A Movie Recommendation System Design Using Association Rules Mining and Classification Techniques

Z. Zubi, Ali A. Elrowayati, Ibrahim Saad Abu Fanas
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引用次数: 1

Abstract

The importance of recommendation systems is increasing day by day due to the massive number of data and information-overloaded arising from the internet. This data can be collected in predictive datasets; these datasets can be processed and analysed via data mining methods. In this paper, an efficient hybrid movie recommender system has been designed using the association rules mining technique and K-nearest neighbours (KNN) algorithm as a classification method. The K-nearest neighbours (KNN) algorithm subsystem was used to create the first candidate list through a practical MovieLens dataset, which was retrieved from the source of the NetFlix network. Beside, the Apriori algorithm subsystem is used to analyse the same dataset and create the second list. Finally, the proposed system creates a final recommended list by matching the two lists. The results of the proposed system provide better performance than the existing systems in terms of the important degree. The important degree gives a better accuracy rate than the existing techniques used.
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基于关联规则挖掘和分类技术的电影推荐系统设计
由于互联网带来的海量数据和信息过载,推荐系统的重要性与日俱增。这些数据可以在预测数据集中收集;这些数据集可以通过数据挖掘方法进行处理和分析。本文采用关联规则挖掘技术和k近邻(KNN)算法作为分类方法,设计了一个高效的混合电影推荐系统。使用k近邻(KNN)算法子系统通过实际的MovieLens数据集创建第一个候选列表,该数据集从NetFlix网络的源中检索。此外,使用Apriori算法子系统对同一数据集进行分析并创建第二个列表。最后,该系统将两个列表进行匹配,生成最终推荐列表。结果表明,该系统在重要程度上优于现有系统。重要度给出了比现有技术更好的准确率。
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