营销活动接受度预测的集成学习

Fakihotun Titiani, D. Riana
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引用次数: 0

摘要

人工智能,通常被称为AI,极大地影响了营销策略,包括商业模式、销售流程、客户服务选择和客户在接受营销活动中的行为。在营销活动中,所有的客户都是广告的目标客户,包括那些不会积极响应营销活动和拒绝报价的客户。这意味着公司效率低下;营销活动是无效的,因为客户没有细分和目标。因此,成本增加,公司利润减少。因此,这导致了公司营销活动的失败。本研究的目的是通过提供分类方法,在Marketing Campaign数据集上实验使用集成学习和调优。这种分类方法被称为光梯度增强机(LightGBM)、梯度增强分类器(GBC)和AdaBoost分类器(ADA),它们从未被用于Marketing Campaign数据集的分类。研究结果表明,使用LightGBM进行营销活动预测时,模型的准确率为98.64%,AUC为0.9994,召回率为95.77%,准确率为95.77%,f1得分为95.77%,kappa为94.98%
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Learning for the Prediction of Marketing Campaign Acceptance
Artificial intelligence, commonly known as AI, has greatly influenced marketing strategies, including business models, sales processes, customer service options, and customer behaviour in receiving marketing campaigns. In a marketing campaign, all customers are targeted by advertising, including those who will not respond positively to the marketing campaign and reject the offer. This means that the company is inefficient; the marketing campaign is ineffective because customers are not segmented and targeted. As a result, costs increase and the company's profit decreases. Thence, this leads to the failure of the company's marketing campaigns. The purpose of this study is to experiment with using Ensemble Learning and tuning on the Marketing Campaign dataset by providing the classification methods. That classification method is called the Light Gradient Boosting Machine (LightGBM), Gradient Boosting Classifier (GBC), and AdaBoost Classifier (ADA), which have never been used in the classification of the Marketing Campaign dataset. The study results in the highest model with an accuracy value of 98.64%, AUC 0.9994, recall 95.77%, precision 95.77%, F1-score 95.77%, and kappa 94.98% when using the LightGBM for marketing campaign predictions
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