Identification of Autism Spectrum Disorder through Feature Selection-based Machine Learning

M. B. Mohammed, Lubaba Salsabil, Mahir Shahriar, Sabrina Sultana Tanaaz, Ahmed Fahmin
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Abstract

Autism Spectrum Disorder (ASD) is a developmental disability that is likely to be perceived at a young age, persisting throughout a lifetime. The goal of this study is to detect ASD more efficiently with the use of Machine Learning methods. In our paper, we worked with the AQ-10 Adult dataset. Multiple steps have been taken to perform the data preprocessing. We have used different data synthesization techniques and a few feature selection techniques and eventually implemented them with other classifiers. Although throughout our analysis, we can see that the usage of Neural Network has some significant effect due to a smaller data set, the best-performance was provided by the combination of classifiers and feature selection methods to develop the prediction model. After evaluation, We deduced that a model with Principal Component Analysis (PCA) feature selection method using the AdaBoost classifier gave the best results.
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基于特征选择的机器学习识别自闭症谱系障碍
自闭症谱系障碍(ASD)是一种发育障碍,很可能在年轻时就被发现,并持续一生。本研究的目的是使用机器学习方法更有效地检测ASD。在我们的论文中,我们使用了AQ-10成人数据集。已经采取了多个步骤来执行数据预处理。我们使用了不同的数据合成技术和一些特征选择技术,并最终将它们与其他分类器一起实现。尽管在整个分析过程中,我们可以看到由于数据集较小,使用神经网络有一些显着的效果,但将分类器和特征选择方法相结合来开发预测模型提供了最好的性能。经过评估,我们推断使用AdaBoost分类器的主成分分析(PCA)特征选择方法的模型效果最好。
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