Quantum Speedup in Adaptive Boosting of Binary Classification

Min-Hsiu Hsieh

Ximing Wang

Yuechi Ma

Manhong Yung

SCIENCE CHINA Physics, Mechanics & Astronomy, Volume 64 , Issue 2 : 220311 (2021)

出版日期

December 29, 2020

摘要

In classical machine learning, a set of weak classifiers can be adaptively combined for improving the overall performance, a technique called adaptive boosting (or AdaBoost). However, constructing a combined classifier for a large data set is typically resource consuming. Here we propose a quantum extension of AdaBoost, demonstrating a quantum algorithm that can output the optimal strong classifier with a quadratic speedup in the number of queries of the weak classifiers. Our results also include a generalization of the standard AdaBoost to the cases where the output of each classifier may be probabilistic. We prove that the query complexity of the non-deterministic classifiers is the same as those of deterministic classifiers, which may be of independent interest to the classical machine-learning community. Additionally, once the optimal classifier is determined by our quantum algorithm, no quantum resources are further required. This fact may lead to applications on near term quantum devices.

研究中心

量子計算研究所

內容目錄