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A Novel Framework for Neural Architecture Search in the Hill Climbing
  Domain

A Novel Framework for Neural Architecture Search in the Hill Climbing Domain

22 February 2021
Mudit Verma
Pradyumn Sinha
Karan Goyal
Apoorva Verma
Seba Susan
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Papers citing "A Novel Framework for Neural Architecture Search in the Hill Climbing Domain"

3 / 3 papers shown
Title
Evolution and Efficiency in Neural Architecture Search: Bridging the Gap
  Between Expert Design and Automated Optimization
Evolution and Efficiency in Neural Architecture Search: Bridging the Gap Between Expert Design and Automated Optimization
Fanfei Meng
Chen-Ao Wang
Alexander Brown
11
1
0
11 Feb 2024
A State Augmentation based approach to Reinforcement Learning from Human
  Preferences
A State Augmentation based approach to Reinforcement Learning from Human Preferences
Mudit Verma
Subbarao Kambhampati
30
2
0
17 Feb 2023
Neural Architecture Search with Reinforcement Learning
Neural Architecture Search with Reinforcement Learning
Barret Zoph
Quoc V. Le
271
5,329
0
05 Nov 2016
1