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Improving accuracy of recommendation system by means of Item-based Fuzzy Clustering Collaborative Filtering

机译:基于项目的模糊聚类协同过滤提高推荐系统的准确性

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Predicting user preferences is a challenging task. Different approaches for recommending products to the users are proposed in literature and collaborative filtering has been proved to be one of the most successful techniques. Some issues related to the quality of recommendation and to computational aspects still arise (e.g., scalability and cold-start recommendations). In this paper, we propose an Item-based Fuzzy Clustering Collaborative Filtering (IFCCF) in order to ensure the benefits of a model-based technique improving the quality of suggestions. Experimentation led by predicting ratings of MovieLens and Jester users makes this promising and worth to be further investigated in a cross-domain dataset.
机译:预测用户偏好是一项艰巨的任务。在文献中提出了向用户推荐产品的不同方法,并且协作过滤已被证明是最成功的技术之一。仍然存在与推荐质量和计算方面有关的一些问题(例如,可伸缩性和冷启动推荐)。在本文中,我们提出了一种基于项目的模糊聚类协同过滤(IFCCF),以确保基于模型的技术可提高建议质量,从而带来好处。通过预测MovieLens和Jester用户的收视率进行的实验使这一前景广阔,值得在跨域数据集中进行进一步研究。

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