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A nonlinear population Monte Carlo scheme for the Bayesian estimation of parameters of alpha-stable distributions

机译:贝叶斯估计α稳定分布参数的非线性总体蒙特卡洛方案

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The class of alpha-stable distributions enjoys multiple practical applications in signal processing, finance, biology and other areas because it allows to describe interesting and complex data patterns, such as asymmetry or heavy tails, in contrast with the simpler and widely used Gaussian distribution. The density associated with a general alpha-stable distribution cannot be obtained in closed form, which hinders the process of estimating its parameters. A nonlinear population Monte Carlo (NPMC) scheme is applied in order to approximate the posterior probability distribution of the parameters of an alpha-stable random variable given a set of random realizations of the latter. The approximate posterior distribution is computed by way of an iterative algorithm and it consists of a collection of samples in the parameter space with associated nonlinearly-transformed importance weights. A numerical comparison of the main existing methods to estimate the alpha-stable parameters is provided, including the traditional frequentist techniques as well as a Markov chain Monte Carlo (MCMC) and a likelihood-free Bayesian approach. It is shown by means of computer simulations that the NPMC method outperforms the existing techniques in terms of parameter estimation error and failure rate for the whole range of values of a, including the smaller values for which most existing methods fail to work properly. Furthermore, it is shown that accurate parameter estimates can often be computed based on a low number of observations. Additionally, numerical results based on a set of real fish displacement data are provided. (c) 2015 Elsevier B.V. All rights reserved.
机译:与较简单和广泛使用的高斯分布相比,该类稳定分布在信号处理,金融,生物学和其他领域具有多种实际应用,因为它可以描述有趣且复杂的数据模式,例如不对称或粗尾。不能以封闭形式获得与一般的α稳定分布相关的密度,这阻碍了估计其参数的过程。应用非线性总体蒙特卡洛(NPMC)方案,以便在给定后者稳定的随机实现的情况下,对α稳定随机变量的参数进行后验概率分布。近似后验分布是通过迭代算法计算的,它由参数空间中具有相关联的非线性变换的重要性权重的样本集合组成。提供了对现有主要方法的数字估计方法的数值比较,包括传统的频频技术,马尔可夫链蒙特卡洛(MCMC)和无似然贝叶斯方法。通过计算机仿真表明,在整个α值范围(包括较小的值,大多数现有方法无法正常工作的较小值)方面,NPMC方法的性能优于现有技术。此外,显示出经常可以基于少量观察来计算准确的参数估计。另外,提供了基于一组实际鱼类位移数据的数值结果。 (c)2015 Elsevier B.V.保留所有权利。

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