基于相似性矩阵分解的项目冷启动推荐系统

Eduardo Pereira Fressato, Arthur Fortes da Costa, Marcelo Garcia Manzato
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引用次数: 3

摘要

在推荐系统(RS)中,最常用的方法之一是协同过滤(CF),它根据相似用户的行为来推荐项目。在CF方法中,基于矩阵分解的方法通常更有效,因为它们允许系统发现用户和物品之间交互的潜在特征。然而,这种方法提出了冷启动问题,这是因为系统无法推荐新产品和/或准确预测新用户的偏好。为了改进冷启动场景下的评分预测任务,提出了一种新的矩阵分解方法,利用元数据结合物品的相似度。为此,我们探索从在线知识库中收集的项目的语义描述。我们的方法在两个不同的公开可用的数据集中进行了评估,并与基于内容的和协作的算法进行了比较。实验证明了该方法在项目冷启动场景下的有效性。
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Similarity-Based Matrix Factorization for Item Cold-Start in Recommender Systems
In recommender systems (RS) one of the most used approaches is collaborative filtering (CF), which recommends items according to the behavior of similar users. Among CF approaches, those based on matrix factorization are generally more effective because they allow the system to discover the underlying characteristics of interactions between users and items. However, this approach presents the cold-start problem, which occurs because of the system's inability to recommend new items and/or accurately predict new users' preferences. This paper proposes a novel matrix factorization approach, which incorporates similarity of items using their metadata, in order to improve the rating prediction task in an item cold-start scenario. For this purpose, we explore semantic descriptions of items which are gathered from knowledge bases available online. Our approach is evaluated in two different and publicly available datasets and compared against content-based and collaborative algorithms. The experiments show the effectiveness of our approach in the item cold-start scenario.
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