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Towards Auto-remediation in Services Delivery: Context-Based Classification of Noisy and Unstructured Tickets

机译:在服务交付中实现自动修复:嘈杂和非结构化凭单的基于上下文的分类

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摘要

Service interactions account for major source of revenue and employment in many modern economies, and yet the service operations management process remains extremely complex. Ticket is the fundamental management entity in this process and resolution of tickets remains largely human intensive. A large portion of these human executed resolution tasks are repetitive in nature and can be automated. Ticket description analytics can be used to automatically identify the true category of the problem. This when combined with automated remediation actions considerably reduces the human effort. We look at monitoring data in a big provider's domain and abstract out the repeatable tasks from the noisy and unstructured human-readable text in tickets. We present a novel approach for automatic problem determination from this noisy and unstructured text. The approach uses two distinct levels of analysis, (a) correlating different data sources to obtain a richer text followed by (b) context based classification of the correlated data. We report on accuracy and efficiency of our approach using real customer data.
机译:服务交互是许多现代经济体收入和就业的主要来源,但是服务运营管理过程仍然极其复杂。票证是此过程中的基本管理实体,并且票证的解决仍然需要大量人力。这些人工执行的解决任务中的很大一部分本质上是重复的,可以自动化。故障单描述分析可用于自动识别问题的真实类别。当与自动补救措施结合使用时,可大大减少人力。我们着眼于在大型提供商的域中监视数据,并从票证中嘈杂且非结构化的人类可读文本中抽象出可重复的任务。我们提出了一种新颖的方法,可以从嘈杂的非结构化文本中自动确定问题。该方法使用两个不同的分析级别,(a)将不同的数据源相关联以获得更丰富的文本,然后是(b)基于上下文的相关数据分类。我们使用真实的客户数据报告方法的准确性和效率。

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