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Density estimation on Stiefel manifolds using matrix-Fisher model

机译:基于矩阵-费舍模型的Stiefel流形上的密度估计

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Our main focus in this paper is on the matrix-variate Fisher distribution for the product case of Stiefel manifolds and perform density estimation or classification via straightforward way of Maximum Likelihood Estimation (MLE) of parameter. The novelty of our proposed method is its strict dependency on normalisation constant appearing in parametric models, i.e., we have implemented our proposed matrix Fisher density function for classification with normalisation constant included in a more general context for Stiefel manifolds. An accurate way of calculating the log-likehood function of matrix based normalising constant and its practicability to matrix variate parametric modelling has been a big hurdle and is treated in this paper for classification on Stiefel manifolds. Instead of ad-hoc approximation of normalisation constant we have considered the method of Saddle Point Approximation (SPA). With the inclusion of calculated normalising constant with matrix-variate Fisher parametric model, the direct MLE with simple Bayesian approach for numerical experiments is employed for classification example using Synthetic and real World dataset, with promising accuracy.
机译:本文的主要重点是针对Stiefel流形乘积的矩阵变量Fisher分布,并通过参数的最大似然估计(MLE)的直接方法执行密度估计或分类。我们提出的方法的新颖之处在于其严格依赖于参数化模型中出现的归一化常数,即,我们已实现了拟议的矩阵Fisher密度函数用于分类,其中归一化常数包含在更广泛的Stiefel流形中。一种基于归一化常数的矩阵对数似然函数的准确计算方法及其对矩阵变量参数化建模的实用性一直是一大障碍,本文将其用于Stiefel流形分类。代替标准化常数的临时近似,我们考虑了鞍点近似(SPA)方法。通过将计算出的归一化常数与矩阵变量Fisher参数模型包括在内,使用简单贝叶斯方法进行数值实验的直接MLE用于使用合成数据和真实数据集进行分类的示例,其准确性很有希望。

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