Competitive nonlinear prediction under additive noise

Y. Yilmaz, S. Kozat
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Abstract

We consider sequential nonlinear prediction of a bounded, real-valued and deterministic signal from its noise-corrupted past samples in a competitive algorithm framework. We introduce a randomized algorithm based on context-trees [1]. The introduced algorithm asymptotically achieves the performance of the best piecewise affine model that can both select the best partition of the past observations space (from a doubly exponential number of possible partitions) and the affine model parameters based on the desired clean signal in hindsight. Although the performance measure including the loss function is defined with respect to the noise-free clean signal, the clean signal, its past samples or prediction errors are not available for training or constructing predictions. We demonstrate the performance of the introduced algorithm when its applied to certain chaotic signals.
加性噪声下的竞争非线性预测
在竞争性算法框架中,我们考虑了一个有界的、实值的、确定性的信号的序列非线性预测。我们引入了一种基于上下文树的随机算法[1]。引入的算法渐进地实现了最佳分段仿射模型的性能,该模型既可以选择过去观测空间的最佳分区(从可能分区的双指数数中),也可以基于后见之明所需的干净信号选择仿射模型参数。尽管包含损失函数的性能度量是相对于无噪声的干净信号定义的,但干净信号,其过去的样本或预测误差无法用于训练或构建预测。通过对混沌信号的处理,验证了所引入算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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