首页> 外文会议>CIKM 10;ACM conference on information and knowledge management >Hierarchical Service Analytics for Improving Productivity in an Enterprise Service Center
【24h】

Hierarchical Service Analytics for Improving Productivity in an Enterprise Service Center

机译:用于提高企业服务中心生产率的分层服务分析

获取原文

摘要

Modern day service centers are the building blocks for highly efficient and productive business systems in a knowledge economy. In these service systems, accurate and timely delivery of pertinent information to service representatives becomes the cornerstone for delivering efficient customer service. There are two main steps in achieving this objective. The first step concerns efficient text mining to extract critical and pertinent information from the very long service request (SR) documents in the historical database. The second step concerns matching new service requests with previously stored service requests. Both lead to efficiencies by minimizing time spent by service personnel in extracting Intellectual Capital (IC). In this paper we present our text analytics system, the Service Request Analyzer and Recommender (SRAR), which is designed to improve the productivity in an enterprise service center for computer network diagnostics and support. SRAR unifies a text preprocessor, a hierarchical classifier, and a service request recommender, to deliver critical, pertinent, and categorized knowledge for improved service efficiency. The novel feature we report here is identifying the components of the diagnostic process underlying the creation of the original text documents. This identification is crucial in the successful design and prototyping of SRAR and its hierarchical classifier element. Equally, the use of domain knowledge and human expertise to generate features are indispensable synergistic elements in improving the accuracy of the text analysis toward identifying the components of the diagnostic process. The evaluation and comparison of SRAR with other benchmark approaches in the literature demonstrate the effectiveness of our framework and algorithms. This framework can be generalized to be applicable in many service industries and business functions that mine textual data to achieve increased efficiency in their service delivery. We observe significant service time responsiveness improvements during the first step of IC extraction in network service center context at Cisco.
机译:现代服务中心是知识经济中高效,高效率的业务系统的基础。在这些服务系统中,准确及时地将相关信息传递给服务代表成为了提供高效客户服务的基石。实现这一目标有两个主要步骤。第一步涉及有效的文本挖掘,以从历史数据库中非常长的服务请求(SR)文档中提取关键和相关的信息。第二步涉及将新服务请求与先前存储的服务请求进行匹配。两者都通过最大限度地减少服务人员提取知识资本(IC)所花费的时间来提高效率。在本文中,我们介绍了文本分析系统,即服务请求分析器和推荐器(SRAR),该系统旨在提高企业服务中心中用于计算机网络诊断和支持的生产力。 SRAR统一了文本预处理器,分层分类器和服务请求推荐器,以提供关键的,相关的和分类的知识,从而提高了服务效率。我们在此报告的新颖功能是确定原始文本文档创建基础的诊断过程的组成部分。这种识别对于SRAR及其分层分类器元素的成功设计和原型设计至关重要。同样,使用领域知识和人类专业知识来生成特征是提高文本分析的准确性以识别诊断过程的组成部分所必不可少的协同元素。 SRAR与文献中其他基准方法的评估和比较证明了我们的框架和算法的有效性。可以将该框架概括为适用于挖掘文本数据以提高其服务交付效率的许多服务行业和业务功能。在思科网络服务中心环境中进行IC提取的第一步中,我们观察到了显着的服务时间响应能力改善。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号