Stress Level Classifier: Taiwanese College Table Tennis Athletes’ Electroencephalography Analysis Based on Decision Trees

Pingping Cheng, Meng-Hsiun Tsai, Chung-Hao Hsueh, Sheng Kuang Wu
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Abstract

This study aims to provide a method to quantify the stress level with numerical EEG values, identify key features of brainwave and assess the level of stress for table tennis players. The data of College’s Division 1 and Division 2 are collected and analyzed by the decision tree algorithms C4.5, CART, Random Forest and Random Tree. The result of Random Forest obtains the highest accuracy rate among each algorithm, which is 79.21% in all players, 79.3% in Division 1, and 80.68% in Division 2. According to the result of decision trees, the top attribute of the Division 1 players was Theta wave, which was different from the result of other data in the Division 2 players. Also reveal the deference of brainwaves between the Division 2 players and the Division 1 players while they are in high stressed competitions.
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压力水平分类器:基于决策树的台湾大学生乒乓球运动员脑电图分析
本研究旨在提供一种利用脑电图数值量化乒乓球运动员应激水平、识别脑波关键特征并评估其应激水平的方法。采用决策树算法C4.5、CART、随机森林和随机树对学院一、二分部的数据进行收集和分析。随机森林的结果在各算法中准确率最高,在所有玩家中准确率为79.21%,在第1区准确率为79.3%,在第2区准确率为80.68%。根据决策树的结果,1区选手的最高属性为Theta波,这与2区选手的其他数据的结果不同。同时也揭示了乙级选手和甲级选手在高压力比赛中脑电波的差异。
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