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Optimal parameterization of posterior densities using homotopy

机译:使用同伦优化后验密度的参数化

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In filtering algorithms, it is often desirable that the prior and posterior densities share a common density parameterization. This can rarely be done exactly. Instead it is necessary to seek a density from the same family as the prior which closely approximates the true posterior. We extend a method for computing the optimal parameter values for representing the posterior within a given parameterization. This is achieved by minimizing the deviation between the parameterized density and a homotopy that deforms the prior density into the posterior density. We derive novel results both for the general case, and for specific choices of measures of deviation. This includes approximate solution methods, that prove useful when we demonstrate how the method can be used with common density parameterizations. For an example with a non-linear measurement model, the method is shown to be more accurate than the Extended, Unscented and Cubature Kalman filters.
机译:在滤波算法中,通常希望先验和后验密度共享共同的密度参数。这很少能完全做到。取而代之的是,有必要从与前一个相同的族中寻求一个密度,该密度非常接近真实的后验。我们扩展了一种用于计算最佳参数值的方法,该参数值用于表示给定参数化中的后验。这是通过最小化参数化密度和将先验密度变形为后验密度的同态性之间的偏差来实现的。我们针对一般情况以及针对偏差度量的特定选择都得出了新颖的结果。这包括近似的求解方法,当我们演示如何将该方法与常见的密度参数化一起使用时,这些方法被证明是有用的。以非线性测量模型为例,该方法比扩展,无味和Cubature卡尔曼滤波器更准确。

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