Concepedia

Concept

model-free learning

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231

Publications

17K

Citations

637

Authors

200

Institutions

About

Model-free learning is a methodological approach within reinforcement learning where an agent learns optimal policies directly from interactions with an environment, without explicitly modeling the environment's dynamics or reward function. This paradigm focuses on learning value functions or policies from experienced trajectories rather than relying on an internal representation of the environment model.

Top Authors

Rankings shown are based on concept H-Index.

SL

University of California, Berkeley

PA

University of California, Berkeley

ML

Rutgers, The State University of New Jersey

IC

University of California, Berkeley

ND

Princeton University

Top Institutions

Rankings shown are based on concept H-Index.

University of California, Berkeley

Berkeley, United States

Google (United States)

Mountain View, United States

Princeton University

Princeton, United States

New York University

New York, United States

University of Alberta

Edmonton, Canada