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A movie recommendation method based on users' positive and negative profiles

机译:一种基于用户正面和负配置文件的电影推荐方法

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摘要

In the traditional content-based recommendation method, we usually use the movies users watched before or rated to represent their profile. However, there are many movies that users have never seen or rated. For an unrated movie, there are two possibilities: maybe the user likes it or does not like it. In this paper, we first focus on how to identify users' preferences for movies by using a collaborative filtering algorithm to predict the users' movie ratings. We can then create two movie lists for each user, where one is the movies the user likes (with higher predicting or true ratings), and the other is the movies the user does not like (with lower predicting or true ratings). Based on these two movie lists, we establish a user positive profile and a user negative profile. Therefore, our algorithm will recommend to users movies that are most similar to their positive profile and most different from their negative profile. Finally, our experiments show that our method can improve the MAE index of the traditional collaborative filtering method by 12.54%, the MAPE index by 17.68%, and the F1 index by 10.16%.
机译:在传统的基于内容的推荐方法中,我们通常使用之前观看的电影用户或额定代表其配置文件。但是,有很多电影用户从未见过或评级。对于一个未犹豫的电影,有两种可能性:也许用户喜欢它或不喜欢它。在本文中,我们首先通过使用协作过滤算法来识别用户对电影的偏好来预测用户的电影额定值。然后,我们可以为每个用户创建两部电影列表,其中一个是用户喜欢的电影(具有更高的预测或真实额定值),另一个是用户不喜欢的电影(具有较低的预测或真实额定值)。基于这两部电影列表,我们建立了用户正配置文件和用户否定配置文件。因此,我们的算法将推荐给用户最相似的电影,与他们的积极档案最相似,与其负面概况最不同。最后,我们的实验表明,我们的方法可以将传统的协作过滤方法的MAE指数提高12.54%,将MAPE指数达17.68%,F1指数达10.16%。

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