Determining Emerging Technology of Patents by Chance Discovery

碩士 === 真理大學 === 管理科學研究所 === 95 === Patent is the most import way to protect the new technologies of the factories and stores. The prior art search is necessary when the manufacturerers are proceeding with investment. The retrieval patent documents are useful for the academic research as well. Ho...

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Main Authors: Guo-En Tong, 童國恩
Other Authors: Yan-Ru Li
Format: Others
Language:zh-TW
Published: 2007
Online Access:http://ndltd.ncl.edu.tw/handle/72980436132087013208
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spelling ndltd-TW-095AU0004570202016-05-23T04:17:23Z http://ndltd.ncl.edu.tw/handle/72980436132087013208 Determining Emerging Technology of Patents by Chance Discovery 利用機會探索理論偵測新興專利技術 Guo-En Tong 童國恩 碩士 真理大學 管理科學研究所 95 Patent is the most import way to protect the new technologies of the factories and stores. The prior art search is necessary when the manufacturerers are proceeding with investment. The retrieval patent documents are useful for the academic research as well. However, in the process of patent retrieval, it has been a choke point to grasp with more exact keywords. Although there are few researches to solve the problems of patent retrieval through text mining, these only focus on the information retrieval and classification, ignoring the minimal yet important keywords. According to Ohsawa (1998)’s theory of Chance Discovery, it is based on how to explore the rare keyword with important information. However, it usually filters those rare keyword as Noise. Therefore, this research would like to extend Ohsawa’s concept through fixing its structural design. The traditional Key graph cannot incorporate keywords abundantly into it. This research intends to compress the structure of technology. By structure of technology and new keywords links, we can incorporate more unpredictable keywords. The contribution of this research is to offer a new strategy different form IPC、UPC. The roles of inventor, assignee and agent are reconsidered. In the beginning state with divaricate technological terms, the keywords may be varied for different cultural backgrounds and other reasons. By high frequency keyword to compress structure of DVD technology, this study want to use this method finding the emerging technology. Making a contrast with TF、TFIDF and BM25, the result of this study can raise the rate of accuracy from 0.449 to 0.571, with the missed 40 patent documents. It proves we can improve patent-researched efficiency practically by extending the theory of Chance Discovery. It is also the way to improve the accuracy of patent research in academic field. Yan-Ru Li 李沿儒 2007 學位論文 ; thesis 66 zh-TW
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description 碩士 === 真理大學 === 管理科學研究所 === 95 === Patent is the most import way to protect the new technologies of the factories and stores. The prior art search is necessary when the manufacturerers are proceeding with investment. The retrieval patent documents are useful for the academic research as well. However, in the process of patent retrieval, it has been a choke point to grasp with more exact keywords. Although there are few researches to solve the problems of patent retrieval through text mining, these only focus on the information retrieval and classification, ignoring the minimal yet important keywords. According to Ohsawa (1998)’s theory of Chance Discovery, it is based on how to explore the rare keyword with important information. However, it usually filters those rare keyword as Noise. Therefore, this research would like to extend Ohsawa’s concept through fixing its structural design. The traditional Key graph cannot incorporate keywords abundantly into it. This research intends to compress the structure of technology. By structure of technology and new keywords links, we can incorporate more unpredictable keywords. The contribution of this research is to offer a new strategy different form IPC、UPC. The roles of inventor, assignee and agent are reconsidered. In the beginning state with divaricate technological terms, the keywords may be varied for different cultural backgrounds and other reasons. By high frequency keyword to compress structure of DVD technology, this study want to use this method finding the emerging technology. Making a contrast with TF、TFIDF and BM25, the result of this study can raise the rate of accuracy from 0.449 to 0.571, with the missed 40 patent documents. It proves we can improve patent-researched efficiency practically by extending the theory of Chance Discovery. It is also the way to improve the accuracy of patent research in academic field.
author2 Yan-Ru Li
author_facet Yan-Ru Li
Guo-En Tong
童國恩
author Guo-En Tong
童國恩
spellingShingle Guo-En Tong
童國恩
Determining Emerging Technology of Patents by Chance Discovery
author_sort Guo-En Tong
title Determining Emerging Technology of Patents by Chance Discovery
title_short Determining Emerging Technology of Patents by Chance Discovery
title_full Determining Emerging Technology of Patents by Chance Discovery
title_fullStr Determining Emerging Technology of Patents by Chance Discovery
title_full_unstemmed Determining Emerging Technology of Patents by Chance Discovery
title_sort determining emerging technology of patents by chance discovery
publishDate 2007
url http://ndltd.ncl.edu.tw/handle/72980436132087013208
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