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Implementation of algorithms for tuning parameters in regularized least squares problems in system identification

机译:用于系统识别中正则化最小二乘问题的参数调整算法的实现

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摘要

There has been recently a trend to study linear system identification with high order finite impulse response (FIR) models using the regularized least-squares approach. One key of this approach is to solve the hyper-parameter estimation problem that is usually nonconvex. Our goal here is to investigate implementation of algorithms for solving the hyper-parameter estimation problem that can deal with both large data sets and possibly ill-conditioned computations. In particular, a QR factorization based matrix-inversion-free algorithm is proposed to evaluate the cost function in an efficient and accurate way. It is also shown that the gradient and Hessian of the cost function can be computed based on the same QR factorization. Finally, the proposed algorithm and ideas are verified by Monte-Carlo simulations on a large data-bank of test systems and data sets.
机译:最近出现了一种使用正则化最小二乘法研究具有高阶有限冲激响应(FIR)模型的线性系统识别的趋势。这种方法的一个关键是解决通常不凸的超参数估计问题。我们的目标是研究用于解决超参数估计问题的算法的实现,该问题可以同时处理大型数据集和可能情况不佳的计算。特别地,提出了一种基于QR分解的无矩阵求逆算法,以高效,准确地评估成本函数。还表明,可以基于相同的QR分解来计算成本函数的梯度和Hessian。最后,通过在测试系统和数据集的大型数据库上进行的蒙特卡洛仿真验证了所提出的算法和思想。

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