Improved Movie Recommendations Based on a Hybrid Feature Combination Method

Gharbi Alshammari, S. Kapetanakis, Abdullah Alshammari, Nikolaos Polatidis, M. Petridis
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引用次数: 4

Abstract

Recommender systems help users find relevant items efficiently based on their interests and historical interactions with other users. They are beneficial to businesses by promoting the sale of products and to user by reducing the search burden. Recommender systems can be developed by employing different approaches, including collaborative filtering (CF), demographic filtering (DF), content-based filtering (CBF) and knowledge-based filtering (KBF). However, large amounts of data can produce recommendations that are limited in accuracy because of diversity and sparsity issues. In this paper, we propose a novel hybrid method that combines user–user CF with the attributes of DF to indicate the nearest users, and compare four classifiers against each other. This method has been developed through an investigation of ways to reduce the errors in rating predictions based on users’ past interactions, which leads to improved prediction accuracy in all four classification algorithms. We applied a feature combination method that improves the prediction accuracy and to test our approach, we ran an offline evaluation using the 1M MovieLens dataset, well-known evaluation metrics and comparisons between methods with the results validating our proposed method.
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基于混合特征组合方法的改进电影推荐
推荐系统帮助用户根据他们的兴趣和与其他用户的历史互动有效地找到相关的项目。它们通过促进产品销售对企业有利,通过减少搜索负担对用户有利。推荐系统可以采用不同的方法来开发,包括协同过滤(CF)、人口统计过滤(DF)、基于内容的过滤(CBF)和基于知识的过滤(KBF)。然而,由于多样性和稀疏性的问题,大量的数据可能会产生准确度有限的建议。在本文中,我们提出了一种新的混合方法,将用户-用户CF与DF的属性相结合来指示最近的用户,并将四个分类器相互比较。该方法是通过研究减少基于用户过去交互的评级预测误差的方法而开发的,从而提高了所有四种分类算法的预测精度。为了测试我们的方法,我们使用1M MovieLens数据集、知名的评估指标和方法之间的比较进行了离线评估,结果验证了我们提出的方法。
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