基于IPTV平台消费者行为的基包推荐框架

Kuruparan Shanmugalingam, Ruwinda Ranganayake, Chanaka Gunawardhana, Rajitha Navarathna
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引用次数: 0

摘要

IPTV (Internet Protocol TeleVision)提供电视直播、时移媒体、视频点播(Video On Demand, VOD)等多种业务。然而,由于缺乏知识和缺乏指导,许多客户不能正确地使用他们订阅的套餐。许多客户不能根据自己的需要确定合适的IPTV服务包,也不能最大限度地利用现有的服务包。在本文中,我们提出了一个基于客户行为的基本包推荐模型,该模型具有新颖的客户计分表。首先,我们的论文描述了一种测量客户参与度得分的算法,它说明了一种跟踪IPTV服务提供商客户参与度的新方法。其次,介绍了基于内容的推荐系统,该系统使用订阅者和基本包详细信息的向量表示。我们使用本地IPTV服务提供商的数据集定性地展示了我们的方法的重要性。所提出的方法可以显著提高用户留存率、长期收益和客户满意度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Base-Package Recommendation Framework Based on Consumer Behaviours in IPTV Platform
Internet Protocol TeleVision (IPTV) provides many services such as live television streaming, time-shifted media, and Video On Demand (VOD). However, many customers do not engage properly with their subscribed packages due to a lack of knowledge and poor guidance. Many customers fail to identify the proper IPTV service package based on their needs and to utilise their current package to the maximum. In this paper, we propose a base-package recommendation model with a novel customer scoring-meter based on customers behaviour. Initially, our paper describes an algorithm to measure customers engagement score, which illustrates a novel approach to track customer engagement with the IPTV service provider. Next, the content-based recommendation system, which uses vector representation of subscribers and base packages details is described. We show the significance of our approach using local IPTV service provider data set qualitatively. The proposed approach can significantly improve user retention, long term revenue and customer satisfaction.
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