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Using genetic algorithms for measuring the similarity values between users in collaborative filtering recommender systems

机译:在协作过滤推荐系统中使用遗传算法测量用户之间的相似度值

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Recommender systems aim to help web users to find only close information to their preferences rather than searching through undifferentiated mass of information. Currently, collaborative filtering is probably the most known and commonly used recommendation approach in recommender systems. In this paper, we present a new genetic algorithms-based recommender system, SimGen, that computes the similarity values between users without using any of the well-known similarity metric calculation algorithms like Pearson correlation and vector cosine-based similarity. The results obtained present 46% and 38% improvements in prediction quality and performance, respectively when compared with other techniques.
机译:推荐系统旨在帮助网络用户仅找到与其偏好相近的信息,而不是搜索未区分的信息量。当前,协作过滤可能是推荐器系统中最著名和最常用的推荐方法。在本文中,我们提出了一种基于遗传算法的新推荐系统SimGen,该系统无需使用任何著名的相似性度量计算算法(如Pearson相关性和基于向量余弦的相似性)即可计算用户之间的相似性值。与其他技术相比,所获得的结果分别在预测质量和性能方面分别提高了46%和38%。

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