Evidence-based or data-driven dynamic treatment regimes are essential for personalized medicine, which can benefit from offline reinforcement learning (RL). Although massive healthcare data are available across medical institutions, they are prohibited from sharing due to privacy constraints. Besides, heterogeneity exists in different sites. As a result, federated offline RL algorithms are necessary and promising to deal with the problems. In this paper, we propose a multi-site Markov decision process model which allows for both homogeneous and heterogeneous effects across sites. The proposed model makes the analysis of the site-level features possible. We design the first federated policy optimization algorithm for offline RL with sample c...
Integrating real-world data (RWD) from several clinical sites offers great opportunities to improve ...
Offline reinforcement learning (RL) extends the paradigm of classical RL algorithms to purely learni...
Policy constraint methods to offline reinforcement learning (RL) typically utilize parameterization ...
We consider reinforcement learning (RL) methods in offline domains without additional online data co...
We consider reinforcement learning (RL) methods in offline domains without additional online data co...
Conventional reinforcement learning (RL) needs an environment to collect fresh data, which is imprac...
The thesis is divided into two parts. The first part focuses on a healthcare-related application of ...
Performance of state-of-the art offline and model-based reinforcement learning (RL) algorithms deter...
Offline reinforcement learning (offline RL) considers problems where learning is performed using onl...
In this dissertation we develop new methodologies and frameworks to address challenges in offline re...
International audienceOffline Reinforcement Learning (RL) aims to turn large datasets into powerful ...
We propose and analyze iterative algorithms that are computationally efficient, statistically sound ...
Offline policy evaluation (OPE) is considered a fundamental and challenging problem in reinforcement...
Offline reinforcement learning (RL) aims at learning an optimal strategy using a pre-collected datas...
Rationale: Covid-19 is certainly one of the worst pandemics ever. In the absence of a vaccine, class...
Integrating real-world data (RWD) from several clinical sites offers great opportunities to improve ...
Offline reinforcement learning (RL) extends the paradigm of classical RL algorithms to purely learni...
Policy constraint methods to offline reinforcement learning (RL) typically utilize parameterization ...
We consider reinforcement learning (RL) methods in offline domains without additional online data co...
We consider reinforcement learning (RL) methods in offline domains without additional online data co...
Conventional reinforcement learning (RL) needs an environment to collect fresh data, which is imprac...
The thesis is divided into two parts. The first part focuses on a healthcare-related application of ...
Performance of state-of-the art offline and model-based reinforcement learning (RL) algorithms deter...
Offline reinforcement learning (offline RL) considers problems where learning is performed using onl...
In this dissertation we develop new methodologies and frameworks to address challenges in offline re...
International audienceOffline Reinforcement Learning (RL) aims to turn large datasets into powerful ...
We propose and analyze iterative algorithms that are computationally efficient, statistically sound ...
Offline policy evaluation (OPE) is considered a fundamental and challenging problem in reinforcement...
Offline reinforcement learning (RL) aims at learning an optimal strategy using a pre-collected datas...
Rationale: Covid-19 is certainly one of the worst pandemics ever. In the absence of a vaccine, class...
Integrating real-world data (RWD) from several clinical sites offers great opportunities to improve ...
Offline reinforcement learning (RL) extends the paradigm of classical RL algorithms to purely learni...
Policy constraint methods to offline reinforcement learning (RL) typically utilize parameterization ...