基于混合转换技术的高效推荐隐私保护机制

M. Parvathy, K. Sundarakantham, S. Shalinie, C. Dhivya
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引用次数: 2

摘要

互联网的快速发展导致了一种应对信息过载的有效工具的发展。推荐系统是解决信息过载问题中应用最广泛、最容易被感知的技术之一。协同过滤是推荐系统中最常用的技术。但它有一些限制,比如稀疏性、可扩展性和最重要的隐私。研究者提出,在推荐系统中加入信任度量可以缓解稀疏性问题。由于隐私被侵犯,用户大多会提供虚假信息,从而影响推荐的准确性。本文提出了一种融合主成分分析和旋转变换(PCART)的混合变换技术,以基于信任的准确推荐保护用户隐私。使用MovieLens数据集对我们的方法的性能进行了实验评估。实验结果表明,与现有方法相比,混合转换技术在保证隐私的前提下提供了更好的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An efficient privacy protection mechanism for recommendation using hybrid transformation technique
The rapid evolution of the internet led to a development of an effective tool for coping with information overload. Recommendation system is one of the most widely adopted and perceptible technologies for solving information overload issue. Collaborative filtering is the most popular technique used in recommender system. But it has several limitation such as sparsity, scalability and most vital of all privacy. As proposed by the researchers, the sparsity issue can be alleviated by incorporating the trust measure in the recommendation system. Customers mostly provide false information because of privacy breaches which in turn affect the accuracy of the recommendations. In this paper, a hybrid transformation technique is proposed which fuses Principal Component Analysis and Rotation Transformation (PCART) to protect users' privacy with accurate recommendations based on trust. The performance of our method is evaluated experimentally using MovieLens Dataset. Our experimental results shows, the hybrid transformation techniques provides better recommendations with ensuring privacy compared to existing approaches.
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