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Models/TRPO-hash

TRPO-hash

Reported on 8 benchmarks across 2 tasks · 1 paper · 2 SOTA

Note: results are matched by exact model name. Different papers may use the same name for different model variants.

Playing Games8 results

  • Atari GamesonAtari 2600 Freeway
    Score· 2016-11-15
    34
    SOTA
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Video GamesonAtari 2600 Freeway
    Score· 2016-11-15
    34
    SOTA
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Atari GamesonAtari 2600 Frostbite
    Score· 2016-11-15
    5214
    best: 631378.53 (MuZero)
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Atari GamesonAtari 2600 Montezuma's Revenge
    Score· 2016-11-15
    75
    best: 43791 (Go-Explore)
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Atari GamesonAtari 2600 Venture
    Score· 2016-11-15
    445
    best: 2623.71 (Agent57)
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Video GamesonAtari 2600 Frostbite
    Score· 2016-11-15
    5214
    best: 631378.53 (MuZero)
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Video GamesonAtari 2600 Montezuma's Revenge
    Score· 2016-11-15
    75
    best: 43791 (Go-Explore)
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717
  • Video GamesonAtari 2600 Venture
    Score· 2016-11-15
    445
    best: 2623.71 (Agent57)
    #Exploration: A Study of Count-Based Exploration for Deep Reinforcement LearningarXiv:1611.04717