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首页> 外文期刊>International journal of modeling, simulation and scientific computing >Two-sided regularization model based on probabilistic matrix factorization and quantum similarity for recommender systems
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Two-sided regularization model based on probabilistic matrix factorization and quantum similarity for recommender systems

机译:基于概率矩阵分解和推荐系统量子相似性的双面正则化模型

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摘要

Nowadays, with the advent of the age of Web 2.0, several social recommendation methods that use social network information have been proposed and achieved distinct developments. However, the most critical challenges for the existing majority of these methods are: (1) They tend to utilize only the available social relation between users and deal just with the cold-start user issue. (2) Besides, these methods are suffering from the lack of exploitation of content information such as social tagging, which can provide various sources to extract the item information to overcome the cold-start item and improve the recommendation quality. In this paper, we investigated the efficiency of data fusion by integrating multi-source of information. First, two essential factors, user-side information, and item-side information, are identified. Second, we developed a novel social recommendation model called Two-Sided Regularization (TSR), which is based on the probabilistic matrix factorization method. Finally, the effective quantum-based similarity method is adapted to measure the similarity between users and between items into the proposed model. Experimental results on the real dataset show that our proposed model TSR addresses both of cold-start user and item issues and outperforms state-of-the-art recommendation methods. These results indicate the importance of incorporating various sources of information in the recommendation process.
机译:如今,随着Web 2.0的年龄,已经提出了几种使用社交网络信息的社会推荐方法,并取得了明显的发展。然而,这些方法中存在的大多数最关键的挑战是:(1)他们倾向于只利用用户之间的可用社交关系,并在冷启动用户问题上处理。 (2)此外,这些方法缺乏缺乏对社交标记等内容信息的开发,这可以提供各种来源来提取项目信息以克服冷启动项目并提高推荐质量。在本文中,我们通过集成了多源信息来调查数据融合的效率。首先,识别两个基本因素,用户侧信息和项目侧信息。其次,我们开发了一种名为双面正则化(TSR)的新型社会推荐模型,其基于概率矩阵分解方法。最后,适于测量用户与项目之间的相似性的有效量子的相似性方法。实验结果对实时数据集显示我们所提出的模型TSR地址冷启动用户和项目问题,优于最先进的推荐方法。这些结果表明在建议过程中纳入各种信息来源的重要性。

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