2022
DOI: 10.48550/arxiv.2210.05845
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Contrastive introspection to identify critical steps in reinforcement learning

Abstract: Reinforcement learning (RL) algorithms have achieved notable success in recent years, but still struggle with fundamental issues in long-term credit assignment. It remains difficult to learn in situations where success is contingent upon multiple critical steps that are distant in time from each other and from a sparse reward; as is often the case in real life. Moreover, how RL algorithms assign credit in these difficult situations is typically not coded in a way that can rapidly generalize to new situations. … Show more

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“…Our work also links a shared principle of memory processing important for both biological and artificial learning. In particular, it relates to importance sampling (62,63) in machine learning, which enables faster acquisition (64) and more robust generalization (65).…”
Section: Waking Spw-rs Weigh and Select The Experience And Sleep Spw-...mentioning
confidence: 99%
“…Our work also links a shared principle of memory processing important for both biological and artificial learning. In particular, it relates to importance sampling (62,63) in machine learning, which enables faster acquisition (64) and more robust generalization (65).…”
Section: Waking Spw-rs Weigh and Select The Experience And Sleep Spw-...mentioning
confidence: 99%