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The complexity of model classes, and smoothing noisy data

机译:模型类的复杂性和平滑嘈杂的数据

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We consider the problem of smoothing a sequence of noisy observations using a fixed class of models. Via a deterministic analysis, we obtain necessary and sufficient conditions on the noise sequence and model class that ensure that a class of natural estimators gives near-optimal smoothing. In the case of i.i.d. random noise, we show that the accuracy of these estimators depends on a measure of complexity of the model class involving covering numbers. Our formulation and results are quite general and are related to a number of problems in learning, prediction, and estimation. As a special case, we consider an application to output smoothing for certain classes of linear and nonlinear systems. The performance of output smoothing is given in terms of natural complexity parameters of the model class, such as bounds on the order of linear systems, the l(1)-norm of the impulse response of stable linear systems, or the memory of a Lipschitz nonlinear system satisfying a fading memory condition. (C) 1998 Elsevier Science B.V. All rights reserved. [References: 13]
机译:我们考虑使用固定的模型模型来平滑噪声观测序列的问题。通过确定性分析,我们获得了噪声序列和模型类别的必要条件和充分条件,以确保一类自然估计量能够给出接近最佳的平滑度。如果是i.d.随机噪声,我们证明了这些估计量的准确性取决于涉及覆盖数字的模型类别的复杂程度。我们的公式和结果相当笼统,并且与学习,预测和估计中的许多问题有关。作为一种特殊情况,我们考虑将输出用于某些类别的线性和非线性系统的平滑处理。输出平滑的性能是根据模型类的自然复杂度参数给出的,例如线性系统阶的界限,稳定线性系统的脉冲响应的l(1)-范数或Lipschitz的记忆满足衰落记忆条件的非线性系统。 (C)1998 Elsevier Science B.V.保留所有权利。 [参考:13]

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