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User Preference Mining through Collaborative Filtering and Content based Filtering in Recommender System

机译:推荐系统中通过协同过滤和基于内容的过滤来挖掘用户偏好

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Previous studies on implementing both collaborative and content based filtering systems fail to come to a conclusive solution, and in this light, the decreased accuracy of recommendations is notable. This paper shall first address methods on how to minimize the shortcomings of the two respective systems. Then, by comparing the similarity of the resulting user profiles and group profiles, it is possible to increase the accuracy of the user and group preference. To lessen the negative aspects the following must be done. With the case of the multi dimensional aspects of content based filtering, associated word mining should be used to extract relevant features. The data expressed by the mined features are not expressed as a string of data, but as a related word vector. To make up for its faults, content based filtering systems should use Bayesian classification, a system that classifies products by maintaining a knowledge base of related words. Also, to decrease the sparsity of the user-product matrix, the dimensions must be reduced. In order to reduce the dimensions of the columns, it is necessary to use Bayesian classification in tandem with the related-word knowledge base. Finally to reduce the dimensions of the rows the users must be classified into clusters.
机译:先前有关实现协作过滤和基于内容的过滤系统的研究未能得出一个确定的解决方案,因此,建议准确性降低是很明显的。本文将首先探讨如何最小化两个各自系统的缺点的方法。然后,通过比较所得的用户简档和组简档的相似性,可以增加用户和组偏好的准确性。为了减轻负面影响,必须采取以下措施。对于基于内容的过滤的多维方面,应使用关联的词挖掘来提取相关特征。挖掘的特征表示的数据不表示为数据串,而是表示为相关的词向量。为了弥补其缺陷,基于内容的过滤系统应使用贝叶斯分类,该系统通过维护相关词的知识库对产品进行分类。而且,为了减小用户产品矩阵的稀疏性,必须减小尺寸。为了减小列的尺寸,有必要与相关词知识库一起使用贝叶斯分类。最后,为了减小行的尺寸,必须将用户分类为集群。

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