Recall Performance for Content-Addressable Memory Using Adiabatic Quantum Optimization

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Abstract

A content-addressable memory (CAM) stores key-value associations such that the key is recalled by providing its associated value. While CAM recall is traditionally performed using recurrent neural network models, we show how to solve this problem using adiabatic quantum optimization. Our approach maps the recurrent neural network to a commercially available quantum processing unit by taking advantage of the common underlying Ising spin model. We then assess the accuracy of the quantum processor to store key-value associations by quantifying recall performance against an ensemble of problem sets. We observe that different learning rules from the neural network community influence recall accuracy but performance appears to be limited by potential noise in the processor. The strong connection established between quantum processors and neural network problems supports the growing intersection of these two ideas.

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Schrock, J., McCaskey, A. J., Hamilton, K. E., Imam, N., & Humble, T. S. (2017). Recall Performance for Content-Addressable Memory Using Adiabatic Quantum Optimization. Entropy, 19(9). https://doi.org/10.3390/e19090500

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