用机器学习预测和定义B2B销售成功

Stephen V. Mortensen, Michael Christison, Bochao Li, AiLun Zhu, R. Venkatesan
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引用次数: 9

摘要

这个项目有两个目标:1)使用统计建模技术帮助一家财富500强的纸张和包装公司整理推动销售成功的因素,2)开发一个模型,以合理的精度预测销售成功。期望的长期结果是通过提高销售完成率、缩短销售周期和降低销售成本,使公司能够提高收入和利润。研究团队生成了几个模型来预测个人销售机会的获胜倾向,并选择了预测能力最强的模型,并将其作为客户工具的支柱。为了实现这一目标,该团队利用了公司Salesforce.com客户关系管理系统中的结构化和非结构化数据。该团队试验了几种技术,包括二项logit和各种决策树方法,包括梯度增强和随机森林增强。确定了对销售成功影响最大的客户、机会和内部文档方法的个人属性。最好的模型预测获胜倾向的准确率为80%,准确率和召回率分别为86%和77%,这被证明比目前的销售预测准确率有了提高。
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Predicting and Defining B2B Sales Success with Machine Learning
The objectives of this project are two-fold: 1) to use statistical modeling techniques to help a Fortune 500 paper and packaging company codify what drives sales success and 2) to develop a model that can predict sales success with a reasonable degree of accuracy. The desired long-run result is to enable the company to improve both top-line revenue and bottom-line profits by increasing sales close rates, shortening sales cycles, and decreasing the cost of sales. The research team generated several models to predict win propensities for individual sales opportunities, choosing the model with the greatest predictive power and ability to generate insights to use as the backbone for a client tool. To accomplish this, the team leveraged structured and unstructured data from the company's Salesforce.com customer relationship management system. The team experimented with several techniques including binomial logit and various decision tree methods, including boosting with gradient boost and random forest. Individual attributes of customers, opportunities, and internal documentation methods that have the greatest influence on sales success were identified. The best model predicted win propensity with an accuracy of 80%, with precision and recall of 86% and 77%, respectively, which proved to be an improvement over current sales forecast accuracy.
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