基于特征工程和集成学习的重复购买者预测方法

Mingyang Zhang, Jiayue Lu, Ning Ma, T. Cheng, Guowei Hua
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引用次数: 0

摘要

全球电子商务市场正在快速增长,但回头客的比例很低。根据天猫的数据,回购率仅为6.1%,而研究表明,回购率每提高5%,利润就会增加25%至95%。为了提高再购买率,商家需要预测潜在的重复购买者,并将其转化为再购买者。因此,预测回头客是很有必要的。本文利用天猫的数据集建立了重复购买者的预测模型。首先,通过人工构建和算法选择,构建高质量的电子商务场景特征工程。为了解决数据不平衡问题,提高预测性能,引入了合成少数派过采样技术(SMOTE)算法。然后训练经典分类器,包括因式分解机和逻辑回归,以及集成学习分类器,包括极端梯度增强机和轻梯度增强机。最后,构建了基于叠加算法的两层融合模型,进一步提高了预测性能。结果表明,通过数据不平衡处理、特征工程和融合模型等一系列创新,模型的曲线下面积(AUC)值提高了0.01161。我们的研究结果对管理电子商务平台和平台商家提供了重要的启示。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Feature Engineering and Ensemble Learning Based Approach for Repeated Buyers Prediction
The global e-commerce market is growing at a rapid pace, but the percentage of repeat buyers is low. According to Tmall, the repurchase rate is only 6.1%, while research shows that a 5% increase in the repurchase rate can lead to a 25% to 95% increase in profit. To increase the repurchase rate, merchants need to predict potential repeat buyers and convert them into repurchasers. Therefore, it is necessary to predict repeat buyers. In this paper we build a prediction model of repeat purchasers using Tmall’s dataset. First, we build high-quality feature engineering for e-commerce scenarios by manual construction and algorithmic selection. We introduce the synthetic minority oversampling technique (SMOTE) algorithm to solve the data imbalance problem and improve prediction performance. Then we train classical classifiers including factorization machine and logistic regression, and ensemble learning classifiers including extreme gradient boosting, and light gradient boosting machine machines. Finally, we construct a two-layer fusion model based on the Stacking algorithm to further enhance prediction performance. The results show that through a series of innovations such as data imbalance processing, feature engineering, and fusion models, the model area under curve (AUC) value is improved by 0.01161. Our findings provide important implications for managing e-commerce platforms and the platform merchants.
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