Detecting Covariate Shift with Black Box Predictors

F. Alberge, Clément Feutry, P. Duhamel, P. Piantanida
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引用次数: 2

Abstract

Many Machine Learning algorithms aiming at classifying signals/images $X$ among a number of discrete labels $Y$ involve training instances, from which the predictor $P_{Y\vert X}$ is extracted according to the data distribution $P_{X\vert Y}$. This predictor is later used to predict the appropriate label for other instances of $X$ that are hence assumed to be drawn from the same distribution. This is a fundamental requirement for many realworld applications, therefore it is of great importance to monitor the reliability of the classification provided by the algorithm based on the learned distributions, when the test set statistics differ from the training set ones. This paper makes a step in that direction by proposing a Black Box Shift Detector of the data evolution (covariate shift). ‘Black Box’ here means that it does not require any knowledge of the predictor's architecture. Experiments demonstrate accurate detection on different high-dimensional datasets of natural images.
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用黑盒预测器检测协变量移位
许多旨在将信号/图像$X$从许多离散标签$Y$中分类的机器学习算法都涉及到训练实例,根据数据分布$P_{X\vert X}$提取预测器$P_{Y\vert X}$。这个预测器稍后用于预测从相同分布中抽取的$X$的其他实例的适当标签。这是许多现实应用程序的基本要求,因此,当测试集统计数据与训练集统计数据不同时,监控基于学习分布的算法提供的分类的可靠性非常重要。本文在这个方向上迈出了一步,提出了数据演化(协变量移位)的黑盒移位检测器。这里的“黑匣子”意味着它不需要任何预测器架构的知识。实验证明了对不同高维自然图像数据集的准确检测。
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