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System identification using kernel-based regularization: New insights on stability and consistency issues

机译:系统识别使用基于内核的正则化:对稳定性和一致性问题的新见解

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Learning from examples is one of the key problems in science and engineering. It deals with function reconstruction from a finite set of direct and noisy samples. Regularization in reproducing kernel Hilbert spaces (RKHSs) is widely used to solve this task and includes powerful estimators such as regularization networks. Recent achievements include the proof of the statistical consistency of these kernel-based approaches. Parallel to this, many different system identification techniques have been developed but the interaction with machine learning does not appear so strong yet. One reason is that the RKHSs usually employed in machine learning do not embed the information available on dynamic systems, e.g. BIBO stability. In addition, in system identification the independent data assumptions routinely adopted in machine learning are never satisfied in practice. This paper provides some new results which strengthen the connection between system identification and machine learning. Our starting point is the introduction of RKHSs of dynamic systems. They contain functionals over spaces defined by system inputs and allow to interpret system identification as learning from examples. In both linear and nonlinear settings, it is shown that this perspective permits to derive in a relatively simple way conditions on RKHS stability (i.e. the property of containing only BIBO stable systems or predictors), also facilitating the design of new kernels for system identification. Furthermore, we prove the convergence of the regularized estimator to the optimal predictor under conditions typical of dynamic systems. (C) 2018 Elsevier Ltd. All rights reserved.
机译:从例子中学习是科学与工程的关键问题之一。它涉及来自一组有限的直接和嘈杂样本的功能重建。在再现内核希尔伯特空间(RKHSS)时正则化广泛用于解决这项任务,并包括正则化网络等强大的估算器。最近的成就包括这些基于内核方法的统计一致性证明。并行于此,已经开发了许多不同的系统识别技术,但与机器学习的互动尚未如此强。一个原因是,通常在机器学习中使用的RKHS不会嵌入动态系统上可用的信息,例如, Bibo稳定性。此外,在系统识别机器学习中经常采用的独立数据假设永远不会在实践中满足。本文提供了一些新的结果,增强了系统识别与机器学习之间的联系。我们的出发点是引入动态系统的RKHS。它们包含通过系统输入定义的空格的功能,并允许将系统标识解释为从示例的学习。在线性和非线性设置中,示出该透视允许以相对简单的方式导出RKHS稳定性的条件(即仅包含Bibo稳定系统或预测器的性质),还促进了用于系统识别的新内核的设计。此外,我们在动态系统的典型条件下证明了正则估计器到最佳预测器的收敛性。 (c)2018年elestvier有限公司保留所有权利。

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