Knowledge compilation for constrained combinatorial action spaces in reinforcement learning

Action-constrained reinforcement learning (ACRL), where any action taken in a state must satisfy given constraints, has several practical applications such as resource allocation in supply-demand matching, and path planning among others. A key challenge is to enforce constraints when the action spac...

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Main Authors: LING, Jiajing, SCHULER, Moritz Lukas, KUMAR, Akshat, VARAKANTHAM, Pradeep
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Language:English
Published: Institutional Knowledge at Singapore Management University 2023
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Online Access:https://ink.library.smu.edu.sg/sis_research/8592
https://ink.library.smu.edu.sg/context/sis_research/article/9595/viewcontent/Knowledge_Compilation_for_Constrained_Combinatorial_Action_Spaces_in_Reinforcement_Learning.pdf
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spelling sg-smu-ink.sis_research-95952024-01-25T08:45:02Z Knowledge compilation for constrained combinatorial action spaces in reinforcement learning LING, Jiajing SCHULER, Moritz Lukas KUMAR, Akshat VARAKANTHAM, Pradeep Action-constrained reinforcement learning (ACRL), where any action taken in a state must satisfy given constraints, has several practical applications such as resource allocation in supply-demand matching, and path planning among others. A key challenge is to enforce constraints when the action space is discrete and combinatorial. To address this, first, we assume an action is represented using propositional variables, and action constraints are represented using Boolean functions. Second, we compactly encode the set of all valid actions that satisfy action constraints using a probabilistic sentential decision diagram (PSDD), a recently proposed knowledge compilation framework. Parameters of the PSDD compactly encode the probability distribution over all valid actions. Consequently, the learning task becomes optimizing PSDD parameters to maximize the RL objective. Third, we show how to embed the PSDD parameters using deep neural networks, and optimize them using a deep Q-learning based algorithm. By design, our approach is guaranteed to never violate any constraint, and does not involve any expensive projection step over the constraint space. Finally, we show how practical resource allocation constraints can be encoded using a PSDD. Empirically, our approach works better than previous ACRL methods, which often violate constraints, and are not scalable as they involve computationally expensive projection-over-constraints step. 2023-06-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/8592 https://ink.library.smu.edu.sg/context/sis_research/article/9595/viewcontent/Knowledge_Compilation_for_Constrained_Combinatorial_Action_Spaces_in_Reinforcement_Learning.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Action spaces Action-constrained RL Combinatorial action Decision diagram Knowledge compilation Neuro-symbolic AI Probabilistics Reinforcement learnings Resources allocation Supply-demand Databases and Information Systems
institution Singapore Management University
building SMU Libraries
continent Asia
country Singapore
Singapore
content_provider SMU Libraries
collection InK@SMU
language English
topic Action spaces
Action-constrained RL
Combinatorial action
Decision diagram
Knowledge compilation
Neuro-symbolic AI
Probabilistics
Reinforcement learnings
Resources allocation
Supply-demand
Databases and Information Systems
spellingShingle Action spaces
Action-constrained RL
Combinatorial action
Decision diagram
Knowledge compilation
Neuro-symbolic AI
Probabilistics
Reinforcement learnings
Resources allocation
Supply-demand
Databases and Information Systems
LING, Jiajing
SCHULER, Moritz Lukas
KUMAR, Akshat
VARAKANTHAM, Pradeep
Knowledge compilation for constrained combinatorial action spaces in reinforcement learning
description Action-constrained reinforcement learning (ACRL), where any action taken in a state must satisfy given constraints, has several practical applications such as resource allocation in supply-demand matching, and path planning among others. A key challenge is to enforce constraints when the action space is discrete and combinatorial. To address this, first, we assume an action is represented using propositional variables, and action constraints are represented using Boolean functions. Second, we compactly encode the set of all valid actions that satisfy action constraints using a probabilistic sentential decision diagram (PSDD), a recently proposed knowledge compilation framework. Parameters of the PSDD compactly encode the probability distribution over all valid actions. Consequently, the learning task becomes optimizing PSDD parameters to maximize the RL objective. Third, we show how to embed the PSDD parameters using deep neural networks, and optimize them using a deep Q-learning based algorithm. By design, our approach is guaranteed to never violate any constraint, and does not involve any expensive projection step over the constraint space. Finally, we show how practical resource allocation constraints can be encoded using a PSDD. Empirically, our approach works better than previous ACRL methods, which often violate constraints, and are not scalable as they involve computationally expensive projection-over-constraints step.
format text
author LING, Jiajing
SCHULER, Moritz Lukas
KUMAR, Akshat
VARAKANTHAM, Pradeep
author_facet LING, Jiajing
SCHULER, Moritz Lukas
KUMAR, Akshat
VARAKANTHAM, Pradeep
author_sort LING, Jiajing
title Knowledge compilation for constrained combinatorial action spaces in reinforcement learning
title_short Knowledge compilation for constrained combinatorial action spaces in reinforcement learning
title_full Knowledge compilation for constrained combinatorial action spaces in reinforcement learning
title_fullStr Knowledge compilation for constrained combinatorial action spaces in reinforcement learning
title_full_unstemmed Knowledge compilation for constrained combinatorial action spaces in reinforcement learning
title_sort knowledge compilation for constrained combinatorial action spaces in reinforcement learning
publisher Institutional Knowledge at Singapore Management University
publishDate 2023
url https://ink.library.smu.edu.sg/sis_research/8592
https://ink.library.smu.edu.sg/context/sis_research/article/9595/viewcontent/Knowledge_Compilation_for_Constrained_Combinatorial_Action_Spaces_in_Reinforcement_Learning.pdf
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