Unsupervised Digit Recognition Using Cosine Similarity In A Neuromemristive Competitive Learning System


연구 분야: Artificial Intelligence



학회: ACM Journal on Emerging Technologies in Computing Systems (JETC), Volume 18, Issue 2


초록

This work addresses how to naturally adopt the l2-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 synapse model, we employ a compound memristor where stochastically switching binary-state memristors connected in parallel, which offers a reliable and scalable multi-state solution for synaptic weight storage. Hardware-friendly synaptic adaptation mechanism is proposed to realize spike-timing-dependent plasticity learning. Input spikes are sent out through those memristive synapses to each and every integrate-and-fire neuron in the fully connected output layer, where the hard WTA network motif introduces the competition based on cosine similarity for the given input stimuli. Finally, we present 92.64% accuracy performance on unsupervised digit recognition with only single-epoch MNIST dataset training via high-level simulations, including extensive analysis on the impact of system parameters.


Author Profile
Bonwoong Ku

Synopsys Inc. Sunnyvale CA

Canada
Author Profile
Catherine D Schuman

Oak Ridge National Laboratory Oak Ridge TN

Tunisia
Author Profile
Md Musabbir Adnan

The University of Tennessee Knoxville TN

Tunisia

📄 논문 정보

발행 연도 2022년
인용수 1
출판 국가 Gabon, Tunisia, Canada
사이트 ACM
좋아요 수 0

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