Many modern estimation methods in econometrics approximate an objective function, for instance, through simulation or discretization. These approximations typically affect both bias and variance of the resulting estimator. We first provide a higher-order expansion of such “approximate” estimators that takes into account the errors due to the use of approximations. We show how a Newton-Raphson adjustment can reduce the impact of approximations. Then we use our expansions to develop inferential tools that take into account approximation errors: we propose adjustments of the approximate estimator that remove its first-order bias and adjust its standard errors. These corrections apply to a class of approximate estimators that includes all known...
We propose a novel methodology for evaluating the accuracy of numerical solutions to dynamic economi...
We discuss the effects of model misspecifications on higher-order asymptotic approximations of the ...
This paper studies an alternative bias correction for the M-estimator, which is obtained by correcti...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
Many modern estimation methods in econometrics approximate an objective function, through simulation...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
Complex nonlinear dynamic models with an intractable likelihood or moments are increasingly common i...
The last century has seen a growing interest in complexity in economics and social sciences. The nee...
We propose a novel methodology for evaluating the accuracy of numeri-cal solutions to dynamic econom...
No CWP26/18, CeMMAP working papers from Centre for Microdata Methods and Practice, Institute for Fis...
We analyze different assessments based on simulations that applied researchers may use to evaluate t...
We derive the approximate results for the bias and mean squared error of a large class of estimators...
Maximum Likelihood learning of graphical models is not possible in problems where inference is intra...
We propose a novel methodology for evaluating the accuracy of numerical solutions to dynamic economi...
We discuss the effects of model misspecifications on higher-order asymptotic approximations of the ...
This paper studies an alternative bias correction for the M-estimator, which is obtained by correcti...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
Many modern estimation methods in econometrics approximate an objective function, for instance, thro...
Many modern estimation methods in econometrics approximate an objective function, through simulation...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
Complex nonlinear dynamic models with an intractable likelihood or moments are increasingly common i...
The last century has seen a growing interest in complexity in economics and social sciences. The nee...
We propose a novel methodology for evaluating the accuracy of numeri-cal solutions to dynamic econom...
No CWP26/18, CeMMAP working papers from Centre for Microdata Methods and Practice, Institute for Fis...
We analyze different assessments based on simulations that applied researchers may use to evaluate t...
We derive the approximate results for the bias and mean squared error of a large class of estimators...
Maximum Likelihood learning of graphical models is not possible in problems where inference is intra...
We propose a novel methodology for evaluating the accuracy of numerical solutions to dynamic economi...
We discuss the effects of model misspecifications on higher-order asymptotic approximations of the ...
This paper studies an alternative bias correction for the M-estimator, which is obtained by correcti...