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A weighted least-squares method for parameter estimation in structured models

机译:结构模型中参数估计的加权最小二乘法

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Parameter estimation in structured models is generally considered a difficult problem. For example, the prediction error method (PEM) typically gives a non-convex optimization problem, while it is difficult to incorporate structural information in subspace identification. In this contribution, we revisit the idea of iteratively using the weighted least-squares method to cope with the problem of non-convex optimization. The method is, essentially, a three-step method. First, a high order least-squares estimate is computed. Next, this model is reduced to a structured estimate using the least-squares method. Finally, the structured estimate is re-estimated, using weighted least-squares, with weights obtained from the first structured estimate. This methodology has a long history, and has been applied to a range of signal processing problems. In particular, it forms the basis of iterative quadratic maximum likelihood (IQML) and the Steiglitz-McBride method. Our contributions are as follows. Firstly, for output-error models, we provide statistically optimal weights. We conjecture that the method is asymptotically efficient under mild assumptions and support this claim by simulations. Secondly, we point to a wide range of structured estimation problems where this technique can be applied. Finally, we relate this type of technique to classical prediction error and subspace methods by showing that it can be interpreted as a link between the two, sharing favorable properties with both domains.
机译:结构化模型中的参数估计通常被认为是一个难题。例如,预测误差方法(PEM)通常会产生非凸优化问题,而很难将结构信息纳入子空间识别中。在这一贡献中,我们重新审视了使用加权最小二乘法迭代地解决非凸优化问题的想法。该方法实质上是三步法。首先,计算高阶最小二乘估计。接下来,使用最小二乘法将该模型简化为结构化估计。最后,使用加权最小二乘法对结构化估计值进行重新估计,并从第一个结构化估计值中获得权重。这种方法具有悠久的历史,并已应用于一系列信号处理问题。特别地,它构成了迭代二次最大似然(IQML)和Steiglitz-McBride方法的基础。我们的贡献如下。首先,对于输出误差模型,我们提供统计上最优的权重。我们推测,在温和的假设下,该方法是渐近有效的,并通过仿真来支持这种说法。其次,我们指出了可以应用此技术的各种结构化估计问题。最后,我们通过表明可以将其解释为两者之间的链接,并与两个域共享有利的属性,从而将这种类型的技术与经典的预测误差和子空间方法相关联。

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