Evaluate call center performance using Big Data Analytics

M. Y. Neustroev
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Abstract

An assessment of the quality of call centers (CCS) can be described as the process of listening to recorded conversations between an operator or technical support service and a customer to assess the effectiveness of the operator and its performance. The main problem with quality control is that managers or supervisors do not have time to listen to all records, and therefore only a few of the total number of saved conversation records are randomly selected. This leads to inaccurate measurements of performance, since most of the records of calls are not tapped. This article presents a distributed call monitoring system to evaluate all recorded calls using multiple quality criteria. In the proposed system, we analyze a large number of call records using the popular Hadoop MapReduce platform, and using text algorithms such as cosine transformation and N-gram. Lists of slang words were also integrated into the monitoring system. Empirical call records are used to demonstrate the performance of the proposed call monitoring system.
使用大数据分析评估呼叫中心绩效
对呼叫中心(CCS)质量的评估可以被描述为听取话务员或技术支持服务人员与客户之间的对话录音,以评估话务员及其绩效的有效性的过程。质量控制的主要问题是,经理或主管没有时间听所有的记录,因此只有少数保存的谈话记录是随机选择的。这导致对性能的测量不准确,因为大多数通话记录都没有被监听。本文介绍了一个分布式呼叫监控系统,该系统使用多个质量标准来评估所有记录的呼叫。在该系统中,我们使用流行的Hadoop MapReduce平台,并使用余弦变换和N-gram等文本算法来分析大量的呼叫记录。俚语词汇表也被纳入监测系统。使用经验呼叫记录来证明所提出的呼叫监控系统的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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