Reinforcement learning in online principal-agent problems
The principal-agent problem arises when an entity (the agent) acts or makes decisions on behalf of another (the principal) that goes against the best interests of the principal, typically the result of asymmetric information. To address the problem, the principal can align incentives through the use...
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Nanyang Technological University
2021
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sg-ntu-dr.10356-1484872023-02-28T23:15:28Z Reinforcement learning in online principal-agent problems Yue, Ming Long PUN Chi Seng School of Physical and Mathematical Sciences Nixie Sapphira Lesmana cspun@ntu.edu.sg Social sciences::Economic theory::Microeconomics Science::Mathematics::Statistics The principal-agent problem arises when an entity (the agent) acts or makes decisions on behalf of another (the principal) that goes against the best interests of the principal, typically the result of asymmetric information. To address the problem, the principal can align incentives through the use of appropriate contracts. In this paper, we focus on online principal-agent problems. We propose the utilisation of reinforcement learning methods to allow the principal to learn to generate optimal contracts in an end-to-end fashion, solving the principal-agent problem in a model-free manner without the need for prior knowledge of the environment or explicit modelling of the problem. Bachelor of Science in Mathematical Sciences and Economics 2021-04-28T01:59:17Z 2021-04-28T01:59:17Z 2021 Final Year Project (FYP) Yue, M. L. (2021). Reinforcement learning in online principal-agent problems. Final Year Project (FYP), Nanyang Technological University, Singapore. https://hdl.handle.net/10356/148487 https://hdl.handle.net/10356/148487 en application/pdf Nanyang Technological University |
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Social sciences::Economic theory::Microeconomics Science::Mathematics::Statistics Yue, Ming Long Reinforcement learning in online principal-agent problems |
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The principal-agent problem arises when an entity (the agent) acts or makes decisions on behalf of another (the principal) that goes against the best interests of the principal, typically the result of asymmetric information. To address the problem, the principal can align incentives through the use of appropriate contracts. In this paper, we focus on online principal-agent problems. We propose the utilisation of reinforcement learning methods to allow the principal to learn to generate optimal contracts in an end-to-end fashion, solving the principal-agent problem in a model-free manner without the need for prior knowledge of the environment or explicit modelling of the problem. |
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PUN Chi Seng |
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PUN Chi Seng Yue, Ming Long |
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Final Year Project |
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Yue, Ming Long |
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Yue, Ming Long |
title |
Reinforcement learning in online principal-agent problems |
title_short |
Reinforcement learning in online principal-agent problems |
title_full |
Reinforcement learning in online principal-agent problems |
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Reinforcement learning in online principal-agent problems |
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Reinforcement learning in online principal-agent problems |
title_sort |
reinforcement learning in online principal-agent problems |
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Nanyang Technological University |
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2021 |
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https://hdl.handle.net/10356/148487 |
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