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arxiv: 1704.02019 · v2 · pith:CFEZZASInew · submitted 2017-04-06 · 🧬 q-bio.NC · cs.NE

Associative content-addressable networks with exponentially many robust stable states

classification 🧬 q-bio.NC cs.NE
keywords networkassociativemanynetworksneuralstatesbraincontent-addressable
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The brain must robustly store a large number of memories, corresponding to the many events encountered over a lifetime. However, the number of memory states in existing neural network models either grows weakly with network size or recall fails catastrophically with vanishingly little noise. We construct an associative content-addressable memory with exponentially many stable states and robust error-correction. The network possesses expander graph connectivity on a restricted Boltzmann machine architecture. The expansion property allows simple neural network dynamics to perform at par with modern error-correcting codes. Appropriate networks can be constructed with sparse random connections, glomerular nodes, and associative learning using low dynamic-range weights. Thus, sparse quasi-random structures---characteristic of important error-correcting codes---may provide for high-performance computation in artificial neural networks and the brain.

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