Hybrid Swarm Intelligence Algorithms with Ensemble Machine Learning for Medical Diagnosis

Qasem Al-Tashi, H. Rais, S. J. Abdulkadir
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引用次数: 20

Abstract

Disease Diagnosis still an open problem in current research. The main characteristic of diseases diagnostic model is that it helps physicians to make quick decisions and minimize errors in diagnosis. Current existing techniques are not consistent with all diseases datasets. While they achieve a good accuracy on specific dataset, their performance drops on other diseases datasets. Therefore, this paper proposed a hybrid Dynamic ant colony system three update levels, with wavelets transform, and singular value decomposition integrating support vector machine. The proposed method will be evaluated using five benchmark medical datasets of various diseases from the UCI repository. The expected outcome of the proposed method seeks to minimize subset of features to attain a satisfactory disease diagnosis on a wide range of diseases with the highest accuracy, sensitivity, and specificity
基于集成机器学习的混合群智能医学诊断算法
疾病诊断在目前的研究中仍然是一个开放性的问题。疾病诊断模型的主要特点是帮助医生快速决策,最大限度地减少诊断错误。目前现有的技术与所有疾病数据集并不一致。虽然它们在特定数据集上取得了良好的准确性,但它们在其他疾病数据集上的性能下降。为此,本文提出了一种混合动态蚁群系统,采用小波变换和奇异值分解结合支持向量机进行三层更新。将使用UCI存储库中各种疾病的五个基准医疗数据集对所提出的方法进行评估。所提出的方法的预期结果寻求最小化特征子集,以获得对广泛疾病的满意的疾病诊断,具有最高的准确性,灵敏度和特异性
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