Data Driven Sales Prediction Using Communication Sentiment Analysis in B2B CRM Systems

Doru Rotovei, V. Negru
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引用次数: 2

Abstract

In this work, we are proposing a methodology for data-driven decision making using sentiment analysis. The analysis of sentiment is done by text mining the activity notes recorded in Customer Relationship Management Systems used to manage complex sales in business to business environments. We built the sentiment enhanced sales prediction models using Artificial Neural Networks, Support Vector Machines and Random Forests and involving different sentiment features. The approach produced meaningful results with Random Forest obtaining the best improvement compared to a baseline model without sentiment features. The best model showed that new attributes incorporating sentiment information improved the accuracy from a baseline of 85.15% to 89.11 %. This model was used to conduct an analysis and an evaluation of the steps needed to be taken to win a possible losing deal in a real-world business to business customer relationship management system.
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B2B CRM系统中使用沟通情感分析的数据驱动销售预测
在这项工作中,我们提出了一种使用情感分析进行数据驱动决策的方法。情感分析是通过文本挖掘记录在客户关系管理系统中的活动记录来完成的,该系统用于管理企业对企业环境中的复杂销售。我们使用人工神经网络、支持向量机和随机森林构建了情感增强的销售预测模型,并涉及不同的情感特征。该方法产生了有意义的结果,与没有情感特征的基线模型相比,随机森林获得了最好的改进。最佳模型显示,包含情感信息的新属性将准确率从基线的85.15%提高到89.9%。该模型用于分析和评估在现实世界的企业对企业客户关系管理系统中赢得可能失败的交易所需采取的步骤。
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