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Learning User Real-Time Intent for Optimal Dynamic Web Page Transformation

机译:学习用户实时意图以实现最佳动态网页转换

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Many e-commerce websites struggle to turn visitors into real buyers. Understanding online users' real-time intent and dynamic shopping cart choices may have important implications in this realm. This study presents an individual-level, dynamic model with concurrent optimal page adaptation that learns users' real-time, unobserved intent from their online cart choices, then immediately performs optimal Web page adaptation to enhance the conversion of users into buyers. To suggest optimal strategies for concurrent page adaptation, the model analyzes each individual user's browsing behavior, tests the effectiveness of different marketing and Web stimuli, as well as comparison shopping activities at other sites, and performs optimal Web page transformation. Data from an online retailer and a laboratory experiment reveal that concurrent learning of the user's unobserved purchase intent and real-time, intent-based optimal interventions greatly reduce shopping cart abandonment and increase purchase conversions. If the concurrent, intent-based optimal page transformation for the focal site starts after the first page view, shopping cart abandonment declines by 32.4% and purchase conversion improves by 6.9%. The optimal timing for the site to intervene is after three page views, to achieve efficient learning of users' intent and early intervention simultaneously.
机译:许多电子商务网站都在努力将访问者转变为真正的购买者。了解在线用户的实时意图和动态购物车选择可能会对这一领域产生重要影响。这项研究提出了一个具有并发最佳页面适应性的个人级别的动态模型,该模型可以从用户的在线购物车选择中了解用户的实时,不可观察的意图,然后立即执行最佳网页适应性,以增强用户向购买者的转化。为了建议并发页面适应的最佳策略,该模型分析了每个用户的浏览行为,测试了不同营销和Web刺激的有效性以及比较其他站点的购物活动,并执行了优化的Web页面转换。来自在线零售商和实验室实验的数据表明,同时学习用户的未观察到的购买意图和基于意图的实时,最佳干预措施可以大大减少购物车的放弃并增加购买转化率。如果在首次页面浏览后开始对焦点站点进行基于意图的并发优化页面转换,则购物车放弃率将下降32.4%,购物转化率将提高6.9%。网站介入的最佳时机是三页浏览后,以同时有效地了解用户的意图和早期干预。

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