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Model-based kernel sum rule: kernel Bayesian inference with probabilistic models

机译:基于模型的内核规则:内核贝叶斯推论概率模型

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Kernel Bayesian inference is a principled approach to nonparametric inference in probabilistic graphical models, where probabilistic relationships between variables are learned from data in a nonparametric manner. Various algorithms of kernel Bayesian inference have been developed by combining kernelized basic probabilistic operations such as the kernel sum rule and kernel Bayes' rule. However, the current framework is fully nonparametric, and it does not allow a user to flexibly combine nonparametric and model-based inferences. This is inefficient when there are good probabilistic models (or simulation models) available for some parts of a graphical model; this is in particular true in scientific fields where "models" are the central topic of study. Our contribution in this paper is to introduce a novel approach, termed the model-based kernel sum rule (Mb-KSR), to combine a probabilistic model and kernel Bayesian inference. By combining the Mb-KSR with the existing kernelized probabilistic rules, one can develop various algorithms for hybrid (i.e., nonparametric and model-based) inferences. As an illustrative example, we consider Bayesian filtering in a state space model, where typically there exists an accurate probabilistic model for the state transition process. We propose a novel filtering method that combines model-based inference for the state transition process and data-driven, nonparametric inference for the observation generating process. We empirically validate our approach with synthetic and real-data experiments, the latter being the problem of vision-based mobile robot localization in robotics, which illustrates the effectiveness of the proposed hybrid approach.
机译:内核贝叶斯推论是概率图形模型中非参数推断的原则方法,其中变量之间的概率关系是以非参数方式从数据中学到的。通过组合内核化的基本概率和核心规则和内核贝叶斯规则,通过组合诸如内核的基本概率操作来开发了各种内核贝叶斯推断的算法。然而,当前框架是完全非参数的,并且它不允许用户灵活地组合非参数和基于模型的推论。当有适用于图形模型的某些部分的概率模型(或仿真模型)时,这效率低下;这在“模型”是学习的中心主题的科学领域中特别是真实的。我们本文的贡献是引入一种新颖的方法,称为基于模型的内核规则(MB-KSR),以组合概率模型和内核贝叶斯推断。通过将MB-KSR与现有的内核化概率规则组合,可以为混合(即,非参数和基于模型的)推广开发各种算法。作为说明性示例,我们考虑在状态空间模型中的贝叶斯滤波,其中通常存在用于状态转换过程的准确概率模型。我们提出了一种新颖的滤波方法,该方法将基于模型的推断与用于观察生成过程的状态转换过程和数据驱动的非参数推断相结合。我们经验验证了我们的综合性和实验实验的方法,后者是机器人中基于视觉的移动机器人定位问题,其说明了提出的混合方法的有效性。

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