Analysis of the Identifying Regulation with Adversarial Surrogates Algorithm

Ron Teichner, Ron Meir, Michael Margaliot
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Abstract

Given a time-series of noisy measured outputs of a dynamical system z[k], k=1...N, the Identifying Regulation with Adversarial Surrogates (IRAS) algorithm aims to find a non-trivial first integral of the system, namely, a scalar function g() such that g(z[i]) = g(z[j]), for all i,j. IRAS has been suggested recently and was used successfully in several learning tasks in models from biology and physics. Here, we give the first rigorous analysis of this algorithm in a specific setting. We assume that the observations admit a linear first integral and that they are contaminated by Gaussian noise. We show that in this case the IRAS iterations are closely related to the self-consistent-field (SCF) iterations for solving a generalized Rayleigh quotient minimization problem. Using this approach, we derive several sufficient conditions guaranteeing local convergence of IRAS to the correct first integral.
使用对抗代理算法识别监管的分析
给定一个动态系统 z[k](k=1...N)的噪声测量输出时间序列,逆向代理识别调节(IRAS)算法的目的是找到该系统的一个非三维第一积分,即对于所有 i、j,ascalar 函数 g()使得 g(z[i]) = g(z[j])。IRAS 最近被提出,并成功地应用于生物学和物理学模型中的多项学习任务。在此,我们首次对这一算法在特定环境下的应用进行了严格分析。我们假设观测数据接受线性一积分,并且受到高斯噪声的污染。我们证明,在这种情况下,IRAS迭代与求解广义瑞利矩最小化问题的自洽场(SCF)迭代密切相关。利用这种方法,我们推导出了保证 IRAS 局部收敛到正确第一积分的几个充分条件。
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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