detalle del documento
IDENTIFICACIÓN

oai:arXiv.org:2411.02623

Tema
Computer Science - Artificial Inte... Computer Science - Computers and S... Computer Science - Human-Computer ... Computer Science - Machine Learnin...
Autor
Myers, Vivek Ellis, Evan Levine, Sergey Eysenbach, Benjamin Dragan, Anca
Categoría

Computer Science

Año

2024

fecha de cotización

22/1/2025

Palabras clave
human representations assistive prior learning
Métrico

Resumen

Assistive agents should make humans' lives easier.

Classically, such assistance is studied through the lens of inverse reinforcement learning, where an assistive agent (e.g., a chatbot, a robot) infers a human's intention and then selects actions to help the human reach that goal.

This approach requires inferring intentions, which can be difficult in high-dimensional settings.

We build upon prior work that studies assistance through the lens of empowerment: an assistive agent aims to maximize the influence of the human's actions such that they exert a greater control over the environmental outcomes and can solve tasks in fewer steps.

We lift the major limitation of prior work in this area--scalability to high-dimensional settings--with contrastive successor representations.

We formally prove that these representations estimate a similar notion of empowerment to that studied by prior work and provide a ready-made mechanism for optimizing it.

Empirically, our proposed method outperforms prior methods on synthetic benchmarks, and scales to Overcooked, a cooperative game setting.

Theoretically, our work connects ideas from information theory, neuroscience, and reinforcement learning, and charts a path for representations to play a critical role in solving assistive problems.

;Comment: Conference on Neural Information Processing Systems (NeurIPS), 2024

Myers, Vivek,Ellis, Evan,Levine, Sergey,Eysenbach, Benjamin,Dragan, Anca, 2024, Learning to Assist Humans without Inferring Rewards

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