稳定分布混合的贝叶斯推断

R. Casarin
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引用次数: 21

摘要

在许多不同的领域,如水文学、电信、凝聚态物理和金融,高斯模型的结果不令人满意,并且在拟合具有偏态、重尾和多模态的数据时显示出困难。稳定分布的使用允许对偏态和重尾进行建模,但会引起与稳定分布参数估计相关的推理问题。最近的一些研究提出了基于特征函数的估计方法和基于MCMC模拟的估计技术,如MCMC- em方法和全贝叶斯方法中的Gibbs抽样方法。这项工作的目的是通过引入一个考虑多模态的模型来推广稳定分布框架。特别地,我们引入了一个稳定的混合模型和适当的混合再参数化,这使我们能够对混合参数进行推断。我们使用全贝叶斯方法和MCMC模拟技术来估计后验分布。最后给出了稳定混合在金融数据中的一些应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bayesian Inference for Mixtures of Stable Distributions
In many different fields such as hydrology, telecommunications, physics of condensed matter and finance, the gaussian model results unsatisfactory and reveals difficulties in fitting data with skewness, heavy tails and multimodality. The use of stable distributions allows for modelling skewness and heavy tails but gives rise to inferential problems related to the estimation of the stable distributions' parameters. Some recent works have proposed characteristic function based estimation method and MCMC simulation based estimation techniques like the MCMC-EM method and the Gibbs sampling method in a full Bayesian approach. The aim of this work is to generalise the stable distribution framework by introducing a model that accounts also for multimodality. In particular we introduce a stable mixture model and a suitable reparametrisation of the mixture, which allow us to make inference on the mixture parameters. We use a full Bayesian approach and MCMC simulation techniques for the estimation of the posterior distribution. Finally we propose some applications of stable mixtures to financial data.
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