Farooq Omer, Shahid Maida, Arshad Shazia, Altaf Ayesha, Iqbal Faiza, Vera Yini Airet Miro, Flores Miguel Angel Lopez, Ashraf Imran
Department of Computer Science, University of Engineering & Technology, Lahore, 54890, Pakistan.
Universidad Europea del Atlantico, Isabel Torres 21, Santander, 39011, Spain.
Sci Rep. 2024 Aug 22;14(1):19521. doi: 10.1038/s41598-024-69663-2.
The essence of quantum machine learning is to optimize problem-solving by executing machine learning algorithms on quantum computers and exploiting potent laws such as superposition and entanglement. Support vector machine (SVM) is widely recognized as one of the most effective classification machine learning techniques currently available. Since, in conventional systems, the SVM kernel technique tends to sluggish down and even fail as datasets become increasingly complex or jumbled. To compare the execution time and accuracy of conventional SVM classification to that of quantum SVM classification, the appropriate quantum features for mapping need to be selected. As the dataset grows complex, the importance of selecting an appropriate feature map that outperforms or performs as well as the classification grows. This paper utilizes conventional SVM to select an optimal feature map and benchmark dataset for predicting air quality. Experimental evidence demonstrates that the precision of quantum SVM surpasses that of classical SVM for air quality assessment. Using quantum labs from IBM's quantum computer cloud, conventional and quantum computing have been compared. When applied to the same dataset, the conventional SVM achieved an accuracy of 91% and 87% respectively, whereas the quantum SVM demonstrated an accuracy of 97% and 94% respectively for air quality prediction. The study introduces the use of quantum Support Vector Machines (SVM) for predicting air quality. It emphasizes the novel method of choosing the best quantum feature maps. Through the utilization of quantum-enhanced feature mapping, our objective is to exceed the constraints of classical SVM and achieve unparalleled levels of precision and effectiveness. We conduct precise experiments utilizing IBM's state-of-the-art quantum computer cloud to compare the performance of conventional and quantum SVM algorithms on a shared dataset.
量子机器学习的本质是通过在量子计算机上执行机器学习算法并利用叠加和纠缠等强大定律来优化问题解决。支持向量机(SVM)被广泛认为是目前最有效的分类机器学习技术之一。然而,在传统系统中,随着数据集变得越来越复杂或混乱,SVM核技术往往会变慢甚至失效。为了比较传统SVM分类与量子SVM分类的执行时间和准确性,需要选择合适的量子特征进行映射。随着数据集变得复杂,选择一个优于或等同于分类效果的合适特征映射的重要性日益凸显。本文利用传统SVM为空气质量预测选择最优特征映射和基准数据集。实验证据表明,在空气质量评估方面,量子SVM的精度超过了经典SVM。通过使用IBM量子计算机云的量子实验室,对传统计算和量子计算进行了比较。应用于相同数据集时,传统SVM的准确率分别为91%和87%,而量子SVM在空气质量预测方面的准确率分别为97%和94%。该研究介绍了使用量子支持向量机(SVM)来预测空气质量。它强调了选择最佳量子特征映射的新方法。通过利用量子增强特征映射,我们的目标是突破经典SVM的限制,实现无与伦比的精度和有效性水平。我们利用IBM最先进的量子计算机云进行精确实验,以比较传统SVM算法和量子SVM算法在共享数据集上的性能。