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An integrated assessment approach to different collaborative filtering algorithms

机译:不同协同滤波算法的综合评估方法

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Collaborative Filtering (CF) Recommendation System is a prominent technology which is widely online. Large variety of available CF algorithms and the multitude of their possible parameters have a huge impact on quality of the outcome on ECommerce. Unfortunately, the literature on CF recommender system evaluation presents different evaluation metrics at different situation and could not provide any suggestion about the best. At the same time, it is a fact to accept that the accuracy measure should be different for each CF algorithm and depends upon the classification accuracy of that particular algorithm. As an initiative to address this problem in the present research paper, predictive accuracy metrics, classification accuracy metrics and rank accuracy metrics are considered as the classification accuracy metrics to know the overall competence for significant features of the chosen CF algorithms. At this juncture, normalization, a distinctive evaluation methodology, has been adopted to accomplish unique evaluation results of recommender systems. In this research paper, different accuracy metrics assessment would be brought into a common scale by taking into consideration of normalization process to evaluate metrics of the CF algorithms. A comprehensive comparative analysis is carried out and tabulated.
机译:协作过滤(CF)推荐系统是一个突出的技术,广泛在线。各种可用的CF算法和各种可能的参数对电子商务的结果质量产生了巨大影响。不幸的是,CF推荐系统评估的文献在不同情况下提出了不同的评估指标,无法提供关于最好的建议。同时,要接受每个CF算法的准确度应不同,这取决于该特定算法的分类准确性。作为解决此问题的主动性,在本研究论文中,预测准确度指标,分类准确度指标和等级准确度指标被视为分类准确度指标,以了解所选CF算法的显着特征的整体能力。在这一时刻,已采用正常化,独特的评估方法,以完成推荐系统的独特评估结果。在本研究论文中,通过考虑到评估CF算法的度量来实现不同的准确度指标评估。进行了全面的比较分析和制表。

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