Covariance Matrix Estimation: A Comparative Analysis
Abstract
For accurate risk assessment and portfolio optimization in finance, the covariance matrix is crucial. This research evaluates various estimation techniques, comparing their accuracy and limitations. Starting with the sample covariance matrix, the study explores both static and dynamic shrinkage approaches and concludes with a factor copula model to offer a different perspective on estimation. Through simulations and empirical analysis of high-dimensional stock market data, the study demonstrates that dynamic models outperform static ones in accuracy, even though they come at a higher computational cost. These findings underscore the need for financial practitioners to select models based on their specific requirements for accuracy, computational efficiency, and application context. Future research should investigate a broader range of assets and additional techniques to further enhance decision-making in covariance matrix estimation.
Degree
Master 2-years
Other description
MSC in Finance
Collections
View/ Open
Date
2024-07-04Author
Di Guida, Andrea
Keywords
Covariance matrix estimation
High-dimensional
Shrinkage
Factor copula
Stock market
Series/Report no.
2024:9
Language
eng