HOME > 상세정보

상세정보

R과 파이썬을 활용한 논문연구법 (5회 대출)

자료유형
단행본
개인저자
차경천, 車敬天, 1969-
서명 / 저자사항
R과 파이썬을 활용한 논문연구법 / 차경천
발행사항
하남 :   창명,   2020  
형태사항
304 p. : 삽화, 도표 ; 25 cm
ISBN
9791188109197
일반주기
부록: 통계 분포들  
색인수록  
000 00000cam c2200205 c 4500
001 000046124834
005 20220816161952
007 ta
008 220812s2020 ggkad 001c kor
020 ▼a 9791188109197 ▼g 93320
035 ▼a (KERIS)BIB000015694795
040 ▼a 247009 ▼c 247009 ▼d 211009
082 0 4 ▼a 808.066 ▼2 23
085 ▼a 808.066 ▼2 DDCK
090 ▼a 808.066 ▼b 2020z1
100 1 ▼a 차경천, ▼g 車敬天, ▼d 1969- ▼0 AUTH(211009)135524
245 1 0 ▼a R과 파이썬을 활용한 논문연구법 / ▼d 차경천
246 3 0 ▼a 논문연구법
260 ▼a 하남 : ▼b 창명, ▼c 2020
300 ▼a 304 p. : ▼b 삽화, 도표 ; ▼c 25 cm
500 ▼a 부록: 통계 분포들
500 ▼a 색인수록
945 ▼a ITMT

소장정보

No. 소장처 청구기호 등록번호 도서상태 반납예정일 예약 서비스
No. 1 소장처 과학도서관/Sci-Info(1층서고)/ 청구기호 808.066 2020z1 등록번호 521006825 (3회 대출) 도서상태 대출가능 반납예정일 예약 서비스 B M
No. 2 소장처 과학도서관/Sci-Info(1층서고)/ 청구기호 808.066 2020z1 등록번호 521006897 (2회 대출) 도서상태 대출가능 반납예정일 예약 서비스 B M

컨텐츠정보

저자소개

차경천(지은이)

현재 동아대학교 경영학과 교수로 재직하고 있다. KAIST(한국과학기술원)에서 경영공학 박사학위를 받고, 박사 졸업 후 카이스트 연구실에서 창업한 수요 예측 전문 벤처기업을 3년간 운영한 바 있다. 국내/외 다수의 학술저널에 논문을 게재했으며, 한국마케팅학회 최우수논문상과 우수논문상을 받았다. 2023-24년 한국소비자학회 공동회장으로 봉사하였다. 한국마케팅학회 부회장과 한국소비자학회 부회장을 맡았고, 한국마케팅학회의 학술지 『마케팅연구』, 한국예술경영학회의 학술지 『예술경영연구』의 편집위원장을 역임하였다. 저서로는 『예측의 힘』, 『기초 통계적 연구방법론』, 『분석적 마케팅 조사론』, 『R과 파이썬을 활용한 논문연구법』, 『광고의 예상을 빗나간 마케팅효과』, 『사진속 마케팅 이야기』가 있다. 스포츠 기록, 전자제품 수요, 네트워크 사업 매출, 피자, 커피, 위스키 매출, 외식업 제휴카드 효과,핸드폰 가입자 수, 보험 신규계약 건수, 핸드폰 통화량, 전자소자 주문량, 인터넷 쇼핑몰 판촉효과,영화관 매출과 위치 선정, 핸드폰 위치 정보 분석, 외래 관광객 실태 조사, 주유소 위치 선정, TV display panel size, 직무만족도, 공연예술 소비 통계, 해외 출국 탑승객 수, 국제질병퇴치기금 예측,그룹 브랜드 가치 분석, Big Data 자문 등 다양한 예측 문제를 현장의 최전선에서 해결해 왔다.

정보제공 : Aladin

목차

Chapter 01 참고문헌 읽는 법
1. 참고문헌 읽는 순서 ··························· 13
2. 좋은 연구란? ··························· 14
3. 왜 기존 문헌연구가 필요한가? ··························· 15
4. 위키피디아 ··························· 16
5. 논문의 구성 ··························· 17
6. 가설의 설정 ··························· 19
Chapter 02 R & Python 준비하기
1. R 설치하기 ··························· 29
2. Python 설치하기 ··························· 33
Chapter 03 Regression model
1. 회귀분석 ···························· 47
2. 표준화된 계수 ···························· 52
3. 설정오류 ···························· 58
4. 다양한 회귀분석 모형들 ···························· 60
5. 회귀분석으로 이원분산 분석하기 ···························· 61
6. 최적치 추정하기 ···························· 62
7. R 실습 ···························· 63
8. Python 실습 ···························· 68
9. 컨조인트 분석을 회귀분석으로 ··························· 69
10. 논문작성의 예 ··························· 78

Chapter 04 Diffusion model
1. Bass Diffusion model ····························· 83
2. 확산모형의 한계와 개선점 ····························· 86
3. Generalized Bass Diffusion model과 다양한 시도들 ······· 87
4. R 실습 ····························· 89
5. Python 실습 ····························· 96
6. 논문작성의 예 ························ 96
Chapter 05 Price response model
1. 가격변화에 따른 수요반응 모형들 ····························· 103
2. Asymmetric model 추정방법 ······························ 107
3. R 실습 ······························ 113
4. Python 실습 ······························· 116
5. 논문작성의 예 ·································· 117
Chapter 06 Marketing dynamics
1. Leeflang et al.(2000) ································ 121
2. 논문작성의 예 ································· 126
Chapter 07 Time series model
1. ARIMA model ······························ 131
2. White Noise Process ···························· 135
3. R 실습 ··························· 137
4. Python 실습 ······························· 138
5. 논문작성의 예 ·································· 140
Chapter 08 Panel data model
1. Models for panel data ··························· 145

2. Fixed effect model ···························· 148
3. Random effect model ····························· 149
4. Test for model selection ······························ 150
5. R 실습 ······················ 151
6. Python 실습 ···························· 160
7. 논문작성의 예 ························· 166
Chapter 09 System equation model
1. System equation ····················· 171
2. Vector Autoregressive model ······················· 176
3. Vector Error Correction model ························ 180
4. Seemingly Unrelated Regression ·························· 182
5. R 실습 ····························· 184
6. Python 실습 ···························· 189
7. 논문작성의 예 ···························· 191
Chapter 10 Limited dependent model
1. Logit ···························· 197
2. Probit ······························ 200
3. Logistic regression ······························ 202
4. Multinomial ······························· 203
5. Censored, Truncated case ························ 203
6. R 실습 ························ 205
7. Python 실습 ··························· 213
8. 논문작성의 예 ······························· 216
Chapter 11 Count data model
1. Poisson Regression ······················· 221
2. Negative Binomial Model ······················· 223
3. Test for model selection: Likelihood ratio test ············ 226
4. R 실습 ······················· 226
5. Python 실습 ·························· 234
6. 논문작성의 예 ····························· 236
Chapter 12 Network centrality
1. 사회연결망 분석 ······················· 241
2. Granovetter(’73) ················· 257
3. Recommendation Algorithm ···················· 258
4. 논문작성의 예 ······················ 277
Chapter 13 Difference-in-Difference
1. DiD ···························· 281
2. Endogeneity ·························· 282
3. Difference-in-Difference ························ 283
Chapter 14 Regression Discontinuity Design
1. RDD ······················· 287
2. RDD model ···························· 288
3. 논문작성의 예 ························· 290
부 록 통계 분포들
1. 이산형 확률분포 ······················ 295
2. 연속형 확률분포 ························ 296
■찾아보기 ···························· 301

관련분야 신착자료

Harper, Graeme (2025)
신영준 (2025)
Cicero, Marcus Tullius (2025)
박희병 (2025)