贝叶斯滤波中的受限变分贝叶斯逼近

V. Šmídl, A. Quinn
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引用次数: 9

摘要

变分贝叶斯(VB)方法被用作贝叶斯滤波的一步逼近。它需要自由形式分布优化器的矩的可用性。后者可能具有难以处理的功能形式。在本文中,我们用产生所需矩的适当的固定形式分布代替这些分布。我们讨论了这种受限VB (RVB)近似的两种情况。对于第一种情况,给出了在hmm识别中的应用。讨论了第二种情况与rao - blackwell化粒子滤波的密切关系,并用一个简单的非线性模型说明了它们的性能。
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The Restricted Variational Bayes Approximation in Bayesian Filtering
The Variational Bayes (VB) approach is used as a one-step approximation for Bayesian filtering. It requires the availability of moments of the free-form distributional optimizers. The latter may have intractable functional forms. In this contribution, we replace these by appropriate fixed-form distributions yielding the required moments. We address two scenarios of this Restricted VB (RVB) approximation. For the first scenario, an application in identification of HMMs is given. Close relationship of the second scenario to Rao-Blackwellized particle filtering is discussed and their performance is illustrated on a simple non-linear model.
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