Large Volatility Matrix Prediction with High-Frequency Data
Abstract
We provide a novel method for large volatility matrix prediction with high-frequency data by applying eigen-decomposition to daily realized volatility matrix estimators and capturing eigenvalue dynamics with ARMA models. Given a sequence of daily volatility matrix estimators, we compute the aggregated eigenvectors and obtain the corresponding eigenvalues. Eigenvalues in the same relative magnitude form a time series and the ARMA models are further employed to model the dynamics within each eigenvalue time series to produce a predictor. We predict future large volatility matrix based on the predicted eigenvalues and the aggregated eigenvectors, and demonstrate the advantages of the proposed method in volatility prediction and portfolio allocation problems.
Cite
@article{arxiv.1907.01196,
title = {Large Volatility Matrix Prediction with High-Frequency Data},
author = {Xinyu Song},
journal= {arXiv preprint arXiv:1907.01196},
year = {2019}
}
Comments
Research method similar to the one covered in the manuscript has been examined already