基于类不平衡分类的登革热检测加权极值学习机

Wanchaloem Nadda, W. Boonchieng, E. Boonchieng
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引用次数: 5

摘要

登革热是一种由蚊子引起的疾病,对一些病人来说甚至可能致命。重要的是尽快发现这种疾病,以减少死亡人数。在本研究中,我们使用机器将患者分为登革热患者和非登革热患者。该数据集是2015年9月至2017年9月期间泰国清迈省Sarapee医院发烧、感冒、流感、肺炎和登革热患者的治疗数据。该数据集包括248个登革热患者记录和4960个非登革热患者记录,包括发烧、感冒、流感和肺炎患者。我们使用患者的症状文本作为输入数据。采用加权极值学习机(WELM)来解决类不平衡问题。并与神经网络和极限学习机(ELM)进行了精度比较。结果表明,随着非登革热患者病历数量的增加,神经网络和ELM的准确率均下降,而WELM的准确率保持稳定。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Weighted Extreme Learning Machine for Dengue Detection with Class-imbalance Classification
Dengue is a disease caused by mosquitoes that may even be lethal to some patients. It is important to detect this disease as soon as possible to decrease the death toll. In this research, we use machines to classify patients as Dengue patients and Non-Dengue patients. The dataset is the treatment data from the patients with fever, cold, flu, pneumonia, and Dengue, from Sarapee Hospital, Chiangmai province, Thailand, during September 2015 to September 2017. The dataset includes 248 records of Dengue patients and 4,960 records of Non-Dengue patients including patient with fever, cold, flu, and pneumonia. We use the text of symptoms of the patients for input data. Weighted Extreme Learning Machine (WELM) is used to solve the class imbalance problems. It was compared for accuracy with neural network and Extreme Learning Machine (ELM). The result shows, that if the number of records of Non-Dengue patients are increasing, the accuracy of the neural network and ELM are decreasing, but the accuracy of WELM is stable.
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