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Feature Selection for Predicting Heart Disease Using Black Hole Optimization Algorithm and XGBoost Classifier

机译:使用黑洞优化算法和XGBoost分类器预测心脏病的特征选择

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Cardiovascular disease is the most fatal disease in today modern human certainty. This disease affects a person so rapidly that there is barely any time they need the treatment. Therefore, it is most difficult job for the medical diagnosis to identify patients accurately on a timely basis. For reducing the cardiovascular disease, an effective feature selection technique and classification based prediction technique is adopted. On high-dimensional medical data, an appropriate feature selection technique as black hole optimization (BHO) algorithm is proposed to select the relevant features for diagnosis. Thereafter, obtained features from the medical dataset are given to the XGBoost classifier for performing classification. Our experimental research shows that integration of BHO and XGBoost technique is used to finds reduced subsets and it also enhances the diagnostic accuracy, when compare with the existing classifiers.
机译:心血管疾病是当今现代人类确定性最致命的疾病。 这种疾病如此迅速影响一个人,即他们需要治疗的时间几乎没有。 因此,医学诊断是最困难的工作,以及时准确地识别患者。 为了减少心血管疾病,采用了有效的特征选择技术和基于分类的预测技术。 在高维医学数据中,提出了一种适当的特征选择技术作为黑洞优化(BHO)算法,选择相关的诊断功能。 此后,将来自医疗数据集的特征给出给XGBoost分类器以执行分类。 我们的实验研究表明,使用与现有分类器相比,BHO和XGBoost技术的集成用于找到降低的子集,并且还提高了诊断准确性。

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