A Recommendation System Based on Implicit Data for Internet Protocol Television (IPTV)

Lama Mansour, Zainab H. Omran, Ghaydaa Mnsoor Kaddoura, M. Dakkak, Yasser Rahhal
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Abstract

IPTV delivers television content over Internet Protocol (IP) networks. Videos On Demand (VOD) is the most popular IPTV, allowing users to freely select from a vast pool of program genres. Therefore, it is necessary to introduce innovative features to attract new users and retain existing ones. For this purpose, IPTV systems typically use VOD recommendation engines. The primary purpose of recommendation systems is to suggest user-relevant items from various items by producing a list of recommendations for each user. In this paper, we introduce an approach to recommendation systems in IPTV. We developed this approach on implicit feedback derived from users’ interaction with movies/series sets, such as how many times they watched a movie and how long they have spent watching specific movies/series. For the previous factors, we tested a variety of recommendation algorithms, content-based, collaborative-based, and hybrid. Then applied the previously mentioned algorithms on real-life big data sets after introducing some modifications to the algorithms, then benchmarked the results on multiple performance metrics. We noticed that the applied changes achieved promising results.
基于隐式数据的IPTV推荐系统
IPTV通过IP (Internet Protocol)网络传送电视内容。视频点播(VOD)是最受欢迎的IPTV,允许用户从大量的节目类型中自由选择。因此,有必要引入创新功能来吸引新用户并保留现有用户。为此,IPTV系统通常使用VOD推荐引擎。推荐系统的主要目的是通过为每个用户生成推荐列表,从各种项目中推荐与用户相关的项目。本文介绍了一种IPTV推荐系统的实现方法。我们基于来自用户与电影/系列互动的隐式反馈开发了这种方法,例如他们观看电影的次数以及他们观看特定电影/系列的时间。对于前面的因素,我们测试了各种推荐算法,基于内容的、基于协作的和混合的。然后在对算法进行一些修改后,将上述算法应用于实际的大数据集,并在多个性能指标上对结果进行基准测试。我们注意到,应用的变化取得了良好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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