Compute several statistical performance measures frequently used in the econometric literature to evaluate covariance/correlation matrix estimates. See, Laurent et al. (2012), Amendola et al. (2015), Becker et al. (2015) and Engle et al. (2016). If measure="ALL" compute the Asymmetric loss function, Frobenius distance, Euclidean distance, Eigenvalue loss function, Mean Absolute Error, Mean Square Error, Stein loss function and Elw loss function.
Usage
StatPerMeas(S, H, measure , b)
Arguments
S
Proxy for the conditional covariance/correlation matrix
H
Estimate of the conditional covariance/correlation matrix.
measure
"Le": Euclidean distance,
"MSE": Mean Square Error,
"MAE": Mean Absolute Error,
"Lf": Frobenius distance,
"Ls": Stein loss function,
"Asymm": Asymmetric loss functions,
"Leig": Eigenvalue loss function,
"Lelw": Elw loss function,
"ALL": All Statistical Performance Measures.
b
Degree of homogeneity. By default b=3 (Used in the Frobenius distance)
References
Amendola, A., & Storti, G. (2015). Model uncertainty and forecast combination in high-dimensional multivariate volatility prediction. Journal of Forecasting, 34(2), 83-91. Becker, R., Clements, A. E., Doolan, M. B., & Hurn, A. S. (2015). Selecting volatility forecasting models for portfolio allocation purposes. International Journal of Forecasting, 31(3), 849-861. Laurent, S., Rombouts, J. V., & Violante, F. (2012). On the forecasting accuracy of multivariate GARCH models. Journal of Applied Econometrics, 27(6), 934-955. Engle, Robert F. and Ledoit, Olivier and Wolf, Michael, Large dynamic covariance matrices (2016). University of Zurich, Department of Economics, Working Paper No. 231. Available at SSRN: https://ssrn.com/abstract=2814555.