English

A Quantum-Inspired Ensemble Method and Quantum-Inspired Forest Regressors

Machine Learning 2020-02-11 v1

Abstract

We propose a Quantum-Inspired Subspace(QIS) Ensemble Method for generating feature ensembles based on feature selections. We assign each principal component a Fraction Transition Probability as its probability weight based on Principal Component Analysis and quantum interpretations. In order to generate the feature subset for each base regressor, we select a feature subset from principal components based on Fraction Transition Probabilities. The idea originating from quantum mechanics can encourage ensemble diversity and the accuracy simultaneously. We incorporate Quantum-Inspired Subspace Method into Random Forest and propose Quantum-Inspired Forest. We theoretically prove that the quantum interpretation corresponds to the first order approximation of ensemble regression. We also evaluate the empirical performance of Quantum-Inspired Forest and Random Forest in multiple hyperparameter settings. Quantum-Inspired Forest proves the significant robustness of the default hyperparameters on most data sets. The contribution of this work is two-fold, a novel ensemble regression algorithm inspired by quantum mechanics and the theoretical connection between quantum interpretations and machine learning algorithms.

Keywords

Cite

@article{arxiv.1711.08117,
  title  = {A Quantum-Inspired Ensemble Method and Quantum-Inspired Forest Regressors},
  author = {Zeke Xie and Issei Sato},
  journal= {arXiv preprint arXiv:1711.08117},
  year   = {2020}
}

Comments

17 pages, ACML2017

R2 v1 2026-06-22T22:53:31.522Z