Towards Optimal Active Learning for Matrix Factorization in Recommender Systems

R. Karimi, C. Freudenthaler, A. Nanopoulos, L. Schmidt-Thieme
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引用次数: 20

Abstract

Recommender systems help web users to address information overload. However their performance depends on the number of provided ratings by users. This problem is amplified for a new user because he/she has not provided any rating. To address this problem, active learning methods have been proposed to acquire those ratings from users, that will help most in determining their interests. The optimal active learning selects a query that directly optimizes the expected error for the test data. This approach is applicable for prediction models in which this question can be answered in closed-form given the distribution of test data is known. Unfortunately, there are many tasks and models for which the optimal selection cannot efficiently be found in closed-form. Therefore, most of the active learning methods optimize different, non-optimal criteria, such as uncertainty. Nevertheless, in this paper we exploit the characteristics of matrix factorization, which leads to a closed-form solution and by being inspired from existing optimal active learning for the regression task, develop a method that approximates the optimal solution for recommender systems. Our results demonstrate that the proposed method improves the prediction accuracy of MF.
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推荐系统中矩阵分解的最优主动学习
推荐系统帮助网络用户解决信息过载的问题。然而,它们的性能取决于用户提供的评级数量。对于新用户来说,这个问题会被放大,因为他/她没有提供任何评级。为了解决这个问题,已经提出了主动学习方法来获取用户的评分,这将有助于确定他们的兴趣。最优主动学习选择一个查询,直接优化测试数据的预期误差。这种方法适用于在已知测试数据分布的情况下,可以以封闭形式回答这个问题的预测模型。不幸的是,有许多任务和模型不能以封闭的形式有效地找到最优选择。因此,大多数主动学习方法优化不同的非最优准则,如不确定性。然而,在本文中,我们利用矩阵分解的特征,这导致了一个封闭形式的解决方案,并受到回归任务的现有最优主动学习的启发,开发了一种近似推荐系统最优解决方案的方法。结果表明,该方法提高了MF的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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