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Enhancement of collaborative filtering performance under data scarcity environment

机译:数据稀缺环境下协作过滤性能的增强

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This study devotes to improve the prediction accuracy of prediction algorithms in recommender systems which one is collaborative filtering algorithm to estimate user's preference to items transacted on the web. From the our experiment, data scarcity problem is critical factor for decreasing prediction accuracy so the method for reducing data scarcity is meaningful way to increase prediction accuracy and also techniques for improving prediction accuracy like as the significant weight must be applied to the prediction process. This study proposes substitution methods like as the means of modes of users and items are effective and economical ways to reduce data scarcity better than other complicate substitution methods and can get even more accurate result than original result.
机译:这项研究致力于提高推荐系统中预测算法的预测准确性,该系统是一种协同过滤算法,用于估计用户对网络上交易的商品的偏好。根据我们的实验,数据稀缺性问题是降低预测准确性的关键因素,因此减少数据稀缺性的方法是提高预测准确性的有意义的方法,并且诸如必须将大量权重应用于预测过程之类的用于提高预测准确性的技术也是如此。这项研究提出了一种替代方法,例如使用用户和项目的方式,是一种比其他复杂替代方法更好地减少数据短缺的有效且经济的方法,并且可以获得比原始结果更准确的结果。

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