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编程能力预测:将基于注意力的卷积神经网络应用于工作记忆的功能性近红外光谱分析。

Programming ability prediction: Applying an attention-based convolutional neural network to functional near-infrared spectroscopy analyses of working memory.

作者信息

Guo Xiang, Liu Yang, Zhang Yuzhong, Wu Chennan

机构信息

School of Information and Electronic Engineering, Zhejiang University of Science and Technology, Hangzhou, China.

School of Electrical and Computer Engineering, University of Alberta, Edmonton, AB, Canada.

出版信息

Front Neurosci. 2022 Dec 1;16:1058609. doi: 10.3389/fnins.2022.1058609. eCollection 2022.

Abstract

Although theoretical studies have suggested that working-memory capacity is crucial for academic achievement, few empirical studies have directly investigated the relationship between working-memory capacity and programming ability, and no direct neural evidence has been reported to support this relationship. The present study aimed to fill this gap in the literature. Using a between-subject design, 17 programming novices and 18 advanced students performed an n-back working-memory task. During the experiment, their prefrontal hemodynamic responses were measured using a 48-channel functional near-infrared spectroscopy (fNIRS) device. The results indicated that the advanced students had a higher working-memory capacity than the novice students, validating the relationship between programming ability and working memory. The analysis results also showed that the hemodynamic responses in the prefrontal cortex can be used to discriminate between novices and advanced students. Additionally, we utilized an attention-based convolutional neural network to analyze the spatial domains of the fNIRS signals and demonstrated that the left prefrontal cortex was more important than other brain regions for programming ability prediction. This result was consistent with the results of statistical analysis, which in turn improved the interpretability of neural networks.

摘要

尽管理论研究表明工作记忆容量对学业成绩至关重要,但很少有实证研究直接调查工作记忆容量与编程能力之间的关系,也没有直接的神经证据支持这种关系。本研究旨在填补这一文献空白。采用组间设计,17名编程新手和18名高级学生进行了n-back工作记忆任务。在实验过程中,使用48通道功能近红外光谱(fNIRS)设备测量他们的前额叶血流动力学反应。结果表明,高级学生比新手学生具有更高的工作记忆容量,验证了编程能力与工作记忆之间的关系。分析结果还表明,前额叶皮层的血流动力学反应可用于区分新手和高级学生。此外,我们利用基于注意力的卷积神经网络分析fNIRS信号的空间域,并证明左前额叶皮层在预测编程能力方面比其他脑区更重要。这一结果与统计分析结果一致,进而提高了神经网络的可解释性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/eee2/9751487/1e475c1b485a/fnins-16-1058609-g001.jpg

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