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題名 運用財經文本情感分析於台灣電子類股價指數趨勢預測之研究
Research of applying Sentimental Analysis on financial documents to predict Taiwan Electronic Sub-Index trend
作者 劉羿廷
貢獻者 姜國輝<br>季延平
劉羿廷
關鍵詞 情感分析
巨量資料
LDA 主題模型
支援向量機
電子類股價指數
Sentimental analysis
Big Data
LDA
SVM
Taiwan Electronic Sub-Index Trend
日期 2015
上傳時間 2-Aug-2016 17:02:43 (UTC+8)
摘要 電子工業為台灣最具競爭力之產業,使得電子類股在集中市場成交比重高達 69.49%,可見電子類股的波動足以對整個台股市場造成相當大的影響。而許多研究指出,網路上的文本訊息藉由社會網路的催化而快速傳遞,會對群眾情緒造成影響,進而影響股價波動,故對於投資者而言,如果能快速分析大量網路財經文本來推測投資大眾情緒進而預測股價走勢,即可提升獲利。然而,每天有近百篇的財經文本產生,傳統的人工抽樣分析方式效率不彰且過於耗力, 已不足以負荷此巨量資料。
過去文本情感分析的研究中已證實監督式學習方法可以透過簡單量化的方式達到良好的分類效果,但監督式學習方法所使用的訓練資料集須有事先定義好的已知類別,故其有無法預期未知類別的限制,造成無法判斷文本中可能存在的未知主題,所以本研究提出一套針對財經文本的混合監督式學習與非監督式學習之情感分析方法,透過非監督式學習將 2014 整年度的電子工業財經文本進行文本主題判別、情緒指數計算與情緒傾向標注。之後配合視覺化工具作趨勢線圖分析,找出具有領先指標特性之主題,接著再用監督式學習將其結合國際指標、總體經濟指標、台股指標、技術指標等,建立分類模型以預測台灣電子類股價指數走勢。
在實驗結果中,主題標注方面,本研究發現因文本數量遠大於議題詞數量造成 TFIDF 矩陣過於稀疏,使得 TFIDF-Kmeans 主題模型分類效果不佳;而文本具有多主題之特性造成 NPMI-Concor 分群之議題詞過於複雜不易歸納,然而LDA 主題模型基於所有主題被所有文章共享的特性,使得在字詞分群與主題分類準確度都優於 TFIDF-Kmeans 和 NPMI-Concor 主題模型,分類準確度高達 98%,故後續採用 LDA 主題模型進行主題標注。情緒傾向標注方面,證實本研 究擴充後的情感詞集比起 NTUSD 有更好的字詞極性判斷效果,計算出的情緒 指數之趨勢線也較投資人常用的 MACD 之趨勢線更符合電子類股價指數之趨 勢。此外,亦發現並非所有文本的情緒指數皆具有領先特性,僅企業營運主題與總體經濟主題之文本的情緒指數能提前反應電子類股價指數趨勢,故本研究用此二主題之文本的情緒指數來建立分類模型。
接著,本研究透過比較情緒指數結合技術指標之分類模型與單純技術指標分類模型的準確率發現,前者較後者高出 7%的準確率。進一步結合間接情緒指標的分類模型更有高達 71%準確率,故證實了情感分析確實能有效提升電子股價類股指數趨勢預測準確度,以提升投資人之投資報酬率。
The electronic industry is the most competitive industry in Taiwan, and its large volume could have strong influence on the whole stock market. Many research show that text documents on the Internet have great effect on public emotion, and the public emotion could also affect the stock price. For investors, it is important to know how to analyze the potential emotion in text documents then use this information to predict the stock trend. However, the traditional way to analyze text documents by human resource cannot afford the large volume of financial text documents on the Internet.
In past Sentimental Analysis research, supervised method is proven as a method could reach high accuracy, but there are limits about predicting the future trend. This research found a solution which mixed supervised and unsupervised methods to deal with these large financial text documents. First, we use unsupervised method to find out the topic of documents, and then calculate the sentimental index to judge the document’s emotional direction. After that we will produce trend line charts by visualization tools to find out which theme documents’ sentiment index are leading indicators. Furthermore, we use supervised method to integrate the sentimental index with other 24 indirect sentimental index to build the prediction model.
According to the result, we found that LDA model’s performance is better than TFIDF-Kmeans model and NPMI-Concor mode because of document characteristic. Besides, sentimental dictionary I build has higher accuracy than NTUSD on judging word polarity. The trend of sentimental index and Taiwan electronic sub-index(TE) to each other is more similar than MACD line and TE to each other. We also discover that the sentiment index produced from documents about enterprise operation and macroeconomics are leading indicators, so we use these to build prediction model.
Moreover, we found that the prediction model which include the sentiment index better than which only include the technical indicators. As mentioned above, the sentimental index could make the prediction of Taiwan electronic sub-index trend be more accurate and promote the return of investment.
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描述 碩士
國立政治大學
資訊管理學系
102356034
資料來源 http://thesis.lib.nccu.edu.tw/record/#G1023560341
資料類型 thesis
dc.contributor.advisor 姜國輝<br>季延平zh_TW
dc.contributor.author (Authors) 劉羿廷zh_TW
dc.creator (作者) 劉羿廷zh_TW
dc.date (日期) 2015en_US
dc.date.accessioned 2-Aug-2016 17:02:43 (UTC+8)-
dc.date.available 2-Aug-2016 17:02:43 (UTC+8)-
dc.date.issued (上傳時間) 2-Aug-2016 17:02:43 (UTC+8)-
dc.identifier (Other Identifiers) G1023560341en_US
dc.identifier.uri (URI) http://nccur.lib.nccu.edu.tw/handle/140.119/99555-
dc.description (描述) 碩士zh_TW
dc.description (描述) 國立政治大學zh_TW
dc.description (描述) 資訊管理學系zh_TW
dc.description (描述) 102356034zh_TW
dc.description.abstract (摘要) 電子工業為台灣最具競爭力之產業,使得電子類股在集中市場成交比重高達 69.49%,可見電子類股的波動足以對整個台股市場造成相當大的影響。而許多研究指出,網路上的文本訊息藉由社會網路的催化而快速傳遞,會對群眾情緒造成影響,進而影響股價波動,故對於投資者而言,如果能快速分析大量網路財經文本來推測投資大眾情緒進而預測股價走勢,即可提升獲利。然而,每天有近百篇的財經文本產生,傳統的人工抽樣分析方式效率不彰且過於耗力, 已不足以負荷此巨量資料。
過去文本情感分析的研究中已證實監督式學習方法可以透過簡單量化的方式達到良好的分類效果,但監督式學習方法所使用的訓練資料集須有事先定義好的已知類別,故其有無法預期未知類別的限制,造成無法判斷文本中可能存在的未知主題,所以本研究提出一套針對財經文本的混合監督式學習與非監督式學習之情感分析方法,透過非監督式學習將 2014 整年度的電子工業財經文本進行文本主題判別、情緒指數計算與情緒傾向標注。之後配合視覺化工具作趨勢線圖分析,找出具有領先指標特性之主題,接著再用監督式學習將其結合國際指標、總體經濟指標、台股指標、技術指標等,建立分類模型以預測台灣電子類股價指數走勢。
在實驗結果中,主題標注方面,本研究發現因文本數量遠大於議題詞數量造成 TFIDF 矩陣過於稀疏,使得 TFIDF-Kmeans 主題模型分類效果不佳;而文本具有多主題之特性造成 NPMI-Concor 分群之議題詞過於複雜不易歸納,然而LDA 主題模型基於所有主題被所有文章共享的特性,使得在字詞分群與主題分類準確度都優於 TFIDF-Kmeans 和 NPMI-Concor 主題模型,分類準確度高達 98%,故後續採用 LDA 主題模型進行主題標注。情緒傾向標注方面,證實本研 究擴充後的情感詞集比起 NTUSD 有更好的字詞極性判斷效果,計算出的情緒 指數之趨勢線也較投資人常用的 MACD 之趨勢線更符合電子類股價指數之趨 勢。此外,亦發現並非所有文本的情緒指數皆具有領先特性,僅企業營運主題與總體經濟主題之文本的情緒指數能提前反應電子類股價指數趨勢,故本研究用此二主題之文本的情緒指數來建立分類模型。
接著,本研究透過比較情緒指數結合技術指標之分類模型與單純技術指標分類模型的準確率發現,前者較後者高出 7%的準確率。進一步結合間接情緒指標的分類模型更有高達 71%準確率,故證實了情感分析確實能有效提升電子股價類股指數趨勢預測準確度,以提升投資人之投資報酬率。
zh_TW
dc.description.abstract (摘要) The electronic industry is the most competitive industry in Taiwan, and its large volume could have strong influence on the whole stock market. Many research show that text documents on the Internet have great effect on public emotion, and the public emotion could also affect the stock price. For investors, it is important to know how to analyze the potential emotion in text documents then use this information to predict the stock trend. However, the traditional way to analyze text documents by human resource cannot afford the large volume of financial text documents on the Internet.
In past Sentimental Analysis research, supervised method is proven as a method could reach high accuracy, but there are limits about predicting the future trend. This research found a solution which mixed supervised and unsupervised methods to deal with these large financial text documents. First, we use unsupervised method to find out the topic of documents, and then calculate the sentimental index to judge the document’s emotional direction. After that we will produce trend line charts by visualization tools to find out which theme documents’ sentiment index are leading indicators. Furthermore, we use supervised method to integrate the sentimental index with other 24 indirect sentimental index to build the prediction model.
According to the result, we found that LDA model’s performance is better than TFIDF-Kmeans model and NPMI-Concor mode because of document characteristic. Besides, sentimental dictionary I build has higher accuracy than NTUSD on judging word polarity. The trend of sentimental index and Taiwan electronic sub-index(TE) to each other is more similar than MACD line and TE to each other. We also discover that the sentiment index produced from documents about enterprise operation and macroeconomics are leading indicators, so we use these to build prediction model.
Moreover, we found that the prediction model which include the sentiment index better than which only include the technical indicators. As mentioned above, the sentimental index could make the prediction of Taiwan electronic sub-index trend be more accurate and promote the return of investment.
en_US
dc.description.tableofcontents 第一章 概論 1
1.研究背景 1
2.研究動機 4
3.研究目的 6
第二章 文獻探討 8
1.情感分析(Sentiment Analysis) 8
1.1 情感分析的定義 8
1.2 情感分析方法 9
1.3 情感分析與股價之相關性研究 11
2.主題模型 13
2.1 TFIDF-Kmeans主題模型 13
2.2 NPMI-Concor主題模型 15
2.3隱含狄利克雷分布主題模型(Latent Dirichlet Allocation, LDA) 17
3.分類演算法(Classification Algorithm) 21
3.1最近鄰居法(k- Nearest Neighbor, kNN) 21
3.2簡單貝氏分類器(Naïve Bayes) 22
3.3支援向量機(Support Vector Machine, SVM) 24
3.4邏輯斯迴歸(Logistic Regression) 26
第三章 研究方法 28
1.資料蒐集(Data Collection) 30
2.文本前處理(Document Preprocessing) 31
2.1中文斷詞(Segmentation/Tokenization) 31
2.2詞性標注(Part-of-Speech Tagging) 31
2.3否定詞處理(Negation Process) 32
2.4詞性過濾(POS Filtering) 32
2.5字詞頻率計算 33
3.文本主題標注 34
3.1找出文本熱門議題詞 34
3.2建立主題模型 35
3.3判斷文本主題 38
4.情緒傾向標注(Sentiment Orientation) 39
4.1建立情感詞集(Building Sentiment Term Set) 39
4.2情緒指數計算 40
4.3情緒傾向標注 41
5.視覺化分析(Visualization) 42
6.建立分類模型與效果衡量(Classification Model) 43
6.1建立向量空間模型 43
6.2分類模型建立 49
6.3分類的效果衡量 49
第四章 實驗結果與討論 51
1.財經文本資料蒐集結果 51
2.文本類別標注結果 52
2.1主題標注結果 52
2.2主題標注實驗結果討論 63
2.3情緒傾向標注結果 64
2.4情緒傾向標注實驗結果討論 66
3.視覺化分析結果 67
3.1情緒指數與MACD趨勢線圖分析 67
3.2領先指標分析 71
3.3視覺化分析結果討論 80
4.分類模型實驗結果 81
4.1分類模型建立與比較 81
4.2優化分類模型 83
4.3分類模型實驗結果討論 84
第五章 研究結論與建議 85
1.結論與貢獻 85
2.未來研究建議 88
第六章 參考文獻 89
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dc.format.extent 1964946 bytes-
dc.format.mimetype application/pdf-
dc.source.uri (資料來源) http://thesis.lib.nccu.edu.tw/record/#G1023560341en_US
dc.subject (關鍵詞) 情感分析zh_TW
dc.subject (關鍵詞) 巨量資料zh_TW
dc.subject (關鍵詞) LDA 主題模型zh_TW
dc.subject (關鍵詞) 支援向量機zh_TW
dc.subject (關鍵詞) 電子類股價指數zh_TW
dc.subject (關鍵詞) Sentimental analysisen_US
dc.subject (關鍵詞) Big Dataen_US
dc.subject (關鍵詞) LDAen_US
dc.subject (關鍵詞) SVMen_US
dc.subject (關鍵詞) Taiwan Electronic Sub-Index Trenden_US
dc.title (題名) 運用財經文本情感分析於台灣電子類股價指數趨勢預測之研究zh_TW
dc.title (題名) Research of applying Sentimental Analysis on financial documents to predict Taiwan Electronic Sub-Index trenden_US
dc.type (資料類型) thesisen_US
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