研究生: |
黃超賢 Huang, Chao-Hsien |
---|---|
論文名稱: |
腦波應用於內在認知負荷之探究:以數學代數一元一次方程式與二元一次聯立方程式唯一解運算為例 A Study on the Application of Brainwaves to Intrinsic Cognitive Load: Take the Unique Solution Operation of One-Time Linear Equation and Two-Time Linear Simultaneous Equation in Mathematical Algebra as an Example |
指導教授: |
王子華
Wang, Tzu-Hua |
口試委員: |
王昭智
Wang, Chao-Chih 陳湘淳 Chen, Hsiang-Chun |
學位類別: |
碩士 Master |
系所名稱: |
竹師教育學院 - 教育與學習科技學系 Education and Learning Technology |
論文出版年: | 2020 |
畢業學年度: | 108 |
語文別: | 中文 |
論文頁數: | 96 |
中文關鍵詞: | 內在認知負荷 、腦波 、事件相關電位 、洞察力 、數學代數 |
外文關鍵詞: | Intrinsic Cognitive Load, EEG, ERP, Insight, Mathematical Algebra |
相關次數: | 點閱:3 下載:0 |
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本研究採用事件相關電位技術,以內在認知負荷觀點,探討「數學代數一元一次方程式與二元一次聯立方程式唯一解」題型之不同解題步驟數,對正確率和反應時間之影響。其中,「數學代數一元一次方程式與二元一次聯立方程式唯一解」題型難易程度依照步驟數劃分為「容易」、「中等」及「困難」三種類型。
本研究採實驗研究法,研究刺激素材內容為國小、國中洞察力之代數解題型,所使用的素材依認知負荷理論的教材設計原則進行設計,特別以數學洞察力題解範例為編排原則。研究對象為臺灣58名20至30歲之青年,將其隨機配置為「實驗一:臺灣青年數學思考實驗」與「實驗二:臺灣青年數學思考腦波實驗」,分別讓40名青年進行數學代數題型行為實驗,另外18名進行數學代數腦波實驗,實驗一全部收案完成後才繼續進行實驗二。研究工具包含數學代數Eprime電腦化測驗、Curry8腦波系統、64 channel腦波帽及認知負荷量表。
研究結果為:(1)正確率會隨著「解題步驟數」變多而遞減,反應時間會隨著「解題步驟數」變多而增加。(2)高分組的整體正確率顯著優於低分組 (p<0.001)。(3)女性整體正確率與男性無異 (p=0.253),而女性整體答題反應時間顯著高於男性 (p=0.005)。(4)整體認知負荷與正確率無顯著相關 (R=0.048),而低分組在認知負荷觀點花費心力面向與正確率具有顯著正相關 (R=0.498*)。(5)「整體腦波」(N=18)中,以「S1:內容敘述」為起點,我們發現PO3、PO4、PO7、PO8電極位置出現頻繁之活動,於200毫秒前後,出現顯著N2波,且PO4處之N2波振幅:「困難」大於「中等」(p=0.003);PO8處之N2波振幅:「困難」大於「中等」 (p=0.004)。另外,於500-900毫秒出現緩慢爬升的負慢波,可能涉及了洞察力與內在認知負荷之影響。(6)「整體腦波」(N=18)中,以「S1:內容敘述」為起點,在「困難」題型中,PO4處之N2波振幅:「正確反應」大於「不正確反應」(p=0.018)。(7)「高分組腦波」(N=9)中,以「S1:內容敘述」為起點,左後側PO3、PO7電極處,在不同難易度下N2波振幅出現差異,且PO3處之N2波振幅:「困難」大於「中等」(p=0.038);PO7處之N2波振幅:「中等」大於「簡單」(p=0.042)。(8)「低分組腦波」(N=9)中,以「S1:內容敘述」為起點,我們發現右後側PO4、PO8電極處,在不同難易度下N2波振幅出現差異,且PO4處之N2波振幅:「困難」大於「中等」(p=0.009);PO8處之N2波振幅:「困難」大於「中等」(p=0.046)。(9) 比較「高分組腦波」(N=9)與「低分組腦波」(N=9)之差異。在「容易」題型中,PO3處之N2波振福:「低分組」大於「高分組」(p=0.018);PO7處之N2波振福:「低分組」大於「高分組」(p=0.034);PO8之N2波振福:「低分組」大於「高分組」(p=0.052)。
綜觀上述,提出以下幾點結論:(1)「解題步驟數」會影響題目之難易度,是影響內在認知負荷之重要因素。(2)「解題步驟數」越多,內在認知負荷將會越高。(3)頂枕葉之N2波與負慢波可能會是觀察內在認知負荷之關鍵因素。
In this study, using the Electroencephalograph (EEG) and Event-Related Potential (ERP) technologies, and the Intrinsic Cognitive Load point, we explored the number of different problem-solving steps for the "Mathematical Algebra One-Way Equation and Two-Way Simultaneous Equations Unique Solution" problem type Impact on accuracy and response time. Among them, the degree of difficulty of the "one-time linear equations and two-time linear equations of mathematical algebra unique solution" problem type is divided into three types of "easy", "medium", and "difficult" according to the number of steps.
The materials used are designed according to Cognitive Load Theory, and the examples of mathematical insight problem solving are used as design principles. The research subjects were 58 young people aged 20 to 30 in Hsinchu, Taiwan. They were randomly assigned as "Experiment 1: Experiments on Mathematical Thinking of Taiwan Youths" and "Experiment 2: Experiments on Mathematical Thinking of Taiwan Youths Brainwaves." Experiment 1 were conducted by 40 young people, and Experiment 2 were conducted by the other 18 young people. The research tools include Epime computerized test, Curry8 system, a 64-channel electrode cap, and a cognitive load scale.
The results are as follows: (1) The accuracy decreases as the number of "Steps" increases, and the response time increases as the number of "Steps" increases. (2) The accuracy of the high group is significantly higher than the low group (p <0.001). (3) The accuracy of women is no different from men’s (p = 0.253), but the response time of women is significantly higher than men’s (p = 0.005). (4) There’s no correlation between the cognitive load and the accuracy (R = 0.048), but the low group has a positive correlation with the accuracy (R = 0.498*). (5) Frequent activities at PO3, PO4, PO7, and PO8 have a significant N2 wave appeared around 200 ms. , and the amplitude of N2 wave at PO4: "Difficult" is larger than "Medium" (p = 0.003); the amplitude of N2 wave at PO8: "Difficult" is larger than "Medium" (p = 0.004). In addition, the negative slow wave (NSW) slowly climbs at 500-900 ms accuracy may involve influence of insight and Intrinsic Cognitive Load. (6) In "Whole Brainwaves" (N = 18), starting with "S1: Content Description", in the "Difficult" question type, the amplitude of the N2W at PO4: "Correct response" is larger than "Incorrect response" (p = 0.018). (7) In "High-Group Brainwaves" (N = 9), starting from "S1: Content Description", the PO2 and PO7 electrodes on the left rear side have different N2W amplitudes at different difficulty levels, and the PO3 N2W amplitude: "Difficult" is larger than "Medium" (p = 0.038); N2W amplitude at PO7: "Medium" is larger than "Easy" (p = 0.042). (8) In the "Low-Group Brainwaves" (N = 9), starting with "S1: Content Description", at the PO4 and PO8 electrodes on the right rear side, the amplitude of the N2W differed at different levels, and PO4 The amplitude of the N2W at "Difficult" is larger than "Medium" (p = 0.009); the amplitude of the N2W at PO8: "Difficult" is larger than "Medium" (p = 0.046). (9) Compare the difference between "High-Group Brainwaves" (N = 9) and "Low-Group Brainwaves" (N = 9). In "Easy" question form, the N2W vibration at PO3: "Low-Group" is larger than the "High-group" (p = 0.018); the N2W vibration at PO7: "Low-Group" is larger than the "High-group" (p = 0.034); N2W Zhenfu of PO8: "Low-Group" is larger than "High-group" (p = 0.052).
Overall, we list three conclusions: (1) "Steps" affects the difficulty of the problem and Internal Cognitive Load. (2) The more "Steps", the higher Internal Cognitive Load. (3) N2W and NSW of the parietal occipital lobe may be the key factors affecting Intrinsic Cognitive Load.
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