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Patent and Statistics, What's the Connection?

특허와 통계학, 그 연결은?

  • Jun, Sung-Hae (Department of Bioinformatics & Statistics, Cheongju University) ;
  • Uhm, Dai-Ho (Department of Statistics, Oklahoma State University)
  • 전성해 (청주대학교 바이오정보통계학과) ;
  • 엄대호 (오클라호마주립대학교 통계학과)
  • Received : 20100100
  • Accepted : 20100300
  • Published : 2010.03.31

Abstract

A patent is a right of intellectual properties to an inventor or its assignee for a limited period under an international law. Not only in an invention of new machines, but it is competitive for using and creating technology in the world based on the patents. Most of the business models are good examples for patented technology, however a statistical analyzing model could be another one. In this paper we study and analyze the patents for the statistical analyzing and data mining models which are currently applied and registered, and suggest a statistical tool for analyzing and categorizing patent data. For this study all the patents in Korea and U.S. are listed and searched to sample the only cases concerning statistics.

특허제도는 발명자의 기술을 공개시키고 동시에 일정기간 동안 발명자에게 해당기술의 독점적 사용권을 법으로 보장하는 지식재산권제도이다. 이 제도를 바탕으로 전 세계는 치열한 기술경쟁을 하고 있다. 특허는 물건의 발명뿐만 아니라 방법의 발명도 인정한다. 방법의 발명에는 기업경영을 위한 비즈니스모델뿐만 아니라 다양한 통계적 분석기법도 포함된다. 본 논문에서는 지금까지 출원, 등록된 통계적 분석기법과 관련된 전체특허를 조사하여 기술유형별로 분석한다. 또한 특허데이터 자체에 대한 통계분석의 적용방법을 제안한다. 이를 위하여 국내와 미국의 특허청으로부터 통계분석 기술관련 전체 등록특허를 검색하여 조사, 분석하였다.

Keywords

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