An Efficient Predictive Analysis Model of Customer Purchase Behavior using Random Forest and XGBoost Algorithm

Subhatav Dhali, Monalisha Pati, Soumi Ghosh, Chandan Banerjee
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引用次数: 3

Abstract

Predictive Analytics is a bough of the advanced analytics which has been used to make predictions about unknown future events. It uses many techniques from Data Mining and Statistics Modelling to analyze the current data. In Statistics Modeling, Regression Analysis algorithms are some of the most popular processes used in Machine Learning Models. Random Forest is a supervised learning algorithm which uses Ensemble Learning method to take advantage of Bootstrap Aggregating. XGBoost is a scalable & accurate implementation of Gradient Boosting Machines (GBMs). It has been proved to push the limits of computing power. It is built & developed for the sole purpose of model performance and computational speed. Customers are the basis for growth of any type of business. In the study of sales and purchase, it is vital & crucial to be able to predict the amount of purchase or sales to increase benefit by catering from specific products to specific demographics. Our prediction analysis model can effectively help to improve the performance and increase the profit margin. Moreover, it can generalize the prediction of purchase or sales figures in any market which depends on the customers' past purchase pattern or behavior.
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基于随机森林和XGBoost算法的顾客购买行为预测分析模型
预测分析是高级分析的一个分支,用于预测未知的未来事件。它使用了数据挖掘和统计建模的许多技术来分析当前数据。在统计建模中,回归分析算法是机器学习模型中最常用的一些过程。随机森林是一种监督学习算法,它利用集合学习方法来利用自举聚合。XGBoost是梯度增强机(GBMs)的可扩展和精确实现。它已经被证明可以突破计算能力的极限。它是为模型性能和计算速度的唯一目的而建立和开发的。客户是任何业务增长的基础。在销售和采购的研究中,能够预测购买或销售的数量,以增加从特定产品到特定人口统计数据的利益是至关重要的。我们的预测分析模型可以有效地帮助企业提高业绩,增加利润率。此外,它还可以根据客户过去的购买模式或行为,对任何市场的购买或销售数字进行预测。
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