This paper is concerned with statistical inference and model evaluation in possibly misspecified and unidentified linear asset-pricing models estimated by maximum likelihood. Strikingly, when spurious factors (that is, factors that are uncorrelated with the returns on the test assets) are present, the models exhibit perfect fit, as measured by the squared correlation between the model's fitted expected returns and the average realized returns. Furthermore, factors that are spurious are selected with high probability, while factors that are useful are driven out of the model. While ignoring potential misspecification and lack of identification can be very problematic for models with macroeconomic factors, empirical specifications with traded...
- Abstract-A set of recent papers attempts to explain the size and book-to-market anoma-lies with co...
In this paper we propose a multivariate regression based assessment of the multifactor model first d...
Asset pricing models are, at best, approximations of reality and are bound to be misspecified. Howev...
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...
In this paper we are concerned with the role of factor strength and pricing errors in asset pricing ...
We study some seemingly anomalous results that arise in possibly misspecified, reduced-rank linear as...
We identify and horse race three causes for the underperformance of some asset pricing models: inves...
In a 1997 paper, Hansen and Jagannathan develop two pricing error measures for asset pricing models....
An important but still partially unanswered question in the investment field is why different assets...
We study asset pricing when agents face risk and uncertainty and empirically demonstrate that uncert...
We examine theoretical and econometric issues in the estimation of risk premia in a linear factor mo...
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
This study considers three alternative sources of information about volatility potentially useful in...
Despite their popularities in recent years, factor models have long been criticized for the lack of ...
- Abstract-A set of recent papers attempts to explain the size and book-to-market anoma-lies with co...
In this paper we propose a multivariate regression based assessment of the multifactor model first d...
Asset pricing models are, at best, approximations of reality and are bound to be misspecified. Howev...
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...
In this paper we are concerned with the role of factor strength and pricing errors in asset pricing ...
We study some seemingly anomalous results that arise in possibly misspecified, reduced-rank linear as...
We identify and horse race three causes for the underperformance of some asset pricing models: inves...
In a 1997 paper, Hansen and Jagannathan develop two pricing error measures for asset pricing models....
An important but still partially unanswered question in the investment field is why different assets...
We study asset pricing when agents face risk and uncertainty and empirically demonstrate that uncert...
We examine theoretical and econometric issues in the estimation of risk premia in a linear factor mo...
This article derives explicit expressions for the asymptotic variances of the maximum likelihood and...
This study considers three alternative sources of information about volatility potentially useful in...
Despite their popularities in recent years, factor models have long been criticized for the lack of ...
- Abstract-A set of recent papers attempts to explain the size and book-to-market anoma-lies with co...
In this paper we propose a multivariate regression based assessment of the multifactor model first d...
Asset pricing models are, at best, approximations of reality and are bound to be misspecified. Howev...