Phukhachee Tustanah, Maneewongvatana Suthathip, Angsuwatanakul Thanate, Iramina Keiji, Kaewkamnerdpong Boonserm
Computer Engineering Department, Faculty of Engineering, King Mongkut's University of Technology Thonburi, Bangkok 10140, Thailand.
Graduate School of Systems Life Sciences, Kyushu University, Fukuoka 819-0395, Japan.
Entropy (Basel). 2019 Mar 2;21(3):237. doi: 10.3390/e21030237.
The effect of motivation and attention could play an important role in providing personalized learning services and improving learners toward smart education. These effects on brain activity could be quantified by EEG and open the path to analyze the efficiency of services during the learning process. Many studies reported the appearance of EEG alpha desynchronization during the attention period, resulting in better cognitive performance. Motivation was also found to be reflected in EEG. This study investigated the effect of intrinsic motivation on the alpha desynchronization pattern in terms of the complexity of time series data. The sample entropy method was used to quantify the complexity of event-related spectral perturbation (ERSP) of EEG data. We found that when participants can remember the stimulus, ERSP was significantly less complex than when they cannot. However, the effect of intrinsic motivation cannot be defined by using sample entropy directly. ERSP's main effect showed that motivation affects the complexity of ERSP data; longer continuous alpha desynchronization patterns were found when participants were motivated. Therefore, we introduced an algorithm to identify the longest continuous alpha desynchronization pattern. The method allowed us to understand that intrinsic motivation has an effect on recognition at the frontal and left parietal area directly.
动机和注意力的影响在提供个性化学习服务以及推动学习者走向智能教育方面可能发挥重要作用。这些对大脑活动的影响可以通过脑电图(EEG)进行量化,并为分析学习过程中服务的效率开辟道路。许多研究报告称,在注意力集中期间会出现脑电图阿尔法波去同步化,从而带来更好的认知表现。研究还发现动机也能在脑电图中得到体现。本研究从时间序列数据的复杂性角度,调查了内在动机对阿尔法波去同步化模式的影响。采用样本熵方法来量化脑电图数据的事件相关谱扰动(ERSP)的复杂性。我们发现,当参与者能够记住刺激时,ERSP的复杂性显著低于他们记不住时。然而,内在动机的影响不能直接通过样本熵来界定。ERSP的主要效应表明,动机影响ERSP数据的复杂性;当参与者有动机时,会发现更长的连续阿尔法波去同步化模式。因此,我们引入了一种算法来识别最长的连续阿尔法波去同步化模式。该方法使我们能够明白内在动机直接对额叶和左顶叶区域的识别产生影响。