贝叶斯协整VAR模型的模型选择与自适应马尔可夫链蒙特卡罗

G. Peters, B. Kannan, B. Lasscock, C. Mellen
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引用次数: 11

摘要

本文提出了一种矩阵变量自适应马尔可夫链蒙特卡罗方法用于贝叶斯协整向量自回归(CVAR)。我们用一种基于Roberts和Rosenthal(2009)的Adaptive Metropolis算法的自动化高效替代方法,取代了抽样贝叶斯CVAR模型的流行方法(包括网格Gibbs)。开发贝叶斯CVAR模型的自适应MCMC框架,可以有效地估计显着高维CVAR序列中的后验参数,而不是使用现有的网格吉布斯采样器。对于n维CVAR序列,矩阵变量后验维为$3n^2 + n$,矩阵随机变量块之间存在显著的相关性。我们还将CVAR模型的秩作为一个随机变量,并对秩和模型参数进行联合推理。这是通过在秩和CVAR模型参数上定义的贝叶斯后验分布来实现的,并通过秩的贝叶斯因子分析进行推理。实际上,自适应采样器还有助于为算法交易系统开发自动贝叶斯协整模型,考虑由几种资产组成的工具,如货币篮子。以往关于CVAR交易模型金融应用的文献,由于吉布斯网格的计算成本,通常只考虑配对交易(n=2)。我们能够在我们的自适应框架下扩展到$n >> 2$,并演示一个n = 10的例子,从而得到参数高达310维的后验分布。通过将排名视为随机数量,我们可以确保我们的交易模型能够在一致的统计框架中调整到潜在的时变市场条件。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model Selection and Adaptive Markov Chain Monte Carlo for Bayesian Cointegrated VAR Model
This paper develops a matrix-variate adaptive Markov chain Monte Carlo (MCMC) methodology for Bayesian Cointegrated Vector Auto Regressions (CVAR). We replace the popular approach to sampling Bayesian CVAR models, involving griddy Gibbs, with an automated efficient alternative, based on the Adaptive Metropolis algorithm of Roberts and Rosenthal, (2009). Developing the adaptive MCMC framework for Bayesian CVAR models allows for efficient estimation of posterior parameters in significantly higher dimensional CVAR series than previously possible with existing griddy Gibbs samplers. For a n-dimensional CVAR series, the matrix-variate posterior is in dimension $3n^2 + n$, with significant correlation present between the blocks of matrix random variables. We also treat the rank of the CVAR model as a random variable and perform joint inference on the rank and model parameters. This is achieved with a Bayesian posterior distribution defined over both the rank and the CVAR model parameters, and inference is made via Bayes Factor analysis of rank. Practically the adaptive sampler also aids in the development of automated Bayesian cointegration models for algorithmic trading systems considering instruments made up of several assets, such as currency baskets. Previously the literature on financial applications of CVAR trading models typically only considers pairs trading (n=2) due to the computational cost of the griddy Gibbs. We are able to extend under our adaptive framework to $n >> 2$ and demonstrate an example with n = 10, resulting in a posterior distribution with parameters up to dimension 310. By also considering the rank as a random quantity we can ensure our resulting trading models are able to adjust to potentially time varying market conditions in a coherent statistical framework.
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