Map-based experience replay:a memory-efficient solution to catastrophic forgetting in reinforcement learning
- Link:
- Autor/in:
- Erscheinungsjahr:
- 2023
- Medientyp:
- Text
- Schlagworte:
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- catastrophic forgetting
- cognitive robotics
- continual learning
- experience replay
- growing self-organizing maps
- reinforcement learning
- Beschreibung:
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Deep reinforcement learning (RL) agents often suffer from catastrophic forgetting, forgetting previously found solutions in parts of the input space when training new data. Replay memories are a common solution to the problem by decorrelating and shuffling old and new training samples. They naively store state transitions as they arrive, without regard for redundancy. We introduce a novel cognitive-inspired replay memory approach based on the Grow-When-Required (GWR) self-organizing network, which resembles a map-based mental model of the world. Our approach organizes stored transitions into a concise environment-model-like network of state nodes and transition edges, merging similar samples to reduce the memory size and increase pair-wise distance among samples, which increases the relevancy of each sample. Overall, our study shows that map-based experience replay allows for significant memory reduction with only small decreases in performance.
- Lizenz:
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- info:eu-repo/semantics/openAccess
- Quellsystem:
- Forschungsinformationssystem der UHH
Interne Metadaten
- Quelldatensatz
- oai:www.edit.fis.uni-hamburg.de:publications/31ff40dc-d0d3-4152-9aaf-29e00a3c1cbd