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Inference over heterogeneous finite-/infinite-dimensional systems using factor graphs and Gaussian processes

机译:使用因子图和高斯过程推断异构有限/无限维系统

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The ability to reason over partially observable networks of interacting states is a fundamental competency in probabilistic robotics. While the well-known factor graph and Gaussian process models provide flexible and computationally efficient solutions for this inference problem in the special cases in which all of the hidden states are either finite-dimensional parameters or real-valued functions, respectively, in many cases we are interested in reasoning about heterogeneous networks whose hidden states are comprised of both finite-dimensional parameters and functions. To that end, in this paper we propose a novel probabilistic generative model that incorporates both factor graphs and Gaussian processes to model these heterogeneous systems. Our model improves upon prior approaches to inference within these networks by removing the assumption of any specific set of conditional independences amongst the modeled states, thereby significantly expanding the class of systems that can be represented. Furthermore, we show that inference within this model can always be performed by means of a two-stage procedure involving inference within a factor graph followed by inference over a Gaussian process; by exploiting fast inference methods for the individual factor graph and Gaussian process models to solve each of these subproblems in succession, we thus obtain a general framework for computationally efficient inference over heterogeneous finite-/infinite-dimensional systems.
机译:在部分可观察的交互状态网络上进行推理的能力是概率机器人技术的基本能力。尽管众所周知的因子图和高斯过程模型为特殊情况下的推理问题提供了灵活且计算有效的解决方案,在这些情况下,所有隐藏状态分别是有限维参数或实值函数,在许多情况下,我们有人对隐藏网络由有限维参数和函数组成的异构网络进行推理很感兴趣。为此,在本文中,我们提出了一种新颖的概率生成模型,该模型结合了因子图和高斯过程来对这些异构系​​统进行建模。我们的模型通过消除对建模状态之间任何特定的条件独立性集合的假设,从而改善了这些网络中现有的推理方法,从而显着扩展了可以表示的系统类别。此外,我们表明,该模型内的推理始终可以通过两阶段过程来执行,该过程包括在因子图中进行推理,然后对高斯过程进行推理。通过为单个因子图和高斯过程模型开发快速推理方法来依次解决这些子问题,我们因此获得了一种在异构有限/无限维系统上进行计算有效推理的通用框架。

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