Quantum Inspired Adaptive Boosting

02/01/2021
by   Bálint Daróczy, et al.
0

Building on the quantum ensemble based classifier algorithm of Schuld and Petruccione [arXiv:1704.02146v1], we devise equivalent classical algorithms which show that this quantum ensemble method does not have advantage over classical algorithms. Essentially, we simplify their algorithm until it is intuitive to come up with an equivalent classical version. One of the classical algorithms is extremely simple and runs in constant time for each input to be classified. We further develop the idea and, as the main contribution of the paper, we propose methods inspired by combining the quantum ensemble method with adaptive boosting. The algorithms were tested and found to be comparable to the AdaBoost algorithm on publicly available data sets.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/26/2021

The Quantum Version of Prediction for Binary Classification Problem by Ensemble Methods

In this work, we consider the performance of using a quantum algorithm t...
research
10/25/2021

Quantum Boosting using Domain-Partitioning Hypotheses

Boosting is an ensemble learning method that converts a weak learner int...
research
07/02/2020

Quantum Ensemble for Classification

A powerful way to improve performance in machine learning is to construc...
research
10/01/2022

Efficient Quantum Agnostic Improper Learning of Decision Trees

The agnostic setting is the hardest generalization of the PAC model sinc...
research
02/03/2019

Quantum Speedup in Adaptive Boosting of Binary Classification

In classical machine learning, a set of weak classifiers can be adaptive...
research
04/07/2022

Quantum version of the k-NN classifier based on a quantum sorting algorithm

In this work we introduce a quantum sorting algorithm with adaptable req...
research
04/19/2021

Quantum hub and authority centrality measures for directed networks based on continuous-time quantum walks

In this work we introduce, test and discuss three quantum methods for co...

Please sign up or login with your details

Forgot password? Click here to reset