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A neurally plausible model learns successor representations in partially observable environments

Eszter Vértes, Maneesh Sahani

Feb-14-2026, 15:23:48 GMT–Neural Information Processing Systems 

Neural Information Processing Systems http://nips.cc/

  representation, successor representation, value function, (17 more...)

Neural Information Processing Systems

Feb-14-2026, 15:23:48 GMT

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