Autism Spectrum Disorder (ASD), which is a neuro development disorder, is often accompanied by sensory issues such an over sensitivity or under sensitivity to sounds and smells or touch. Although its main cause is genetics in nature, early detection and treatment can help to improve the conditions. In recent years, machine learning based intelligent diagnosis has been evolved to complement the traditional clinical methods which can be time consuming and expensive. The focus of this paper is to find out the most significant traits and automate the diagnosis process using available classification techniques for improved diagnosis purpose. We have analyzed ASD datasets of Toddler, Child, Adolescent and Adult. We determine the best performing classifier for these binary datasets using the evaluation metrics recall, precision, F-measures and classification errors. Our finding shows that Sequential minimal optimization (SMO) based Support Vector Machines (SVM) classifier outperforms all other benchmark machine learning algorithms in terms of accuracy during the detection of ASD cases and produces less classification errors compared to other algorithms. Also, we find that Relief Attributes algorithm is the best to identify the most significant attributes in ASD datasets.
翻译:神经发育障碍的自闭症谱症(ASD)通常伴随着感官问题,其敏感度过高,或对声音和气味或触感敏感,尽管其主要原因是遗传学,但早期发现和治疗可以帮助改善条件。近年来,基于机器学习的智能诊断已经形成,以补充传统临床方法,这些方法可以耗时和昂贵。本文件的重点是发现最重要的特征,并利用现有分类技术将诊断过程自动化,以改进诊断目的。我们分析了托德勒、儿童、青少年和成人的自闭数据集。我们利用评估指标的回顾、精确度、F度和分类错误,确定了这些二进制数据集的最佳性能分类。我们的发现显示,基于支持矢量机(SVM)的序列性最低优化(SMO)在检测自闭症病例时,比所有其他基准机学习算法精确度都高,而且与其他算法相比,分类错误较少。此外,我们发现救济属性算法是确定ASD数据集中最重要的属性的最佳方法。