A neurally plausible model learns successor representations in partially observable environments
–Neural Information Processing Systems
However, it is not clear how such representations might be learned and computed in partially observed, noisy environments. Here, we introduce a neurally plausible model using distributional successor features, which builds on the distributed distributional code for the representation and computation of uncertainty, and which allows for efficient value function computation in partially observed environments via the successor representation.
Neural Information Processing Systems
Aug-20-2025, 05:53:52 GMT
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