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Estimation of Information-Theoretic Quantities for Particle Clouds

机译:粒子云信息理论量的估计

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When compared to alternative approaches, such as Gaussian Mixture Models (GMMs), particle clouds more faithfully represent uncertainty. A concern about particle clouds, however, is their inability to provide the analyst with closed form expressions for many standard information theoretic quantities such as entropy and divergence. Recent advances in information theory have provided techniques that can approximately estimate such quantities. One approach in the literature is the use of the k-th nearest neighbor (k-NN) algorithm to estimate the probability density function of the particle cloud. Given this density estimate, one can then compute various information theoretic quantities. In this paper, we review the k-NN algorithm and then discuss two applications. The first application is the estimation of the entropy of a particle cloud. Specifically, we show that the entropy of a nonlinear Hamiltonian system is conserved if canonical coordinates are used as a coordinate frame. The second application is to estimate the divergence between two particle clouds. Specifically, we use the estimated Bhattacharyya divergence to solve an uncorrelated track (UCT) correlation problem.
机译:与其他方法(例如高斯混合模型(GMM))相比,粒子云更忠实地表示不确定性。但是,有关粒子云的一个问题是它们无法为分析师提供许多标准信息理论量(如熵和散度)的闭式表达式。信息理论的最新进展提供了可以近似估计此类数量的技术。文献中的一种方法是使用第k个最近邻居(k-NN)算法来估计粒子云的概率密度函数。给定这种密度估计值,便可以计算出各种信息理论量。在本文中,我们回顾了k-NN算法,然后讨论了两种应用。第一个应用是粒子云的熵估计。具体来说,我们表明,如果将规范坐标用作坐标系,则非线性哈密顿系统的熵是守恒的。第二个应用是估计两个粒子云之间的散度。具体来说,我们使用估计的Bhattacharyya散度来解决不相关航迹(UCT)相关问题。

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