Recurrent State-space models (RSSMs) are highly expressive models for learning patterns in time series data and system identification. However, these models assume that the dynamics are fixed and unchanging, which is rarely the case in real-world scenarios. Many control applications often exhibit tasks with similar but not identical dynamics which can be modeled as a latent variable. We introduce the Hidden Parameter Recurrent State Space Models (HiP-RSSMs), a framework that parametrizes a family of related dynamical systems with a low-dimensional set of latent factors. We present a simple and effective way of learning and performing inference over this Gaussian graphical model that avoids approximations like variational inference. We show that HiP-RSSMs outperforms RSSMs and competing multi-task models on several challenging robotic benchmarks both on real-world systems and simulations.
翻译:经常性国家空间模型(RSSMs)是时间序列数据和系统识别中学习模式的高度直观模型,然而,这些模型假定动态是固定和不变的,在现实世界情景中很少发生这种情况。许多控制应用程序往往展示了类似但非相同的动态任务,可以模拟为潜在变量。我们引入了隐藏参数经常性国家空间模型(HIP-RSSMs),这个框架可以模拟具有低维度潜在因素的一组相关动态系统。我们展示了一种简单而有效的学习和推断方法,可以避免近似变异推断的高斯图形模型。我们显示,HIP-RSSMs在现实世界系统和模拟的若干具有挑战性的机器人基准上,超越了RSSMs和相互竞争的多任务模型。