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Modeling Temporal Behavior of Awards Effect on Viewership of Movies

机译:奖项对电影观众影响的时间行为建模

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The "rich get richer" effect is well-known in recommendation system. Popular items are recommended more, then purchased more, resulting in becoming even more popular over time. For example, we observe in Netflix data that awarded movies are more popular than non-awarded movies. Unlike other work focusing on making faireutralized recommendation, in this paper, we target on modeling the effect of awards on the viewership of movies. The main challenge of building such a model is that the effect on popularity changes over time with different intensity from movie to movie. Our proposed approach explicitly models the award effects for each movie and enables the recommendation system to provide a better ranked list of recommended movies. The results of an extensive empirical validation on Netflix and MovieLens data demonstrate the effectiveness of our model.
机译:“富人致富”的效果在推荐系统中是众所周知的。推荐更多受欢迎的物品,然后再购买更多,从而随着时间的推移变得越来越受欢迎。例如,我们在Netflix数据中观察到,获奖电影比未获奖电影更受欢迎。与其他致力于做出公正/中立的推荐的工作不同,在本文中,我们的目标是对奖项对电影收视率的影响进行建模。建立这样一个模型的主要挑战是,随着电影的不同,对流行度的影响会随着时间而变化。我们提出的方法对每部电影的奖励效果进行了显式建模,并使推荐系统能够提供更好的推荐电影列表。对Netflix和MovieLens数据进行广泛的经验验证的结果证明了我们模型的有效性。

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