This paper derives explicit expressions for the asymptotic variances of the maximum likelihood and continuously-updated GMM estimators in models that may not satisfy the fundamental assetpricing restrictions in population. The proposed misspecification-robust variance estimators allow the researcher to conduct valid inference on the model parameters even when the model is rejected by the data. While the results for the maximum likelihood estimator are only applicable to linear asset-pricing models, the asymptotic distribution of the continuously-updated GMM estimator is derived for general, possibly nonlinear, models. The large corrections in the asymptotic variances, that arise from explicitly incorporating model misspecification in the an...
International audienceWe implement a new framework to mitigate the errors-in-variables (EIV) problem...
In this chapter, we propose exact inference procedures for asset pricing models that can be formulat...
International audienceWe implement a new framework to mitigate the errors-in-variables (EIV) problem...
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
This paper studies some seemingly anomalous results that arise in possibly misspecified and uniden-t...
This paper shows that in misspecified models with risk factors that are uncorrelated with the test a...
This paper proposes a GMM-based method for asymptotic confidence interval construction in stationary...
This paper develops asymptotic distribution theory for generalized method of moments (GMM) estimator...
We derive some approximations for the asymptotic variance of the Maximum Likelihood estimator for th...
We consider time series models of the MA (moving average) family, and deal with the estimation of th...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
The aim of this article is to discuss the estimation of the systematic risk in capital asset pricing...
In this paper, we derive a generalized method of moments (GMM) estimator for variance in markets wit...
Abstract: In this paper, we first develop the modified maximum likelihood (MML) estimators for the m...
We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. ...
International audienceWe implement a new framework to mitigate the errors-in-variables (EIV) problem...
In this chapter, we propose exact inference procedures for asset pricing models that can be formulat...
International audienceWe implement a new framework to mitigate the errors-in-variables (EIV) problem...
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
This paper studies some seemingly anomalous results that arise in possibly misspecified and uniden-t...
This paper shows that in misspecified models with risk factors that are uncorrelated with the test a...
This paper proposes a GMM-based method for asymptotic confidence interval construction in stationary...
This paper develops asymptotic distribution theory for generalized method of moments (GMM) estimator...
We derive some approximations for the asymptotic variance of the Maximum Likelihood estimator for th...
We consider time series models of the MA (moving average) family, and deal with the estimation of th...
This paper investigates model risk issues in the context of mean-variance portfolio selection. We an...
The aim of this article is to discuss the estimation of the systematic risk in capital asset pricing...
In this paper, we derive a generalized method of moments (GMM) estimator for variance in markets wit...
Abstract: In this paper, we first develop the modified maximum likelihood (MML) estimators for the m...
We study the realized variance of sample minimum variance portfolios of arbitrarily high dimension. ...
International audienceWe implement a new framework to mitigate the errors-in-variables (EIV) problem...
In this chapter, we propose exact inference procedures for asset pricing models that can be formulat...
International audienceWe implement a new framework to mitigate the errors-in-variables (EIV) problem...