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Mining Contextual Movie Similarity with Matrix Factorization for Context-Aware Recommendation

机译:使用矩阵分解挖掘上下文电影相似性以进行上下文感知推荐

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摘要

Context-aware recommendation seeks to improve recommendation performance by exploiting various information sources in addition to the conventional user-item matrix used by recommender systems. We propose a novel context-aware movie recommendation algorithm based on joint matrix factorization (JMF). We jointly factorize the user-item matrix containing general movie ratings and other contextual movie similarity matrices to integrate contextual information into the recommendation process. The algorithm was developed within the scope of the mood-aware recommendation task that was offered by the Moviepilot mood track of the 2010 context-aware movie recommendation (CAMRa) challenge. Although the algorithm could generalize to other types of contextual information, in this work, we focus on two: movie mood tags and movie plot keywords. Since the objective in this challenge track is to recommend movies for a user given a specified mood, we devise a novel mood-specific movie similarity measure for this purpose. We enhance the recommendation based on this measure by also deploying the second movie similarity measure proposed in this article that takes into account the movie plot keywords. We validate the effectiveness of the proposed JMF algorithm with respect to the recommendation performance by carrying out experiments on the Moviepilot challenge dataset. We demonstrate that exploiting contextual information in JMF leads to significant improvement over several state-of-the-art approaches that generate movie recommendations without using contextual information. We also demonstrate that our proposed mood-specific movie similarity is better suited for the task than the conventional mood-based movie similarity measures. Finally, we show that the enhancement provided by the movie similarity capturing the plot keywords is particularly helpful in improving the recommendation to those users who are significantly more active in rating the movies than other users.
机译:除了推荐者系统使用的常规用户项目矩阵之外,上下文感知推荐还试图通过利用各种信息源来提高推荐性能。我们提出了一种基于联合矩阵分解(JMF)的新颖的上下文感知电影推荐算法。我们联合分解了包含一般电影评分和其他上下文电影相似性矩阵的用户项矩阵,以将上下文信息整合到推荐过程中。该算法是在2010年情境感知电影推荐(CAMRa)挑战的Moviepilot情境轨迹所提供的情绪感知推荐任务范围内开发的。尽管该算法可以推广到其他类型的上下文信息,但在这项工作中,我们专注于两个:电影心情标签和电影情节关键字。由于此挑战赛道的目标是为给定特定情绪的用户推荐电影,因此我们为此目的设计了一种新颖的特定于情绪的电影相似性度量。我们还通过部署本文中提出的考虑电影剧情关键字的第二部电影相似性度量,来增强基于此度量的推荐。我们通过对Moviepilot挑战数据集进行实验,验证了所提出的JMF算法相对于推荐性能的有效性。我们证明,在JMF中利用上下文信息可以显着改进几种最先进的方法,这些方法可以在不使用上下文信息的情况下生成电影推荐。我们还证明,与传统的基于情绪的电影相似性度量相比,我们提出的针对情绪的电影相似性更适合该任务。最后,我们表明,由电影相似度捕获剧情关键字所提供的增强功能尤其有助于改善对那些对电影进行评分比其他用户更为活跃的用户的推荐。

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