Forecasting Large Realized Covariance Matrice: The Benefits of Factor Models and Shrinkage
Orientador(a): Marcelo Medeiros
Co-orientador(a): Ruy Monteiro Ribeiro
Banca: Diogo Abry Guillén, Marcelo Fernandes.We propose a model to forecast very large realized covariance matrices of returns, applying it to the constituents of the S&P 500 on a daily basis. To deal with the curse of dimensionality, we decompose the return covariance matrix using standard firm-level factors (e.g. size, value, profitability) and use sectoral restrictions in the residual covariance matrix. This restricted model is then estimated using Vector Heterogeneous Autoregressive (VHAR) models estimated with the Least Absolute Shrinkage and Selection Operator (LASSO). Our methodology improves forecasting precision relative to standard benchmarks and leads to better estimates of the minimum variance portfolios.
M404
Veja também
Monetary Policy and Housing in HANK
09/05/2025
Marcos Kiehl Sonnervig
A stochastic simulation/calibration of the cash flows between FAT and BNDES Better understanding the cash flow projections for the fund
05/05/2025
Tiago Cytryn Collett Solberg
Domestic and External Shocks in the Brazilian Business Cycle
28/04/2025
Yvan Becard