We consider a general class of nonlinear optimal policy problems involving forward-looking constraints (such as the Euler equations that are typically present as structural equations in DSGE models), and show that it is possible, under regularity conditions that are straightforward to check, to derive a problem with linear constraints and a quadratic objective that approximates the exact problem. The LQ approximate problem is computationally simple to solve, even in the case of moderately large state spaces and flexibly parameterized disturbance processes, and its solution represents a local linear approximation to the optimal policy for the exact model in the case that stochastic disturbances are small enough. We derive the second-order co...
The paper suggests an approach to characterizing global solutions for optimal control problems with ...
We explore reinforcement learning methods for finding the optimal policy in the linear quadratic reg...
. We consider an arbitrary linear program with equilibrium constraints (LPEC) that may possibly be i...
We consider a general class of nonlinear optimal policy problems involving forward-looking constrain...
We consider a general class of nonlinear optimal policy problems involving forward-looking constrain...
This paper describes a series of algorithms that are used to compute optimal policy under full and i...
We examine linear-quadratic (LQ) approximation of stochastic dynamic optimization problems in macroe...
We examine the linear-quadratic (LQ) approximation of non-linear stochastic dynamic optimization pro...
We reconsider the optimal taxation of income from labor and capital in the stochastic growth model a...
AbstractThe quadratic approximation of a linear mapping under affine constraints is a central proble...
In this paper, we determine the approximation ratio of a linear-saturated control policy of a typica...
This paper establishes that one can generally obtain a purely quadratic approximation to the uncondi...
In this paper, we determine the approximation ratio of a linear-saturated control policy of a typica...
We consider an arbitrary linear program with equilibrium constrains (LPEC) that may possibly be infe...
We reconsider the optimal taxation of income from labor and capital in the stochastic growth model a...
The paper suggests an approach to characterizing global solutions for optimal control problems with ...
We explore reinforcement learning methods for finding the optimal policy in the linear quadratic reg...
. We consider an arbitrary linear program with equilibrium constraints (LPEC) that may possibly be i...
We consider a general class of nonlinear optimal policy problems involving forward-looking constrain...
We consider a general class of nonlinear optimal policy problems involving forward-looking constrain...
This paper describes a series of algorithms that are used to compute optimal policy under full and i...
We examine linear-quadratic (LQ) approximation of stochastic dynamic optimization problems in macroe...
We examine the linear-quadratic (LQ) approximation of non-linear stochastic dynamic optimization pro...
We reconsider the optimal taxation of income from labor and capital in the stochastic growth model a...
AbstractThe quadratic approximation of a linear mapping under affine constraints is a central proble...
In this paper, we determine the approximation ratio of a linear-saturated control policy of a typica...
This paper establishes that one can generally obtain a purely quadratic approximation to the uncondi...
In this paper, we determine the approximation ratio of a linear-saturated control policy of a typica...
We consider an arbitrary linear program with equilibrium constrains (LPEC) that may possibly be infe...
We reconsider the optimal taxation of income from labor and capital in the stochastic growth model a...
The paper suggests an approach to characterizing global solutions for optimal control problems with ...
We explore reinforcement learning methods for finding the optimal policy in the linear quadratic reg...
. We consider an arbitrary linear program with equilibrium constraints (LPEC) that may possibly be i...