动态双变量混合模型的贝叶斯分析:它们能解释收益率和交易量的行为吗?

Bayesian Analysis of Dynamic Bivariate Mixture Models: Can They Explain the Behavior of Returns and Trading Volume?

Journal of Business & Economic Statistics · 2000
被引 32
人大 AABS 4

中文导读

用贝叶斯方法分析动态双变量混合模型,发现Tauchen和Pitts模型无法解释平方收益的持续性,而Andersen模型无法解释交易量的持续性,基于日经225股指期货日数据。

Abstract

Bivariate mixture models attribute the well-known positive correlation between return volatility and trading volume in financial markets to stochastic changes in a single latent variable representing the number of information arrivals. In this article, dynamic bivariate mixture models that allow for autocorrelation in the latent variable are analyzed by a Bayesian method via Markov-chain Monte Carlo techniques. The results, based on daily data from the Nikkei 225 stock-index futures, reveal that the Tauchen and Pitts model, in which returns and volume follow a bivariate normal distribution conditional on the latent variable, cannot account for the persistence in squared returns, whereas the Andersen model, in which the conditional distribution of volume is Poisson, cannot account for the persistence in volume. It is also found that the Tauchen and Pitts model yields too narrow Bayesian confidence intervals of the out-of-sample squared returns.

双变量混合模型贝叶斯分析收益率波动交易量