decomposition approach by incorporating joint information rating to improve recommender systems. In prior to the development of the decomposition approach, we develop a framework to explore the proper rating transformation on multiple implicit feedback. The best rating transformation approach is evaluated using the traditional recommender systems and is used as the input for the joint information rating in the decomposition approach using matrix co-factorization. The proposed matrix co-factorization incorporates multiple implicit feedbacks (i.e., frequency and duration). The result proves that incorporating multiple implicit feedbacks with matrix co-factorization improves the recommendation quality.
机译:建议系统非常重要,可以帮助用户找到相关项目。通过信息过载问题,通过在交互期间学习其偏好来构建在选择相关项目时,可以通过学习其偏好来了解用户的偏好至关重要。捕获用户行为的相关反馈可能不仅明确存在,而且可以隐式可用。在现实世界中,很常见的是,显式反馈可能不可用,并且推荐系统仅依赖于隐式反馈。当仅存在隐式反馈时,执行推荐系统存在解释性问题。另外,由于不同的特性和分布,多种隐性反馈可能导致不同的解释性。本研究旨在通过纳入联合信息评级来提出分解方法来改善推荐系统。在发发分解方法之前,我们开发了一个框架,以探索多个隐含反馈的正确评定变换。使用传统的推荐系统评估最佳评级变换方法,并用作使用矩阵协同分解的分解方法中的联合信息评级的输入。所提出的矩阵协同分解包括多种隐性反馈(即,频率和持续时间)。结果证明,使用矩阵共分解的多种隐含反馈提高了推荐质量。

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