通过潜在公共因子建模多元波动率

Modeling Multivariate Volatilities via Latent Common Factors

Journal of Business & Economic Statistics · 2015
被引 14
人大 AABS 4

中文导读

提出一种降维方法,通过特征分析估计低维波动率空间,用于建模和预测多元金融资产的波动率,适用于资产数量达数千的情况。

Abstract

Volatility, represented in the form of conditional heteroscedasticity, plays an important role in controlling and forecasting risks in various financial operations including asset pricing, portfolio allocation, and hedging futures. However, modeling and forecasting multi-dimensional conditional heteroscedasticity are technically challenging. As the volatilities of many financial assets are often driven by a few common and latent factors, we propose in this article a dimension-reduction method to model a multivariate volatility process and to estimate a lower-dimensional space, to be called the volatility space, within which the dynamics of the multivariate volatility process is confined. The new method is simple to use, as technically it boils down to an eigenanalysis for a nonnegative definite matrix. Hence, it is applicable to the cases when the number of assets concerned is in the order of thousands (using an ordinary PC/laptop). On the other hand, the model has the capability to cater for complex conditional heteroscedasticity behavior for multi-dimensional processes. Some asymptotic properties for the new method are established. We further illustrate the new method using both simulated and real data examples.

多元波动率潜在共同因子降维波动率空间