Optimizing the training of a machine learning pipeline helps in reducing training costs and improving model performance. One such optimizing strategy is quantum annealing, which is an emerging computing paradigm that has shown potential in optimizing the training of a machine learning model. The implementation of a physical quantum annealer has been realized by D-Wave systems and is available to the research community for experiments. Recent experimental results on a variety of machine learning applications using quantum annealing have shown interesting results where the performance of classical machine learning techniques is limited by limited training data and high dimensional features. This article explores the application of D-Wave's quantum annealer for optimizing machine learning pipelines for real-world classification problems. We review the application domains on which a physical quantum annealer has been used to train machine learning classifiers. We discuss and analyze the experiments performed on the D-Wave quantum annealer for applications such as image recognition, remote sensing imagery, computational biology, and particle physics. We discuss the possible advantages and the problems for which quantum annealing is likely to be advantageous over classical computation.
翻译:优化机器学习管道的培训有助于降低培训成本和改善模型性能。这种优化战略之一是量子射线,这是一个新兴的计算模式,在优化机器学习模型的培训方面显示出潜力。D-Wave系统已经实现了物理量子射线器的安装,研究界可以进行实验。最近利用量子射线进行的各种机器学习应用实验结果显示了有趣的结果,古典机器学习技术的性能因有限的培训数据和高维特征而受到限制。本文章探讨了D-Wave的量子射线器的应用,以优化机器学习管道,解决现实世界的分类问题。我们审查了物理量子射线器用于培训机器学习分类师的应用领域。我们讨论并分析了在D-Wave量子射线仪上进行的实验,以用于图像识别、遥感图像、计算生物学和粒子物理学等应用。我们讨论了量子射线仪可能优于古典计算的各种优势和问题。