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研究生: 陳綺萱
Chen, Chi-Hsuan
論文名稱: 深度學習之專利分析研究
Patent Analysis of Deep Learning
指導教授: 曾元顯
Tseng, Yuen-Hsien
學位類別: 碩士
Master
系所名稱: 圖書資訊學研究所
Graduate Institute of Library and Information Studies
論文出版年: 2019
畢業學年度: 107
語文別: 中文
論文頁數: 87
中文關鍵詞: 深度學習深度神經網絡專利分析
DOI URL: http://doi.org/10.6345/THE.NTNU.GLIS.005.2019.A01
論文種類: 學術論文
相關次數: 點閱:154下載:45
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  • 本研究旨在探討深度學習在各國的發展時間與成長趨勢,以及在相關學科 與應用領域上之發展狀況。研究採用專利計量分析法與內容探勘工具 CATAR, 針對美國專利及商標局 1976 至 2018 年之深度學習領域專利進行分析。研究結 果分為四個面向:(1)專利成長趨勢與技術生命週期;(2)專利數分析與趨 勢分析;(3)專利引用分析;(4)專利主題與專利關聯度分析。
    研究發現:(1)深度學習領域的技術生命週期正處於成長階段,其專利 申請與公告的延遲時間平均約為 1.75 年;(2)高生產力專利權人國別依序為 美國、日本、以色列、韓國、中國、德國以及加拿大,這七個國家的專利就佔 了整體的 93%,專利高生產力發明人國籍依序為美國、中國、韓國、以色列、 日本、印度以及加拿大;(3)在 103 組專利權人與專利發明人國家組合中, 有 78 組與美國有關;(4)主要引用的學科領域為深度學習、神經網絡以及語 音識別;(5)應用領域有語音識別、影像分析、圖像識別、醫學圖像、以及 車輛控制系統等;(6)臺灣可以參考與學習以色列與韓國的發展模式,在研 究領域方面,臺灣可以往醫學圖像與診斷、外科以及鑑定這個方面多加琢磨。 研究建議:(1)增加關鍵詞(2)針對不同面向進行更深入與更具主題性的研 究(3)針對深度學習領域之研究論文進行研究。

    The purpose of this study was to explore the development and the growth trend of deep learning in different countries. Also, the situation of deep learning in other related subjects and the application in different fields. This study used patent analysis and the content mining tool - CATAR to analyze the patents in the field of deep learning from 1976 to 2018 searching from USPTO.
    The findings of this paper are as follows: (1) The technology life cycle of deep learning is in the growth stage, and on average, the issue date is 1.75 years later than the applied date. (2) On patent assignee's nationality, the countries of high productivity are the US, Japan, Israel, South Korea, China, Germany, and Canada, and patents in these countries account for 93% of the total. On patent inventor's nationality, the countries of high productivity are the US, China, South Korea, Israel, Japan, India, and Canada. (3) Among 103 national groups of assignees and inventors, there are 78 groups related to the US. (4) Citations are mainly related to deep learning, neural networks, and speech recognition. (5) Applications focus on speech recognition, image analysis, image recognition, medical image, and vehicle control systems. (6) Taiwan can learn from Israel and South Korea, and research on medical image. Based on the findings of this study, there are three suggestions: (1) Add keywords. (2) Research on specific subjects intensively. (3) Research on papers in the field of deep learning.

    第壹章 緒論 1 第一節 研究背景與動機 1 第二節 研究目的與問題 2 第三節 研究範圍與限制 3 第四節 名詞解釋 4 第貳章 文獻探討 6 第一節 深度學習 6 第二節 專利分析 13 第三節 專利資料庫、專利分析軟體以及參考文獻剖析工具 22 第參章 研究設計與實施 29 第一節 研究方法 29 第二節 研究對象與工具 30 第三節 研究實施與步驟 32 第肆章 研究結果與分析 40 第一節 專利成長趨勢與技術生命週期 40 第二節 專利數分析與趨勢分析 43 第三節 專利主題與專利關聯度分析 56 第四節 專利引用分析 64 第伍章 研究發現與建議 71 第一節 研究發現 71 第二節 研究建議 75 參考文獻 76 附錄 82

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