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On the exact maximum likelihood inference of Fisher-Bingham distributions using an adjusted holonomic gradient method

机译:关于使用修正的完整梯度法的Fisher-Bingham分布的确切最大似然推断

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AbstractHolonomic function theory has been successfully implemented in a series of recent papers to efficiently calculate the normalizing constant and perform likelihood estimation for the Fisher–Bingham distributions. A key ingredient for establishing the standard holonomic gradient algorithms is the calculation of the Pfaffian equations. So far, these papers either calculate these symbolically or apply certain methods to simplify this process. Here we show the explicit form of the Pfaffian equations using the expressions from Laplace inversion methods. This improves on the implementation of the holonomic algorithms for these problems and enables their adjustments for the degenerate cases. As a result, an exact and more dimensionally efficient ODE is implemented for likelihood inference.
机译: Abstract 完整的函数理论已在最近的一系列论文中成功实现,以有效地进行计算对Fisher-Bingham分布进行归一化常数并执行似然估计。建立标准完整梯度算法的关键因素是Pfaffian方程的计算。到目前为止,这些论文要么象征性地计算这些,要么应用某些方法来简化此过程。在这里,我们使用拉普拉斯反演方法的表达式显示Pfaffian方程的显式形式。这改善了针对这些问题的完整算法的实现,并使它们能够针对退化的情况进行调整。结果,实现了精确且在维度上更有效的ODE来进行似然推断。

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