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An Ontological Sub-Matrix Factorization based Approach for Cold-Start Issue in Recommender Systems

机译:基于在推荐系统中的冷启动问题的本体基于亚矩阵分解方法

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With the rapidly growing usage of e-commerce applications, it is becoming more and more tedious for the vendors to perform accurate and relevant recommendations to the users visiting their websites, especially first time. This is a type of cold start problem in the recommender systems. In this paper, an ontological sub-matrix factorization based approach is suggested for recommending items to a new user. The main contribution of the paper is that, for recommending any items to a new user, no personal information regarding user is captured or extracted, thereby respecting the privacy of the user. The proposed approach when tested has shown an accuracy of 98 percent in terms of recall value.
机译:随着电子商务应用的快速增长,供应商对访问其网站的用户进行准确和相关的建议,它变得越来越乏味,特别是第一次。这是推荐系统中的一种冷启动问题。在本文中,建议将物品推荐给新用户的本文基于本体亚矩阵分解方法。本文的主要贡献是,对于向新用户推荐任何项目,没有捕获或提取有关用户的个人信息,从而尊重用户的隐私。当测试时,所提出的方法在召回值方面显示了98%的准确性。

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