A Machine learning and Empirical Bayesian Approach for Predictive Buying in B2B E-commerce

ArXiv Pub Date : 2024-03-12 DOI:10.1145/3647750.3647754
Tuhin Subhra De, Pranjal Singh, Alok Patel
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Abstract

In the context of developing nations like India, traditional business to business (B2B) commerce heavily relies on the establishment of robust relationships, trust, and credit arrangements between buyers and sellers. Consequently, ecommerce enterprises frequently. Established in 2016 with a vision to revolutionize trade in India through technology, Udaan is the countrys largest business to business ecommerce platform. Udaan operates across diverse product categories, including lifestyle, electronics, home and employ telecallers to cultivate buyer relationships, streamline order placement procedures, and promote special promotions. The accurate anticipation of buyer order placement behavior emerges as a pivotal factor for attaining sustainable growth, heightening competitiveness, and optimizing the efficiency of these telecallers. To address this challenge, we have employed an ensemble approach comprising XGBoost and a modified version of Poisson Gamma model to predict customer order patterns with precision. This paper provides an in-depth exploration of the strategic fusion of machine learning and an empirical Bayesian approach, bolstered by the judicious selection of pertinent features. This innovative approach has yielded a remarkable 3 times increase in customer order rates, show casing its potential for transformative impact in the ecommerce industry.
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用于 B2B 电子商务中预测性购买的机器学习和经验贝叶斯方法
在印度这样的发展中国家,传统的企业对企业(B2B)商务在很大程度上依赖于买卖双方建立稳固的关系、信任和信用安排。因此,电子商务企业经常。Udaan 成立于 2016 年,其愿景是通过技术彻底改变印度的贸易,它是印度最大的企业对企业电子商务平台。Udaan 的经营范围涉及生活方式、电子产品、家居等多个产品类别,并聘用电话呼叫员培养买家关系、简化下单程序和推广特价促销活动。准确预测买家下单行为是实现可持续增长、提高竞争力和优化电话销售人员效率的关键因素。为了应对这一挑战,我们采用了一种由 XGBoost 和改进版泊松伽马模型组成的集合方法来精确预测客户订单模式。本文深入探讨了机器学习与经验贝叶斯方法的战略融合,并对相关特征进行了明智的选择。这种创新方法使客户订单率显著提高了 3 倍,显示了其对电子商务行业产生变革性影响的潜力。
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