박사

GA와 PSO 군집화 앙상블 기법을 이용한 무형유산 문서의 시대적 분석 연구

이정송 2017년
논문상세정보
    • 저자 이정송
    • 기타서명 (A) Study of Chronological Analysis of Intangible Cultural Heritage Text Document using GA and PSO Clustering Ensemble Method
    • 형태사항 x, 129 p.: 삽화: 26 cm
    • 일반주기 부록: 1. PSO를 이용한 문서 군집화의 파라미터 조합 실험 -- 2. GA와 PSO 군집화 앙상블 기법의 파라미터 조합 실험, 전북대학교 논문은 저작권에 의해 보호받습니다, 지도교수: 박순철, 참고문헌: p. 112-119
    • 학위논문사항 2017. 8, 학위논문(박사)-, 전자·정보공학부(컴퓨터공학), 전북대학교 일반대학원
    • 발행지 전주
    • 언어 kor
    • 출판년 2017
    • 발행사항 전북대학교 일반대학원
    유사주제 논문( 0)

' GA와 PSO 군집화 앙상블 기법을 이용한 무형유산 문서의 시대적 분석 연구' 의 참고문헌

  • 한국 전통주의 문화
    배영호 동아시아식생활학회 학술발표대 회논문집, pp. 35-51 [2006]
  • 패턴인식
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