动态因子模型

DYNAMIC FACTOR MODELS

Econometric Reviews · 2001
被引 14
人大 A-ABS 3

中文导读

提出非线性动态因子模型,通过引入随机动态参数和自相关模拟器,刻画时变条件均值、方差、偏度和峰度,用于动态风险分析,如价格波动、极端风险、资产流动性风险和保险道德风险。

Abstract

This paper introduces nonlinear dynamic factor models for various applications related to risk analysis. Traditional factor models represent the dynamics of processes driven by movements of latent variables, called the factors. Our approach extends this setup by introducing factors defined as random dynamic parameters and stochastic autocorrelated simulators. This class of factor models can represent processes with time varying conditional mean, variance, skewness and excess kurtosis. Applications discussed in the paper include dynamic risk analysis, such as risk in price variations (models with stochastic mean and volatility), extreme risks (models with stochastic tails), risk on asset liquidity (stochastic volatility duration models), and moral hazard in insurance analysis. We propose estimation procedures for models with the marginal density of the series and factor dynamics parameterized by distinct subsets of parameters. Such a partitioning of the parameter vector found in many applications allows to simplify considerably statistical inference. We develop a two- stage Maximum Likelihood method, called the Finite Memory Maximum Likelihood, which is easy to implement in the presence of multiple factors. We also discuss simulation based estimation, testing, prediction and filtering.

非线性动态因子模型风险分析随机参数两阶段极大似然估计