贝叶斯动态因子模型与投资组合配置

Bayesian Dynamic Factor Models and Portfolio Allocation

Journal of Business & Economic Statistics · 2000
被引 446 · 同刊同年前 2%
人大 AABS 4

中文导读

开发了多元金融时间序列的动态因子模型,结合随机波动性,用于分析汇率数据、短期预测和投资组合配置,并与动态方差矩阵贴现方法比较。

Abstract

We discuss the development of dynamic factor models for multivariate financial time series, and the incorporation of stochastic volatility components for latent factor processes. Bayesian inference and computation is developed and explored in a study of the dynamic factor structure of daily spot exchange rates for a selection of international currencies. The models are direct generalizations of univariate stochastic volatility models and represent specific varieties of models recently discussed in the growing multivariate stochastic volatility literature. We discuss model fitting based on retrospective data and sequential analysis for forward filtering and short-term forecasting. Analyses are compared with results from the much simpler method of dynamic variance-matrix discounting that, for over a decade, has been a standard approach in applied financial econometrics. We study these models in analysis, forecasting, and sequential portfolio allocation for a selected set of international exchange-rate-return time series. Our goals are to understand a range of modeling questions arising in using these factor models and to explore empirical performance in portfolio construction relative to discount approaches. We report on our experiences and conclude with comments about the practical utility of structured factor models and on future potential model extensions.

贝叶斯动态因子模型随机波动率汇率预测投资组合配置