This paper shows that in misspecified models with risk factors that are uncorrelated with the test asset returns, the conventional inference methods tend to erroneously conclude, with high probability, that these factors are priced. Our proposed model selection procedure, which is robust to identification failure and potential model misspecification, restores the standard inference and proves to be effective in eliminating factors that do not improve the model's pricing ability. Applying our methodology to several popular asset-pricing models suggests that only the market and book-to-market factors appear to be priced, while the statistical evidence on the pricing ability of many macroeconomic factors is rather weak
Procedures are presented that allow the empiricist to estimate and test asset pricing models on limi...
We derive a parsimonious returns-based stochastic discount factor that is robust to model misspecifi...
We revisit financial market integration and study the impact of multiple risk factors and model spec...
This paper studies some seemingly anomalous results that arise in possibly misspecified and uniden-t...
This paper is concerned with statistical inference and model evaluation in possibly misspecified and...
We study some seemingly anomalous results that arise in possibly misspecified, reduced-rank linear as...
This thesis investigates the identification robust tests in linear factor models used in empirical fin...
In a 1997 paper, Hansen and Jagannathan develop two pricing error measures for asset pricing models....
We examine theoretical and econometric issues in the estimation of risk premia in a linear factor mo...
International audienceWe apply Bayesian variable selection to investigate linear factor asset pricin...
In this paper we are concerned with the role of factor strength and pricing errors in asset pricing ...
We analyze factor models based on the Arbitrage Pricing Theory (APT). using identification-r...
We introduce a framework that robustifies two-pass Fama–MacBeth regressions, in the sense that confi...
This thesis develops new methods in empirical asset pricing which are valid when a large number of a...
An important but still partially unanswered question in the investment field is why different assets...
Procedures are presented that allow the empiricist to estimate and test asset pricing models on limi...
We derive a parsimonious returns-based stochastic discount factor that is robust to model misspecifi...
We revisit financial market integration and study the impact of multiple risk factors and model spec...
This paper studies some seemingly anomalous results that arise in possibly misspecified and uniden-t...
This paper is concerned with statistical inference and model evaluation in possibly misspecified and...
We study some seemingly anomalous results that arise in possibly misspecified, reduced-rank linear as...
This thesis investigates the identification robust tests in linear factor models used in empirical fin...
In a 1997 paper, Hansen and Jagannathan develop two pricing error measures for asset pricing models....
We examine theoretical and econometric issues in the estimation of risk premia in a linear factor mo...
International audienceWe apply Bayesian variable selection to investigate linear factor asset pricin...
In this paper we are concerned with the role of factor strength and pricing errors in asset pricing ...
We analyze factor models based on the Arbitrage Pricing Theory (APT). using identification-r...
We introduce a framework that robustifies two-pass Fama–MacBeth regressions, in the sense that confi...
This thesis develops new methods in empirical asset pricing which are valid when a large number of a...
An important but still partially unanswered question in the investment field is why different assets...
Procedures are presented that allow the empiricist to estimate and test asset pricing models on limi...
We derive a parsimonious returns-based stochastic discount factor that is robust to model misspecifi...
We revisit financial market integration and study the impact of multiple risk factors and model spec...