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arxiv: 1712.10062 · v1 · pith:GJCORY5Inew · submitted 2017-12-28 · 🧬 q-bio.NC · cs.LG· cs.NE· stat.ML

Multi-timescale memory dynamics in a reinforcement learning network with attention-gated memory

classification 🧬 q-bio.NC cs.LGcs.NEstat.ML
keywords memorylearningnetworkaugmentattention-gateddynamicshierarchicalhigher-level
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Learning and memory are intertwined in our brain and their relationship is at the core of several recent neural network models. In particular, the Attention-Gated MEmory Tagging model (AuGMEnT) is a reinforcement learning network with an emphasis on biological plausibility of memory dynamics and learning. We find that the AuGMEnT network does not solve some hierarchical tasks, where higher-level stimuli have to be maintained over a long time, while lower-level stimuli need to be remembered and forgotten over a shorter timescale. To overcome this limitation, we introduce hybrid AuGMEnT, with leaky or short-timescale and non-leaky or long-timescale units in memory, that allow to exchange lower-level information while maintaining higher-level one, thus solving both hierarchical and distractor tasks.

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