Comparison of various metrics used in collaborative filtering for recommendation system

Anuranjan Kumar, Sahil Gupta, S. Singh, K. K. Shukla
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引用次数: 10

Abstract

Collaborative filtering technique for generating recommendation uses user's preferences to find other users most similar to the active user and recommends new items to the user. The task of calculating the similarity is the heart of collaborative filtering approach. In this paper, we have compared various similarity metrics which are used in collaborative filtering approach for recommendation system. We have studied these metrics for both user-based approach, which determines relationships among users of similar taste and item-based approach, which aims to determine the relationships indirectly, by considering the relationship among different items. For each of the two approaches, we have compared similarity and distance metrics like Euclidean distance, Tanimoto coefficient, Pearson correlation etc. To evaluate these metrics for both user-based and item-based approach of collaborative filtering, we conducted a simple data mining experiment on MovieLens dataset for building a movie recommendation system. Finally for performance evaluation we compared our result against performance measures like accuracy, sensitivity, Mathew's coefficient etc.
推荐系统协同过滤中各种指标的比较
生成推荐的协同过滤技术是利用用户的偏好来寻找与活跃用户最相似的其他用户,并向用户推荐新项目。计算相似度的任务是协同过滤方法的核心。本文比较了推荐系统协同过滤方法中使用的各种相似度度量。我们研究了基于用户的方法和基于物品的方法的这些指标,前者确定了具有相似品味的用户之间的关系,后者旨在通过考虑不同物品之间的关系来间接确定关系。对于两种方法中的每一种,我们都比较了相似性和距离度量,如欧几里得距离、谷本系数、Pearson相关性等。为了评估基于用户和基于项目的协同过滤方法的这些指标,我们在MovieLens数据集上进行了一个简单的数据挖掘实验,以构建一个电影推荐系统。最后,对于性能评估,我们将结果与准确性、灵敏度、马修系数等性能指标进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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