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 hetero...
The macro-financial data are characterized by heteroskedasticity which leads to inconsistent estimat...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
Empirical research in finance frequently involves analysis of panel data sets. In corporate finance,...
Conditional heteroskedasticity of the error terms is a common occurrence in financial factor models,...
This paper shows how asymptotically valid inference in regression models based on the weighted least...
We show that statistical inference on the risk premia in linear factor models that is based on the F...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
This is the author accepted manuscript. The final version is available from Taylor & Francis via the...
In this article, we propose a robust statistical approach to select an appropriate error distributio...
A new method is proposed for estimating linear triangular models, where identification results from ...
In this article, we propose a robust statistical approach to select an appropriate error distributio...
This paper investigates the implications of time-varying betas in factor models for stock returns. I...
This paper compares ordinary least squares (OLS), weighted least squares (WLS), and adaptive least s...
In this paper, we provide a mathematical and statistical methodology using heteroscedastic estimatio...
In this article, we propose a robust methodology to select the most appropriate error distribution c...
The macro-financial data are characterized by heteroskedasticity which leads to inconsistent estimat...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
Empirical research in finance frequently involves analysis of panel data sets. In corporate finance,...
Conditional heteroskedasticity of the error terms is a common occurrence in financial factor models,...
This paper shows how asymptotically valid inference in regression models based on the weighted least...
We show that statistical inference on the risk premia in linear factor models that is based on the F...
We consider estimation and inference in fractionally integrated time series models driven by shocks ...
This is the author accepted manuscript. The final version is available from Taylor & Francis via the...
In this article, we propose a robust statistical approach to select an appropriate error distributio...
A new method is proposed for estimating linear triangular models, where identification results from ...
In this article, we propose a robust statistical approach to select an appropriate error distributio...
This paper investigates the implications of time-varying betas in factor models for stock returns. I...
This paper compares ordinary least squares (OLS), weighted least squares (WLS), and adaptive least s...
In this paper, we provide a mathematical and statistical methodology using heteroscedastic estimatio...
In this article, we propose a robust methodology to select the most appropriate error distribution c...
The macro-financial data are characterized by heteroskedasticity which leads to inconsistent estimat...
This paper addresses the question of the selection of multivariate generalized autoregressive condit...
Empirical research in finance frequently involves analysis of panel data sets. In corporate finance,...