面向IT基础设施支持的领域驱动数据挖掘

Girish Keshav Palshikar, H. Vin, Mohammed Mudassar, M. Natu
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引用次数: 7

摘要

支持分析(即客户/运营支持票数据的统计分析、建模和挖掘)在服务行业中很重要。在本文中,我们采用领域驱动的数据挖掘方法来支持分析,重点关注IT基础设施支持(ITIS)服务。我们确定具体的业务问题,然后提出算法来回答这些问题。问题是:(1)如何减少总体工作量?(2)如何改进机票处理工作?(3)如何提高服务水平协议的合规性?我们提出了这些概念的新颖形式化,并为这些问题提出了严格的基于统计的算法。该方法是领域驱动的,因为所产生的结果对于没有数据挖掘专业知识的最终用户来说是直接可用的,并且易于理解,不需要任何实验,并且经常发现新颖和不明显的答案。所有这些都有助于最终用户更好地接受和更积极地使用所产生的结果。这些算法已经在超过25个真实的ITIS数据集上实现,并产生了令人满意的结果,我们用其中一个数据集来说明。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Domain-Driven Data Mining for IT Infrastructure Support
Support analytics (i.e., statistical analysis, modeling and mining of customer/operations support tickets data) is important in service industries. In this paper, we adopt a domain-driven data mining approach to support analytics with a focus on IT infrastructure Support (ITIS) services. We identify specific business questions and then propose algorithms for answering them. The questions are: (1) How to reduce the overall workload? (2) How to improve efforts spent in ticket processing? (3) How to improve compliance to service level agreements? We propose novel formalizations of these notions and propose rigorous statistics-based algorithms for these questions. The approach is domain-driven in the sense that the results produced are directly usable by and easy to understand for end-users having no expertise in data-mining, do not require any experimentation and often discover novel and non-obvious answers. All this helps in better acceptance among end-users and more active use of the results produced. The algorithms have been implemented and have produced satisfactory results on more than 25 real-life ITIS datasets, one of which we use for illustration.
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