针对Netflix潜在客户的移动客户行为预测分析

S. Tanuwijaya, A. Alamsyah, Maya Ariyanti
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引用次数: 2

摘要

印尼ICT环境的发展使得移动视频点播(VOD)平台成为新兴的生活方式之一。借助先进的智能手机技术,手机用户可以享受高分辨率的移动视频点播服务,并获得更好的用户体验。本研究的目的是分析和预测视频点播平台之一Netflix的潜在客户,以实现个性化营销目标。采用机器学习预测分析方法,使用K-Means模型将客户资料和行为数据分为3个聚类,然后使用几个监督模型进行测试,以获得每个聚类的最佳模型。进行特征重要性分析,以支持对产品提供的市场洞察力,跟踪每个目标潜在客户。在三个不同的集群中,影响Netflix买家和非买家的重要变量被明确定义为潜在客户的数量,这些潜在客户可以成为Netflix未来的订阅者。结果表明,该方法可以帮助移动运营商根据客户的行为模式和需求,通过个性化的营销手段,对潜在客户进行有效的促销或产品提供。预计通过实施这种方法,与传统方法相比,营销工作的有效性和准确性将得到提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile Customer Behaviour Predictive Analysis for Targeting Netflix Potential Customer
The development of Indonesia's ICT environment has made the mobile video-on-demand (VOD) platform one of the emerging lifestyles. With advanced smartphone technology, mobile phone subscribers able to enjoy high-resolution mobile VOD service with a greater user experience. The purpose of this study is to profile and predict potential customers of one of the VOD platforms, Netflix, for personalizing marketing targets. Using machine learning predictive analytic methodology, customer profile and behavior data are divided into 3 clusters using the K-Means model before tested with several supervised models for getting the best model for each cluster. Feature importance analysis is conducted to support marketing insight for product offering follows up to each targeted potential customer. Significant variables affecting Netflix buyers and non-buyers within 3 different clusters are defined clearly with the number of potential customers that can be targeted as Netflix's future subscribers. The result shows the method can be used by the mobile operator to target potential customers with effective promotional or product offering by personalized marketing approach based on the behavioral pattern and customer needs. It is expected by implementing this methodology, effectivity and accuracy of marketing efforts will be increased compared to the conventional method.
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