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On how complexity affects the stability of a predictor

机译:关于复杂性如何影响预测变量的稳定性

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Given a finite random sample from a Markov chain environment, we select a predictor that minimizes a criterion function and refer to it as being calibrated to its environment. If its prediction error is not bounded by its criterion value, we say that the criterion fails. We define the predictor’s complexity to be the amount of uncertainty in detecting that the criterion fails given that it fails. We define a predictor’s stability to be the discrepancy between the average number of prediction errors that it makes on two random samples. We show that complexity is inversely proportional to the level of adaptivity of the calibrated predictor to its random environment. The calibrated predictor becomes less stable as its complexity increases or as its level of adaptivity decreases.
机译:给定一个来自Markov链环境的有限随机样本,我们选择一个将标准函数最小化的预测变量,并将其称为已针对其环境进行了校准。如果其预测误差不受其标准值限制,则可以说该标准失败。我们将预测变量的复杂度定义为在判定标准失败的情况下无法检测到的不确定性。我们将预测变量的稳定性定义为它在两个随机样本上产生的平均预测误差之间的差异。我们表明,复杂度与校准的预测变量对其随机环境的适应性程度成反比。随着复杂度的增加或适应性水平的降低,校准的预测变量变得不稳定。

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