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研究生: 張曉瑀
Chang, Hsiao-Yu
論文名稱: 目標設定與引導策略對不同先備知識國中生以智慧眼鏡輔助機器人程式設計學習之成效及動機探討
Effects of Goal-Setting, Learning Guidance and Prior Knowledge on Junior High Students’ Learning of Robot Programming Supported by Smart Glass
指導教授: 陳明溥
Chen, Ming-Puu
學位類別: 碩士
Master
系所名稱: 資訊教育研究所
Graduate Institute of Information and Computer Education
論文出版年: 2018
畢業學年度: 106
語文別: 中文
論文頁數: 110
中文關鍵詞: 程式設計目標設定引導策略體驗式學習機器人教育
英文關鍵詞: programming, goal-setting, guidance strategy, experiential learning, robotic instruction
DOI URL: http://doi.org/10.6345/THE.NTNU.GICE.001.2018.F02
論文種類: 學術論文
相關次數: 點閱:210下載:18
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  • 本研究旨在探討目標設定及引導策略對於國中學習者在機器人程式設計學習成效及學習動機。本研究之學習者依循學習單任務之目標設定及智慧眼鏡提供引導之範例影片進行機器人專題。本研究採因子設計之準實驗研究法,研究對象為八年級學習者,參與者為新北市某國中八年級159位學生,有效樣本141人。自變項包含目標設定、引導策略及先備知識;目標設定依任務目標屬性分為「整體目標」與「階段目標」;引導策略依引導方式分為「問題引導」與「程序引導」;先備知識依學習者前測成績分為「高先備知識」與「低先備知識」。依變項包含程式設計之學習成效(知識記憶、知識理解、知識應用)與學習動機(價值成分、期望成分)。
    研究結果顯示:就學習成效而言,(1)在知識記憶方面,高先備知識學習者表現優於低先備知識學習者;整體目標組結合問題引導策略在知識記憶學習表現優於結合程序引導策略;(2)在知識理解方面,以整體目標為目標設定時,高先備知識學習者表現優於低先備知識學習者;(3)在知識應用方面,高先備知識學習者表現上優於低先備知識學習者;問題引導組學習表現優於程序引導組。在學習動機方面,(4)各實驗組學習者對機器人程式設計學習活動皆抱持著正向的學習動機,而問題引導組學習者有較高的學習動機表現。

    The purpose of this study was to investigate the effects of types of goal-setting, learning guidance and prior knowledge on junior high school students’ learning performance and motivation toward robot programming. A quasi-experimental design was employed and a total of 141 eighth graders participated in the experimental activity. The independent variables included types of goal-setting (long-term goals vs. sub-term goals), learning guidance (question-guidance vs. procedure-guidance), and prior knowledge (high vs. low). The dependent variables were students’ learning performance and motivation.
    The results revealed that: (a) for the comprehension performance, the high-prior knowledge group outperformed the low-prior knowledge group while receiving the long-term goal; the long-term goal combined with the question-guidance led to better comprehension performance; (b) as for the application performance, learners with high-prior knowledge had superior performance than the learners with low-prior knowledge did, and the question-guidance group outperformed the procedural-guidance group; and (c) all participants showed positive motiviation toward the robot programming learning, and particularly, the question-guidance group revealed higher degree of motiviation than the procedure-guidance group did.

    附表目錄 VII 附圖目錄 VIII 第一章 緒論 1 第一節 研究背景與動機 1 第二節 研究目的與待答問題 4 第三節 研究範圍與限制 5 第四節 重要名詞釋義 7 第二章 文獻探討 9 第一節 程式設計學習 9 第二節 目標設定 13 第三節 體驗式學習 16 第四節 引導策略 19 第五節 擴增實境 23 第三章 研究方法 25 第一節 研究對象 25 第二節 研究設計 27 第三節 實驗流程 41 第四節 研究工具 43 第五節 資料處理與分析 46 第四章 研究結果與討論 47 第一節 程式設計學習成效分析 47 第二節 程式設計學習動機分析 55 第五章 結論與建議 65 第一節 結論 65 第二節 建議 68 參考文獻 71 附錄一 程式設計學習成效測驗卷 76 附錄二 程式設計學習動機問卷 81 附錄三 整體目標 — 問題引導組學習單 83 附錄四 階段目標 — 問題引導組學習單 89 附錄五 整體目標 — 程序引導組學習單 95 附錄六 階段目標 — 程序引導組學習單 103

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