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CogTime_RMF: regularized matrix factorization with drifting cognition degree for collaborative filtering

机译:CogTime_RMF:带有漂移认知度的正则化矩阵分解用于协作过滤

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摘要

Due to the exponential growth of information, recommender systems have been a widely exploited technique to solve the problem of information overload effectively. Collaborative filtering (CF) is the most successful and extensively employed recommendation approach. However, current CF methods recommend suitable items for users mainly by user-item matrix that contains the individual preference of users for items in a collection. So these methods suffer from such problems as the sparsity of the available data and low accuracy in predictions. To address these issues, borrowing the idea of cognition degree from cognitive psychology and employing the regularized matrix factorization (RMF) as the basic model, we propose a novel drifting cognition degree-based RMF collaborative filtering method named CogTime_RMF that incorporates both user-item matrix and users' drifting cognition degree with time. Moreover, we conduct experiments on the real datasets MovieLens 1 M and MovieLens 100 k, and the method is compared with three similarity based methods and three other latest matrix factorization based methods. Empirical results demonstrate that our proposal can yield better performance over other methods in accuracy of recommendation. In addition, results show that CogTime_RMF can alleviate the data sparsity, particularly in the circumstance that few ratings are observed.
机译:由于信息的呈指数级增长,推荐系统已成为一种广泛使用的技术,可以有效地解决信息过载的问题。协同过滤(CF)是最成功且使用最广泛的推荐方法。但是,当前的CF方法主要通过用户项目矩阵为用户推荐合适的项目,该项目包含用户对集合中项目的个人偏好。因此,这些方法遭受诸如可用数据的稀疏性和预测准确性低的问题。为了解决这些问题,从认知心理学中借鉴认知度的思想,并采用正则化矩阵分解(RMF)作为基本模型,我们提出了一种新的基于漂移认知度的RMF协同过滤方法CogTime_RMF,该方法结合了两个用户项目矩阵以及用户随时间的漂移认知度。此外,我们对真实数据集MovieLens 1 M和MovieLens 100 k进行了实验,并将该方法与三种基于相似度的方法和其他三种基于矩阵分解的方法进行了比较。实证结果表明,与其他方法相比,我们的建议在推荐准确性方面可以产生更好的性能。此外,结果表明CogTime_RMF可以减轻数据稀疏性,尤其是在观察到很少的评级的情况下。

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