A data-driven approach to improve online consumer subscriptions by combining data visualization and machine learning methods

IF 8.6 2区 管理学 Q1 BUSINESS
Elizabeth Fernandes, Sérgio Moro, Paulo Cortez
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引用次数: 0

Abstract

Effective online consumer research helps companies on defining a successful strategy to increase user loyalty and shape brand engagement. Digital innovation introduced a dramatic change in businesses, particularly in the online news industry. Content consumers have a wide offer across different channels which increase the digital challenge for online news media companies to retain their readers and convert them into online subscribers. Furthermore, digital news publishers often strive to balance revenue sources in online business models. Thus, this study fills a gap in the literature on media consumer research by proposing a data-driven approach that combines two machine learning (ML) models to allow managers dynamically improve their marketing and editorial strategies. Firstly, the authors present an online user profiling to identify consumer segments based on the interplay between several engagement’ variables substantiated in the literature research. Second, as few studies have explored the factors influencing users' intention to pay for such services, the eXtreme Gradient Boosting ML algorithm identifies the predictors of consumer's willingness to pay. Third, a dashboard presents the key performance indicators across the audience funnel. Thus, practical implications and business suggestions are presented in a two-fold strategy to maximize revenue from digital subscriptions and advertising. Findings provide new insights into an engagement approach and the relation to acquire a digital subscription in online content platforms. We believe that the provided recommendations are potentially useful to help marketing and editorial teams to manage their customer engagement process across the funnel in a more efficient way.

Abstract Image

结合数据可视化和机器学习方法,采用数据驱动方法改进在线消费者订阅情况
有效的在线消费者研究有助于企业制定成功的战略,提高用户忠诚度,塑造品牌参与度。数字创新给企业带来了巨大变化,尤其是在网络新闻行业。内容消费者可以通过不同渠道获得广泛的内容,这增加了在线新闻媒体公司在留住读者并将其转化为在线订户方面所面临的数字挑战。此外,数字新闻出版商往往努力平衡在线业务模式中的收入来源。因此,本研究提出了一种数据驱动的方法,将两个机器学习(ML)模型结合起来,使管理者能够动态地改进他们的营销和编辑策略,从而填补了媒体消费者研究方面的文献空白。首先,作者根据文献研究中证实的几个参与变量之间的相互作用,提出了一种在线用户分析方法,以确定消费者细分群体。其次,由于很少有研究探讨影响用户为此类服务付费意愿的因素,因此采用了 "梯度提升"(eXtreme Gradient Boosting ML)算法来确定消费者付费意愿的预测因素。第三,仪表盘显示了整个受众漏斗的关键绩效指标。因此,在数字订阅和广告收入最大化的双重战略中,提出了实际意义和商业建议。研究结果为在线内容平台的参与方式和获取数字订阅的关系提供了新的见解。我们相信,所提供的建议可能有助于营销和编辑团队以更有效的方式管理整个漏斗的客户参与过程。
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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来源期刊
CiteScore
13.60
自引率
23.20%
发文量
119
期刊介绍: The International Journal of Consumer Studies is a scholarly platform for consumer research, welcoming academic and research papers across all realms of consumer studies. Our publication showcases articles of global interest, presenting cutting-edge research from around the world.
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