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Probabilistic text analytics framework for information technology service desk tickets

机译:概率文本分析信息技术服务台门票的框架

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Ticket annotation and search has become an essential research subject for the successful delivery of IT operational analytics. Millions of tickets are created yearly to address business users' IT related problems. In IT service desk management, it is critical to first capture the pain points for a group of tickets to determine root cause; secondly, to obtain the respective distributions in order to layout the priority of addressing these pain points. An advanced ticket analytics system utilizes a combination of topic modeling, clustering and Information Retrieval (IR) technologies to address the above issues and the corresponding architecture which integrates of these features will allow for a wider distribution of this technology and progress to a significant financial benefit for the system owner. Topic modeling has been used to extract topics from given documents; in general, each topic is represented by a unigram language model. However, it is not clear how to interpret the results in an easily readable/understandable way until now. Due to the inefficiency to render top concepts using existing techniques, in this paper, we propose a probabilistic framework, which consists of language modeling (especially the topic models), Part-Of-Speech (POS) tags, query expansion, retrieval modeling and so on for the practical challenge. The rigorously empirical experiments demonstrate the consistent and utility performance of the proposed method on real datasets.
机译:票证注释和搜索已成为IT运营分析成功交付的基本研究。每年创建数百万票以解决业务用户的IT相关问题。在IT服务台管理中,首先捕捉一组门票的疼痛点至关重要;其次,获得各个分布,以便布局寻址这些疼痛点的优先级。先进的票证分析系统利用主题建模,聚类和信息检索(IR)技术的组合来解决上述问题和相应的架构,这些架构将允许这些功能的更广泛分配并进入重大的经济利益对于系统所有者。主题建模已被用于从给定文件中提取主题;通常,每个主题由Unigram语言模型表示。然而,目前尚不清楚如何以易于阅读/可理解的方式解释结果。由于效率低下概率使用现有技术,在本文中,我们提出了一个概率框架,它由语言建模(特别是主题模型)组成,演讲(POS)标签,查询扩展,检索建模和依此类推,以实现实际挑战。严格的经验实验证明了真实数据集上所提出的方法的一致性和实用性。

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