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Real-time prediction of online shoppers' purchasing intention using multilayer perceptron and LSTM recurrent neural networks

机译:使用多层情人的网上购物者采购意图的实时预测,Multidayer Perceptron和LSTM经常性神经网络

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In this paper, we propose a real-time online shopper behavior analysis system consisting of two modules which simultaneously predicts the visitor's shopping intent and Web site abandonment likelihood. In the first module, we predict the purchasing intention of the visitor using aggregated pageview data kept track during the visit along with some session and user information. The extracted features are fed to random forest (RF), support vector machines (SVMs), and multilayer perceptron (MLP) classifiers as input. We use oversampling and feature selection preprocessing steps to improve the performance and scalability of the classifiers. The results show that MLP that is calculated using resilient backpropagation algorithm with weight backtracking produces significantly higher accuracy and F1 Score than RF and SVM. Another finding is that although clickstream data obtained from the navigation path followed during the online visit convey important information about the purchasing intention of the visitor, combining them with session information-based features that possess unique information about the purchasing interest improves the success rate of the system. In the second module, using only sequential clickstream data, we train a long short-term memory-based recurrent neural network that generates a sigmoid output showing the probability estimate of visitor's intention to leave the site without finalizing the transaction in a prediction horizon. The modules are used together to determine the visitors which have purchasing intention but are likely to leave the site in the prediction horizon and take actions accordingly to improve the Web site abandonment and purchase conversion rates. Our findings support the feasibility of accurate and scalable purchasing intention prediction for virtual shopping environment using clickstream and session information data.
机译:在本文中,我们提出了一个由两个模块组成的实时在线购物者行为分析系统,同时预测访客的购物意图和网站放弃可能性。在第一个模块中,我们预测使用聚合PageView数据在访问期间使用聚合的PageView数据以及一些会话和用户信息来预测访问者的购买意图。提取的特征被馈送到随机森林(RF),支持向量机(SVM)和多层Perceptron(MLP)分类器作为输入。我们使用过采样和功能选择预处理步骤来提高分类器的性能和可扩展性。结果表明,使用具有重量逆发的弹性反向验证算法计算的MLP产生的精度高于RF和SVM。另一个发现是,尽管在线访问期间从导航路径获得的点击数据,但在线访问中传达了有关访客的购买意图的重要信息,但将它们与基于会话信息的特征相结合,这些功能具有具有关于购买兴趣的独特信息的基于会话信息的特征,这些功能可以提高其成功率系统。在第二个模块中,仅使用顺序点击流数据,我们训练基于短期内存的复发性神经网络,该神经网络产生符合矩形输出,显示访客在未完成预测地平线中的交易的情况下离开该站点的概率估计。模块一起使用,以确定具有购买意图的访客,但可能会在预测地平线中离开网站,并相应地采取行动,以改善网站放弃和购买转换率。我们的调查结果支持使用Clickstream和会话信息数据对虚拟购物环境的准确和可扩展购买意图预测的可行性。

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