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    Title: 應用社會網路分析於易經爻辭之文字特徵觀察
    Application of Social Network Analysis For Text Characteristic Observation On I-Ching Line Statements
    Authors: 李俊澔
    Lee, Chun Hao
    Contributors: 劉吉軒
    Liu, Jyi Shane
    李俊澔
    Lee, Chun Hao
    Keywords: 易經爻辭
    詞頻分析
    社會網路分析
    資料分析
    I Ching Line Statements
    Word Frequency Analysis
    Social Network Analysis
    Data Analysis
    Date: 2016
    Issue Date: 2016-08-22 11:06:55 (UTC+8)
    Abstract: 隨著資訊技術的進步,各種史料文本的數位化工作已經處理完成,運用資訊技術於史料文本分析的研究日益增加。本研究以詞頻分析與社會網路分析為主軸,對於古代《易經》爻辭的文字進行多元化的觀察,本研究首先以詞頻分析探討《易經》爻辭字詞頻率的觀察,再利用《易經》爻辭位置資訊建構成各個社會網路結構,對每個社會網路結構運算各項社會網路指標數據,最後將實驗結果與過往《易經》爻辭的論點做印證與對照,期望對於《易經》爻辭之分析,有更多元性的客觀研究觀察。本研究提供了一個分析《易經》爻辭的新面向,也可供未來研究者對於其他古文研究作參考。
    With advances in information technology, digitization of various historical text has been completed.The study of historical text analysis by using information technology is in-creasing daily.In this paper, we used word frequency analysis and social network analy-sis in the I-Ching line statements.First, we used word frequency analysis in I-Ching line statements,using N-gram and TF-IDF technique analysis word frequency.Second, we constructed social network structure by I-Ching line statements position infor-mation,calculating several social network analysis indicator on each network.We com-pared our experiment results with some existing I-Ching theory, expecting to get more objective results and more diverse analysis for the I-Ching line statements. We not only provided a new perspective to study I-Ching line statements but also expected to help other researchers to study different historical text.
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    Description: 碩士
    國立政治大學
    資訊科學學系
    101753035
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0101753035
    Data Type: thesis
    Appears in Collections:[Department of Computer Science ] Theses

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