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Using Filters in Time-based Movie Recommender Systems

机译:在基于时间的电影推荐系统中使用滤镜

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A movie recommendation system is one which uses data about the user, data about the movie and the ratings given by a user in order to generate predictions for the movies that the user will like. This prediction is further presented to the user as a recommendation. For example, Netflix uses a recommendation system to predict movies and generate favorable recommendations for users based on their profiles and the profiles of users similar to them. In user-based collaborative filtering algorithm, the movies rated highly by the users similar to a particular user are considered as recommendations for that user. But users' preferences vary with time, which often affects the efficacy of the recommendation, especially in a movie recommendation system. Because of the constant variation of the preferences, there has been research on using time since rating or watching the movie as a significant factor for recommendation. If time is considered as an attribute in the training phase of building a recommendation model, the model might get complex. Most of the research till now does this in the training phase, However, we study the effect of using time as a factor in the post training phase and study it further by applying a genre-based filtering mechanism to the system. Employing this in the post training phase reduces the complexity of the method and also reduces the number of irrelevant recommendations.
机译:电影推荐系统是这样一种系统,其使用关于用户的数据,关于电影的数据和由用户给出的评级,以便为用户想要的电影生成预测。该预测作为推荐进一步呈现给用户。例如,Netflix使用推荐系统来预测电影,并根据用户的个人资料和类似用户的个人资料为用户生成有利的推荐。在基于用户的协作过滤算法中,与特定用户相似的,由用户评分较高的电影被视为对该用户的推荐。但是用户的偏好会随着时间而变化,这通常会影响推荐的效果,尤其是在电影推荐系统中。由于偏好的不断变化,已经进行了关于将自评定或看电影以来的时间用作推荐的重要因素的研究。如果在构建推荐模型的训练阶段将时间视为属性,则该模型可能会变得复杂。到目前为止,大多数研究都是在训练阶段进行的,但是,我们研究了在训练后阶段使用时间作为因素的影响,并通过将基于体裁的过滤机制应用于系统来进一步研究。在后期培训阶段使用此方法可降低方法的复杂性,并减少不相关建议的数量。

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