Machine Learning in Autism Spectrum Disorder Diagnosis

Dublin Core

Title

Machine Learning in Autism Spectrum Disorder Diagnosis

Author

Naida Nalo, Jasmin Kevrić

Abstract

This paper represents an overview of Machine Learning techniques used in Autism Spectrum
Disorder - ASD diagnosis. ASD is detected based on behavioral screening which is time consuming and
can only be taken by a medical professional. The idea is to find a smaller number of features that are still
able to equally well provide satisfying results and not lose the accuracy, sensitivity nor specificity. Some
of the algorithms mostly used in recent studies were Artificial Neural Network - ANN and Alternating
Decision Trees - ADTrees. The researches usually use WEKA software package for applying the algorithm
and obtaining results.

Keywords

Machine Learning, Autism Spectrum Disorder, diagnosis, features, ANN, ADTree,
WEKA.

Identifier

2637-2835

Publisher

International Burch University, Sarajevo, Bosnia and Herzegovina

Source

Journal of Natural Sciences and Engineering

Date

January, 2020

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