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Activity Number: 288 - SLDS CSpeed 5
Type: Contributed
Date/Time: Wednesday, August 11, 2021 : 1:30 PM to 3:20 PM
Sponsor: Section on Statistical Learning and Data Science
Abstract #318396
Title: Comparing the Accuracy Classification of the Machine Learning Algorithms Using Anxiety Data
Author(s): Hojjatollah Farahani* and Parviz Azadfallah and Peter Watson and Arezoo Esfandiary and Kazhal Rashidi
Companies: Tarbiat Modares University and Tarbiat Modares University and University of Cambridge and Azad University of Karaj and Azad University of Rudehen
Keywords: confusion matrix; Kernel; Naive Bayes classifier; sensitivity; specificity; support vector machine(SVM)
Abstract:

Kernel methods are a class of machine learning that has received more attention and become an increasingly popular tool for learning tasks such as pattern recognition, classification or novelty detection. The purpose of this research was to compare the accuracy classification of the linear and non-linear Kernel Support Vector Machine(SVM) and Naive Bayes classifier using anxiety data in a student sample. Method: In 2017, 345 university students (243 females and 102 males) from the city of Karaj were measured on the short form NEO questionnaire, Spielberger's State - Trait Anxiety Inventory, and anxiety group membership and neuroticism (N), extroversion(E) openness(O), agreeableness(A), and conscientiousness (C) were considered as target and feature variables respectively. The obtained data were analyzed using linear and non-linear Kernel Support Vector Machines (SVMs) and a Naive Bayes classifier with R software. Results: The confusion matrices indicated that Kernel SVM, naïve Bayes and linear SVM all had a high classification accuracy.


Authors who are presenting talks have a * after their name.

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