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A novel machine learning framework for diagnosing the type 2 diabetics using temporal fuzzy ant miner decision tree classifier with temporal weighted genetic algorithm

机译:一种新颖的机器学习框架,用于使用时间加权遗传算法的时间模糊蚂蚁矿工决策树分类器诊断2型糖尿病

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摘要

Diabetic is becoming a very serious disease today for the most of people all over the world due to the unhealthy food habits. For predicting the diabetes, we introduce a new diabetic diagnosis system which combines a newly proposed temporal feature selection and temporal fuzzy ant miner tree (TFAMT) classifier for effective decision making in type-2 diabetes analysis. Moreover, a new temporal weighted genetic algorithm is proposed in this work for enhancing the detection accuracy by preprocessing the text and image data. Moreover, intelligent fuzzy rules are extracted from the weighted temporal capabilities with ant miner fuzzy decision tree classifier, and then fuzzy rule extractor is used to reduce the variety of functions in the extracted regulations. We empirically evaluated the effectiveness of the proposed TFAMT–TWGA model using the UCI Repository dataset and the collected retinopathy image dataset. The outcomes are analyzed and as compared with other exiting works. Furthermore, the detection accuracy is proven by way of using the ten-fold cross validation.
机译:由于不健康的饮食习惯,当今对于全世界大多数人来说,糖尿病正成为一种非常严重的疾病。为了预测糖尿病,我们引入了一种新的糖尿病诊断系统,该系统结合了新提出的时域特征选择和时域模糊蚂蚁矿工树(TFAMT)分类器,可用于2型糖尿病分析的有效决策。此外,本文提出了一种新的时间加权遗传算法,通过预处理文本和图像数据来提高检测精度。此外,利用蚂蚁矿工的模糊决策树分类器从加权的时间能力中提取智能模糊规则,然后使用模糊规则提取器减少提取规则中的功能多样性。我们使用UCI知识库数据集和收集的视网膜病变图像数据集,通过经验评估了建议的TFAMT-TWGA模型的有效性。分析结果并将其与其他现有工作进行比较。此外,通过使用十倍交叉验证来证明检测准确性。

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