Movie Recommender System Based on Percentage of View

Ramin Ebrahim Nakhli, Hadi Moradi, Mohammad Sadeghi
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引用次数: 19

Abstract

with ever-increasing data on the internet, finding the desired content has become harder and that is why recommender systems’ role is very important in business. As a specific example, media service providers, such as Netflix, can improve their service by recommending desirable content to each user. Most of the previous studies used explicit feedback of users, through likes and dislikes, to recommend items to their customers. However, in many cases, there is not much explicit feedback about items which cripples typical recommender systems to operate efficiently and provide accurate recommendation. In this paper, a percentage of view approach is proposed to find relevant movies for customers. To prove the effectiveness of the approach, first, it is shown that this feature can be a good indicator of users’ like and dislike. Then the best approach is determined and used in a recommender system for Namava, a media service provider. Then the performance of this recommender system is compared to a random recommender system and the effectiveness of the approach is shown.
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基于观看百分比的电影推荐系统
随着互联网上数据的不断增加,找到想要的内容变得越来越困难,这就是为什么推荐系统在商业中扮演着非常重要的角色。作为一个具体的例子,媒体服务提供商,如Netflix,可以通过向每个用户推荐他们想要的内容来改进他们的服务。之前的大多数研究都是通过用户的明确反馈,通过喜欢和不喜欢,向他们的客户推荐商品。然而,在许多情况下,没有太多关于项目的明确反馈,这削弱了典型推荐系统的有效运行和提供准确的推荐。本文提出了一种观看百分比法来为顾客寻找相关的电影。为了证明该方法的有效性,首先,表明该特征可以很好地指示用户的喜欢和不喜欢。然后确定最佳方法,并在媒体服务提供商Namava的推荐系统中使用。然后将该推荐系统的性能与随机推荐系统进行了比较,证明了该方法的有效性。
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