Autism Spectrum Disorder (ASD) is on the rise and constantly growing. Earlier identify of ASD with the best outcome will allow someone to be safe and healthy by proper nursing. Humans can hardly estimate the present condition and stage of ASD by measuring primary symptoms. Therefore, it is being necessary to develop a method that will provide the best outcome and measurement of ASD. This paper aims to show several measurements that implemented in several classifiers. Among them, Support Vector Machine (SVM) provides the best result and under SVM, there are also some kernels to perform. Among them, the Gaussian Radial Kernel gives the best result. The proposed classifier achieves 95% accuracy using the publicly available standard ASD dataset.
翻译:自闭症谱系障碍(ASD)正在上升并不断增长。 早期确认自闭症谱系障碍(ASD)会通过适当的护理使某人安全和健康。 人类很难通过测量主要症状来估计自闭症目前的状况和阶段。 因此,有必要制定一种方法来提供自闭症谱系的最佳结果和测量。 本文旨在显示在几个分类中实施的若干测量结果。 其中, 支持矢量机(SVM)提供了最佳结果, 在SVM下, 还有一些内核可以运行。 其中, 高山辐射内核提供了最佳结果。 拟议的分类器使用公开的ASD标准数据集实现了95%的准确性 。