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Machine learning applied to diabetes dataset using Quantum versus Classical computation

机译:使用量子与经典计算的机器学习应用于糖尿病数据集

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This paper presents a Quantum versus classical implemented of Machine learning (ML) algorithm applied to a diabetes dataset. Diabetes is a Sixth deadliest disease in the world and approximately 10 million new cases are registered every year worldwide. Using novel Quantum computing (QC) along with Quantum Machine Learning (QML) techniques in the healthcare system to improve and accelerate the computing of existing ML models that allows the different approach to understanding the complex patterns of the disease. The proposed system tackles a binary classification problem of patients with diabetes into two different classes: diabetes patients with acute diseases and diabetes patients without acute diseases. Our study compares classical and quantum algorithms, namely Decision Tree, Random Forest, Extreme Boosting Gradient and Adaboost, Qboost, Voting Model 1, Voting Model 2, Qboost Plus, New model 1 and New Model 2 along with an ensemble method which creates a strong classifier from a committee of weak classifiers. The results we achieved using the validation metrics of the New Model 1 showed an overall precision of 69%, a recall of 69%, an F1-Score of 69%, a specificity of 69% and an accuracy of 69% on our diabetes dataset, with an increase of the computation speed by 55 times in comparison of the classical system. Our study has proved that QC improves the computational speed and its inclusion in medical applications will deliver faster results to physicians and caregivers.
机译:本文呈现了应用于糖尿病数据集的机器学习(ML)算法的量子与经典。糖尿病是世界上最致命的疾病,每年都在全球注册了大约1000万个新案件。使用新型量子计算(QC)以及医疗保健系统中的量子机器学习(QML)技术,以改善和加速现有ML模型的计算,允许不同方法理解疾病的复杂模式。该拟议的系统将糖尿病患者的二进制分类问题转化为两种不同的课程:糖尿病患者患有急性疾病和糖尿病患者,没有急性疾病。我们的研究比较了经典和量子算法,即决策树,随机森林,极端升压梯度和adaboost,QBoost,投票模型1,投票模型2,QBoost Plus,新型号1和新模型2以及创造强大的集合方法来自弱分类机委员会的分类器。我们使用新模型1的验证度量实现的结果显示了69%的总体精度,召回了69%,F1分数为69%,特异性为69%,精度为我们的糖尿病数据集69%的准确性为69% ,随着经典系统的比较,计算速度增加了55倍。我们的研究证明,QC提高了计算速度,并且其在医疗应用中的纳入量将提供更快的结果,对医生和护理人员提供更快的结果。

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