Helpdesk Ticket Classification for Technician Assignment Routes Using BiLSTM

Putu Alan Arismandika, Kadek Yota, Ernanda Aryanto, I. Made, Gede Sunarya
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Abstract

Fast problem-solving is one of the main keys to a company's reputation. Currently, most of the company's business processes are accommodated by applications. Often, applications in companies experience problems due to internal and external factors. Users send a request to solve problems by submitting the problem to the helpdesk tool or application. The requests at the helpdesk tool or application do not go directly to the technician who has the authority to solve them but instead go to the operator first and then escalate to the technician to be resolved. This process affects the efficiency of problem-solving time. This study proposes the use of text classification with deep learning to complete operator work. The method proposed in this study is the BiLSTM method. The total data used in this research is 160,000 helpdesk request data by dividing the data by 128,000 resolved data as training data and 32,000 on-progress data as testing data or 80% training data and 20% testing data. The research was conducted using 13 labels for the technician assignment route process Performance measurement of this study using a confusion matrix which obtained an accuracy 91.18%, precision 95.05%, and recall 93.28%
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使用BiLSTM对技术人员分配路线进行帮助台票务分类
快速解决问题是公司声誉的关键之一。目前,该公司的大多数业务流程都由应用程序容纳。通常,公司中的应用程序由于内部和外部因素而遇到问题。用户通过向帮助台工具或应用程序提交问题来发送解决问题的请求。帮助台工具或应用程序中的请求不会直接转到有权解决这些问题的技术人员那里,而是先转到操作员那里,然后再升级到需要解决的技术人员那里。这个过程会影响解决问题的效率。本研究提出使用深度学习的文本分类来完成算子的工作。本研究提出的方法是BiLSTM方法。本研究使用的总数据是160000个helpdesk请求数据,除以128000个已解决的数据作为训练数据,32000个正在进行的数据作为测试数据,或者80%的训练数据和20%的测试数据。本研究采用混淆矩阵对技术人员分配路线过程进行绩效测量,准确度为91.18%,精密度为95.05%,召回率为93.28%
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