We investigate active learning in Gaussian Process state-space models (GPSSM). Our problem is to actively steer the system through latent states by determining its inputs such that the underlying dynamics can be optimally learned by a GPSSM. In order that the most informative inputs are selected, we employ mutual information as our active learning criterion. In particular, we present two approaches for the approximation of mutual information for the GPSSM given latent states. The proposed approaches are evaluated in several physical systems where we actively learn the underlying non-linear dynamics represented by the state-space model.
翻译:我们调查高西亚进程状态-空间模型(GPSSM)的积极学习情况。 我们的问题是积极引导该系统通过潜伏状态,确定其投入,以便GPSM能够最佳地学习基本动态。 为了选择最丰富的信息投入,我们采用相互信息作为我们积极学习的标准。特别是,我们提出了两种方法,以近似GPSM潜伏状态的相互信息。我们在若干物理系统中评估了拟议方法,积极学习以州-空间模型为代表的非线性动态。