基于adaboost、决策树和随机森林模型的数据挖掘对脑卒中患者的分类

Bahtiar Imran, Erfan Wahyudi, Ahmad Subki, Salman Salman, Ahmad Yani
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引用次数: 0

摘要

中风是一种致命的疾病,通常发生在65岁以上的人身上。医疗领域的治疗进展迅速,特别是随着技术的进步,出现了各种医疗记录数据集,可以在医疗记录中使用这些数据集,通过数据挖掘来识别这些数据集的趋势。本研究的目的是通过利用kaggle共享数据集的数据,提出一种使用数据挖掘对中风幸存者进行分类的模型。本研究中提出的模型是AdaBoost、决策树和随机森林,使用混淆矩阵和ROC分析的评估结果。所获得的结果是,与其他模型相比,决策树模型能够提供最佳的精度结果,折叠数5和10为0.953。从本研究的结果来看,决策树模型能够为中风患者提供良好的分类结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of stroke patients using data mining with adaboost, decision tree and random forest models
A stroke is a fatal disease that usually occurs to the people over the age of 65. The treatment progress of the medical field is growing rapidly, especially with the technological advance, with the emergence of various medical record data sets that can be used in medical records to identify trends in these data sets using data mining. The purpose of this study was to propose a model to classify stroke survivors using data mining, by utilizing data from the kaggle sharing dataset. The models proposed in this study were AdaBoost, Decision Tree and Random Forest, evaluation results using Confusion Matrix and ROC Analysis. The results obtained were that the decision tree model was able to provide the best accuracy results compared to  the other models, which was 0.953 for Number of Folds 5 and 10. From the results of this study, the decision tree model was able to provide good classification results for stroke sufferers.
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