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Task Adaptation from Skills: Information Geometry, Disentanglement, and New Objectives for Unsupervised Reinforcement Learning

Task Adaptation from Skills: Information Geometry, Disentanglement, and New Objectives for Unsupervised Reinforcement Learning

12 June 2025
Yucheng Yang
Tianyi Zhou
Qiang He
Lei Han
Mykola Pechenizkiy
Meng Fang
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Papers citing "Task Adaptation from Skills: Information Geometry, Disentanglement, and New Objectives for Unsupervised Reinforcement Learning"

3 / 3 papers shown
Title
AMPED: Adaptive Multi-objective Projection for balancing Exploration and skill Diversification
AMPED: Adaptive Multi-objective Projection for balancing Exploration and skill Diversification
Geonwoo Cho
Jaemoon Lee
Jaegyun Im
Subi Lee
Jihwan Lee
Sundong Kim
40
0
0
06 Jun 2025
Learning Generalizable Skills from Offline Multi-Task Data for Multi-Agent Cooperation
Learning Generalizable Skills from Offline Multi-Task Data for Multi-Agent Cooperation
Sicong Liu
Yang Shu
Chenjuan Guo
Bin Yang
OffRL
109
4
0
27 Mar 2025
Acquiring Diverse Skills using Curriculum Reinforcement Learning with
  Mixture of Experts
Acquiring Diverse Skills using Curriculum Reinforcement Learning with Mixture of Experts
Onur Celik
Aleksandar Taranovic
Gerhard Neumann
93
10
0
11 Mar 2024
1