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Hi, How Can I Help You? Automating Enterprise IT Support Help Desks

机译:嗨,我怎么能帮到你? 自动化企业支持帮助办公桌

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摘要

Question answering is one of the primary challenges of natural language understanding. In realizing such a system, providing complex long answers to questions is a challenging task as opposed to factoid answering as the former needs context disambiguation. The different methods explored in the literature can be broadly classified into three categories namely: 1) classification based, 2) knowledge graph based and 3) retrieval based. Individually, none of them address the need of an enterprise wide assistance system for an IT support and maintenance domain. In this domain, the variance of answers is large ranging from factoid to structured operating procedures; the knowledge is present across heterogeneous data sources like application specific documentation, ticket management systems and any single technique for a general purpose assistance is unable to scale for such a landscape. To address this, we have built a cognitive platform with capabilities adopted for this domain. Further, we have built a general purpose question answering system leveraging the platform that can be instantiated for multiple products, technologies in the support domain. The system uses a novel hybrid answering model that orchestrates across a deep learning classifier, a knowledge graph based context disambiguation module and a sophisticated bag-of-words search system. This orchestration performs context switching for a provided question and also does a smooth hand-off of the question to a human expert if none of the automated techniques can provide a confident answer. This system has been deployed across 675 internal enterprise IT support and maintenance projects.
机译:问题回答是自然语言理解的主要挑战之一。在实现这样的系统时,提供复杂的长期答案,这是一个具有挑战性的任务,而不是由于前面需要情境消歧的因子回答。文献中探索的不同方法可以广泛分为三个类别,即:1)基于分类,2)基于知识图和3)基于检索。单独地,他们都没有满足企业宽辅助系统的需求,以获得IT支持和维护域。在这个域名中,答案的方差是从因子到结构化操作程序的大量范围;知识存在于异构数据源上,如应用特定文档,票务管理系统和任何用于通用辅助的任何单一技术都无法为这种景观扩展。要解决此问题,我们已经构建了一个认知平台,为此域采用了功能。此外,我们已经建立了一个通用的问题应答系统,利用了可以在支持域中实例化的平台,支持域中的技术。该系统使用新的混合应答模型,其跨深入学习分类器编排,基于知识图的上下文消歧模块和复杂的单词袋搜索系统。该编程对提供的问题执行上下文切换,如果没有自动化技术可以提供自信的答案,则对人类专家的问题进行平滑的交出。该系统已在675个内部企业IT支持和维护项目中部署。

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