Diagnosing Concept Drift with Visual Analytics

Weikai Yang, Zhuguo Li, Mengchen Liu, Yafeng Lu, Kelei Cao, Ross Maciejewski, Shixia Liu
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引用次数: 24

Abstract

Concept drift is a phenomenon in which the distribution of a data stream changes over time in unforeseen ways, causing prediction models built on historical data to become inaccurate. While a variety of automated methods have been developed to identify when concept drift occurs, there is limited support for analysts who need to understand and correct their models when drift is detected. In this paper, we present a visual analytics method, DriftVis, to support model builders and analysts in the identification and correction of concept drift in streaming data. DriftVis combines a distribution-based drift detection method with a streaming scatterplot to support the analysis of drift caused by the distribution changes of data streams and to explore the impact of these changes on the model’s accuracy. A quantitative experiment and two case studies on weather prediction and text classification have been conducted to demonstrate our proposed tool and illustrate how visual analytics can be used to support the detection, examination, and correction of concept drift.
用可视化分析诊断概念漂移
概念漂移是一种现象,在这种现象中,数据流的分布以不可预见的方式随着时间的推移而变化,导致基于历史数据的预测模型变得不准确。虽然已经开发了各种自动化方法来识别何时发生概念漂移,但对于需要在检测到漂移时理解和纠正其模型的分析人员来说,支持有限。在本文中,我们提出了一种可视化分析方法,DriftVis,以支持模型构建者和分析人员识别和纠正流数据中的概念漂移。DriftVis将基于分布的漂移检测方法与流散点图相结合,支持对数据流分布变化引起的漂移进行分析,并探讨这些变化对模型精度的影响。一个关于天气预报和文本分类的定量实验和两个案例研究已经进行,以证明我们提出的工具,并说明如何使用视觉分析来支持概念漂移的检测、检查和纠正。
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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