Many modern estimation methods in econometrics approximate an objective function, through simulation or discretization for instance. The resulting "approximate" estimator is often biased; and it always incurs an efficiency loss. We here propose three methods to improve the properties of such approximate estimators at a low computational cost. The first two methods correct the objective function so as to remove the leading term of the bias due to the approximation. One variant provides an analytical bias adjustment, but it only works for estimators based on stochastic approximators, such as simulation-based estimators. Our second bias correction is based on ideas from the resampling literature; it eliminates the leading bias term for non-sto...
Approximate Bayesian Computation is a family of likelihood-free inference techniques that are well s...
This chapter discusses simulation estimation methods that overcome the computational intractability ...
We consider the problem of identifying the optimal point of an objective in simulation experiments w...
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...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
In non-linear estimations, it is common to assess sampling uncertainty by bootstrap inference. For c...
The ideal estimation method needs to fulfill three requirements: (i) efficient computation, (ii) sta...
This paper describes a method for enhancing the performance of stochastic approximation (s.a.) techn...
Approximation algorithms employing Monte Carlo methods, across application domains, often require as...
In this dissertation, we propose two new types of stochastic approximation (SA) methods and study th...
In this paper, we present various iterative algorithms for extremum estimation in cases where direct...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
Complex nonlinear dynamic models with an intractable likelihood or moments are increasingly common i...
Approximate Bayesian Computation is a family of likelihood-free inference techniques that are well s...
This chapter discusses simulation estimation methods that overcome the computational intractability ...
We consider the problem of identifying the optimal point of an objective in simulation experiments w...
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...
Nowadays, the increase in data size and model complexity has led to increasingly difficult estimatio...
Along the ever increasing data size and model complexity, an important challenge frequently encounte...
In non-linear estimations, it is common to assess sampling uncertainty by bootstrap inference. For c...
The ideal estimation method needs to fulfill three requirements: (i) efficient computation, (ii) sta...
This paper describes a method for enhancing the performance of stochastic approximation (s.a.) techn...
Approximation algorithms employing Monte Carlo methods, across application domains, often require as...
In this dissertation, we propose two new types of stochastic approximation (SA) methods and study th...
In this paper, we present various iterative algorithms for extremum estimation in cases where direct...
The practical aspect of the stochastic approximation method (SA) is studied. Specifically, we inves...
Complex nonlinear dynamic models with an intractable likelihood or moments are increasingly common i...
Approximate Bayesian Computation is a family of likelihood-free inference techniques that are well s...
This chapter discusses simulation estimation methods that overcome the computational intractability ...
We consider the problem of identifying the optimal point of an objective in simulation experiments w...