Enhanced Model for Prediction and Classification of Cardiovascular Disease using Decision Tree with Particle Swarm Optimization

P. Deepika, S. Sasikala
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引用次数: 6

Abstract

Data mining is a set of algorithms that can be implemented by tools. It effectively addresses many real-time problems. This data mining focuses on various sectors and related problem. Healthcare is one of the important sector which require more advanced methodologies to predict the disease in an early stage in a more accurate manner. Data mining methods are effective in disease prediction. For making enhanced predictions and classification in Cardio Vascular Disease, the data mining model is proposed with the J48 algorithm with Particle Swarm Optimization (PSO). A Benchmark dataset is used for this research work that contains 14 attributes with two different classes. The experimental results highlight the performance efficiency in the Cardio Vascular Disease prediction and classification.
基于粒子群优化决策树的心血管疾病预测与分类模型
数据挖掘是一组可以通过工具实现的算法。它有效地解决了许多实时问题。这种数据挖掘侧重于各个部门和相关问题。医疗保健是一个重要的部门,需要更先进的方法,以更准确的方式在早期阶段预测疾病。数据挖掘方法是疾病预测的有效方法。为了增强心血管疾病的预测和分类能力,提出了基于粒子群优化(PSO)的J48算法数据挖掘模型。本研究工作使用了一个Benchmark数据集,其中包含两个不同类的14个属性。实验结果表明,该方法在心血管疾病预测与分类中具有较高的性能效率。
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