An Efficient Modified Bagging Method for Early Prediction of Brain Stroke

Md. Azizul Hakim, Md. Zahid Hasan, Md. Mahabur Alam, M. Hasan, M. Hasan
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引用次数: 6

Abstract

Brain stroke become a serious cardiovascular and cerebral disease causes of human death. Precisely predicting stroke effect from a set of predictive attributes may classify high-risk patients and guide cure approaches, leading to reduce relative incidence. In respect to, we have collected the information regarding brain stroke patient’s data from five renowned hospitals in Bangladesh with connectivity in patients with acute thalamic ischemic stroke (melanoma), Atypical Nevus (cancer risk) and Common Nevus (No cancer risk). In this work, we propose an ensemble based Modified Bootstrap Aggregating (Bagging) technique for pattern classification. Existing bagging algorithm, can usually progress the performance of a single classifier. However, they typically need larger space as well as quite time-consuming predictions. However, our proposed accuracy based pruning bagging method can improve the classification performance and reduce ensemble size. In general, our proposed modified bagging technique is more appropriate than traditional bagging technique for the prediction of brain stroke disease patients with greater accuracy of 96%.
一种用于脑卒中早期预测的改进Bagging方法
脑中风成为导致人类死亡的一种严重的心脑血管疾病。从一组预测属性中准确预测脑卒中的疗效,可以对高危患者进行分类,指导治疗方法,从而降低相对发病率。在这方面,我们从孟加拉国五家知名医院收集了脑中风患者的数据信息,这些数据与急性丘脑缺血性中风(黑色素瘤)、非典型痣(癌症风险)和普通痣(无癌症风险)的患者相关联。在这项工作中,我们提出了一种基于集成的改进自举聚合(Bagging)技术用于模式分类。现有的套袋算法,通常可以进步单个分类器的性能。然而,它们通常需要更大的空间以及相当耗时的预测。然而,我们提出的基于精度的修剪套袋方法可以提高分类性能并减小集合大小。总的来说,我们提出的改良袋装技术比传统的袋装技术更适合预测脑卒中患者,准确率高达96%。
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