In this paper we derive a PAC-Bayesian-Like error bound for a class of stochastic dynamical systems with inputs, namely, for linear time-invariant stochastic state-space models (stochastic LTI systems for short). This class of systems is widely used in control engineering and econometrics, in particular, they represent a special case of recurrent neural networks. In this paper we 1) formalize the learning problem for stochastic LTI systems with inputs, 2) derive a PAC-Bayesian-Like error bound for such systems, 3) discuss various consequences of this error bound.
翻译:在本文中,我们得出了一个PAC-Bayesian-类似错误,它针对的是具有投入的一类随机动态系统,即线性时差随机状态空间模型(短短LTI系统),这一类系统被广泛用于控制工程和计量经济学,特别是它们代表了经常性神经网络的特殊案例。在本文中,我们1)将具有投入的随机液态液态系统学习问题正式化,2)得出了为这些系统而设置的PAC-Bayesian-类似错误,3)讨论了这一错误的附带后果。