A New Adaptive Fast Cellular Automaton Neighborhood Detection and Rule Identification Algorithm.

Y Zhao, H L Wei, S A Billings
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引用次数: 16

Abstract

An important step in the identification of cellular automata (CA) is to detect the correct neighborhood before parameter estimation. Many authors have suggested procedures based on the removal of redundant neighbors from a very large initial neighborhood one by one to find the real model, but this often induces ill conditioning and overfitting. This is true particularly for a large initial neighborhood where there are few significant terms, and this will be demonstrated by an example in this paper. By introducing a new criteria and three new techniques, this paper proposes a new adaptive fast CA orthogonal-least-square (Adaptive-FCA-OLS) algorithm, which cannot only adaptively search for the correct neighborhood without any preset tolerance but can also considerably reduce the computational complexity and memory usage. Several numerical examples demonstrate that the Adaptive-FCA-OLS algorithm has better robustness to noise and to the size of the initial neighborhood than other recently developed neighborhood detection methods in the identification of binary CA.

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一种新的自适应快速元胞自动机邻域检测与规则识别算法。
元胞自动机识别的一个重要步骤是在参数估计之前检测出正确的邻域。许多作者提出了基于从一个非常大的初始邻域中逐个去除冗余邻域来找到真实模型的方法,但这通常会导致条件反射不良和过拟合。特别是对于一个大的初始邻域,其中很少有重要项,这是正确的,这将在本文中通过一个例子来证明。通过引入新的准则和三种新的技术,提出了一种新的自适应快速CA正交最小二乘(adaptive - fca - ols)算法,该算法不仅能自适应地搜索正确的邻域,而且不需要任何预设公差,还能大大降低计算量和内存占用。数值算例表明,自适应fca - ols算法对噪声和初始邻域大小的鲁棒性优于近期发展的邻域检测方法。
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