Model estimates obtained from traditional subspace identification methods may be subject to significant variance. This elevated variance is aggravated in the cases of large models or of a limited sample size. Common solutions to reduce the effect of variance are regularized estimators, shrinkage estimators and Bayesian estimation. In the current work we investigate the latter two solutions, which have not yet been applied to subspace identification. Our experimental results show that our proposed estimators may reduce the estimation risk up to $40\%$ of that of traditional subspace methods.
翻译:从传统的子空间识别方法获得的模型估计可能存在很大差异,在大型模型或抽样规模有限的情况下,这种差异增加的情况会更加严重;减少差异影响的共同解决办法是常规估计、缩水估计和贝叶斯估计;在目前的工作中,我们调查后两种尚未应用于子空间识别的解决方案;我们的实验结果表明,我们提议的估计可能将传统子空间方法的估计风险降低到40美元。