Abstract

The aim of this study was to find an efficient method to determine features that characterize octave illusion data. Specifically, this study compared the efficiency of several automatic feature selection methods for automatic feature extraction of the auditory steady-state responses (ASSR) data in brain activities to distinguish auditory octave illusion and nonillusion groups by the difference in ASSR amplitudes using machine learning. We compared univariate selection, recursive feature elimination, principal component analysis, and feature importance by testifying the results of feature selection methods by using several machine learning algorithms: linear regression, random forest, and support vector machine. The univariate selection with the SVM as the classification method showed the highest accuracy result, 75%, compared to 66.6% without using feature selection. The received results will be used for future work on the explanation of the mechanism behind the octave illusion phenomenon and creating an algorithm for automatic octave illusion classification.

Highlights

  • It has been proven that the pitch of the which is a perceived sound determined by the dominant ear and is a illusion perception has a main neural counterpart bilaterally in Heschl’s gyrus, the processes underlying the octave illusion have not been clarified thethat difference in braintoresponses subjects experience the ilyet.We suggest it is possible separate between illusion (ILL)

  • We had data of only 17 samples, which did not provide enough variety of data. This is why we focused on using several simple models with L2 regularization to avoid overfitting and compared the results to find the most optimal one

  • Machine learning has been widely used the classification various brain data, from classifying brain–computer widely used forfor the classification ofof various brain data, from classifying brain–computer interface (BCI)

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Summary

Objectives

The aim of this study was to find an efficient method to determine features that characterize octave illusion data. We aimed to find the most efficient union of the automatic selection method and machine learning method by comparing their various combinations

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