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Improved inference in financial factor models
- Publication Year :
- 2023
-
Abstract
- Conditional heteroskedasticity of the error terms is a common occurrence in financial factor models, such as the CAPM and Fama-French factor models. This feature necessitates the use of heteroskedasticity consistent (HC) standard errors to make valid inference for regression coefficients. In this paper, we show that using weighted least squares (WLS) or adaptive least squares (ALS) to estimate model parameters generally leads to smaller HC standard errors compared to ordinary least squares (OLS), which translates into improved inference in the form of shorter confidence intervals and more powerful hypothesis tests. In an extensive empirical analysis based on historical stock returns and commonly used factors, we find that conditional heteroskedasticity is pronounced and that WLS and ALS can dramatically shorten confidence intervals compared to OLS, especially during times of financial turmoil.
- Subjects :
- conditional heteroskedasticity
Economics and Econometrics
History
HC standard errors
Polymers and Plastics
2002 Economics and Econometrics
10003 Department of Banking and Finance
Industrial and Manufacturing Engineering
330 Economics
ECON Department of Economics
factor models
2003 Finance
10007 Department of Economics
CAPM
ddc:330
C13
Business and International Management
C21
Finance
C12
Subjects
Details
- Language :
- English
- Database :
- OpenAIRE
- Accession number :
- edsair.doi.dedup.....bf342b5644a13f71116b08dbc3a55bb7