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머신러닝과 인과분석 > 컴퓨터공학

머신러닝과 인과분석 요약정보 및 구매

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    머신러닝과 인과분석

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    도서명:머신러닝과 인과분석
    저자/출판사:김양석,노미진,한무명초/박영사
    쪽수:239쪽
    출판일:2023-08-30
    ISBN:9791130318189

    목차
    Chapter 00 서장
    저술 목적··················································· 10
    운영시스템················································· 14
    개발 환경··················································· 14

    Chapter 01 가설 검정
    서론·························································· 26
    가설과 가설 검정·········································· 26
    가설······················································· 26
    가설 검정················································ 27
    검증의 단계················································ 28
    1단계: 귀무가설 및 대립가설 설명················· 28
    2단계: 데이터 수집···································· 29
    3단계: 통계 테스트 수행······························ 29
    4단계: 귀무가설 기각 여부 결정···················· 30
    5단계: 연구 결과 제시································ 30
    검증 오류················································ 31
    가설 검정 사례············································ 32
    데이터 로드············································· 32
    정규성 검증에 대한 가설 검정······················· 34
    상관성 검증에 대한 가설 검정······················· 36
    모수 통계 가설 검정··································· 39
    비모수 통계 가설 검정································ 44
    결론·························································· 48

    Chapter 02 선형 회귀 모델링
    서론·························································· 50
    모델과 모델링············································· 50
    데이터셋···················································· 51
    단순 회귀 분석············································ 54
    가설설정················································· 54
    모델링···················································· 54
    모델링 결과············································· 54
    AIC······················································· 60
    다중 회귀 분석············································ 82
    모델링···················································· 88
    모델링 결과············································· 88
    회귀 모델 가정 검정··································· 92
    결론·························································104
    Chapter 03 이산 회귀 모델링
    서론·························································106
    모델링 기법···············································106
    로짓(Logit) 모형····································107
    프로빗 모형···········································107
    로짓과 프로빗 모형의 차이점······················108
    데이터 분석 사례·········································109
    Step 1: 라이브러리 가져오기·····················109
    Step 2: 데이터 로딩 및 이해······················109
    Step 3: 가설 설정···································110
    Step 4: 데이터 준비································110
    Step 5: Logit 모델링·······························113
    Step 6: Probit 모델링·····························116
    결론·························································118

    Chapter 04 인과 추론 분석
    서론·························································120
    인과 추론의 4 단계······································121
    모델에서 목표 추정치 식별·························124
    확인된 추정치를 기반으로 인과 추론·············125
    획득한 추정치에 대한 반박·························126
    DoWhy 인과 추론의 특징·····························128
    명시적 식별 가능·····································128
    식별과 추정의 분리··································128
    자동화된 견고성 검사·······························128
    확장성··················································129
    인과 추론 분석 사례 - 호텔 예약 취소···············129
    Step 1: 라이브러리 가져오기·····················130
    Step 2: 데이터 로딩 및 데이터 이해·············130
    Step 3: 데이터 준비································133
    Step 4: DoWhy를 활용한 인과 관계 추정····142
    결론·························································151

    Chapter 05 인과 발견 분석
    서론·························································154
    패키지 설치···············································154
    분석 방법 이해···········································155
    Step 1: 라이브러리 가져오기·····················156
    Step 2: 검증 데이터 생성··························156
    Step 3: 인과 관계 발견····························158
    Step 4: 오차 변수 간의 독립성 검증·············159
    분류 문제의 인과 발견··································160
    Step 1: 라이브러리 가져오기·····················160
    Step 2: 커스텀 함수 만들기·······················161
    Step 3: 데이터 로딩하기···························161
    Step 4: 모델링 하기································162
    Step 5: 변수 오차 간 독립성 검증···············165
    Step 6: 예측 모델 생성과 예측 영향도 분석···166
    수치 예측 문제의 인과 발견····························167
    Step 1: 라이브러리 가져오기·····················167
    Step 2: 커스텀 함수 만들기·······················168
    Step 3: 데이터 로딩하기···························168
    Step 4: 모델링 하기································170
    Step 5: 변수 오차 간 독립성 검증··············· 172
    Step 6: 예측 모델 생성과 예측 영향도 분석··· 172
    Step 7: 최적 개입의 추정·························· 173
    결론·························································174

    Chapter 06 인과 영향 분석
    서론·························································176
    Causal Impact··········································177
    모델의 동작 방식의 이해···························· 179
    폭스바겐 인과 영향 분석 사례·························188
    Step 1: 라이브러리 로딩··························· 188
    Step 2: 데이터 로딩 및 데이터 이해············· 189
    Step 3: 기본 모델 분석···························· 191
    Step 4: 시계열 성분 분해·························· 195
    Step 5: 사용자 정의 모델·························· 197
    결론·························································202

    Chapter 07 반대사실 분석
    서론·························································206
    소득 분류 반대사실 분석·······························207
    Step 1: 라이브러리 가져오기····················· 207
    Step 2: 데이터셋 로딩 및 이해··················· 207
    Step 3: DiCE로 카운터 팩트 생성··············· 209
    Step 4: 카운터 팩츄얼 사례 기반 속성 중요도··· 216
    주택 가격 예측 반대사실 분석 사례··················219
    Step 1: 라이브러리 로딩···························219
    Step 2: 데이터 로딩 및 이해······················220
    Step 3: DiCE로 카운터 팩트 생성···············223
    Step 4: 카운터 팩츄얼 기반 속성 중요도·······225
    결론·························································228
    참고문헌···················································229


    색인·························································232
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