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Recommending Movies on User's Current Preferences via Deep Neural Network

机译:通过深度神经网络推荐用户当前偏好的电影

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Traditional recommendation system (RS) offers remarkable results in recommending movies. RS ignore the idea that preferences of a user changes with respect to time. The user cold case scenario is a problem in which user does not have a profile in the system. To address the cold case scenarios, we proposed, developed, and evaluated the recommendation engine based on user current preferences with the use of deep neural networks. The movies are fed to BGRU on the fly and a recommendation of the list of movies was made for the user to watch next. Our model recommends the movies based on his/her current preferences. The experiments were carried out on Movie Lens Dataset. The model was evaluated and have shown significant improvements in results in comparison to conventional RS. The results are presented based on Recall@K metrics resulting in accurate and personalized movies recommendation to user.
机译:传统推荐系统(RS)在推荐电影方面提供了显着的效果。 RS忽略了用户偏好随时间变化的想法。用户冷遇方案是用户在系统中没有配置文件的问题。为了解决严酷的情况,我们根据用户当前的偏好,使用深度神经网络,提出,开发和评估了推荐引擎。电影被动态地馈送到BGRU,并推荐了电影列表供用户接下来观看。我们的模型会根据他/她当前的偏好来推荐电影。实验在电影镜头数据集上进行。对模型进行了评估,与传统的RS相比,该模型显示出显着的改进结果。根据Recall @ K指标显示结果,从而向用户推荐准确和个性化的电影。

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