Learning to Predict Without Looking Ahead: World Models Without Forward Prediction
October 29, 2019 ยท Declared Dead ยท ๐ Neural Information Processing Systems
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Authors
C. Daniel Freeman, Luke Metz, David Ha
arXiv ID
1910.13038
Category
cs.NE: Neural & Evolutionary
Cross-listed
cs.LG
Citations
36
Venue
Neural Information Processing Systems
Last Checked
3 months ago
Abstract
Much of model-based reinforcement learning involves learning a model of an agent's world, and training an agent to leverage this model to perform a task more efficiently. While these models are demonstrably useful for agents, every naturally occurring model of the world of which we are aware---e.g., a brain---arose as the byproduct of competing evolutionary pressures for survival, not minimization of a supervised forward-predictive loss via gradient descent. That useful models can arise out of the messy and slow optimization process of evolution suggests that forward-predictive modeling can arise as a side-effect of optimization under the right circumstances. Crucially, this optimization process need not explicitly be a forward-predictive loss. In this work, we introduce a modification to traditional reinforcement learning which we call observational dropout, whereby we limit the agents ability to observe the real environment at each timestep. In doing so, we can coerce an agent into learning a world model to fill in the observation gaps during reinforcement learning. We show that the emerged world model, while not explicitly trained to predict the future, can help the agent learn key skills required to perform well in its environment. Videos of our results available at https://learningtopredict.github.io/
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