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Abstract
Autism spectrum disorder (ASD) issues formidable challenges in early diagnosis and intervention, requiring efficient methods for identification and treatment. By utilizing machine learning, the risk of ASD can be accurately and promptly evaluated, thereby optimizing the analysis and expediting treatment access. However, accessing high dimensional data degrades the classifier performance. In this regard, feature selection is considered an important process that enhances the classifier results. In this paper, a chaotic binary butterfly optimization algorithm based feature selection and data classification (CBBOAFS-DC) technique is proposed. It involves, preprocessing and feature selection along with data classification. Besides, a binary variant of the chaotic BOA (CBOA) is presented to choose an optimal set of a features. In addition, the CBBOAFS-DC technique employs bacterial colony optimization with a stacked sparse auto-encoder (BCO-SSAE) model for data classification. This model makes use of the BCO algorithm to optimally adjust the ‘weight’ and ‘bias’ parameters of the SSAE model to improve classification accuracy. Experiments show that the proposed scheme offers better results than benchmarked methods.
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1 Department of Information Technology Sri Manakula Vinayagar Engineering College, 605107 Puducherry, India
2 Centre for e-Automation Technologies Vellore Institute of Technology, 600127 Chennai, Tamil Nadu, India
3 School of Computer Science and Engineering Vellore Institute of Technology, 600127 Chennai, Tamil Nadu, India
4 Center for Artificial Intelligence Prince Mohammad bin Fahd University, 34754 Khobar, Saudi Arabia
5 Department of Information Systems, College of Computer and Information Sciences Princess Nourah bint Abdulrahman University, P.O. Box 84428, Riyadh, Saudi Arabia
6 Faculty of Data Sciences and Information Technology INTI International University, 71800 Nilai, Malaysia