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Global optimization for low-dimensional switching linear regression and bounded-error estimation

机译:用于低维切换线性回归和界限误差估计的全局优化

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摘要

The paper provides global optimization algorithms for two particularly difficult nonconvex problems raised by hybrid system identification: switching linear regression and bounded-error estimation. While most works focus on local optimization heuristics without global optimality guarantees or with guarantees valid only under restrictive conditions, the proposed approach always yields a solution with a certificate of global optimality. This approach relies on a branch-and-bound strategy for which we devise lower bounds that can be efficiently computed. In order to obtain scalable algorithms with respect to the number of data, we directly optimize the model parameters in a continuous optimization setting without involving integer variables. Numerical experiments show that the proposed algorithms offer a higher accuracy than convex relaxations with a reasonable computational burden for hybrid system identification. In addition, we discuss how bounded-error estimation is related to robust estimation in the presence of outliers and exact recovery under sparse noise, for which we also obtain promising numerical results. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文为混合系统识别提出的两个特别困难的非凸起问题提供了全局优化算法:切换线性回归和界误差估计。虽然大多数作品专注于当地优化启发式,但在没有全球最优性的情况下,只有在限制条件下担保有效,而所提出的方法始终会产生具有全球最优性证书的解决方案。这种方法依赖于我们设计可以有效计算的下限的分支和绑定策略。为了获得关于数据数量的可扩展算法,我们直接在连续优化设置中优化模型参数而不涉及整数变量。数值实验表明,所提出的算法比凸面放松提供更高的精度,具有合理的混合系统识别的计算负担。此外,我们讨论了界定误差估计如何与在稀疏噪声下存在的异常值和精确恢复的鲁棒估计相关,我们还获得了有前途的数值结果。 (c)2017 Elsevier Ltd.保留所有权利。

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