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研究生: 喬祺
Chiao, Chi
論文名稱: 社經地位、ICT使用與運算思維和學業成就間關係之探討
The Study of Socioeconomic Status, ICT Usage and Computational Thinking on Academic Achievement
指導教授: 邱瓊慧
Chiu, Chiung-Hui
口試委員: 林秋斌
Lin, Chiu-pin
崔夢萍
Tsuei, Meng-ping
歐陽誾
Ouyang, Yin
蘇建元
Su, Chien-yuan
邱瓊慧
Chiu , Chiung-hui
口試日期: 2023/07/31
學位類別: 博士
Doctor
系所名稱: 資訊教育研究所
Graduate Institute of Information and Computer Education
論文出版年: 2023
畢業學年度: 111
語文別: 英文
論文頁數: 112
中文關鍵詞: 數位落差資訊與通訊科技使用運算思維青少年性別
英文關鍵詞: Digital divide, ICT usage, Computational thinking, Adolescent, Gender
研究方法: 次級資料分析調查研究
DOI URL: http://doi.org/10.6345/NTNU202301677
論文種類: 學術論文
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  • 數位落差的研究隨著時間和技術的發展而不斷演變。本論文聚焦在近來引起研究人員關注的兩種數位落差:資訊與通訊科技(ICT)使用落差和運算思維落差。為了研究社經地位、ICT使用與運算思維和學業成就間關係。本論文的第一個研究探討了學生的ICT使用對其家庭社會經濟地位和學業成績的中介效果。研究一使用PISA 2012數據來探討四種ICT使用的中介效果差異:包含學習、資訊檢索、社交互動、和休閒,並分析了性別對研究一中介模型的干擾效果。本論文的第二項研究探討了運算思維對學生社會經濟地位和學業成績的中介效果。研究二以問卷收集1128名台灣國中生的數據進行研究。研究二探討了五種運算思維技能的中介效果差異:包含抽象、分解、演算法思維、評估、和概括。本論文的兩項研究發現,用於資訊檢索和社交互動的ICT使用頻率以及計算思維技能可能會擴大學生因家庭社會經濟地位造成的成績差距。性別也可能調節學生的社會經濟地位、信息通信技術的使用及其學業成績之間的直接效果。本論文的發現可以幫助研究人員和教育工作者了解ICT使用和運算思維可能造成的數位落差影響,並採取適當的行動來縮短這些數位落差。

    Research on the digital divide evolves over time and technology development. This dissertation focused on two digital divides that had recently attracted researchers’ attention: ICT usage gap and computational thinking gap. In order to study the relationship between students’ socioeconomic status, ICT usage and computational thinking on their academic achievement. The first study explored the mediating effect of students’ ICT usage on their family socioeconomic status and academic achievement. Study 1 of this dissertation used PISA 2012 data to investigate the difference of mediation effect of four ICT usage: learning, info retrieval, social interaction, and leisure. The moderating effect of gender in the proposed mediation model was also analyzed. The second study in this dissertation explored the mediating effect of computational thinking on students’ socioeconomic status and their academic achievement. A total of 1128 junior high school students from Taiwan participated in study 2, wherein a questionnaire survey was conducted to gather data. Study 2 investigates the difference of mediation effect of five computational thinking skills: abstraction, decomposition, algorithmic thinking, evaluation, and generalization. These two studies showed that ICT for information retrieval and social interactions as well as computational thinking skills might widen achievement gaps caused by students’ socioeconomic status. Gender could moderate the direct effect between students’ socioeconomic status, ICT usage, and their academic achievement. The results of this dissertation could help researchers and educators understand the digital divide of ICT usage and computational thinking and take appropriate action to bridge these digital divides.

    Table of Contents 摘要 i Abstract ii Acknowledgements iii Table of Contents iv List of Tables vi List of Figures viii 1 Introduction 1 1.1 Background 1 1.2 Problem Statement 6 1.3 Purpose of the Study 7 1.4 Research Questions 10 1.5 Definition of Terms 11 1.5.1 Digital divide 11 1.5.2 Adolescent 11 1.5.3 Socioeconomic status (SES) 12 1.5.4 ICT usage 12 1.5.5 CT skills 13 1.5.6 Gender, and region 14 1.5.7 Academic achievement 14 2 Literature Review 16 2.1 The Relationship between Students' SES and ICT usage 16 2.2 The Relationship between Students' SES and Achievement 19 2.3 The Relationship between Students' ICT Usage and Achievement 24 2.4 The Relationship between Students' SES and CT 27 2.5 Relationship between CT and Academic Achievement 29 2.6 Gender Differences 30 3 Study 1 33 3.1 Sample 34 3.2 Materials and Instruments 34 3.3 Analysis 37 3.4 Results 37 3.4.1 Descriptive statistics 37 3.4.2 Relationships between variables 41 3.4.3 Confirmatory factor analysis 41 3.4.4 Direct and indirect effects 44 3.4.5 The moderation effect 50 3.5 Discussion 52 4 Study 2 55 4.1 Participants 56 4.2 Measures and Procedure 58 4.3 Analysis 62 4.4 Results 62 4.4.1 Descriptive statistics 62 4.4.2 Relationships between variables 70 4.4.3 Multi-level direct effect 72 4.4.4 Multi-level indirect effect 75 4.4.5 Moderation analysis 75 4.5 Discussion 80 5 Conclusions 83 5.1 Summary 83 5.2 Limitations 85 5.3 Implications 85 5.4 Recommendations for future study 86 References 87 Appendix 107

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