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首页> 外文期刊>Journal of computational science >Moreopt: A goal programming based movie recommender system
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Moreopt: A goal programming based movie recommender system

机译:Moreopt:基于目标编程的电影推荐系统

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摘要

Recommender systems suggest relevant items to users by acquiring user preferences and exploiting them to build a type of user model. The main purpose of such a system is to match the most suitable item for the constructed user model. And hence, finding similar items for user preferences is the most crucial point of any recommender system. The state-of-art recommender systems suffer from handling the data sparsity problem. For this reason, the proposed recommender system combines content information of movie features (cast, director, genre, etc.) with a collaborative filtering approach. The similarity scores of movie features are supplemented by a goal programming model in the content-based approach. Pearson correlation is selected as a collaborative filtering algorithm that predicts movies to satisfy user tastes considering the content-based similarity scores. MovieLens dataset is used for experimental setup and Mean Absolute Error is measured for the comparison of approaches. The best average MAE score is 0.736 when the evaluation includes 300 training users. Also, the fastest sub-task is the movie recommendation for users having 2.34s running time. The proposed system outperforms the rest of the studies in the literature and the experiments show that the overall system performance is increased when the content information is augmented by the collaborative filtering approach. (C) 2018 Elsevier B.V. All rights reserved.
机译:推荐系统通过获取用户偏好并利用它们来建立一种用户模型,从而向用户建议相关项目。这种系统的主要目的是为构建的用户模型匹配最合适的项目。因此,为用户的喜好找到相似的项目是任何推荐系统中最关键的一点。最新的推荐系统遭受处理数据稀疏性问题的困扰。因此,建议的推荐器系统将电影特征(播放,导演,体裁等)的内容信息与协作过滤方法结合在一起。电影内容的相似性得分由基于内容的方法中的目标编程模型补充。考虑到基于内容的相似性评分,选择了Pearson相关作为协作过滤算法,该算法可预测电影以满足用户的口味。 MovieLens数据集用于实验设置,并且测量平均绝对误差以用于方法比较。当评估包括300个培训用户时,最佳平均MAE分数是0.736。同样,最快的子任务是对运行时间为2.34秒的用户的电影推荐。所提出的系统优于文献中其余的研究,并且实验表明,当通过协作过滤方法增强内容信息时,整体系统性能会提高。 (C)2018 Elsevier B.V.保留所有权利。

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