Comparison of Several Machine Learning Classifiers for Arousal Classification: A Preliminary study

E. C. Erkus, V. Purutçuoğlu, F. Arı, D. Gökçay
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引用次数: 1

Abstract

Detection of arousal intervals, especially stress detection via a human-machine interface is a trending topic. Stress detection algorithms with high accuracy can be used in many fields such as criminal interrogations or a variety of stress-related experiments. There are many indicators of the stress on the human body, especially on the face area, such as galvanic skin response (GSR), pupil diameter, heart rate (HR), and electromyography (EMG). Hereby, the measurement of such physiological data in stressful, joyful and non-stressful cases can reveal the effects of the stress on the body signals.This preliminary study aims to compare several machine learning approaches, namely, linear discriminant analysis (LDA), k-nearest neighbour (k-NN), Naive Bayes, support vector machines (SVM) and coarse tree algorithms in a classification study. To perform the analyses, the pupil data are collected from a total of 9 subjects while the subject was watching three types of movies, independently. The classifications are performed among the labelled data with multivariate features such as mean, median, maximum to minimum difference and variance, and their univariate versions in order to observe their independent discrimination performances. Moreover, the preprocessed raw data are also used in classification, independently. Here, the movies are selected such that they include either annotated positive, negative or neutral scenes, which may indicate the stressful, joyful and non-stressful intervals, respectively. Therefore, the classification results of these algorithms for the annotated labels in each channel separately are found to observe their effectiveness in detection of arousal intervals. Hence, the main aim is to contribute to the stress detection literature by providing a comparison between both the classification algorithms, features and raw data classification.
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几种机器学习分类器在唤醒分类中的比较:初步研究
唤醒间隔的检测,特别是通过人机界面的应力检测是一个趋势话题。高精度的应力检测算法可用于刑事审讯或各种与应力相关的实验等领域。人体承受压力的指标有很多,尤其是面部区域,如皮肤电反应(GSR)、瞳孔直径、心率(HR)和肌电图(EMG)。因此,在压力、快乐和非压力情况下测量这些生理数据可以揭示压力对身体信号的影响。本初步研究旨在比较几种机器学习方法,即线性判别分析(LDA), k近邻(k-NN),朴素贝叶斯,支持向量机(SVM)和粗树算法在分类研究中的应用。为了进行分析,研究人员从总共9名受试者中收集了学生数据,这些受试者分别观看了三种类型的电影。对具有均值、中位数、最大到最小差异和方差等多变量特征的标记数据及其单变量版本进行分类,以观察其独立判别性能。此外,预处理后的原始数据也可以独立用于分类。在这里,选择的电影包括注释积极的,消极的或中性的场景,这可能分别表示压力,快乐和无压力的时间间隔。因此,我们分别对每个通道的标注标签进行分类,观察这些算法在唤醒间隔检测中的有效性。因此,主要目的是通过提供分类算法、特征和原始数据分类之间的比较,为应力检测文献做出贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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