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研究生: 劉憶年
Liu, Yi-Nian
論文名稱: 應用可讀性預測於中小學國語文教科書及優良課外讀物分類之研究
A Study of Readability Prediction on Elementary and Secondary Chinese Textbook and Excellent Extracurricular Reading Materials Classification
指導教授: 陳柏琳
Chen, Berlin
學位類別: 碩士
Master
系所名稱: 資訊工程學系
Department of Computer Science and Information Engineering
論文出版年: 2016
畢業學年度: 104
語文別: 中文
論文頁數: 50
中文關鍵詞: 可讀性文本特徵逐步迴歸支持向量機
英文關鍵詞: Readability, Textual Features, Stepwise Regression, Support Vector Machine
DOI URL: https://doi.org/10.6345/NTNU202204961
論文種類: 學術論文
相關次數: 點閱:100下載:23
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  • 可讀性(Readability)是指閱讀材料能夠被讀者理解的程度。可讀性高的文章較容易被讀者理解。文章的可讀性與很多因素有關,如:文長、字詞難度、句法結構、內容是否符合讀者的先備知識等,然而表淺的語言特徵無法反映這些複雜的成分。本論文以先前的研究為基礎,更深入的探討不同種類的特徵,包括句法分析(Syntactic Analysis)、詞性標記(Part-of-Speech, POS)、詞表示法(Word Embedding)、語意資訊(Semantic Information)與寫作程度(Well-written)等特徵,分析比對不同類型的特徵與可讀性高低的關聯性。實驗資料分為二部分:其一為中小學國語文教科書,選自98年度台灣三大出版社所出版的1~9年級(共18冊)審定版國中小國語文教科書;其二為優良課外讀物,選自文化部歷屆「中小學生優良課外讀物」獲選書籍。本論文嘗試透過逐步迴歸與支持向量機等兩種方式建立可讀性模型,比較兩者之效能優劣;最後,再將兩者加以結合,以提升預測之正確率。實驗結果顯示,本論文所提出的可讀性特徵相較於傳統所使用的表淺特徵,在文本難易度評估的任務中,能有顯著的效能提升。

    Readability is basically concerned with readers’ comprehension of given textual materials: the higher the readability of a document, the easier the document can be understood. It may be affected by various factors, such as document length, word difficulty, sentence structure and whether the content of a document meets the prior knowledge of a reader or not. However, simple surface linguistic features cannot always account for these factors in an appropriate manner. To cater for this, we explore in this study a variety of extra features, including syntactic analysis, parts of speech, word embedding, semantic role features and well-written features. The experimental datasets are composed of two parts: one is textbooks of the Chinese language for elementary and junior high schools (K1 to K9) in Taiwan, compiled from three publishers in the academic year of 2009; the other is excellent extracurricular reading materials for students of elementary and junior high schools, collected by the Ministry of Culture in Taiwan. Two readability prediction models, viz. stepwise regression and support vector machine, are evaluated and compared, while the combination of these two models is also investigated so as to further enhance the accuracy of readability prediction. Experimental results reveal that our proposed approach can yield consistently better performance than traditional ones merely with simple surface linguistic features in evaluating text difficulty.

    目錄 i 圖目錄 iii 表目錄 v 摘要 vii Abstract viii 誌謝 ix 第一章 緒論 1 1.1研究背景 1 1.2研究目的 3 1.3論文大綱 5 第二章 文獻探討 6 2.1可讀性基本概念介紹 6 2.2可讀性之歷史與公式 7 2.3可讀性模型分析比較 11 2.4可讀性近來研究趨勢 15 2.5可讀性實際應用層面 19 第三章 特徵探討 21 3.1基礎特徵 21 3.2句法分析與詞性標記特徵 25 3.3詞表示法與詞性表示法特徵 28 3.4語意資訊特徵 31 3.5寫作程度特徵 34 第四章 實驗設置與結果 36 4.1實驗資料 36 4.2實驗設定 37 4.3國語文教科書實驗 38 4.4優良課外讀物實驗 41 4.5兩種文本比較實驗 43 第五章 結論與未來展望 44 5.1結論 44 5.2未來展望 45 參考文獻 46

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