In recent movie recommendations, predicting the user's sequential behavior and suggesting the next movie to watch is one of the most important issues. However, capturing such sequential behavior is not easy because each user's short-term or long-term behavior must be taken into account. For this reason, many research results show that the performance of recommending a specific movie is not very high in a sequential recommendation. In this paper, we propose a cluster-based method for classifying users with similar movie purchase patterns and a movie genre prediction algorithm rather than the movie itself considering their short-term and long-term behaviors. The movie genre prediction does not recommend a specific movie, but it predicts the genre for the next movie to watch in consideration of each user's preference for the movie genre based on the genre included in the movie. Through this, it is possible to provide appropriate guidelines for recommending movies including the genre to users who tend to prefer a specific genre. In particular, in this paper, users with similar genre preferences are organized into clusters to recommend genres, and in clusters that do not have relatively specific tendencies, genre prediction is performed by appropriately trimming genres that are not necessary for recommendation in order to improve performance. We evaluate our method on well-known movie datasets, and qualitatively that it captures personalized dynamics and is able to make meaningful recommendations.
翻译:在最近的电影建议中,预测用户的相继行为并提出下一个观看的电影是最重要的问题之一。 然而,捕捉这种相继行为并非易事,因为每个用户的短期或长期行为都必须加以考虑。 因此,许多研究结果显示,推荐特定电影的性能在相继建议中并不十分高。 在本文中,我们提出了一个基于集群的方法,用于将类似电影购买模式的用户分类,以及一种电影原生预测算法,而不是将短期和长期行为考虑在电影本身。电影原生预测并不推荐具体的电影,但是它预测下一个电影在考虑每个用户对电影的短期或长期行为的偏好时将观看的外貌。为此,许多研究结果显示,推荐特定电影的性能并不是很高的。 通过这个方法,我们有可能提供合适的指导,建议包括向倾向于特定类型用户推荐的外科。 特别是,在本文中,具有类似倾向的用户被组织成群,以推荐外科,在不具有相对具体趋势的组群中,我们无法正确评价个人性能评估。