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Adaptive Weight Dynamic Butterfly Optimization Algorithm (ADBOA)-Based Feature Selection and Classifier for Chronic Kidney Disease (CKD) Diagnosis

机译:基于自适应权重动态蝴蝶优化算法(ADBOA)的慢性肾脏病(CKD)诊断特征选择与分类器

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摘要

Chronic Kidney Disease (CKD) are a universal issue for the well-being of people as they result in morbidities and deaths with the onset of additional diseases. Because there are no clear early symptoms of CKD, people frequently miss them. Timely identification of CKD allows individuals to acquire proper medications to prevent the development of the diseases. Machine learning technique (MLT) can strongly assist doctors in achieving this aim due to their rapid and precise determination capabilities. Many MLT encounter inappropriate features in most databases that might lower the classifier’s performance. Missing values are filled using K-Nearest Neighbor (KNN). Adaptive Weight Dynamic Butterfly Optimization Algorithm (AWDBOA) are nature-inspired feature selection (FS) techniques with good explorations, exploitations, convergences, and do not get trapped in local optimums. Operators used in Local Search Algorithm-Based Mutation (LSAM) and Butterfly Optimization Algorithm (BOA) which use diversity and generations of adaptive weights to features for enhancing FS are modified in this work. Simultaneously, an adaptive weight value is added for FS from the database. Following the identification of features, six MLT are used in classification tasks namely Logistic Regressions (LOG), Random Forest (RF), Support Vector Machine (SVM), KNNs, Naive Baye (NB), and Feed Forward Neural Network (FFNN). The CKD databases were retrieved from MLT repository of UCI (University of California, Irvine). Precision, Recall, F1-Score, Sensitivity, Specificity, and accuracy are compared to assess this work’s classification framework with existing approaches.
机译:慢性肾脏病 (CKD) 是人们福祉的普遍问题,因为它们会导致发病率和死亡,并伴有其他疾病的发作。由于CKD没有明显的早期症状,人们经常会漏诊。及时识别慢性肾病可以让个人获得适当的药物来预防疾病的发展。机器学习技术 (MLT) 具有快速而精确的测定能力,可以有力地帮助医生实现这一目标。许多 MLT 在大多数数据库中遇到不适当的功能,这些功能可能会降低分类器的性能。缺失值使用 K 最近邻 (KNN) 进行填充。自适应权重动态蝴蝶优化算法 (AWDBOA) 是一种受自然启发的特征选择 (FS) 技术,具有良好的探索、利用和收敛性,并且不会陷入局部最优。本文修改了基于局部搜索算法的突变 (LSAM) 和蝶形优化算法 (BOA) 中使用的运算符,这些运算符使用多样性和自适应权重的生成来增强 FS。同时,从数据库中为 FS 添加自适应权重值。在识别特征后,在分类任务中使用了六种MLT,即Logistic回归(LOG)、随机森林(RF)、支持向量机(SVM)、KNNs、朴素贝叶(NB)和前馈神经网络(FFNN)。CKD数据库检索自UCI(加州大学欧文分校)的MLT存储库。将精确度、召回率、F1 分数、灵敏度、特异性和准确性进行比较,以使用现有方法评估这项工作的分类框架。

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