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Robust prediction for quality of industrial processes

机译:对工业过程质量的可靠预测

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This paper proposes a new robust predictive approach for quality of industrial processes. It draws inspiration from robust AdaBoost for classification and expands to regression tasks. Existing classical AdaBoost for regression (AdaBoost.R2) constructs a strong learner in a stepwise fashion by re-weighting those instances according to their regression results at each iteration. In order to reduce its sensitivity to outliers, the proposed approach shows how the weight can be modified by a mixture of exponential updates with additional uniform weight for predictive problems. Experimental results using actual data from an ore-dressing production processes show its more robustness than existing methods even if a certain amount of data is infected.
机译:本文提出了一种新的鲁棒的工业过程质量预测方法。它从强大的AdaBoost中吸取灵感进行分类,并扩展到回归任务。现有的经典AdaBoost回归(AdaBoost.R2)通过根据每次迭代的回归结果对这些实例进行加权来逐步构建一个强大的学习者。为了降低其对异常值的敏感度,所提出的方法显示了如何通过将指数更新与具有附加均匀权重的指数更新混合来修改权重,以进行预测性问题。使用选矿生产过程中的实际数据进行的实验结果表明,即使感染了一定数量的数据,其稳定性也比现有方法强。

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