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BLC: Private Matrix Factorization Recommenders via Automatic Group Learning
Published 18 Sep 2015 in cs.LG and stat.ML | (1509.05789v3)
Abstract: We propose a privacy-enhanced matrix factorization recommender that exploits the fact that users can often be grouped together by interest. This allows a form of "hiding in the crowd" privacy. We introduce a novel matrix factorization approach suited to making recommendations in a shared group (or nym) setting and the BLC algorithm for carrying out this matrix factorization in a privacy-enhanced manner. We demonstrate that the increased privacy does not come at the cost of reduced recommendation accuracy.
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