體驗區
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篇名 |
自動化校長即席演講評分系統建置之初探
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並列篇名 |
A Prelimary Study for Automatic Scoring System in Oral Presentation
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作者 |
謝名娟(Ming-Chuan Hsieh)
、蔡明學(Ming-Hsueh Tsai)
、李祈均(Chi-Chun Lee)
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中文摘要 |
為了因應大型評量的需要,自動化的口語評量系統為目前評量發展的新趨勢。 近年來,自動化評分系統已逐漸應用於教育測驗、課程教學、心理計量等領域,本 研究擬透過行為特徵處理的方式(behavioral signal processing),來建置一套結合 音訊、視訊之自動化口語評分系統。樣本為儲訓校長,演說內容為教學、校務等相 關議題。本研究提出多模態計算架構,結合培訓計畫的音訊與視訊資料,並透過詞 袋模型(bag of words)與費雪矢量編碼(Fisher-vector encoding),以建置自動即 席演講評分系統。研究顯示,只要蒐集到的樣本在口語表現上的變異性夠大,即能 有效促進機器學習的效果。此外,由本研究的實驗可看出,機器和真人的評分,甚 至會高於真人評分者彼此間的相關性。然而,未來在增進系統的辨識率方面,可透 過加入文本資料、處理音視訊錄製過程中的雜訊、蒐集更多演講樣本、評分者的評 分等,來提高自動化系統的準確率。
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英文摘要 |
Automatic scoring system is the current trend for large scale assessment. Automatic scoring system has became a popular research tool in the field of educational assessment, curriculum teaching and psychological measurement. In this work, we employ behavioral signal processing (BSP)-based methodology to develop a computational framework that can automate the scoring process of pre-service school principals’ oral presentations given at the yearly training program. Using the audio-video feature extraction approach with session-level representation techniques based on bag-ofword and Fisher-vector encoding, we can then characterize each pre-service school principal’s multimodal behavior during an impromptu speech examination for automatic scoring. For the future study, we will include lexical content and annotation; collect more samples and raters which could potentiallyimprove the accuracy of this system.
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頁次 |
125-150
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關鍵詞 |
口語評量
、自動化評分系統
、機器學習
、automatic scoring system
、machine learning
、oral evaluation
、TSSCI
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卷期 |
65:2
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日期 |
201806
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刊名 |
測驗學刊
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出版單位 |
中國測驗學會、心理出版社
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