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請用此 Handle URI 來引用此文件: http://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101254
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dc.contributor.advisor莊裕澤zh_TW
dc.contributor.advisorYuh-Jzer Joungen
dc.contributor.author陳宗希zh_TW
dc.contributor.authorTsung-Hsi Chenen
dc.date.accessioned2026-01-13T16:06:29Z-
dc.date.available2026-01-14-
dc.date.copyright2026-01-13-
dc.date.issued2025-
dc.date.submitted2026-01-07-
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9.緯創軟體(2024年7月29日)。成功案例:全球半導體代工龍頭導入 LLM + RAG 實現智慧製造監控轉型。https://www.wits.com/tw/news/%E6%88%90%E5%8A%9F%E6%A1%88%E4%BE%8B%E5%85%A8%E7%90%83%E5%8D%8A%E5%B0%8E%E9%AB%94%E4%BB%A3%E5%B7%A5%E9%BE%8D%E9%A0%AD%E5%B0%8E%E5%85%A5-llm-rag-%E5%AF%A6%E7%8F%BE%E6%99%BA%E6%85%A7%E8%A3%BD%E9%80%A0%E7%9B%A3%E6%8E%A7%E8%BD%89%E5%9E%8B/
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14.Brown, T. B., Mann, B., Ryder, N., Subbiah, M., Kaplan, J., Dhariwal, P., ... Amodei, D. (2020). Language models are few-shot learners. Advances in Neural Information Processing Systems, 33, 1877–1901. https://doi.org/10.48550/arXiv.2005.14165
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16.Lewis, P., Perez, E., Piktus, A., Petroni, F., Karpukhin, V., Goyal, N., ... Riedel, S. (2020). Retrieval-augmented generation for knowledge-intensive NLP tasks. Advances in Neural Information Processing Systems, 33, 9459–9474. https://doi.org/10.48550/arXiv.2005.11401
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18.中華電信. (2024, December 25). 中華電信自主研發台灣法律大型語言模型:TLibra. 科學人 Knowledge Platform. https://www.scitw.cc/posts/cht-LLM-TLibra
19.Doshi-Velez, F., & Kim, B. (2017). Towards a rigorous science of interpretable machine learning. arXiv preprint arXiv:1702.08608. https://doi.org/10.48550/arXiv.1702.08608
20.Selbst, A. D., & Barocas, S. (2018). The intuitive appeal of explainable machines. Fordham Law Review, 87(3), 1085–1139. https://ir.lawnet.fordham.edu/flr/vol87/iss3/11
21.Wachter, S., Mittelstadt, B., & Floridi, L. (2017). Why a right to explanation of automated decision-making does not exist in the General Data Protection Regulation. International Data Privacy Law, 7(2), 76–99. https://doi.org/10.1093/idpl/ipx005
22.Armour, J., & Sako, M. (2019). AI-enabled business models in legal services: From traditional law firms to next-generation law companies? https://doi.org/10.2139/ssrn.3418810
23.Future of Professionals Report 2025. (n.d.). Future of Professionals Report 2025. https://www.thomsonreuters.com/content/dam/ewp-m/documents/thomsonreuters/en/pdf/reports/future-of-professionals-report-2025.pdf
24.How AI Is Transforming the Legal Profession. (n.d.). Thomson Reuters Legal Blog. Retrieved from https://legal.thomsonreuters.com/blog/how-ai-is-transforming-the-legal-profession/
25.Garingan, D., & Pickard, A. J. (2021). Artificial intelligence in legal practice: Exploring theoretical frameworks for algorithmic literacy in the legal information profession. Legal Information Management, 21(2), 97–117. https://doi.org/10.1017/S1472669621000190
26.Shope, M. (2021). Lawyer and judicial competency in the era of artificial intelligence: Ethical requirements for documenting datasets and machine learning models. Georgetown Journal of Legal Ethics, 34. https://ssrn.com/abstract=3819281
27.Thomson Reuters Institute. (2025). 2025 State of the Corporate Law Department Report: GCs seek to redefine value, enable organizational success. Thomson Reuters. https://www.thomsonreuters.com/en-us/posts/corporates/state-of-the-corporate-law-department-2025/
28.Susskind, R. (2023). The future of the professions: How technology will transform the work of human experts (2nd ed.). Oxford University Press.
29.Freidson, E. (2001). Professionalism: The third logic. Polity Press.
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32.Ok, E. (2025). Transparency in AI decision-making processes. https://www.researchgate.net/publication/388483007_Transparency_in_AI_Decision-Making_Processes
33.Kahneman, D., & Tversky, A. (1979). Prospect theory: An analysis of decision under risk. Econometrica, 47(2), 263–291. https://doi.org/10.2307/1914185
34.司法院. (2025, June 26). 臺灣新北地方法院111年度智訴字第8號違反著作權法等案件新聞稿。取自 https://www.judicial.gov.tw/tw/cp-1888-1350821-0ca41-1.html
35.AW.(2019, August 6).律師使用律師媒合平台違反律師倫理規範?| 法律圈傳媒. 法律圈傳媒. Retrieved from https://news.lawchain.tw/律師使用律師媒合平台違反律師倫理規範?/?utm_source=chatgpt.com
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dc.identifier.urihttp://tdr.lib.ntu.edu.tw/jspui/handle/123456789/101254-
dc.description.abstract本研究以「法律科技對台灣律師及企業法務的影響及因應—從大型語言模型談起」為題,旨在探討 AI 技術快速發展下,台灣法律專業面臨的制度限制、採用心理與組織轉型挑戰。隨著生成式 AI 與大型語言模型逐漸融入法律檢索、契約審閱與合規管理流程,國際法律服務市場正迎來深度自動化與平台化的趨勢。然而,本研究發現台灣的法律科技發展並未如國際一致同步推進,反而呈現局部進展與整體停滯的矛盾現象。
本研究採用半結構式訪談法,邀集十二位具有豐富實務經驗的受訪者,包括律師、企業法務與法律科技新創高階經理人,共同探討法律 AI 對法律工作的實質影響,以及法律科技在台灣落地時面臨的結構性障礙。研究結果指出,台灣法律 AI 的發展困境並非源自技術本身,而是由商業模式限制、資料與著作權爭議、專業自治與倫理規範,以及市場採用心理等多重因素共同構成。其中,以律師法第 127 條、第129條,與律師倫理規範第 12 條形成的專業邊界,使雙邊平台型、案件媒合型及面向民眾的法律 AI 服務天然受阻,導致台灣法律科技無法平台化,也無法形成國際上常見的網路外部性與規模經濟。七法(Lawsnote)案進一步反映法律資料授權與著作權界定的不確定性,使 AI 模型缺乏合法且可持續的資料來源,阻斷本土 LLM 的成長動能。再者,專業主義文化與科技接受模型所揭示的高知覺風險,使法律人對 AI 採用呈高度戒慎態度,市場規模小與律所結構傳統亦更加深導入難度。值得關注的是,本研究完成之際,立法院於 2025 年 12 月正式通過人工智慧基本法,為上述困境提供了初步的治理框架與法制方向。
基於上述發現,本研究提出三項對應人工智慧基本法的改革建議:首先,重建法律資料供應鏈與法律確定性,包括法律資料開放、機器可讀格式、文本與資料探勘 (Text and Data Mining, TDM) 合理使用明確化與資料治理框架。其次,依據人工智慧基本法,鬆綁法律服務模式與律所結構,使台灣得以逐步探索法律科技沙盒、安全港制度與跨域合作的 Alternative Business Structure (ABS) 模式,協助法律科技脫離純工具化階段。最後,強化法律專業治理與能力轉型,使律師與法務能在審慎開放的前提下,發展 AI 素養、強化人機協作能力,並重新定位法律專業在 AI 時代的核心價值。
本研究總結指出,台灣法律科技的發展挑戰並非單一層面,而是制度、資料、專業文化與市場規模等因素交織形成的結構性困境。唯有透過制度改革、資料治理、組織轉型與專業角色再定位的多方協作,台灣法律 AI 才能突破目前的停滯狀態,邁向可持續、可採用且具規模性的發展路徑。
zh_TW
dc.description.abstractThis study, titled “Legal Technology and Its Implications for Taiwanese Lawyers and In-House Counsel: Perspectives from Large Language Models”, investigates the structural, institutional, and professional challenges that arise as AI—particularly LLM—becomes increasingly embedded in legal workflows. While generative AI has demonstrated significant potential in legal research, contract review, and compliance analysis, Taiwan’s legal technology ecosystem has not progressed in parallel with global developments. Instead, it presents a paradoxical landscape of localized innovation but systemic stagnation.
Using semi-structured interviews, this research engages twelve experienced professionals—including practicing lawyers, in-house counsel, and senior legaltech startup executives—to examine how legal AI influence legal work and why legal AI faces substantial barriers to adoption in Taiwan. The findings suggest that Taiwan’s legal AI challenges stem not from technological limitations but from intertwined structural factors: business model constraints, data access and copyright uncertainty, professional autonomy and ethical regulations, and adoption psychology shaped by risk aversion and market conditions. In particular, Article 127 and Article 129 of the Attorney Regulation Act and Article 12 of the Attorneys’ Ethics Rules create rigid professional boundaries that effectively prohibit platform-based or B2C-oriented legal AI services. This institutional logic prevents the emergence of scalable legal platforms and inhibits the development of network effects typical in other jurisdictions. Additionally, the Lawsnote copyright dispute highlights the legal ambiguity surrounding the use of curated legal data for AI training, thereby constraining the growth of LLM trained on Taiwanese legal corporation. Furthermore, Professionalism Theory and the Technology Acceptance Model(TAM)explain why legal professionals tend to overemphasize perceived risks while undervaluing technology benefits, resulting in limited adoption. Taiwan’s small and fragmented legal market further compounds these structural barriers. It is noteworthy that as this study reached its conclusion, the Legislative Yuan officially passed the "Artificial Intelligence Basic Act" in December 2025, providing a preliminary regulatory framework and legal direction to address the aforementioned challenges.
Based on these findings, this study puts forward three reform proposals that correspond to the framework of the Artificial Intelligence Basic Act. First, rebuilding the legal data supply chain is essential, including open access to legal texts, machine-readable formats, clarified TDM(text and data mining)rules, and robust data governance frameworks. Second, according to Artificial Intelligence Basic Act, loosening restrictions on legal service models and law firm structures would allow Taiwan to explore legaltech sandboxes, safe-harbor provisions, and cross-disciplinary Alternative Business Structures(ABS), thereby enabling the transition from tool-based solutions to platform-oriented innovation. Third, strengthening professional governance and capability transformation is necessary for lawyers and in-house counsel to operate effectively in an AI-enabled environment. This requires cultivating AI literacy, enhancing human-AI collaboration skills, and redefining the core professional value propositions that cannot be automated.
This study concludes that the advancement of legal AI in Taiwan is constrained by multifaceted structural challenges rooted in regulatory frameworks, data accessibility, professional culture, and market scale. The sustainable development of legal AI will depend on coordinated reforms across institutional governance, data infrastructure, organizational transformation, and professional identity reconstruction. Only through such integrated efforts can Taiwan move beyond incremental tool-based solutions toward scalable, adoptable, and ecosystem-driven legal AI development.
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dc.description.tableofcontents口試委員會審定書 I
誌謝 II
中文摘要 III
ABSTRACT V
目次 VIII
表次 X
第一章 緒論 1
第一節 研究背景與動機 1
第二節 研究問題與目的 1
第三節 研究範圍與對象 2
第四節 研究方法 3
第五節 論文架構 4
第二章 文獻探討 6
第一節 法律科技 6
第二節 大語言模型概述 11
第三節 生成式人工智慧對法律從業人員的影響 14
第四節 法律專業的角色變遷與技術適應:理論觀點 17
第五節 小結與研究架構之理論基礎 19
第三章 研究方法 21
第一節 研究設計概述 21
第二節 訪談方法與內容 22
第四章 研究結果與分析 24
第一節 理論模型之推演:法律AI衝擊及法律人接受度預測 24
第二節 訪談結果之實證分析:對理論模型的回應 26
第三節 個案分析 32
第四節 台灣法律 AI 發展的整體障礙:結構總結 39
第五章 政策建議與未來展望 43
第一節 數據供應鏈與法律不確定性的制度性改革 43
第二節 服務模式與事務所結構的鬆綁與轉型 45
第三節 針對專業發展與經濟性抗拒的治理強化 47
第四節 2025 年人工智慧基本法通過後之展望與治理實踐 48
第五節 本章結論: 從結構制約走向治理驅動的數位轉型 50
第六章 研究結論、研究建議與研究限制 52
第一節 研究結論 52
第二節 研究建議:律師與法務應如何因應 AI 時代 53
第三節 研究限制 53
參考文獻 55
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dc.language.isozh_TW-
dc.subject法律科技-
dc.subject大型語言模型-
dc.subject律師法-
dc.subject專業主義-
dc.subject科技接受模型-
dc.subject法律 AI 採用-
dc.subjectLegal Technology-
dc.subjectLarge Language Models-
dc.subjectAttorney Regulation Act-
dc.subjectProfessionalism-
dc.subjectTechnology Acceptance Model-
dc.subjectLegal AI Adoption-
dc.title法律科技對台灣律師及企業法務的影響及因應 – 從大語言模型談起zh_TW
dc.titleLegal Technology and Its Implications for Taiwanese Lawyers and In-House Counsel: Perspectives from Large Language Modelsen
dc.typeThesis-
dc.date.schoolyear114-1-
dc.description.degree碩士-
dc.contributor.oralexamcommittee邱冠勛;劉靜怡zh_TW
dc.contributor.oralexamcommitteeColin Chiu;Ching-Yi Liuen
dc.subject.keyword法律科技,大型語言模型律師法專業主義科技接受模型法律 AI 採用zh_TW
dc.subject.keywordLegal Technology,Large Language ModelsAttorney Regulation ActProfessionalismTechnology Acceptance ModelLegal AI Adoptionen
dc.relation.page58-
dc.identifier.doi10.6342/NTU202600006-
dc.rights.note同意授權(全球公開)-
dc.date.accepted2026-01-07-
dc.contributor.author-college管理學院-
dc.contributor.author-dept創業創新管理碩士在職專班-
dc.date.embargo-lift2026-01-14-
顯示於系所單位:創業創新管理碩士在職專班(EiMBA)

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