AUTOMATIC CLASSIFICATION OF EFL LEARNERS’ SELF-REPORTED TEXT DOCUMENTS ALONG AN AFFECTIVE CONTINUUM

IF 0.7 Q3 EDUCATION & EDUCATIONAL RESEARCH
Derya Uysal, A. Uysal
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引用次数: 0

Abstract

This study aims to place EFL learners along an affective continuum via machine learning methods and present a new dataset about affective characteristics of EFL learners. In line with the purposes, written self-reports of 475 students from 5 different faculties in 3 universities in Turkey were collected and manually assigned by the researchers to one of the labels (positive, negative, or neutral). As a result, two combinations of the same dataset (AC-2 and AC-3) including different numbers of classes were used for the assessment of automatic classification approaches. Results revealed that automatic classification confirmed the manual classification to a great extent and machine learning methods could be used to classify EFL students along an affective continuum according to their affective characteristics. Maximum accuracy rate of automatic classification is 90.06% on AC-2 dataset including two classes. Similarly, on AC-3 dataset including three classes, maximum accuracy rate of classification is 71.79%. Last, the top-10 features/words obtained by feature selection methods are highly discriminative in terms of assessing student feelings for EFL learning. It could be stated that there is not an existing study in which feature selection methods and classifiers are used in the literature to automatically classify EFL learners’ feelings.
英语学习者自述文本文本情感连续体的自动分类
本研究旨在通过机器学习方法将英语学习者置于情感连续体上,并提出一个关于英语学习者情感特征的新数据集。根据目的,研究人员收集了来自土耳其3所大学5个不同学院的475名学生的书面自我报告,并将其手工分配给其中一个标签(积极、消极或中性)。因此,使用同一数据集(AC-2和AC-3)的两种组合(包括不同数量的类)来评估自动分类方法。结果表明,自动分类在很大程度上证实了人工分类,机器学习方法可以根据学生的情感特征沿情感连续体对他们进行分类。在包含两个类的AC-2数据集上,自动分类的最高准确率为90.06%。同样,在包含三个类别的AC-3数据集上,分类的最高准确率为71.79%。最后,通过特征选择方法获得的前10个特征/单词在评估学生的英语学习感受方面具有很强的辨别性。可以说,目前尚无文献中使用特征选择方法和分类器对英语学习者的情感进行自动分类的研究。
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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来源期刊
Advanced Education
Advanced Education EDUCATION & EDUCATIONAL RESEARCH-
自引率
27.30%
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审稿时长
8 weeks
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