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A Content-Boosted Collaborative Filtering Approach for Movie Recommendation Based on Local and Global Similarity and Missing Data Prediction

机译:基于局部和全局相似度以及数据丢失预测的电影推荐内容增强协同过滤方法

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摘要

Most traditional recommender systems lack accuracy in the case where data used in the recommendation process is sparse. This study addresses the sparsity problem and aims to get rid of it by means of a content-boosted collaborative filtering approach applied to a web-based movie recommendation system. The main motivation is to investigate whether further success can be obtained by combining ‘local and global user similarity’ and ‘effective missing data prediction’ approaches, which were previously introduced and proved to be successful separately. The present work improves these approaches by taking the content information of the movies into account during the item similarity calculations. The comparison of the proposed approach with the original methods was carried out using mean absolute error, and more accurate predictions were achieved.
机译:在推荐过程中使用的数据稀疏的情况下,大多数传统的推荐系统缺乏准确性。这项研究解决了稀疏性问题,旨在通过将基于内容的协作过滤方法应用于基于Web的电影推荐系统来消除稀疏性问题。主要动机是研究是否可以通过结合使用“本地和全球用户相似性”和“有效缺失数据预测”方法来获得进一步的成功,这些方法先前已被引入并被证明是成功的。通过在项目相似性计算期间考虑电影的内容信息,本工作改进了这些方法。使用平均绝对误差对建议的方法与原始方法进行了比较,并获得了更准确的预测。

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