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Probabilistic Filter and Smoother for Variational Inference of Bayesian Linear Dynamical Systems

机译:贝叶斯线性动力系统变分推断的概率滤波和平滑器

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Variational inference of a Bayesian linear dynamical system is a powerful method for estimating latent variable sequences and learning sparse dynamic models in domains ranging from neuroscience to audio processing. The hardest part of the method is inferring the model's latent variable sequence. Here, we propose a solution using matrix inversion lemmas to derive what may be considered as the Bayesian counterparts to the Kalman filter and smoother, which are particular forms of the forward-backward algorithm that have known properties of numerical stability and efficiency that lead to cost growing linear with time. Opposed to existing methods, we do not augment the model dimensionality, use Cholesky decompositions or inaccurate numerical matrix inversions. We provide mathematical proof and empirical evidence that the new algorithm respects parameter expected values to more accurately infer latent state statistics. An application to Bayesian frequency estimation of a stochastic sum of sinusoids model is presented and compared with state-of-the-art estimators.
机译:贝叶斯线性动力系统的变分推理是一种强大的方法,可用于估计潜在变量序列并学习从神经科学到音频处理等领域的稀疏动态模型。该方法最困难的部分是推断模型的潜在变量序列。在这里,我们提出一种使用矩阵求逆引理的解决方案,以得出可以被认为是卡尔曼滤波器和平滑器的贝叶斯对应物的解决方案,这是前向后向算法的特殊形式,具有已知的数值稳定性和效率特性,从而导致成本随着时间线性增长。与现有方法相反,我们不增加模型维数,不使用Cholesky分解或不正确的数值矩阵求逆。我们提供了数学证明和经验证据,表明新算法尊重参数期望值以更准确地推断潜在状态统计信息。提出了正弦曲线模型随机和在贝叶斯频率估计中的应用,并与最新的估计器进行了比较。

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