了解机械工程专业学生创造力的脑电图实验

Md Tanvir Ahad, T. Hartog, Amin G. Alhashim, M. Marshall, Z. Siddique
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摘要

脑电图(EEG) α功率(8 - 13hz)是各种创造性任务条件下的特征,与创造性思维有关。阿尔法能力随着与创造力相关的任务需求的变化而变化。本研究利用事件相关电位(ERPs)、α -功率激活和潜在机器学习(ML)对参与创造性任务的工科学生的神经反应进行分类。所有参与者都执行了一个修改后的替代用途任务(AUT),在这个任务中,参与者将日常物品的功能(或用途)分类为创造性、无意义或普通。首先,本研究调查了中央和顶枕颞区的基本erp。在理解工科学生创造力的生物反应中发现,在300-500 ms窗口,无意义刺激和创造性刺激引起的N400振幅(分别为- 1.107 mV和- 0.755 mV)比普通刺激(0.0859 mV)更大。在每个电极的大平均波形的300-500 ms窗口内观察到N400效应。方差分析确定了显著的主要影响:在创造性思维期间α功率下降,特别是在(1/2,P7/8)顶枕颞区。机器学习用于分类特定颞区数据的神经反应(创造性、无意义和普通)。使用k近邻(kNN)分类器,并使用从参与者收集的数据集对结果进行准确性、精密度、召回率和F1-评分评估。总体准确率为99.92%,曲线下面积为0.9995,kNN分类器成功地对参与者的神经反应进行了分类。这些结果对于机器学习技术在创造力研究中的广泛应用具有很大的潜力。
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Electroencephalogram Experimentation to Understand Creativity of Mechanical Engineering Students
Electroencephalogram (EEG) alpha power (8–13 Hz) is a characteristic of various creative task conditions and is involved in creative ideation. Alpha power varies as a function of creativity-related task demands. This study investigated the event-related potentials (ERPs), alpha power activation, and potential machine learning (ML) to classify the neural responses of engineering students involved with creativity task. All participants performed a modified alternate uses task (AUT), in which participants categorized functions (or uses) for everyday objects as either creative, nonsense, or common. At first, this study investigated the fundamental ERPs over central and parietooccipital temporal areas. The bio-responses to understand creativity in engineering students demonstrates that nonsensical and creative stimuli elicit larger N400 amplitudes (−1.107 mV and −0.755 mV, respectively) than common uses (0.0859 mV) on the 300–500 ms window. N400 effect was observed on 300–500 ms window from the grand average waveforms of each electrode of interest. ANOVA analysis identified a significant main effect: decreased alpha power during creative ideation, especially over (O1/2, P7/8) parietooccipital temporal area. Machine learning is used to classify the specific temporal area data’s neural responses (creative, nonsense, and common). A k-nearest neighbors (kNN) classifier was used, and results were evaluated in terms of accuracy, precision, recall, and F1- score using the collected datasets from the participants. With an overall 99.92% accuracy and area under the curve at 0.9995, the kNN classifier successfully classified the participants’ neural responses. These results have great potential for broader adaptation of machine learning techniques in creativity research.
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