Ensembles of Quantum Classifiers

Emiliano Tolotti, Enrico Zardini, Enrico Blanzieri, Davide Pastorello
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Abstract

In the current era, known as Noisy Intermediate-Scale Quantum (NISQ), encoding large amounts of data in the quantum devices is challenging and the impact of noise significantly affects the quality of the obtained results. A viable approach for the execution of quantum classification algorithms is the introduction of a well-known machine learning paradigm, namely, the ensemble methods. Indeed, the ensembles combine multiple internal classifiers, which are characterized by compact sizes due to the smaller data subsets used for training, to achieve more accurate and robust prediction performance. In this way, it is possible to reduce the qubits requirements with respect to a single larger classifier while achieving comparable or improved performance. In this work, we present an implementation and an extensive empirical evaluation of ensembles of quantum classifiers for binary classification, with the purpose of providing insights into their effectiveness, limitations, and potential for enhancing the performance of basic quantum models. In particular, three classical ensemble methods and three quantum classifiers have been taken into account here. Hence, the scheme that has been implemented (in Python) has a hybrid nature. The results (obtained on real-world datasets) have shown an accuracy advantage for the ensemble techniques with respect to the single quantum classifiers, and also an improvement in robustness. In fact, the ensembles have turned out to be able to mitigate both unsuitable data normalizations and repeated measurement inaccuracies, making quantum classifiers more stable.
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量子分类器的集合
在当前被称为噪声中尺度量子(NISQ)的时代,在量子器件中编码大量数据是具有挑战性的,噪声的影响显著影响所获得结果的质量。执行量子分类算法的可行方法是引入众所周知的机器学习范式,即集成方法。实际上,集成组合了多个内部分类器,由于用于训练的数据子集较小,其特征是紧凑的尺寸,以实现更准确和鲁棒的预测性能。通过这种方式,可以减少相对于单个更大的分类器的量子位要求,同时实现相当或改进的性能。在这项工作中,我们提出了用于二元分类的量子分类器集成的实现和广泛的经验评估,目的是提供对其有效性,局限性和增强基本量子模型性能的潜力的见解。本文特别考虑了三种经典系综方法和三种量子分类器。因此,已经实现的方案(在Python中)具有非混合性质。结果(在真实数据集上获得)表明,相对于单量子分类器,集成技术具有精度优势,并且鲁棒性也有所提高。事实上,这些集成已经被证明能够减轻不合适的数据异常化和重复的测量不准确性,使量子分类器更加稳定。
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