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  1. NTU Theses and Dissertations Repository
  2. 法律學院
  3. 法律學系
請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101779
完整後設資料紀錄
DC 欄位值語言
dc.contributor.advisor李素華zh_TW
dc.contributor.advisorSu-Hua Leeen
dc.contributor.author姜婷瑄zh_TW
dc.contributor.authorTing-Hsuan Chiangen
dc.date.accessioned2026-03-04T16:30:06Z-
dc.date.available2026-03-05-
dc.date.copyright2026-03-04-
dc.date.issued2025-
dc.date.submitted2026-02-09-
dc.identifier.citation一、中文部分
(一)書籍
1. Martin Ford(著),曾琳之(譯)(2022),《AI無所不在的未來》,高寶。
2. Nick Bostrom(著),唐澄暐(譯)(2023),《超智慧:AI風險的最佳解答》,感電。
3. 丁磊(2023),《生成式人工智慧:AIGC的邏輯與應用》,金尉。
4. 山口達輝、松田洋之(著),衛宮紘(譯)(2021),《圖解AI:機器學習和深度學習的技術與原理》,碁峯。
5. 三津村直貴(著),温政堯(譯)(2022),《圖解AI人工智慧》,基峯。
6. 江達威(2023),《100張圖搞懂AI人工智慧產業鏈》,財經傳訊。
7. 李開復、王詠剛(2018),《人工智慧來了》,天下文化。
8. 林守德(等編)(2021),《智慧新世界—圖靈所沒有預料的人工智慧》,三民。
9. 陳根(2023),《瘋ChatGPT:顛覆未來,OpenAI翻轉人工智慧新紀元》,博碩。
10. 陳昭明(2021),《深度學習最佳入門邁向AI專題實戰》,深智數位。
11. 陳家駿、許正乾、林宜柔(2024),《AI/ChatGPT v. 智慧財產權—美國生成式AI案例評析》,元照。
12. 章忠信(2019),《著作權法逐條釋義》,5版,五南。
13. 張志勇、廖文華、石貴平、王勝石、游國忠(2022),《AI人工智慧》,2版,全華。
14. 黃銘傑(等著)(2011),《著作權合理使用規範之現在與未來》,元照。
15. 楊智傑(2018),《美國著作權法—理論與重要判決》,元照。
16. 羅明通(2014),《著作權法論Ⅱ》,8版,三民。
17. Kate Crawford(著),呂奕欣(譯),《人工智慧最後的秘密:權力、政治、人類的代價,科技產業和國家機器如何聯手打造AI神話?》,臉譜。
(二)期刊論文
1. 王石杰(2006),〈著作權法合理使用的本質—從法律經濟分析觀點與傳統案例解讀〉,《中原財經法學》,16期,頁193-232。
2. 王怡蘋(2011),〈德國著作權集體管理實務運作概況〉,《智慧財產權》,155期,頁5-40。
3. 江雅綺(2025),〈人工智慧生成內容與著作權:以人工智慧生成內容是否能取得著作權利保護與人工智慧系統訓練過程是否成立合理使用為核心〉,《資訊社會研究》,48期,頁59-87。
4. 李治安(2012),〈合理使用誰的著作?—論合理使用與出處明示之關聯〉,《政大法學評論》,126期,頁357-403。
5. 林利芝(2020),〈論文字資料探勘行為涉及的資料庫保護爭議─以科技保護措施為中心〉,《東吳法律學報》,31卷3期,頁161-209。
6. 胡心蘭(2018),〈轉化才是王道?論合理使用原則轉化性要素之適用與影響〉,《東海大學法學研究》,第53期,頁183-246。
7. 徐龍、鄭冠宇(2023),〈論機器學習之著作權困境與應對〉,《臺大法學論叢》,52卷2期,頁391-475。
8. 高嘉鴻(2020),〈歐盟2019年數位單一市場著作權指令概要〉,《智慧財產權月刊》,263期,頁6-22。
9. 許耀明(2024),〈2024歐盟關於人工智慧之2024/1689號規則簡析〉,《月旦民商法雜誌》,85期,頁6-17。
10. 陳家駿(2024),〈美國首宗小說家控告生成式AI著作侵權案程序判決出爐〉,《月旦律評》,30期,頁127-144。
11. 陳家駿(2024),〈全球首宗生成式AI爭訟──OpenAI與微軟開源碼著作侵權之程序判決〉,《月旦律評》,26期,頁92-107。
12. 陳皓芸(2020),〈巨量資料分析與著作權法-以日本 2018 年著作權法修正為中心〉,《萬國法律》,229期,頁11-21。
13. 章忠信(2015),〈孤兒著作利用困境之解決與立法〉,《智慧財產權月刊》,203期,頁5-35。
14. 章忠信(2023),〈ChatGPT 引發的著作權議題〉,《當代法律》,16期,頁73-83。
15. 章忠信(2023),〈人工智慧與著作權〉,《全國律師》,27卷6期,頁4-17。
16. 章忠信(2024),〈人工智慧訓練與著作之合法利用〉,《智慧財產權月刊》,304期,頁5-26。
17. 章忠信(2024),〈人工智慧基本法草案中之著作權議題探討〉,《當代法律》,32期,頁64-77。
18. 黃銘傑(2025),〈生成式人工智慧與著作權法〉,《月旦法學雜誌》,360期,頁6-18。
19. 葉奇鑫、許斌(2024),〈AI大語言模型訓練與著作權合理使用之思考—以紐約時報對OpenAI訴訟案為中心〉,《全國律師》,28卷6期,頁5-19。
20. 蔡嘉裕(2021),〈著作權「轉化性使用」之我國本土案例分析〉,《智慧財產權月刊》,271期,頁47-77。
21. 蔡億達(2024),〈生成式AI與合理使用──從搜尋引擎先例看「紐約時報訴OpenAI案」〉,《月旦會計實務研究》,79期,頁45-59。
(三)學位論文
1. 林韋廷(2023),《機器學習模型訓練與著作權保護間之衝突研究》,國立臺北科技大學智慧財產權研究所碩士論文(未出版),臺北。
2. 溫家緯(2022),《論音樂著作之定義與實質近似之判斷—以美國實務判決為出發》,國立政治大學科技管理與智慧財產研究所碩士論文(未出版),臺北。
(四)網路文獻
1. Creative Commons (CC Taiwan),《CC 授權介紹》,載於:https://tw.creativecommons.net/home-page/。
2. Creative Commons (CC Taiwan),《OpenGLAM CC授權問答集-著作權》,載於:https://tw.creativecommons.net/openglam-copyright/。
3. Gene Online(2025),《從晶片到藥瓶:全球AI驅動新藥開發浪潮來襲,臺灣該如何布局?〉,載於:https://geneonline.news/ai-driven-drug-discovery-and-how-taiwan-can-do-in-the-next-step/。
4. TAIDE(2025),《TAIDE團隊釋出Llama 3.1-TAIDE-LX-8B-Chat模型,提升長文處理擴大上下文長度至131K,以及強化臺灣文化文本資料》,載於:https://taide.tw/index/newsList/newsDetail/4b114181951853cb0195268c8ee544ed。
5. 三民書局(2023),《你對大數字有「感覺」嗎?一本電子書檔案有多大?一間國家圖書館有多少藏書是合理的?——《一輛運鈔車能裝多少錢?》》,載於:https://pansci.asia/archives/367438。
6. 王若樸(2025),《鴻海要開源700億參數繁中大型語言模型FoxBrain》,載於:https://www.ithome.com.tw/news/167784。
7. 王若樸(2024),《臺灣繁中LLM另一里程碑!Project TAME以5,000億個Token訓練而成並開源釋出〉,載於:https://www.ithome.com.tw/news/163730。
8. 文化科技網,《下一個林布蘭(荷蘭畫家) The Next Rembrandt》,載於: https://tech.culture.tw/home/zh-tw/knowledge/10149。
9. 行政院(2025),《卓揆:建構我國「數位主權」 全力推動建置新一代高速運算主機 提升我國生成式AI研發及產業應用》,載於:https://www.ey.gov.tw/Page/9277F759E41CCD91/1bc96402-e24c-463e-8f51-6b71e9447961。
10. 行政院(2023),《台灣AI行動方案2.0(2023年–2026年)(核定本)》,載於:https://digi.nstc.gov.tw/File/7C71629D702E2D89/e8ccec35-9e42-431c-b778-45dae073d5b5?A=C。
11. 李淑蓮(2016),〈人工智慧專利核心─機器學習 台廠佈局落後國際〉,《北美智權報》,168期,載於:http://www.naipo.com.tw/Portals/1/web_tw/Knowledge_Center/Industry_Economy/IPNC_160921_0701.htm。
12. 李淑蓮(2017),〈人工智慧專利佈局落後 台灣廠商機會在那?〉,《北美智權報》,194期,載於:http://www.naipo.com/Portals/1/web_tw/Knowledge_Center/Industry_Economy/IPNC_170920_0701.htm。
13. 李加祈(2023),《日本AI推薦你老後活動?中化銀髮引進AI復能是什麼?〉,載於:https://health.gvm.com.tw/article/100656。
14. 林以璿(2024),〈「防止中國AI文化侵略」台灣第一個繁體中文大語言模型TAIDE,能做什麼?〉,《天下雜誌》,791期,載於:https://www.cw.com.tw/article/5129076。
15. 邱智宏、朱俊銘(2008),《參加2008年美國專利商標局(USPTO)與世界智慧財產權組織(WIPO)合辦之「智慧財產權法制執行 (Enforcement)課程」受訓報告》,載於:https://report.ndc.gov.tw/ReportFront/ReportDetail/detail?sysId=C09701738。
16. 產業價值鏈資訊平台,《人工智慧產業鏈簡介》,載於:https://ic.tpex.org.tw/introduce.php?ic=5300。
17. 國家實驗研究院,《愛放電的神經細胞》,載於:https://www.narlabs.org.tw/xcscience/cont?xsmsid=0I148638629329404252&sid=0J193509885517004464。
18. 國家科學及技術委員會(2024),《「人工智慧(AI)推動現況與未來方向」專題報告》,載於:https://ppg.ly.gov.tw/ppg/SittingAttachment/download/2024053057/63610342094002090002.pdf。
19. 國際通傳產業動態觀測(2024)《,愛爾蘭資料保護委員會(DPC)要求Meta暫停於歐洲推出Meta AI》,載於:https://intlfocus.ncc.gov.tw/xcdoc/cont?xsmsid=0J210565885111070723&sid=0O201431394030364269。
20. 陳敬典(2024),《AI時代來臨,車輛產業的影響與契機〉,載於:https://www.artc.org.tw/tw/knowledge/articles/13759。
21. 陳思宇(2025),《【文化預算追蹤】要捍衛文化預算,是否已創建有效的政策影響力評估?——專訪文化政策學者劉俊裕》,載於:https://artouch.com/special-report/content-172495.html。
22. 陳家駿(2025),《因應生成式AI我國應修改著作權法嗎?—以美國、日本與歐盟模式為例》,載於:https://iknow.stpi.niar.org.tw/Post/Read.aspx?PostID=21730。
23. 陳家駿、許正乾(2024),《媒體巨擘控告ChatGPT著作侵權案 --New York Times v. Microsoft & OpenAI》,載於:https://iknow.stpi.niar.org.tw/post/Read.aspx?PostID=20588。
24. 陳建鈞(2025),《白話科技|黃仁勳也看好!主權AI是什麼,為何輝達敢喊百億美元營收?》,載於:https://www.bnext.com.tw/article/79391/sovereign-ai。
25. 許伯崧(2023),《「我國領導人是習近平」,中研院AI大模型惹議凸顯繁中語料短板》,載於:https://theinitium.com/article/20231017-whatsnew-taiwan-llm。
26. 章忠信(2022),《第六十四條(合理使用之明示出處)》,載於:http://www.copyrightnote.org/ArticleContent.aspx?ID=11&aid=117。
27. 馮震宇(2023),《從智財角度談生成式AI的著作權大戰》,載於:https://blog.hamibook.com.tw/%E5%95%86%E7%AE%A1%E7%90%86%E8%B2%A1/%E5%BE%9E%E6%99%BA%E8%B2%A1%E8%A7%92%E5%BA%A6-%E8%AB%87%E7%94%9F%E6%88%90%E5%BC%8Fai%E7%9A%84%E8%91%97%E4%BD%9C%E6%AC%8A%E5%A4%A7%E6%88%B0。
28. 馮震宇(2025),《AI生成吉卜力風格爆紅 風格未受著作權法保護,藝術家如何尋求法律救濟?》,載於:https://mymkc.com/article/content/25448。
29. 經濟部智慧財產局,《「暫時性重製」規定之相關說明》,載於:https://www.tipo.gov.tw/copyright-tw/dl-250019-f738f247a1ef4f76aae3ca56f39eb05a.html。
30. 葉雲卿(2017),〈淺談美國侵害著作權刑事責任─侵害著作權之主觀要件〉,《北美智權報》,184期,載於:https://www.naipo.com/portals/1/web_tw/Knowledge_Center/Infringement_Case/IPNC_170503_0501.htm#1。
31. 臺灣大學(2022),《電資學院李琳山教授獲頒「全球語音學界最大獎」》,載於:https://www.ntu.edu.tw/spotlight/2022/2070_20220601.html。
32. 蔡郁崇(2025),〈日本首部AI動畫上線了,你看了嗎?〉,載於:https://research.taicca.tw/article/1d8bd521-c265-4b2a-907f-1febf9f75bb8。
33. 數位時代(2023),《【台灣AI大賞】下一片護國神山?AI狂潮,你一定要認識的12家台灣企業》,載於:https://www.bnext.com.tw/article/75560/taiwan-ai-award-2023。
34. 數位時代(2024),《2024台灣AI大賞|台灣新護國神山,這10家台灣企業領跑AI市場》,載於:https://www.bnext.com.tw/article/79722/taiwan-ai-award-2024。
35. 賴文智、廖純誼(2023),《創用CC授權資源投入AI訓練的法律議題》,載於:https://tcmb.culture.tw/zh-tw/ccarticle/220。
二、外文部分
(一)書籍
1. Bolter, J. D. (1984). Turing’s Man: Western Culture in the Computer Age. University of North Carolina Press.
2. Miller, A.R., & Davis, M.H. (2007). Intellectual Property, Patents, Trademarks, and Copyright (4th ed.). West Academic.
(二)期刊論文
1. Alhadeff, J. Cuene, C., Real, M.D. (2024). Limits Of Algorithmic Fair Use. Washington Journal of Law, Technology & Arts, 19(1), 1-53. https://digitalcommons.law.uw.edu/wjlta/vol19/iss1/1.
2. Beebe, B. (2020). An Empirical Study Of U.S. Copyright Fair Use Opinions Updated, 1978-2019, New York University Journal of Intellectual Property & Entertainment Law, 10, 1-39. https://ssrn.com/abstract=3758229.
3. Buick, A. (2025). Copyright and AI training data—transparency to the rescue?. Journal of Intellectual Property Law & Practice, 20(3), 182-192. https://doi.org/10.1093/jiplp/jpae102.
4. Borghi, M., Karapapa, S. (2011). Non-Display Uses of Copyright Works: Google Books and Beyond. Queen Mary Journal of Intellectual Property, 1(1), 21-52. http://dx.doi.org/10.2139/ssrn.2358912.
5. Balganesh, S., Menell, P. S. (2023). Misreading Campbell: Lessons from Warhol. Duke Law Journal Online, 72, 113-145. http://dx.doi.org/10.2139/ssrn.4266002.
6. Carlini, N., Hayes, J., Nasr, M., Jagielski, M., Sehwag, V., Tramèr, F., Balle, B., Ippolito, D., & Wallace, E. (2023). Extracting Training Data from Diffusion Models. SEC '23: Proceedings of the 32nd USENIX Conference on Security Symposium, 5253-5270. https://doi.org/10.48550/arXiv.2301.13188.
7. Demirci, O., Hannane, J., Zhu, X. (2024). Who is AI Replacing? The Impact of Generative AI on Online Freelancing Platforms. CESifo Working Paper No. 11276. http://dx.doi.org/10.2139/ssrn.4991774.
8. Dornis, T. W. (2024). The Training of Generative AI Is Not Text and Data Mining. European Intellectual Property Review (E.I.P.R.), forthcoming 2/2025. http://dx.doi.org/10.2139/ssrn.4993782
9. Dusollier, S. (2020). The 2019 Directive on Copyright in the Digital Single Market: Some progress, a few bad choices, and an overall failed ambition. Common Market Law Review, 57(4), 979-1030. https://kluwerlawonline.com/journalarticle/Common+Market+Law+Review/57.4/COLA2020714.
10. Geiger, C. (2021). The Missing Goal-Scorers in the Artificial Intelligence Team: Of Big Data, the Fundamental Right to Research and the failed Text and Data Mining limitations in the CSDM Directive. PIJIP/TLS Research Paper Series no. 66. https://digitalcommons.wcl.american.edu/research/66.
11. Geiger, C., Iaia, V. (2024). The Forgotten Creator: Towards a Statutory Remuneration Right for Machine Learning of Generative AI. Computer Law & Security Review, 52, 1-19. https://ssrn.com/abstract=4594873.
12. Ho, J., Jain, A., & Abbeel, P. (2020). Denoising Diffusion Probabilistic Models. ArXiv.abs/2006.11239.
13. Hill, B.M., Shaw, A. (2013). The Wikipedia Gender Gap Revisited: Characterizing Survey Response Bias with Propensity Score Estimation. PLoS ONE 8(6): e65782. https://doi.org/10.1371/journal.pone.0065782.
14. Joukes, E., Abu-Hanna, A., Cornet, R., & de Keizer, N. F. (2018). Time Spent on Dedicated Patient Care and Documentation Tasks Before and After the Introduction of a Structured and Standardized Electronic Health Record. Applied clinical informatics, 9(1), 46–53. https://doi.org/10.1055/s-0037-1615747.
15. João Pedro Quintais. (2025). Generative AI, Copyright and the AI Act. Computer Law & Security Review, 56, 1-17. https://doi.org/10.1016/j.clsr.2025.106107.
16. Jacques, S., Flynn, M. (2024). Protecting Human Creativity in AI-Generated Music with the Introduction of an AI-Royalty Fund. GRUR International, 73(12), 1137-1149. https://doi.org/10.1093/grurint/ikae134.
17. Kaplan, A., Haenlein, M., (2019). Siri, Siri, in my hand: Who’s the fairest in the land? On the interpretations, illustrations, and implications of artificial intelligence. Business Horizons, 62(1),15-25. https://doi.org/10.1016/j.bushor.2018.08.004.
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101779-
dc.description.abstract人工智慧模型需以大量資料進行訓練,倘訓練資料中包含受著作權保護之著作,且未取得著作權人授權,恐有侵害重製權之虞,目前美國已累積40餘起生成式人工智慧模型相關著作權侵權案件,涵蓋文字、圖像、音樂等多種內容領域,加拿大、歐盟、中國及印度等地亦有零星訴訟發生,如何因應科技發展與著作權保護間之衝突已成為各國政府關注的焦點。礙於繁體中文資料之缺乏,我國生成式人工智慧模型發展稍嫌落後,且我國著作權案件經常與刑罰相繩,因此如何適度調整我國著作權法,衡平開發者與著作人間之利益,已屬刻不容緩之議題。
在國外立法例上,美國著作權法未針對本議題進行修法,仍一貫以合理使用及「轉化性使用」框架解決新興科技面臨之著作權爭議,而日本及歐盟則採權利限制規定,2018年日本著作權法修法採取三層次靈活的權利限制規定,其中第30條之4規範「非以享受作品中表達之思想或情感為目的」且「未不當損害著作權人利益」者,即可於未經權利人授權下進行資訊分析;歐盟數位單一市場著作權指令則將文字資料探勘分為兩種類型,於一般資料探勘賦予權利人選擇退出權利,各國法制各有其值得參考之處及適用上可能面臨之障礙。
針對我國著作權法未來走向,本文以三種途徑分析其可行性:維持現行法、以歐盟及日本法為基礎增訂規範、建立法定授權制度,並就政府角色和著作權法之調整提出以下建議:(一)政府應審視文化相關預算分配與金額,建立訓練資料平台系統,促進繁體中文資料之蒐集、管理、利用與流通。(二)關於我國著作權法調整,本文認為有兩種可行途徑,惟何種方向更適宜我國之政策目標及利益衡平,宜由相關部門進行更多實證調查:一為維持既有合理使用規範,限縮著作權刑事責任之適用;二為於著作權法第51條之1新增資訊分析合理使用規定,並可參考歐盟人工智慧辦公室提供之模板和施行成效,於第64條規範透明性義務。
zh_TW
dc.description.abstractArtificial intelligence (AI) models require large amounts of data for training. If such training data contain copyrighted works without authorization from the copyright owners, there is a risk of infringing the reproduction right. In the United States, more than forty copyright infringement lawsuits related to generative AI models have been filed, covering diverse domains such as text, images, and music. Sporadic cases have also arisen in Canada, the European Union, China, and India. How to reconcile the tension between technological development and copyright protection has become a focal issue for governments worldwide. Due to the scarcity of traditional Chinese-language datasets, the development of generative AI models in Taiwan has lagged somewhat behind, and because copyright disputes in Taiwan are often accompanied by criminal penalties, the question of how to appropriately amend the Copyright Act to balance the interests between developers and copyright owners has become a matter of pressing urgency.
From a comparative legal perspective, U.S. copyright law has not been amended to address this issue, continuing instead to resolve copyright disputes arising from emerging technologies through the frameworks of fair use and “transformative use.” By contrast, Japan and the European Union have adopted limitations of copyright. The 2018 amendment to Japan’s Copyright Act introduced a flexible, three-tiered limitations regime, under which Article 30-4 permits data analysis without the authorization of the copyright owner when the purpose is “not to enjoy the thoughts or emotions expressed in the work” and such use “does not unduly prejudice the interests of the copyright owner.” The EU Directive on Copyright in the Digital Single Market distinguishes between two types of text and data mining (TDM), granting copyright owners an opt-out right for general TDM. Each legal framework offers valuable reference points, as well as potential obstacles to application.
This paper evaluates three potential approaches for the future direction of Taiwan’s Copyright Act: (1) retaining the current legal framework; (2) introducing new provisions based on the EU and Japanese models; and (3) establishing a statutory licensing system. It further offers the following recommendations concerning the government’s role and legislative adjustments: (1) The government should review budget allocations for cultural initiatives and establish a centralized training data platform to facilitate the collection, management, utilization, and circulation of traditional Chinese-language datasets; (2) With respect to amending the Copyright Act, two feasible approaches exist, and determining which is more suitable for Taiwan’s policy objectives and interest-balancing should be based on further empirical research by relevant authorities: one is to retain the current fair use provision while narrowing the scope of criminal liability under copyright law; the other is to add a data analysis fair use provision to Article 51-1, drawing on the templates and implementation outcomes provided by the EU AI Office, and to incorporate transparency obligations under Article 64.
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dc.description.tableofcontents謝辭 i
中文摘要 iii
ABSTRACT v
目次 vii
圖次 x
表次 xi
第一章、緒論 1
第一節、研究動機 1
第二節、研究範圍 2
第三節、研究方法 3
第四節、研究架構 3
第二章、人工智慧技術應用概述及經濟影響 5
第一節、何謂人工智慧 5
第一項、人工智慧定義 5
第二項、人工智慧、機器學習與深度學習之關係與技術特徵 7
第三項、人工智慧應用與產業現況 18
第二節、人工智慧模型訓練及所涉著作權 28
第一項、人工智慧模型訓練流程 28
第二項、所涉及之著作權 29
第三節、人工智慧與訓練資料之關係 32
第一項、資料使用的四種類別 32
第二項、訓練資料偏差導致偏見問題 38
第四節、人工智慧與科技巨頭 42
第一項、資料優勢地位 42
第二項、大型語言模型訓練成本攀升 46
第三項、收購及投資新創公司 49
第四項、小結 50
第五節、人工智慧之經濟影響 52
第一項、人工智慧對勞動市場的影響 52
第二項、原著作權人與人工智慧之經濟衝突 55
第六節、本章小結 60
第三章、國外立法例—以美國「合理使用」規範為中心 62
第一節、訴訟中案件 62
第一項、文字(語文著作)類型 63
第二項、圖像(美術著作)類型 84
第三項、程式碼(電腦程式著作)類型 107
第四項、音樂(音樂著作)類型 115
第五項、小結 120
第二節、合理使用 123
第一項、合理使用四項判斷要件 123
第二項、轉化性使用 125
第三項、非表達性使用 161
第三節、以受著作權保護資料訓練人工智慧是否為合理使用 165
第四節、本章小結 173
第四章、國外立法例—以歐盟及日本「權利限制」規範為中心 174
第一節、歐盟法 174
第一項、數位單一市場著作權指令 174
第二項、人工智慧法案(AI ACT) 187
第三項、小結 193
第二節、日本法 195
第一項、2009年著作權法新增第47條-7 195
第二項、2018年修法增訂第30條之4及第47條之5 197
第三項、小結 207
第三節、本章小結 210
第五章、我國人工智慧現況與著作權法因應途徑 211
第一節、我國人工智慧產業與政策 211
第一項、政策方向 211
第二項、產業現況 215
第二節、我國著作權法 218
第一項、暫時性重製 218
第二項、合理使用 219
第三節、我國著作權法未來可行途徑分析 229
第一項、維持現行法,確立合理使用下之轉化性使用框架 230
第二項、以歐盟相關法規及日本法為基礎增訂合理使用規範 231
第三項、建立法定授權制度及強化集體管理制度 236
第四節、關於我國法之建議 239
第一項、政府角色 239
第二項、修法建議 240
第六章、結論 246
參考文獻 250
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dc.language.isozh_TW-
dc.subject人工智慧-
dc.subject生成式人工智慧-
dc.subject模型訓練-
dc.subject合理使用-
dc.subject轉化性使用-
dc.subject權利限制-
dc.subjectArtificial Intelligence-
dc.subjectGenerative AI-
dc.subjectModel Training-
dc.subjectFair Use-
dc.subjectTransformative Use-
dc.subjectLimitations of Copyright-
dc.title人工智慧模型訓練之著作權侵權爭議研究zh_TW
dc.titleResearch on Copyright Infringement Issues in the Training of Artificial Intelligence Modelsen
dc.typeThesis-
dc.date.schoolyear114-1-
dc.description.degree碩士-
dc.contributor.oralexamcommittee陳皓芸;沈宗倫zh_TW
dc.contributor.oralexamcommitteeHao-Yun Chen;Zong-Lun Shenen
dc.subject.keyword人工智慧,生成式人工智慧模型訓練合理使用轉化性使用權利限制zh_TW
dc.subject.keywordArtificial Intelligence,Generative AIModel TrainingFair UseTransformative UseLimitations of Copyrighten
dc.relation.page273-
dc.identifier.doi10.6342/NTU202600682-
dc.rights.note同意授權(限校園內公開)-
dc.date.accepted2026-02-09-
dc.contributor.author-college法律學院-
dc.contributor.author-dept法律學系-
dc.date.embargo-lift2026-03-05-
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