论文标题
Hybird量子合奏分类器的有效组合策略
An efficient combination strategy for hybird quantum ensemble classifier
论文作者
论文摘要
与经典的机器学习相比,量子机学习在许多方面都显示出优势。在机器学习中,一个困难的问题是如何从有限的功能空间中学习具有较高鲁棒性和强大概括能力的模型。结合多个模型作为基础学习者,集成学习(EL)可以有效地提高最终模型的准确性,概括能力和鲁棒性。 EL的关键在于两个方面,即基础学习者的表现和组合策略的选择。最近,已经研究了量子EL(QEL)。但是,Qel中的现有组合策略在考虑基础学习者之间的准确性和差异方面不足。本文提出了结合量子和经典优势的混合框架。更重要的是,我们提出了一种有效的组合策略,以提高框架中分类的准确性。我们通过使用MNIST数据集验证框架和策略的可行性和效率。仿真结果表明,使用我们的组合策略的混合EL框架不仅比没有合奏的单个模型具有更高的准确性和差异更高,而且在大多数情况下,与大多数投票和加权投票策略相比,精度还更好。
Quantum machine learning has shown advantages in many ways compared to classical machine learning. In machine learning, a difficult problem is how to learn a model with high robustness and strong generalization ability from a limited feature space. Combining multiple models as base learners, ensemble learning (EL) can effectively improve the accuracy, generalization ability, and robustness of the final model. The key to EL lies in two aspects, the performance of base learners and the choice of the combination strategy. Recently, quantum EL (QEL) has been studied. However, existing combination strategies in QEL are inadequate in considering the accuracy and variance among base learners. This paper presents a hybrid EL framework that combines quantum and classical advantages. More importantly, we propose an efficient combination strategy for improving the accuracy of classification in the framework. We verify the feasibility and efficiency of our framework and strategy by using the MNIST dataset. Simulation results show that the hybrid EL framework with our combination strategy not only has a higher accuracy and lower variance than the single model without the ensemble, but also has a better accuracy than the majority voting and the weighted voting strategies in most cases.