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 balancing multiple source


Balancing Multiple Sources of Reward in Reinforcement Learning

Neural Information Processing Systems

For many problems which would be natural for reinforcement learning, the reward signal is not a single scalar value but has multiple scalar com(cid:173) ponents. Examples of such problems include agents with multiple goals and agents with multiple users. Creating a single reward value by com(cid:173) bining the multiple components can throwaway vital information and can lead to incorrect solutions. We describe the multiple reward source problem and discuss the problems with applying traditional reinforce(cid:173) ment learning. We then present an new algorithm for finding a solution and results on simulated environments.


Balancing Multiple Sources of Reward in Reinforcement Learning

Neural Information Processing Systems

For many problems which would be natural for reinforcement learning, the reward signal is not a single scalar value but has multiple scalar components. Examples of such problems include agents with multiple goals and agents with multiple users. Creating a single reward value by combining the multiple components can throwaway vital information and can lead to incorrect solutions. We describe the multiple reward source problem and discuss the problems with applying traditional reinforcement learning. We then present an new algorithm for finding a solution and results on simulated environments.


Balancing Multiple Sources of Reward in Reinforcement Learning

Neural Information Processing Systems

For many problems which would be natural for reinforcement learning, the reward signal is not a single scalar value but has multiple scalar components. Examples of such problems include agents with multiple goals and agents with multiple users. Creating a single reward value by combining the multiple components can throwaway vital information and can lead to incorrect solutions. We describe the multiple reward source problem and discuss the problems with applying traditional reinforcement learning. We then present an new algorithm for finding a solution and results on simulated environments.


Balancing Multiple Sources of Reward in Reinforcement Learning

Neural Information Processing Systems

For many problems which would be natural for reinforcement learning, the reward signal is not a single scalar value but has multiple scalar components. Examplesof such problems include agents with multiple goals and agents with multiple users. Creating a single reward value by combining themultiple components can throwaway vital information and can lead to incorrect solutions. We describe the multiple reward source problem and discuss the problems with applying traditional reinforcement learning.We then present an new algorithm for finding a solution and results on simulated environments.