A weighted quantum ensemble of homogeneous quantum classifiers
By: Emiliano Tolotti, Enrico Blanzieri, Davide Pastorello
Potential Business Impact:
Makes computers learn better by combining many smart parts.
Ensemble methods in machine learning aim to improve prediction accuracy by combining multiple models. This is achieved by ensuring diversity among predictors to capture different data aspects. Homogeneous ensembles use identical models, achieving diversity through different data subsets, and weighted-average ensembles assign higher influence to more accurate models through a weight learning procedure. We propose a method to achieve a weighted homogeneous quantum ensemble using quantum classifiers with indexing registers for data encoding. This approach leverages instance-based quantum classifiers, enabling feature and training point subsampling through superposition and controlled unitaries, and allowing for a quantum-parallel execution of diverse internal classifiers with different data compositions in superposition. The method integrates a learning process involving circuit execution and classical weight optimization, for a trained ensemble execution with weights encoded in the circuit at test-time. Empirical evaluation demonstrate the effectiveness of the proposed method, offering insights into its performance.
Similar Papers
Quantum Ensembling Methods for Healthcare and Life Science
Machine Learning (CS)
Helps doctors predict cancer treatment success.
Addressing the Current Challenges of Quantum Machine Learning through Multi-Chip Ensembles
Machine Learning (CS)
Makes quantum computers learn from big data better.
Option Pricing Using Ensemble Learning
Machine Learning (CS)
Makes computer stock predictions more accurate.