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Main Authors: Aydın, Hüseyin, Godin-Dubois, Kevin, Braz, Libio Goncalvez, Hengst, Floris den, Baraka, Kim, Çelikok, Mustafa Mert, Sauter, Andreas, Wang, Shihan, Oliehoek, Frans A.
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2501.19245
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author Aydın, Hüseyin
Godin-Dubois, Kevin
Braz, Libio Goncalvez
Hengst, Floris den
Baraka, Kim
Çelikok, Mustafa Mert
Sauter, Andreas
Wang, Shihan
Oliehoek, Frans A.
author_facet Aydın, Hüseyin
Godin-Dubois, Kevin
Braz, Libio Goncalvez
Hengst, Floris den
Baraka, Kim
Çelikok, Mustafa Mert
Sauter, Andreas
Wang, Shihan
Oliehoek, Frans A.
contents Reinforcement learning (RL) offers a general approach for modeling and training AI agents, including human-AI interaction scenarios. In this paper, we propose SHARPIE (Shared Human-AI Reinforcement Learning Platform for Interactive Experiments) to address the need for a generic framework to support experiments with RL agents and humans. Its modular design consists of a versatile wrapper for RL environments and algorithm libraries, a participant-facing web interface, logging utilities, deployment on popular cloud and participant recruitment platforms. It empowers researchers to study a wide variety of research questions related to the interaction between humans and RL agents, including those related to interactive reward specification and learning, learning from human feedback, action delegation, preference elicitation, user-modeling, and human-AI teaming. The platform is based on a generic interface for human-RL interactions that aims to standardize the field of study on RL in human contexts.
format Preprint
id arxiv_https___arxiv_org_abs_2501_19245
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle SHARPIE: A Modular Framework for Reinforcement Learning and Human-AI Interaction Experiments
Aydın, Hüseyin
Godin-Dubois, Kevin
Braz, Libio Goncalvez
Hengst, Floris den
Baraka, Kim
Çelikok, Mustafa Mert
Sauter, Andreas
Wang, Shihan
Oliehoek, Frans A.
Artificial Intelligence
Human-Computer Interaction
Reinforcement learning (RL) offers a general approach for modeling and training AI agents, including human-AI interaction scenarios. In this paper, we propose SHARPIE (Shared Human-AI Reinforcement Learning Platform for Interactive Experiments) to address the need for a generic framework to support experiments with RL agents and humans. Its modular design consists of a versatile wrapper for RL environments and algorithm libraries, a participant-facing web interface, logging utilities, deployment on popular cloud and participant recruitment platforms. It empowers researchers to study a wide variety of research questions related to the interaction between humans and RL agents, including those related to interactive reward specification and learning, learning from human feedback, action delegation, preference elicitation, user-modeling, and human-AI teaming. The platform is based on a generic interface for human-RL interactions that aims to standardize the field of study on RL in human contexts.
title SHARPIE: A Modular Framework for Reinforcement Learning and Human-AI Interaction Experiments
topic Artificial Intelligence
Human-Computer Interaction
url https://arxiv.org/abs/2501.19245