基于机器学习的Helpdesk票务支持系统问题分类框架

Noor Aklima Harun, S. Huspi, N. A. Iahad
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引用次数: 3

摘要

导致Helpdesk票务支持(HTS)系统中问题数据不一致的因素之一是服务和用户的多样性。在HTS中,大多数问题都有不同的形式和句子风格,但通常提供相同的意思。最近,各种最先进的机器学习方法被用于自动化问题分类过程。根据研究人员的说法,问题分类对于解决一些问题很重要,比如帮助台票证被转发到错误的解析者组,导致票证传递过程生效,以及从一开始就将帮助台票证与正确的服务关联起来,减少票证解决时间,节省人力资源,提高用户满意度。勘探结果中的关键发现表明,在HTS中,具有大量转让交易的票比没有转让交易的票需要更长的时间才能完成。因此,本研究旨在为HTS开发一个自动问题分类模型,并提出应用监督机器学习方法:Naïve贝叶斯(NB)和支持向量机(SVM)。该领域将使用IT Unit提供的现成数据集。预计这项研究将对技术和系统所有者在处理由最终用户提出的越来越多的评论、反馈和投诉方面的生产力产生重大影响。本文将介绍HTS自动问题分类的相关工作和研究框架。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Question Classification Framework for Helpdesk Ticketing Support System using Machine Learning
One of the elements that contribute to the nonuniformity of the question data in Helpdesk Ticketing Support (HTS) System is the diversity of services and users. Most questions that were asked in the HTS are in various forms and sentence styles but usually offer the same meaning. Various state-of-the-art machine-learning approaches have recently been used to automate the question classification process. Question classification, according to the researchers, is important to solve problems like helpdesk tickets being forwarded to the wrong resolver group and causing the ticket transfer process to take effect, and to associate a help desk ticket with its correct service from the start, reducing ticket resolution time, saving human resources, and improving user satisfaction. The key findings in the exploration results revealed that in HTS, tickets with a high number of transfer transactions take longer to complete than tickets with no transfer transaction. Thus, this research aims to develop an automated question classification model for the HTS and proposes to apply the supervised machine learning methods: Naïve Bayes (NB) and Support Vector Machine (SVM). The domain will use a readily available dataset from IT Unit. It is expected that this study will have a significant impact on the productivity of technical and system owners in dealing with the increasing number of comments, feedbacks, and complaints presented by end-users. This paper will present related works and research frameworks for automated question classification for HTS.
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