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Quantum speedup of Bayes’ classifiers

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Data classification is a fundamental problem in machine learning. We study quantum speedup of the supervised data classification algorithms (quadratic, linear and na\"{\i}ve Bayes classifiers) based on Bayes' theory. The… Click to show full abstract

Data classification is a fundamental problem in machine learning. We study quantum speedup of the supervised data classification algorithms (quadratic, linear and na\"{\i}ve Bayes classifiers) based on Bayes' theory. The main technique we use to achieve quantum speedup is block-encoding. However, to apply this technique effectively, we propose a general method to construct the block-encoding. As an application, we show that all the three classifiers achieve exponential speedup at the number of samples over their classical counterparts. As for the dimension of the space, quantum quadratic and linear classifiers achieve varying degrees of polynomial speedup, while quantum na\"{\i}ve Bayes' classifier achieves an exponential speedup. The only assumption we make is the qRAM to prepare quantum states of the input data.

Keywords: bayes classifiers; speedup bayes; quantum; quantum speedup

Journal Title: Journal of Physics A: Mathematical and Theoretical
Year Published: 2020

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