This chapter discusses simulation estimation methods that overcome the computational intractability of classical estimation of limited dependent variable models with flexible correlation structures in the unobservable stochastic terms. These difficulties arise because of the need to evaluate accurately very high dimensional integrals. The methods based on simulation do not require the exact evaluation of these integrals and hence are feasible using computers of even moderate power. I first discuss a series of ideas that had been used in efforts to circumvent these computational problems by employing standard numerical analysis approximation methods. I then show how simulation techniques solve the computational problems without the need to reso...
The method of simulated scores (MSS) is presented for estimating LDV models with flexible correlatio...
Sampling-based computational methods have become a fundamental part of the numerical toolset of prac...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...
This chapter discusses simulation estimation methods that overcome the computational intractability ...
This paper discusses estimation methods for limited dependent variable (LDV) models that employ Mont...
Simulation estimation in the context of panel data, limited dependent-variable (LDV) models poses fo...
The method of simulated scores (MSS) is presented for estimating limited dependent variables models ...
We apply a new simulation method that solves the multidimensional probability integrals that arise i...
The focus of this thesis is twofold. First, it delivers a new look at existing simulation-based meth...
This paper looks at the problem of performing likelihood inference for limited dependent processes. ...
This paper looks at the problem of performing likelihood inference for limited dependent processes. ...
In this book, we study theoretical and practical aspects of computing methods for mathematical model...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
A consistent two-step estimation procedure is proposed for a system of equations with limited depend...
We look at numerical methods for simulation of stochastic differential equations exhibiting volatili...
The method of simulated scores (MSS) is presented for estimating LDV models with flexible correlatio...
Sampling-based computational methods have become a fundamental part of the numerical toolset of prac...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...
This chapter discusses simulation estimation methods that overcome the computational intractability ...
This paper discusses estimation methods for limited dependent variable (LDV) models that employ Mont...
Simulation estimation in the context of panel data, limited dependent-variable (LDV) models poses fo...
The method of simulated scores (MSS) is presented for estimating limited dependent variables models ...
We apply a new simulation method that solves the multidimensional probability integrals that arise i...
The focus of this thesis is twofold. First, it delivers a new look at existing simulation-based meth...
This paper looks at the problem of performing likelihood inference for limited dependent processes. ...
This paper looks at the problem of performing likelihood inference for limited dependent processes. ...
In this book, we study theoretical and practical aspects of computing methods for mathematical model...
This thesis proposes new analysis tools for simulation models in the presence of data. To achieve a ...
A consistent two-step estimation procedure is proposed for a system of equations with limited depend...
We look at numerical methods for simulation of stochastic differential equations exhibiting volatili...
The method of simulated scores (MSS) is presented for estimating LDV models with flexible correlatio...
Sampling-based computational methods have become a fundamental part of the numerical toolset of prac...
We develop numerically stable stochastic simulation approaches for solving dynamic economic models. ...