职业类型评估及荷兰测验问卷的脑电图分析

Saim Rasheed, Hassanin M. Al-Barhamtoshy, H. Saifaddin, W. Shalash
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引用次数: 1

摘要

本文旨在评价脑电图对职业兴趣荷兰测验的应用预测。因此,开发和分析荷兰答题过程中脑电图信号的临床变化脑电波是十分必要的。实验测试以回答荷兰测试开始,参与者为34名香港大学计算机及信息科技学院及工程学院的教职员。据此,进行了两次测试,一次不使用脑电图,第二次使用脑电图记录。本文提出的解决方案利用脑电图和初步职业评估从荷兰的回答中获得内容数据后,使用荷兰职业测试数据集的34个参与者的回答。因此,荷兰答题测试(不含脑电图)与荷兰答题者在delta、theta、alpha和beta等不同频带的脑电图分析一起进行分析。因此,我们的目标是为研究人员提供一种方法,如果我们可以利用脑电图信号识别职业兴趣或确定脑电图信号的贡献水平将支持职业类型的识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessment of Vocational Types and EEG Analysis Using Holland Test Questionnaire
This paper aims to evaluate EEG as an application predictor of Holland test with career interest. Consequently, it is essential to develop and analyze the brain wave of clinical changes of the EEG signals during Holland answering questions. The experimental test begins by answering Holland test with 34 participants of staff members at KAU (College of Computing and Information Technology and College of Engineering). Accordingly, the test is applied twice, one without using EEG and the second with EEG recording. The proposed solution uses 34 answering of participants of Holland career test dataset after getting the content data from the answering of Holland using the EEG and initial career assessment. Consequently, the Holland answering test (without EEG) is analyzed along with EEG analysis of the Holland answering in different frequency bands such as delta, theta, alpha and beta. Therefore, we aim to provide researchers, a methodology, if we could identify career interest using EEG signals or to determine the level of contribution of EEG signals would support identifying career types.
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