Prediction of decision-making response in ultimatum game by constructing regularized common spatial network pattern based on phase locking value

Kun Jiang, Zhihua Huang
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Abstract

Decision-making is a complex cognitive process and plays an important role in the interaction between people. Many researchers are striving to predict the individual's decision-making response(ie., acceptance or rejection) by processing electroencephalogram(EEG) trial-by-trial. In the study, we proposed a supervised learning approach, called regularized discriminative spatial network pattern(RDSNP), to predict individual responses with a small size of training data set. It constructs discriminative brain networks by calculating the phase lock value of different decision-making responses with single-trial EEG data. Then the single-trial spatial network topology was applied to extract the RDSNP features. Finally, a linear discriminate analysis(LDA) classifier was built on RDSNP features and used to predict individual decisions trial-by-trial. To verify the performance of RDSNP, we compared this approach with such widely used baseline feature extraction methods as event related potentials, network properties, principal component analysis in EEG signals of 16 subjects, which was acquired during the experiments of ultimatum game, in terms of accuracy and F1-score suggests that our approach achieve a better performance on predicting single-trial decisions.
基于相位锁定值构造正则化公共空间网络模式的最后通牒博弈决策反应预测
决策是一个复杂的认知过程,在人与人之间的互动中起着重要的作用。许多研究人员都在努力预测个体的决策反应(如:(接受或拒绝)通过逐个处理脑电图(EEG)。在这项研究中,我们提出了一种监督学习方法,称为正则化判别空间网络模式(RDSNP),用于在小规模的训练数据集上预测个体的反应。利用单次脑电数据计算不同决策反应的锁相值,构建判别性脑网络。然后利用单次试验空间网络拓扑提取RDSNP特征。最后,基于RDSNP特征构建线性判别分析(LDA)分类器,并用于逐次预测个体决策。为了验证RDSNP的性能,我们将该方法与广泛使用的基线特征提取方法,如事件相关电位、网络属性、主成分分析等,在最后通牒游戏实验中获得的16个被试的脑电图信号,在准确率和f1得分方面进行了比较,表明我们的方法在预测单次审判决策方面取得了更好的性能。
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