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Comparison of Collaborative Filtering Algorithms with Various Similarity Measures for Movie Recommendation

机译:电影推荐中具有多种相似度的协同过滤算法比较

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Collaborative Filtering is generally used as a recommender system. There is enormous growth in the amount of data in web. These recommender systems help users to select products on the web, which is the most suitable for them. Collaborative filtering-systems collect user's previous information about an item such as movies, music, ideas, and so on. For recommending the best item, there are many algorithms, which are based on different approaches. The most known algorithms are User-based and Item-based algorithms. Experiments show that Item-based algorithms give better results than User-based algorithms. The aim of this paper isto compare User-based and Item-based Collaborative Filtering Algorithms with many different similarity indexes with their accuracy and performance. We provide an approach to determine the best algorithm, which give the most accurate recommendation by using statistical accuracy metrics. The results are compared the User-based and Item-based algorithms with movie recommendation data set.
机译:协作过滤通常用作推荐系统。网络中的数据量有了巨大的增长。这些推荐系统可帮助用户在网络上选择最适合他们的产品。协作式过滤系统收集用户先前关于某项的信息,例如电影,音乐,想法等。为了推荐最佳项目,有许多算法基于不同的方法。最著名的算法是基于用户的算法和基于项目的算法。实验表明,基于项目的算法比基于用户的算法具有更好的结果。本文的目的是比较具有许多不同相似性指标的基于用户和基于项目的协作过滤算法的准确性和性能。我们提供了一种确定最佳算法的方法,该算法通过使用统计准确性指标来提供最准确的建议。将结果与基于用户的算法和基于项目的算法与电影推荐数据集进行比较。

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