Multiclass Text Classification and Analytics for Improving Customer Support Response through different Classifiers

Piyush Singh Parmar, P K Biju, M. Shankar, N. Kadiresan
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引用次数: 18

Abstract

In any industry, Customer Relationship Management (CRM) is a very important aspect of the business. In a complex business environment, providing an efficient customer support service is always a challenge. Customer reports the issues/defects in the system to the vendor by sending emails or by creating a ticket in CRM tools like Salesforce.com. The content of such reports includes detailed technical problems or complex workflow issues due to system failures. In the industrial automation systems, a commissioning engineer or a field operating engineer generally reports such issues. Understanding and responding to the customer issues/defects and providing quick customer support is not an easy task. These CRM tools are not sufficiently astute to classify the defects into predefined classes. Text classification techniques are used to automatically identify and categorize the defects from the text messages. In this paper, five different machine learning classifiers (i.e. SVM, MNB, Decision tree, Random forest and K-nearest neighbors) are applied to perform multiclass text classification. The text messages are classified into predefined twelve technical system defects. The comparative analysis of five different classifiers on Customer Support dataset shows that the Support Vector Machine (SVM) has a better accuracy score in identifying the defects.
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通过不同的分类器改进客户支持响应的多类文本分类和分析
在任何行业中,客户关系管理(CRM)都是业务的一个非常重要的方面。在复杂的商业环境中,提供高效的客户支持服务始终是一项挑战。客户通过发送电子邮件或在像Salesforce.com这样的CRM工具中创建票证向供应商报告系统中的问题/缺陷。这些报告的内容包括详细的技术问题或由于系统故障引起的复杂工作流程问题。在工业自动化系统中,调试工程师或现场操作工程师通常会报告此类问题。理解和响应客户问题/缺陷并提供快速的客户支持并不是一件容易的事情。这些CRM工具不够精明,无法将缺陷分类到预定义的类中。文本分类技术用于从文本消息中自动识别和分类缺陷。本文采用五种不同的机器学习分类器(SVM、MNB、Decision tree、Random forest和K-nearest neighbors)进行多类文本分类。文本消息被划分为预定义的12个技术系统缺陷。通过对五种不同分类器在客户支持数据集上的对比分析,表明支持向量机(SVM)在识别缺陷方面具有更好的准确率。
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