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Feature selection by using privacy-preserving of recommendation systems based on collaborative filtering and mutual trust in social networks

机译:通过使用基于协作过滤和社交网络中的相互信任的建议系统的隐私保留功能选择

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摘要

Given the increasing growth of the Web and consequently the growth of e-commerce, the amount of data which users face are increasing day by day. Therefore, one of the key issues in today's world is the extraction of knowledge from a large database. The recommendation systems are able to extract useful information from large databases. The information extracted by the recommendation systems may breach the privacy-preserving of individuals and increase the error rate. Concerns will grow along with the increasing privacy breaches, which are done by recommendation systems. In recent years, researchers have provided a variety of techniques for privacy-preserving and reduced error rates in recommendation systems. But most of these methods have not offered good solutions for privacy-preserving issues and reducing error rates. The aim of the proposed method is to provide a solution for users' security concerns in common filtering systems with reduced error rates and more privacy preservation. In this article, we propose a privacy-preserving method for recommendation systems called PRS, which first uses an anonymous method to convert secondary data without user identification information. The existing trust data are measured in terms of resemblance and trust-weighted criterion and then converted from perturbation-based chaos to confidential data. Finally, these two algorithms have been used for clustering the data: fuzzy c-ordered means and particle swarm optimization. The results of experiments have been compared with state-of-the-art methods, which show the superiority of the proposed method in terms of classification error rates and privacy-preserving.
机译:鉴于网络的增长越来越大,因此电子商务的增长,用户面临的数据量日益增加。因此,当今世界的关键问题之一是从大型数据库中提取知识。推荐系统能够从大型数据库中提取有用的信息。建议系统提取的信息可能会违反个人保留个人并提高错误率。担忧与越来越多的隐私违规行为,这是由推荐系统完成的。近年来,研究人员提供了各种用于隐私保留的技术和推荐系统中的错误率。但大多数这些方法都没有为隐私保留问题提供良好的解决方案和减少错误率。该方法的目的是为用户在共同过滤系统中的安全问题提供解决方案,以减少错误率和更多的隐私保存。在本文中,我们提出了一种隐私保留方法,用于推荐系统,称为PRS,首先使用匿名方法来转换辅助数据而无需用户识别信息。现有的信任数据是以相似和信任加权标准来衡量的,然后从基于扰动的混沌转换为机密数据。最后,这两个算法已被用于聚类数据:模糊C订购方式和粒子群优化。实验结果与最先进的方法进行了比较,这在分类误差率和隐私保留方面显示了所提出的方法的优越性。

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