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Product Design Time Forecasting by Kernel-Based Regression with Gaussian Distribution Weights

机译:高斯分布权重的基于核的回归预测产品设计时间

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There exist problems of small samples and heteroscedastic noise in design time forecasts. To solve them, a kernel-based regression with Gaussian distribution weights (GDW-KR) is proposed here. GDW-KR maintains a Gaussian distribution over weight vectors for the regression. It is applied to seek the least informative distribution from those that keep the target value within the confidence interval of the forecast value. GDW-KR inherits the benefits of Gaussian margin machines. By assuming a Gaussian distribution over weight vectors, it could simultaneously offer a point forecast and its confidence interval, thus providing more information about product design time. Our experiments with real examples verify the effectiveness and flexibility of GDW-KR.
机译:在设计时间预测中存在小样本和异方差噪声的问题。为了解决这些问题,这里提出了一种基于核的具有高斯分布权重(GDW-KR)的回归方法。 GDW-KR在权重向量上保持高斯分布以进行回归。它用于从那些将目标值保持在预测值的置信区间内的分布中寻求最少的信息分布。 GDW-KR继承了高斯保证金机的优势。通过假设权重向量的高斯分布,它可以同时提供点预测及其置信区间,从而提供有关产品设计时间的更多信息。我们通过实际示例进行的实验验证了GDW-KR的有效性和灵活性。

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