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Ambiguities in fit-evaluation for selector models

机译:选择器模型拟合评估中的歧义

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The use of the direct evaluation of the Gaussian Process, using the square exponential function kernel prediction at the given data points is often misleading towards evaluation of the fit, given by the coefficient of determination. The predicted value at the data points when using the Gaussian Process, is almost at all cases equal to the original value. As such, interpretation problems arise when coefficient of determination suggest the model to be a good fit, but visual representations suggest otherwise. We illustrate the difficulties in presenting the coefficient of determination for the Gaussian Process and recommend the use of alternative methods for the evaluation of the predicted value, thus realizing the true function of the coefficient of determination.
机译:在给定数据点上使用平方指数函数核预测对高斯过程进行直接评估的使用通常会误导于由确定系数给出的拟合评估。使用高斯过程时,数据点的预测值几乎在所有情况下都等于原始值。这样,当确定系数表明模型很合适时,就会出现解释问题,而视觉表示则相反。我们说明了呈现高斯过程确定系数的困难,并建议使用替代方法来评估预测值,从而实现确定系数的真实功能。

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