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Recommender Systems Using Support Vector Machines

机译:使用支持向量机的推荐系统

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摘要

Due to the explosion of e-commerce, recommender systems are rapidly becoming a core tool to accelerate cross-selling and strengthen customer loyalty. There are two prevalent approaches for building recommender systems - content-based recommending and collaborative filtering (CF). This study focuses on improving the performance of recommender systems by using data mining techniques. This paper proposes an SVM based recommender system. Furthermore this paper presents the methods for improving the performance of the SVM based recommender system in two aspects: feature subset selection and parameter optimization. GA is used to optimize both the feature subset and parameters of SVM simultaneously for the recommendation problem. The results of the evaluation experiment show the proposed model's improvement in making recommendations.
机译:由于电子商务的爆炸式增长,推荐系统正迅速成为加速交叉销售和增强客户忠诚度的核心工具。构建推荐器系统有两种流行的方法-基于内容的推荐和协作过滤(CF)。这项研究的重点是通过使用数据挖掘技术来提高推荐系统的性能。本文提出了一种基于支持向量机的推荐系统。此外,本文从两个方面介绍了基于SVM的推荐系统性能的改进方法:特征子集选择和参数优化。 GA用于同时针对推荐问题优化SVM的特征子集和参数。评估实验的结果表明,提出的模型在提出建议方面有所改进。

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