首页> 外文会议>International Conference on Parallel, Distributed and Grid Computing >Comparative Study of Genetic Algorithm and Artificial Neural Network for Multi-class Classification based on Type-2 Diabetes Treatment Recommendation model
【24h】

Comparative Study of Genetic Algorithm and Artificial Neural Network for Multi-class Classification based on Type-2 Diabetes Treatment Recommendation model

机译:基于2型糖尿病治疗推荐模型的遗传算法与人工神经网络对多级分类的比较研究

获取原文

摘要

Multi-class Classification is often used for classification and categorization purposes under Machine Learning wherein vast datasets can be classified into multiple labels/classes. It is often perceived as more complex than binary classification and is still being explored and studied. The main objective of this paper is to perform a comparative study of Genetic Algorithm and Artificial Neural Network to identify the algorithm that enhances the accuracy of multi-class classification. The experimental results obtained in the comparative study are evaluated using our model developed for Type-2 Diabetes Individualistic Treatment Recommendation, which successfully implements multiclass classification of patients into 7 classes(Treatment Line). Presently, doctors prescribe drugs by using their knowledge and experience, but they require a faster and more efficient system to assist them in taking the final decision by providing a suitable suggestion about the treatment line. The dataset used by our model consists of 24 input attributes and 7 output class of 2430 individuals having different characteristics like hypertension etc to make it as diverse as possible. While comparing the benefits and drawbacks of these two algorithms on our model, we have considered factors such as accuracy, training, testing and complexity. Among the two types of classifier the ANN classifier leverages the performance of the system by giving the most accurate result and generating the prediction accuracy of 92%. Thus, based on the comparative study ANN classifier demonstrates better prediction results than evolutionary Genetic Algorithm.
机译:多级分类通常用于机器学习下的分类和分类目的,其中巨大的数据集可以分类为多个标签/类。它通常被视为比二元分类更复杂,并且仍在探索和研究。本文的主要目的是对遗传算法和人工神经网络进行比较研究,以确定提高多级分类精度的算法。使用我们为2型糖尿病个性化治疗建议开发的模型评估比较研究中获得的实验结果,该型材成功将患者分类成7级(处理线)。目前,医生通过使用他们的知识和经验开出药物,但他们需要更快,更高效的系统来帮助他们通过提供有关治疗线的合适建议来实现最终决定。我们的模型使用的数据集由24个输入属性和7个输出类别为2430个,具有不同特征的特征,如高血压等,使其尽可能多样化。在比较我们模型上这两个算法的优势和缺点,我们考虑了准确性,培训,测试和复杂性等因素。在这两种类型的分类器中,ANN分类器通过提供最精确的结果并产生92%的预测精度来利用系统的性能。因此,基于比较研究ANN分类器证明了比进化遗传算法更好的预测结果。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号