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Quantum Perceptron Models

15 February 2016
N. Wiebe
Ashish Kapoor
K. Svore
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Abstract

We demonstrate how quantum computation can provide non-trivial improvements in the computational and statistical complexity of the perceptron model. We develop two quantum algorithms for perceptron learning. The first algorithm exploits quantum information processing to determine a separating hyperplane using a number of steps sublinear in the number of data points NNN, namely O(N)O(\sqrt{N})O(N​). The second algorithm illustrates how the classical mistake bound of O(1γ2)O(\frac{1}{\gamma^2})O(γ21​) can be further improved to O(1γ)O(\frac{1}{\sqrt{\gamma}})O(γ​1​) through quantum means, where γ\gammaγ denotes the margin. Such improvements are achieved through the application of quantum amplitude amplification to the version space interpretation of the perceptron model.

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