带有子组发现的黑匣子事件分类的可解释摘要

Youcef Remil, Anes Bendimerad, M. Plantevit, C. Robardet, Mehdi Kaytoue-Uberall
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引用次数: 3

摘要

随着监控系统和设备/软件用户报告的事故数量不断增加,对预测性维护的需求也随之增加。在一线,随叫随到的工程师(OCEs)必须快速评估事件的严重程度,并决定联系哪个服务以采取纠正措施。为了使这些决策自动化,已经提出了几种预测模型,但是最有效的模型是不透明的(例如,黑盒),这极大地限制了它们的采用。在本文中,我们提出了一个有效的黑盒模型,该模型基于过去7年中报告给我们公司的170K个事件,并强调当事件在运行我们的产品ERP的数千台服务器上大量报告时,需要自动分类。可解释人工智能(XAI)的最新发展有助于为模型提供全局解释,但最重要的是,为每个模型预测/结果提供局部解释。可悲的是,在处理大量的日常预测时,为每个结果提供一个解释是不可想象的。为了解决这个问题,我们提出了一种基于Subgroup Discovery的原始数据挖掘方法,这是一种模式挖掘技术,具有将对其黑箱预测具有相似解释的对象分组的自然能力,并为每个组提供描述。我们对这种方法进行了评估,并提出了我们的初步结果,这给了我们对有效采用OCE的良好希望。我们认为这种方法为解决模型不可知的结果解释问题提供了一种新的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Interpretable Summaries of Black Box Incident Triaging with Subgroup Discovery
The need of predictive maintenance comes with an increasing number of incidents reported by monitoring systems and equipment/software users. In the front line, on-call engineers (OCEs) have to quickly assess the degree of severity of an incident and decide which service to contact for corrective actions. To automate these decisions, several predictive models have been proposed, but the most efficient models are opaque (say, black box), strongly limiting their adoption. In this paper, we propose an efficient black box model based on 170K incidents reported to our company over the last 7 years and emphasize on the need of automating triage when incidents are massively reported on thousands of servers running our product, an ERP. Recent developments in eXplainable Artificial Intelligence (XAI) help in providing global explanations to the model, but also, and most importantly, with local explanations for each model prediction/outcome. Sadly, providing a human with an explanation for each outcome is not conceivable when dealing with an important number of daily predictions. To address this problem, we propose an original data-mining method rooted in Subgroup Discovery, a pattern mining technique with the natural ability to group objects that share similar explanations of their black box predictions and provide a description for each group. We evaluate this approach and present our preliminary results which give us good hope towards an effective OCE's adoption. We believe that this approach provides a new way to address the problem of model agnostic outcome explanation.
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