多元计数数据的动态因子模型:在股票市场交易活动中的应用

Dynamic Factor Models for Multivariate Count Data: An Application to Stock-Market Trading Activity

Journal of Business & Economic Statistics · 2010
被引 61
人大 AABS 4

中文导读

提出一种动态因子模型来分析多元时间序列计数数据,通过高效重要性采样进行最大似然估计,并应用于纽约证券交易所5分钟间隔的交易次数数据,发现共同因子反映市场整体信息。

Abstract

We propose a dynamic factor model for the analysis of multivariate time series count data. Our model allows for idiosyncratic as well as common serially correlated latent factors in order to account for potentially complex dynamic interdependence between series of counts. The model is estimated under alternative count distributions (Poisson and negative binomial). Maximum likelihood estimation requires high-dimensional numerical integration in order to marginalize the joint distribution with respect to the unobserved dynamic factors. We rely upon the Monte Carlo integration procedure known as efficient importance sampling, which produces fast and numerically accurate estimates of the likelihood function. The model is applied to time series data consisting of numbers of trades in 5-min intervals for five New York Stock Exchange (NYSE) stocks from two industrial sectors. The estimated model provides a good parsimonious representation of the contemporaneous correlation across the individual stocks and their serial correlation. It also provides strong evidence of a common factor, which we interpret as reflecting market-wide news.

动态因子模型多元计数数据有效重要性抽样股票交易活动