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Asymptotic variance approximations for invariant estimators in uncertain asset-pricing models
Authors:Nikolay Gospodinov  Raymond Kan  Cesare Robotti
Institution:1. Federal Reserve Bank of Atlanta, Atlanta, Georgia, USA;2. University of Toronto, Toronto, Ontario, Canada;3. Imperial College London, London, UK and Queen Mary University of London, London, UK
Abstract:This article derives explicit expressions for the asymptotic variances of the maximum likelihood and continuously-updated GMM estimators in models that may not satisfy the fundamental asset-pricing 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 analysis, are illustrated using simulations and an empirical application.
Keywords:Asset pricing  asymptotic approximation  continuously-updated GMM  maximum likelihood  misspecification-robust tests  model misspecification
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