This paper builds upon the work of Pfau (2013), which generalized the bias variance tradeoff to any Bregman divergence loss function. Pfau (2013) showed that for Bregman divergences, the bias and variances are defined with respect to a central label, defined as the expected mean of the label, and a central prediction, of a more complex form. We show that, similarly to the label, the central prediction can be interpreted as the mean of a random variable, where the mean operates in a dual space defined by the loss function itself. Viewing the bias-variance tradeoff through operations taken in dual space, we subsequently derive several results of interest. In particular, (a) the variance terms satisfy a generalized law of total variance; (b) if a source of randomness cannot be controlled, its contribution to the bias and variance has a closed form; (c) there exist natural ensembling operations in the label and prediction spaces which reduce the variance and do not affect the bias.
翻译:本文以Pfau(2013年)的工作为基础,该工作将偏见差异权衡法普遍适用于任何Bregman差异损失功能。 Pfau(2013年)显示,对于Bregman的差异,对偏差和差异的定义是中央标签,定义为标签的预期平均值,对更为复杂的形式的中央预测。我们显示,与标签一样,中央预测可被解释为随机变量的平均值,即平均值在由损失函数本身界定的双重空间中运行。我们从通过在双重空间中操作的偏差和偏差的权衡法来看,我们随后得出了若干令人感兴趣的结果。特别是,(a) 差异条件满足了总差异的普遍法则;(b) 如果随机性来源无法控制,其对偏差和差异的贡献是封闭的;(c) 在标签和预测空间中存在减少差异和不影响偏差的自然组合作业。