A Predictive Analysis Model of Customer Purchase Behavior using Modified Random Forest Algorithm in Cloud Environment

Soumi Ghosh, Chandan Banerjee
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引用次数: 6

Abstract

Prediction analysis of customer purchase behavior is an interesting and challenging task in modern-day life. Our objective is to introduce the concept of machine learning using a random forest algorithm in depth. In this paper, a model has been proposed for predicting which cloud services have been purchased on a number of factors. A random forest model is built using different parameters such as advertisement click sequence, previously purchased cloud services, etc. and training our model. For the execution of this proposed model, an advertisement log dataset has been taken and the necessary modifications have been done on it. As an outcome, for a customer, this proposed model is providing high accuracy in prediction. Five factors have been considered which affect purchasing decision-making of customers in cloud services, such as previous purchasing habits, a sequence of advertisements viewed, customer location, etc..
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基于改进随机森林算法的云环境下顾客购买行为预测分析模型
在现代生活中,顾客购买行为的预测分析是一项有趣而富有挑战性的任务。我们的目标是使用随机森林算法深入介绍机器学习的概念。在本文中,提出了一个模型,用于根据许多因素预测购买了哪些云服务。使用不同的参数(如广告点击顺序、以前购买的云服务等)构建随机森林模型并训练我们的模型。为了执行该模型,我们取了一个广告日志数据集,并对其进行了必要的修改。作为结果,对于客户来说,所提出的模型在预测方面提供了很高的准确性。本文考虑了影响云服务客户购买决策的五个因素,如以前的购买习惯、看过的广告序列、客户所在位置等。
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