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    Title: 運用文字探勘技術分析金融科技之發展與趨勢
    Applying text mining techniques to the development and trends of fintech`s patent
    Authors: 郝紹君
    Hao, Shao Chun
    Contributors: 洪為璽
    Hung, Wei Hsi
    郝紹君
    Hao, Shao Chun
    Keywords: 文字探勘
    金融科技
    專利趨勢分析
    機會探索
    關鍵圖
    Text mining
    Fintech
    Patent trend analysis
    Chance discovery
    KeyGraph
    Date: 2017
    Issue Date: 2017-07-31 11:32:31 (UTC+8)
    Abstract: 現今科技日新月異,不斷突破創新,產業環境變動的步調也越來越快,新竄出之金融科技(Finance Technology)的應用,使得許多企業越加注重技術方面的研發創新,尤其,善加運用專利資訊能有效節省研發經費與時間。因此如何有效運用專利是企業維持競爭優勢不可或缺的一環。
    有鑑於此,本研究搜集近年各國專利資料庫之專利資料,將資料分為三個時期,並區分申請中與已申請之專利資料,透過文字探勘技術與機會探索分析出金融科技之發展與趨勢,了解各時期詞彙間之關聯性與差異,再搭配視覺化工具KeyGraph,以描繪出金融科技領域之相關詞彙關聯趨勢圖,挖掘未來潛在趨勢。
    本研究之結果了解金融科技在各時期的趨勢發展變化與尋求脈絡,以及過去各時期之專利佈局,因而從結果中發現金融科技之發展方向主體為支付領域,許多支付科技接連出現在三個時期中。然而近幾年,其他金融領域如投資、融資、保險、資料分析等也漸漸浮出,從本研究之第三個時期的高頻字詞高達34個可看出,可見金融科技之專利發展佈局已快速從支付領域拓展至其他金融領域。本研究所挖掘出之潛在趨勢顯示了未來金融科技領域中將會有五大重點發展領域,分別為服務整合領域之雲端科技、支付領域之生物辨識與穿戴支付與加密貨幣、資料分析領域之機器學習與人工智慧、信息收集與處理領域之遠程信息處理科技、以及理財投資領域之理財機器人。
    期望本研究結果能幫助企業,在面臨新科技不斷衝擊產業,而產業不斷尋求創新發展之下,能夠快速檢閱目前市場趨勢,藉此釐清並改善自身之發展策略,以因應外部環境之變動,提供企業作為金融科技發展之策略參考,也能有助於企業釐清與制定金融科技之投資方向,以擁有持續的競爭優勢。
    Nowadays, with the rapid advancement of information technologies, the changes of business environment and the way to deal with the changes are becoming faster and faster. The development and adoption of new financial technologies has made many enterprises pay more attention to the research and development (R&D) initiatives. Besides, making good use of patent information can effectively save the budget and time of R&D, so how to effectively use patent information is an indispensable part for enterprises to maintain their competitive advantages.
    This study collected the patent data from the national patent database, and divided the data into three periods, and distinguished the data between the applying and the applied patents. Through the text mining techniques and chance discovery, this study explored the development and trends of financial technology and also aimed to understand the relevance and differences between the major terms in each period. Then, with the visual tool, KeyGraph, this study illustrated the associations between related terms, and proposed the potential future trends based on the graphs.
    The results of this study help monitor the changes of the trends and financial technology’s development in the three periods, and understand the patent portfolios in each period. This study has found that the main direction of financial technology’s development is the payment field. Many technologies related to payment have successively appeared in the three periods. However, in recent years, other financial areas such as investment, financing, insurance, data analysis and other areas are gradually emerging, since we found 34 high-frequency terms in the third period. This also shows that the development of financial technology’s patent portfolios has expanded from payment to other financial areas. The potential trends of financial technology’s development in this study are five areas, namely, technologies of cloud, biometric and wearable payment and cryptocurrency, machine learning and artificial intelligence, telematics technology, and robo-advisors.
    It is expected that this study can serve as a reference for the development of financial technology, and help enterprises be able to quickly review their current market trends, clarify and improve their own R&D strategies to respond to the changes in the external environment. Also, it is hoped that the results can help enterprises clarify and develop their own investment directions to maintain competitive advantages.
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    Description: 碩士
    國立政治大學
    企業管理研究所(MBA學位學程)
    104363041
    Source URI: http://thesis.lib.nccu.edu.tw/record/#G0104363041
    Data Type: thesis
    Appears in Collections:[企業管理研究所(MBA學位學程)] 學位論文

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