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공간계량모형을 활용한 교통사고 유형별 발생 특성 분석 - 서울시를 대상으로 -

이경아 2016년
논문상세정보
' 공간계량모형을 활용한 교통사고 유형별 발생 특성 분석 - 서울시를 대상으로 -' 의 주제별 논문영향력
논문영향력 선정 방법
논문영향력 요약
주제
  • 지역계획
  • Moran's I
  • 공간적 자기상관성
  • 공간적 종속성 및 이질성
  • 보행자-차량사고
  • 자동차 관련 사고
  • 차대차 사고
동일주제 총논문수 논문피인용 총횟수 주제별 논문영향력의 평균
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' 공간계량모형을 활용한 교통사고 유형별 발생 특성 분석 - 서울시를 대상으로 -' 의 참고문헌

  • 확률적 모수를 고려한 음이항모형에 의한 교통사고와 기하구 조와의 관계 - 미국 워싱턴 주(州) 고속도로를 중심으로
    박민호 대한토목학회논 문집 Vol.33, No. 6, 대한토목학회, pp.2437-2445 [2013]
  • 한국 도시들의 공간집적 패턴에 대한 계량분석
    손정렬 대한지리 학회지 제48권 제1호, 대한지리학회, pp.56-71 [2013]
  • 통계청 홈페이지
    국민 1인당 소득
  • 토지이용 및 교통특성을 반영한 교통 사고 예측모형 개발 연구
    박준태 손의영 이수범 장일준 대학교통학회지 제29권 제6호, 대한교통학회, pp.39-56 [2012]
  • 청주 청원 지방부 신호교차로의 후미추돌 사고모형
    박병호 인병철 한국도로학회논문집, 제11권 제2호, pp.151-158 [2009]
  • 주ㆍ야간 교통사고의 특성 및 사고모형 비교 분석 - 청주시 4지 신호교차로를 중심으로
    김태영 박병호 오상진 유두선 대한토목학회논문집 D 28(2D), 2008, pp.181-189 [2008]
  • 어린이 노인 보행자 교통안전을 위한 근린환경요인
    이세영 이제승 한국도시설계학회지, 제15권 제6호, pp.5-15 [2014]
  • 서울시 오피스 임대료 시장의 공간적 영향력 분석
    김성진 허윤경 국토연구, 제58권, pp.198-208 [2008]
  • 사고유형에 따른 원형교차로 사고모형
    김경환 박병호 한수산 한국 도로학회논문집, 제13권 제3호, pp.103-110 [2011]
  • 보행에 대한 도시환경의 차이: 서울 도심을 중심으로
    권대영 김소윤 김홍석 서동주 대한교통학회, 대한교통학회지, 32권 6호, pp.638-650 [2014]
  • 미국 캘리포니아주의 GIS기반 교통사고 분석 사례
    박신형 국토연구 통권355호, pp.126-133 [2010]
  • 로짓ㆍ프로빗모형 응용
  • 대도시 토지이용 압출도 지표의 개발 및 적용 - 서울 시를 대상으로
    고준호 김태형 서울도시연구, Vol.17, No.1, pp.1-21 [2016]
  • 근린가중치행렬이 공간적 자기상관 추정에 미치는 영향
    박기호 서울도시연구 제5권 제3호, 서울연구원, pp.67-83 [2004]
  • 국토해양부
    2015년도 교통안전연차보고서 [2015]
  • 국토연구원
    교통사고에 안전한 국토 구현에 관한 연구 [2014]
  • 국민권익위원회
    중앙버스전용차로 교통사고 방지를 위한 제도 개선 [2011]
  • 공간헤도닉 모형을 활용한 대기질 개선 편익 추정: 서울지역을 중심으로
    김흥석 남기찬 손지완 대한국토ㆍ도시계획학회 추계학술대회, pp. 697-708 [2008]
  • 공간종속성ㆍ공간이질성을 고려한 통근통행발생모형 개발
    정우현 아주대학교 박사학위 논문 [2011]
  • 공간계량분석을 통한 도시교통사고 예측모형
    홍지연 서울시립대학교 박사학위논문 [2013]
  • 박사
  • 고급통계분석론
    노승철 이희연 법문사 [2013]
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    (검색어 : 서울시 교통사고 잦은 곳 개선사업, , http://www.e2news.com/news/articleView.html?idxno=66990 [2016]
  • ∙ 서울시 홈페이지
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  • ∙ 서울시
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  • ∙ 도로교통공단 홈페이지 > 사업마당 > 교통안전사업 > 교통사고 잦은 곳 등 도로교통환경 개선
    http://www.koroad.or.kr/kp_web/safeBiz4.do
  • ∙ 도로교통공단
    교통사고 잦은 곳 기본개선계획 및 효과분석, , pp.6-7 [2008]
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  • “공간자기상관의 탐색과 공간회귀분석의 활용”
    김광구 정책분석평가 학회보 제13권 제1호, 정책분석평가학회, pp.273-294 [2003]
  • STATA 기초통계와 회귀분석
    민인식 최필선 한국 STATA학회 [2006]
  • GIS와 공간 데이터마이닝을 이용한 교통사고의 공간적 패턴 분석-서울시 강남구를 대상으로
    이건학 서울대학교 석사학위논문 [2003]