重定目标
计算机科学
机器学习
人工智能
Boosting(机器学习)
背景(考古学)
大数据
在线广告
消费者行为
在线机器学习
实证研究
过采样
数据科学
广告
数据挖掘
半监督学习
万维网
互联网
计算机网络
带宽(计算)
哲学
认识论
业务
古生物学
生物
作者
Jungwon Lee,Okkyung Jung,Yunhye Lee,Ohsung Kim,Cheol Park
标识
DOI:10.3390/jtaer16050083
摘要
Machine learning technology is recently being applied to various fields. However, in the field of online consumer conversion, research is limited despite the high possibility of machine learning application due to the availability of big data. In this context, we investigate the following three research questions. First, what is the suitable machine learning model for predicting online consumer behavior? Second, what is the good data sampling method for predicting online con-sumer behavior? Third, can we interpret machine learning’s online consumer behavior prediction results? We analyze 374,749 online consumer behavior data from Google Merchandise Store, an online shopping mall, and explore research questions. As a result of the empirical analysis, the performance of the ensemble model eXtreme Gradient Boosting model is most suitable for pre-dicting purchase conversion of online consumers, and oversampling is the best method to mitigate data imbalance bias. In addition, by applying explainable artificial intelligence methods to the context of retargeting advertisements, we investigate which consumers are effective in retargeting advertisements. This study theoretically contributes to the marketing and machine learning lit-erature by exploring and answering the problems that arise when applying machine learning models to predicting online consumer conversion. It also contributes to the online advertising literature by exploring consumer characteristics that are effective for retargeting advertisements.
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