Anomalies are often indicators of malfunction or inefficiency in various systems such as manufacturing, healthcare, finance, surveillance, to name a few. While the literature is abundant in effective detection algorithms due to this practical relevance, autonomous anomaly detection is rarely used in real-world scenarios. Especially in high-stakes applications, a human-in-the-loop is often involved in processes beyond detection such as verification and troubleshooting. In this work, we introduce ALARM (for Analyst-in-the-Loop Anomaly Reasoning and Management); an end-to-end framework that supports the anomaly mining cycle comprehensively, from detection to action. Besides unsupervised detection of emerging anomalies, it offers anomaly explanations and an interactive GUI for human-in-the-loop processes -- visual exploration, sense-making, and ultimately action-taking via designing new detection rules -- that help close ``the loop'' as the new rules complement rule-based supervised detection, typical of many deployed systems in practice. We demonstrate \method's efficacy through a series of case studies with fraud analysts from the financial industry.
翻译:异常通常是制造、医疗保健、金融、监视等各种系统中故障或低效的指标。虽然文献中存在很多有效的检测算法,但自动异常检测在实际场景中很少使用。特别是在高风险应用中,往往需要人员参与,处理超出检测范围、验证和故障排除等活动。本文介绍了ALARM(分析师在环异常推理和管理) :一种端到端的框架,全面支持异常挖掘周期,从检测到行动。除了无监督检测新出现的异常,它还提供异常的解释和一个交互式GUI,用于支持人员-在-环的流程——可视化探索、发现以及通过设计新的检测规则最终采取行动——这有助于整个过程的闭环,因为新规则可以补充许多实际系统中已部署的基于规则的监督检测方法。我们通过与金融行业的欺诈分析师进行一系列案例研究证明了该方法的可靠性。
注:由于机器翻译可能存在一定的误差和不准确性,建议以原文为准。