Curious Exploration via Structured World Models Yields Zero-Shot Object Manipulation
June 22, 2022 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
Cansu Sancaktar, Sebastian Blaes, Georg Martius
arXiv ID
2206.11403
Category
cs.LG: Machine Learning
Cross-listed
cs.AI,
cs.RO
Citations
35
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
It has been a long-standing dream to design artificial agents that explore their environment efficiently via intrinsic motivation, similar to how children perform curious free play. Despite recent advances in intrinsically motivated reinforcement learning (RL), sample-efficient exploration in object manipulation scenarios remains a significant challenge as most of the relevant information lies in the sparse agent-object and object-object interactions. In this paper, we propose to use structured world models to incorporate relational inductive biases in the control loop to achieve sample-efficient and interaction-rich exploration in compositional multi-object environments. By planning for future novelty inside structured world models, our method generates free-play behavior that starts to interact with objects early on and develops more complex behavior over time. Instead of using models only to compute intrinsic rewards, as commonly done, our method showcases that the self-reinforcing cycle between good models and good exploration also opens up another avenue: zero-shot generalization to downstream tasks via model-based planning. After the entirely intrinsic task-agnostic exploration phase, our method solves challenging downstream tasks such as stacking, flipping, pick & place, and throwing that generalizes to unseen numbers and arrangements of objects without any additional training.
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