Metro-Viz: Black-Box Analysis of Time Series Anomaly Detectors

P. Eichmann, Franco Solleza, Junjay Tan, Nesime Tatbul, S. Zdonik
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Abstract

Millions of time-based data streams (a.k.a., time series) are being recorded every day in a wide-range of industrial and scientific domains, from healthcare and finance to autonomous driving. Detecting anomalous behavior in such streams has become a common analysis task for which data scientists employ complex machine learning models. Analyzing the behavior and performance of these models is a challenge on its own. While traditional accuracy metrics (e.g., precision/recall) are often used in practice to measure and compare the performance of different anomaly detectors, such statistics alone are insufficient to characterize and compare the algorithms in a systematic, human-interpretable way. In this extended abstract, we present Metro-Viz, a visual analysis tool to help data scientists and domain experts reason about commonalities and differences among anomaly detectors, and to identify their strengths and weaknesses.
Metro-Viz:时间序列异常探测器的黑匣子分析
从医疗保健、金融到自动驾驶等广泛的工业和科学领域,每天都有数百万个基于时间的数据流(即时间序列)被记录下来。检测此类流中的异常行为已成为数据科学家使用复杂机器学习模型的常见分析任务。分析这些模型的行为和性能本身就是一个挑战。虽然传统的准确性度量(例如,精度/召回率)在实践中经常用于测量和比较不同异常检测器的性能,但仅凭此类统计数据不足以以系统的、人类可解释的方式表征和比较算法。在这篇扩展摘要中,我们介绍了Metro-Viz,这是一个可视化分析工具,可以帮助数据科学家和领域专家推断异常检测器之间的共性和差异,并识别它们的优点和缺点。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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