Decision makers often aim to learn a treatment assignment policy under a capacity constraint on the number of agents that they can treat. When agents can respond strategically to such policies, competition arises, complicating the estimation of the effect of the policy. In this paper, we study capacity-constrained treatment assignment in the presence of such interference. We consider a dynamic model where the decision maker allocates treatments at each time step and heterogeneous agents myopically best respond to the previous treatment assignment policy. When the number of agents is large but finite, we show that the threshold for receiving treatment under a given policy converges to the policy's mean-field equilibrium threshold. Based on t...
This paper analyses the assignment problem when agents have multi-unit demand. Applications include ...
We consider a sequential blocked matching (SBM) model where strategic agents repeatedly report ordin...
This dissertation contains four essays about evolutionary learning dynamics and the quantal response...
Devising guidance on how to assign individuals to treatment is an important goal in empirical resear...
This paper studies statistical decisions for dynamic treatment assignment problems. Many policies in...
Although multi-agent reinforcement learning can tackle systems of strategically interacting entities...
The paper studies a learning model in which information about a worker’s ability can be acquired sym...
This paper studies the problem of estimating individualized treatment rules when treatment effects a...
I study the problem of a decision maker choosing a policy to allocate treatment to a heterogeneous p...
We study a modified version of the coordination game presented in [J. van Huyck, J. Cook, R. Battali...
We study the problem of sequential task allocation among selfish agents through the lens of dynamic ...
Following in the footsteps of the literature on empirical welfare maximization, this paper wants to ...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
This thesis proposes a reduced-form model of herding for a large population of boundedly rational ag...
This paper compares the leading theoretical approaches to equilibrium selection, both traditional an...
This paper analyses the assignment problem when agents have multi-unit demand. Applications include ...
We consider a sequential blocked matching (SBM) model where strategic agents repeatedly report ordin...
This dissertation contains four essays about evolutionary learning dynamics and the quantal response...
Devising guidance on how to assign individuals to treatment is an important goal in empirical resear...
This paper studies statistical decisions for dynamic treatment assignment problems. Many policies in...
Although multi-agent reinforcement learning can tackle systems of strategically interacting entities...
The paper studies a learning model in which information about a worker’s ability can be acquired sym...
This paper studies the problem of estimating individualized treatment rules when treatment effects a...
I study the problem of a decision maker choosing a policy to allocate treatment to a heterogeneous p...
We study a modified version of the coordination game presented in [J. van Huyck, J. Cook, R. Battali...
We study the problem of sequential task allocation among selfish agents through the lens of dynamic ...
Following in the footsteps of the literature on empirical welfare maximization, this paper wants to ...
We describe a generalized Q-learning type algorithm for reinforcement learning in competitive multi-...
This thesis proposes a reduced-form model of herding for a large population of boundedly rational ag...
This paper compares the leading theoretical approaches to equilibrium selection, both traditional an...
This paper analyses the assignment problem when agents have multi-unit demand. Applications include ...
We consider a sequential blocked matching (SBM) model where strategic agents repeatedly report ordin...
This dissertation contains four essays about evolutionary learning dynamics and the quantal response...