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Generalized Planning With Deep Reinforcement Learning

Generalized Planning With Deep Reinforcement Learning

5 May 2020
Or Rivlin
Tamir Hazan
E. Karpas
    OffRL
ArXivPDFHTML

Papers citing "Generalized Planning With Deep Reinforcement Learning"

7 / 7 papers shown
Title
Unlocking Large Language Model's Planning Capabilities with Maximum Diversity Fine-tuning
Unlocking Large Language Model's Planning Capabilities with Maximum Diversity Fine-tuning
Wenjun Li
Changyu Chen
Pradeep Varakantham
54
2
0
15 Jun 2024
Return to Tradition: Learning Reliable Heuristics with Classical Machine
  Learning
Return to Tradition: Learning Reliable Heuristics with Classical Machine Learning
Dillon Z. Chen
Felipe W. Trevizan
Sylvie Thiébaux
VLM
38
8
0
25 Mar 2024
Meta-operators for Enabling Parallel Planning Using Deep Reinforcement
  Learning
Meta-operators for Enabling Parallel Planning Using Deep Reinforcement Learning
Ángel Aso-Mollar
Eva Onaindia
OffRL
29
0
0
13 Mar 2024
Scale-Adaptive Balancing of Exploration and Exploitation in Classical
  Planning
Scale-Adaptive Balancing of Exploration and Exploitation in Classical Planning
Stephen Wissow
Masataro Asai
32
2
0
16 May 2023
Understanding Sample Generation Strategies for Learning Heuristic Functions in Classical Planning
Understanding Sample Generation Strategies for Learning Heuristic Functions in Classical Planning
R. Bettker
P. Minini
André Grahl Pereira
M. Ritt
27
1
0
23 Nov 2022
Learning Feasibility of Factored Nonlinear Programs in Robotic
  Manipulation Planning
Learning Feasibility of Factored Nonlinear Programs in Robotic Manipulation Planning
Joaquim Ortiz de Haro
Jung-Su Ha
Danny Driess
E. Karpas
Marc Toussaint
32
2
0
22 Oct 2022
Planning with Learned Object Importance in Large Problem Instances using
  Graph Neural Networks
Planning with Learned Object Importance in Large Problem Instances using Graph Neural Networks
Tom Silver
Rohan Chitnis
Aidan Curtis
J. Tenenbaum
Tomas Lozano-Perez
L. Kaelbling
GNN
25
78
0
11 Sep 2020
1