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用于优化疾病预测的模糊量子机器学习(FQML)逻辑。

Fuzzy quantum machine learning (FQML) logic for optimized disease prediction.

作者信息

Khushal Rabia, Fatima Dr Ubaida

机构信息

Department of Mathematics, NED University of Engineering & Technology, Pakistan.

出版信息

Comput Biol Med. 2025 Jun;192(Pt B):110315. doi: 10.1016/j.compbiomed.2025.110315. Epub 2025 May 8.

Abstract

Quantum computing, based on quantum mechanics, has evolved due to the cross-pollination of concepts, methods, and strategies. The fusion of quantum computing with machine learning (ML) algorithms has shown satisfactory results in the case of low dimensionality spaces. However, in high dimensionality spaces, the computational complexity increases, thus leading to average accuracy and computation time. To combat this issue in this research work, a mathematical technique known as fuzzy logic (FL) has been integrated with quantum ML (QML) and applied to a medicine dataset of chronic disease. The fusion of two variables into one variable reduces the number of features hence transforming the high dimensional space into low dimensional space. ML implementation on the considered dataset has shown poor accuracy and took a large computation time. The integration of FL with ML (FML) has overcome this issue and optimized computation time and accuracy. Since QML shows poor accuracy and takes large computations when data sizes get larger as seen in different studies, therefore fuzzy concepts are integrated with QML, particularly with support vector machine (SVM) and K-nearest neighbor (KNN). Thus leading to the development of a hybrid model called FQML. The FQML has optimized the computation time and accuracy of the model as compared to QML. Moreover, all necessary features can be considered for the prediction of output which is very crucial, especially in medical diagnosis. Results of statistical analysis have also been performed between QML and FQML which has concluded that models are significantly different. Thus, a combination of FQML can overcome the QML computational complexity in high dimensional spaces by utilizing fuzzy logic concepts and can consider all necessary features required for better outcome prediction without compromising on computational complexity.

摘要

基于量子力学的量子计算,由于概念、方法和策略的交叉融合而不断发展。量子计算与机器学习(ML)算法的融合在低维空间中已显示出令人满意的结果。然而,在高维空间中,计算复杂度会增加,从而导致平均准确率和计算时间受到影响。为了解决本研究工作中的这一问题,一种称为模糊逻辑(FL)的数学技术已与量子机器学习(QML)相结合,并应用于慢性病医学数据集。将两个变量融合为一个变量减少了特征数量,从而将高维空间转换为低维空间。在所考虑的数据集上进行的ML实现显示准确率较低且计算时间较长。FL与ML(FML)的融合克服了这一问题,并优化了计算时间和准确率。由于在不同研究中可以看到,当数据量增大时QML显示出较差的准确率且计算量较大,因此将模糊概念与QML相结合,特别是与支持向量机(SVM)和K近邻(KNN)相结合。从而导致了一种称为FQML的混合模型的开发。与QML相比,FQML优化了模型的计算时间和准确率。此外,对于输出预测可以考虑所有必要特征,这一点非常关键,尤其是在医学诊断中。还对QML和FQML进行了统计分析,结果表明这两种模型有显著差异。因此,FQML的组合可以通过利用模糊逻辑概念克服高维空间中QML的计算复杂性,并且可以考虑更好结果预测所需的所有必要特征,而不会在计算复杂性上妥协。

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