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A Sentiment-Enhanced Hybrid Recommender System for Movie Recommendation: A Big Data Analytics Framework

机译:用于电影推荐的增强情感的混合推荐系统:大数据分析框架

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Movie recommendation in mobile environment is critically important for mobile users. It carries out comprehensive aggregation of user’s preferences, reviews, and emotions to help them find suitable movies conveniently. However, it requires both accuracy and timeliness. In this paper, a movie recommendation framework based on a hybrid recommendation model and sentiment analysis on Spark platform is proposed to improve the accuracy and timeliness of mobile movie recommender system. In the proposed approach, we first use a hybrid recommendation method to generate a preliminary recommendation list. Then sentiment analysis is employed to optimize the list. Finally, the hybrid recommender system with sentiment analysis is implemented on Spark platform. The hybrid recommendation model with sentiment analysis outperforms the traditional models in terms of various evaluation criteria. Our proposed method makes it convenient and fast for users to obtain useful movie suggestions.
机译:在移动环境中推荐电影对移动用户至关重要。它对用户的偏好,评论和情感进行全面汇总,以帮助他们方便地找到合适的电影。但是,它需要准确性和及时性。本文提出了一种基于混合推荐模型和基于Spark平台的情感分析的电影推荐框架,以提高移动电影推荐系统的准确性和及时性。在提出的方法中,我们首先使用混合推荐方法来生成初步推荐列表。然后使用情绪分析来优化列表。最后,在Spark平台上实现了带有情感分析的混合推荐系统。在各种评估标准方面,带有情感分析的混合推荐模型优于传统模型。我们提出的方法使用户方便快捷地获得有用的电影建议。

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