一个从呼叫中心文本数据中检测网络相关问题的应用程序

Ibrahim Onuralp Yigit, E. Zeydan, A. F. Ates
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引用次数: 5

摘要

网络服务提供商可能会收到来自不同沟通渠道的关于其在特定区域的服务活动的不同网络相关问题和投诉。其中一个主要和最重要的沟通渠道是客户呼叫中心。检测客户在这些呼叫中通知的网络相关问题对于提供解决方案和提高客户满意度非常重要。然而,由于转换为文本的通话记录数量庞大,使用传统方法分析整个数据非常困难。本文研究了一种从呼叫中心文本数据中检测网络相关问题的主题建模方法。分析结果表明,对于某主要宽带服务提供商的个人互联网家庭资费,客户呼叫中心接到的大部分呼叫与信息有关,而所有呼叫的第二多数与网络相关问题的故障有关。这些结果表明,服务提供商的基础设施存在网络和服务相关问题。
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An application for detecting network related problems from call center text data
A Network Service Provider can receive different network related problems and complaints from various communication channels regarding their service activity in certain regions. One of the major and most important communication channels is customer call center. Detecting network related problems that customers are notifying during these calls are significant in order to provide solutions and increase customer satisfaction. However, due to sheer volume of the call records that are converted to text, it is quite difficult to analyze whole data using traditional approaches. In this paper, we study a topic modeling approach for detecting network related problems from call center text data. The analysis results demonstrate that for a major broadband service providers' personal Internet at home tariff, most of calls received in a customer call center is related to information, whereas the second majority of all calls are related to faults that are network related issues. These results signify the existence of network and service related issues in service providers' infrastructure.
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