2022
DOI: 10.1145/3473036
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Unsupervised Digit Recognition Using Cosine Similarity In A Neuromemristive Competitive Learning System

Abstract: This work addresses how to naturally adopt the l 2 -norm cosine similarity in the neuromemristive system and studies the unsupervised learning performance on handwritten digit image recognition. Proposed architecture is a two-layer fully connected neural network with a hard winner-take-all (WTA) learning module. For input layer, we propose single-spike temporal code that transforms input stimuli into the set of single spikes with different latencies and voltage levels. For a… Show more

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