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Drift-Aware Ensemble Regression

机译:漂移感知合奏回归

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摘要

Regression models are often required for controlling production processes by predicting parameter values. However, the implicit assumption of standard regression techniques that the data set used for parameter estimation comes from a stationary joint distribution may not hold in this context because manufacturing processes are subject to physical changes like wear and aging, deroted as process drift. This can cause the estimated model to deviate sigrnificantly from the current state of the modeled system. In this paper, we discuss the problem of estimating regression models from drifting processes and we present ensemble regression, an approach that monotains a set of regression models-estimated from different ranges of the data set-according to their predictive performance. We extensively evaluate our approach on synthetic and real-world data.
机译:通过预测参数值来控制生产过程通常需要回归模型。但是,在这种情况下,标准回归技术的隐含假设(用于参数估计的数据集来自固定的联合分布)可能不成立,因为制造过程会经历物理变化(如磨损和老化),并随着过程漂移而退缩。这可能会导致估计的模型与建模系统的当前状态发生明显差异。在本文中,我们讨论了从漂移过程估计回归模型的问题,并提出了整体回归方法,该方法包含一组从数据集的不同范围估计的回归模型(根据其预测性能)。我们对综合和真实数据进行广泛评估。

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