RISS 학술연구정보서비스

검색
다국어 입력

http://chineseinput.net/에서 pinyin(병음)방식으로 중국어를 변환할 수 있습니다.

변환된 중국어를 복사하여 사용하시면 됩니다.

예시)
  • 中文 을 입력하시려면 zhongwen을 입력하시고 space를누르시면됩니다.
  • 北京 을 입력하시려면 beijing을 입력하시고 space를 누르시면 됩니다.
닫기
    인기검색어 순위 펼치기

    RISS 인기검색어

      Categorical data analysis

      한글로보기

      https://www.riss.kr/link?id=M13306026

      • 저자
      • 발행사항

        Hoboken, NJ : Wiley, c2013

      • 발행연도

        2013

      • 작성언어

        영어

      • 주제어
      • DDC

        519.535 판사항(23)

      • ISBN

        9780470463635 (hardback)

      • 자료형태

        단행본(다권본)

      • 발행국(도시)

        New Jersey

      • 서명/저자사항

        Categorical data analysis / Alan Agresti.

      • 판사항

        3rd ed

      • 형태사항

        xvi, 714 p. : ill. ; 27 cm.

      • 총서사항

        Wiley series in probability and statistics ; 792

      • 일반주기명

        Includes bibliographical references and index.
        Machine generated contents note: Preface 1. Introduction: Distributions and Inference for Categorical Data 1 1.1 Categorical Response Data, 1 1.2 Distributions for Categorical Data 1.3 Statistical Inference for Categorical Data 1.4 Statistical Inference for Binomial Parameters 1.5 Statistical Inference for Multinomial Parameters 1.6 Bayesian Inference for Binomial and Multinomial Parameters Notes Exercises 2. Describing Contingency Tables 2.1 Probability Structure for Contingency Tables 2.2 Comparing Two Proportions 2.3 Conditional Association in Stratified 2x2 Tables 2.4 Measuring Association in I x J Tables Notes Exercises 3. Inference for Two-Way Contingency Tables 3.1 Confidence Intervals for Association Parameters 3.2 Testing Independence in Two-Way Contingency Tables 3.3 Following-Up Chi-Squared Tests 3.4 Two-Way Tables with Ordered Classifications 3.5 Small-Sample Inference for Contingency Tables 3.6 Bayesian Inference for Two-Way Contingency Tables 3.7 Extensions for Multiway Tables and Nontabulated Responses Notes Exercises 4. Introduction to Generalized Linear Models 4.1 The Generalized Linear Model 4.2 Generalized Linear Models for Binary Data 4.3 Generalized Linear Models for Counts and Rates 4.4 Moments and Likelihood for Generalized Linear Models 4.5 Inference and Model Checking for Generalized Linear Models 4.6 Fitting Generalized Linear Models 4.7 Quasi-Likelihood and Generalized Linear Models Notes Exercises 5. Logistic Regression 5.1 Interpreting Parameters in Logistic Regression 5.2 Inference for Logistic Regression 5.3 Logistic Models with Categorical Predictors 5.4 Multiple Logistic Regression 5.5 Fitting Logistic Regression Models Notes Exercises 6. Building, Checking, and Applying Logistic Regression Models 6.1 Strategies in Model Selection 6.2 Logistic Regression Diagnostics 6.3 Summarizing the Predictive Power of a Model 6.3 Mantel-Haenszel and Related Methods for Multiple 2x2 Tables 6.4 Detecting and Dealing with Infinite Estimates 6.5 Sample Size and Power Considerations Notes Exercises 7. Alternative Modeling of Binary Response Data 7.1 Probit and Complementary Log-Log Models 7.2 Bayesian Inference for Binary Regression 7.3 Conditional Logistic Regression 7.4 Smoothing: Kernels, Penalized Likelihood, Generalized Additive Models 7.5 Issues in Analyzing High-Dimensional Categorical Data Notes Exercises 8. Models for Multinomial Responses 8.1 Nominal Responses: Baseline-Category Logit Models 8.2 Ordinal Responses: Cumulative Logit Models 8.3 Ordinal Responses: Alternative Models 8.4 Testing Conditional Independence in I ? J ? K Tables 8.5 Discrete-Choice Models 8.6 Bayesian Modeling of Multinomial Responses Notes Exercises 9. Loglinear Models for Contingency Tables 9.1 Loglinear Models for Two-Way Tables 9.2 Loglinear Models for Independence and Interaction in Three-Way Tables 9.3 Inference for Loglinear Models 9.4 Loglinear Models for Higher Dimensions 9.5 The Loglinear?Logistic Model Connection 9.6 Loglinear Model Fitting: Likelihood Equations and Asymptotic Distributions 9.7 Loglinear Model Fitting: Iterative Methods and their Application Notes Exercises 10. Building and Extending Loglinear Models 10.1 Conditional Independence Graphs and Collapsibility 10.2 Model Selection and Comparison 10.3 Residuals for Detecting Cell-Specific Lack of Fit 10.4 Modeling Ordinal Associations 10.5 Generalized Loglinear and Association Models, Correlation Models, and Correspondence Analysis 10.6 Empty Cells and Sparseness in Modeling Contingency Tables 10.7 Bayesian Loglinear Modeling Notes Exercises 11. Models for Matched Pairs 11.1 Comparing Dependent Proportions 11.2 Conditional Logistic Regression for Binary Matched Pairs 11.3 Marginal Models for Square Contingency Tables 11.4 Symmetry, Quasi-symmetry, and Quasi-independence 11.5 Measuring Agreement Between Observers 11.6 Bradley-Terry Model for Paired Preferences 11.7 Marginal Models and Quasi-symmetry Models for Matched Sets Notes Exercises 12. Clustered Categorical Data: Marginal and Transitional Models 12.1 Marginal Modeling: Maximum Likelihood Approach 12.2 Marginal Modeling: Generalized Estimating Equations Approach 12.3 Quasi-likelihood and Its GEE Multivariate Extension: Details 12.4 Transitional Models: Markov Chain and Time Series Models Notes Exercises 13. Clustered Categorical Data: Random Effects Models 13.1 Random Effects Modeling of Clustered Categorical Data 13.2 Binary Responses: The Logistic-Normal Model 13.3 Examples of Random Effects Models for Binary Data 13.4 Random Effects Models for Multinomial Data 13.5 Multilevel Models 13.6 GLMM Fitting, Inference, and Prediction 13.7 Bayesian Multivariate Categorical Modeling Notes Exercises 14. Other Mixture Models for Discrete Data 14.1 Latent Class Models 14.2 Nonparametric Random Effects Models 14.3 Beta-Binomial Models 14.4 Negative Binomial Regression 14.5 Poisson Regression with Random Effects Notes Exercises 15. Non-Model-Based Classification and Clustering 15.2 Classification: Linear Discriminant Analysis 15.3 Classification: Tree-Structured Prediction 15.4 Cluster Analysis for Categorical Data Notes Exercises 16. Large- and Small-Sample Theory for Parametric Models 16.1 Delta Method 16.2 Asymptotic Distributions of Estimators of Model Parameters and Cell Probabilities 16.3 Asymptotic Distributions of Residuals and Goodness-of-Fit Statistics 16.4 Asymptotic Distributions for Logit/Loglinear Models 16.5 Small-Sample Significance Tests for Contingency Tables 16.6 Small-Sample Confidence Intervals for Categorical Data 16.7 Alternative Estimation Theory for Parametric Models Notes Exercises 17. Historical Tour of Categorical Data Analysis 17.1 Pearson-Yule Association Controversy 17.2 R. A. Fisher's Contributions 17.3 Logistic Regression 17.4 Multiway Contingency Tables and Loglinear Models 17.5 Bayesian Methods for Categorical Data 17.6 A Look Forward, and Backward Appendix A. Statistical Software for Categorical Data Analysis Appendix B. Chi-Squared Distribution Values References Author Index Example Index Subject Index.

      • 소장기관
        • 가천대학교 중앙도서관 소장기관정보
        • 가톨릭대학교 성심교정도서관(중앙) 소장기관정보
        • 건국대학교 상허기념도서관 소장기관정보
        • 경북대학교 중앙도서관 소장기관정보
        • 경성대학교 도서관 소장기관정보
        • 고려대학교 세종학술정보원 소장기관정보 Deep Link
        • 국립부경대학교 도서관 소장기관정보
        • 국립창원대학교 도서관 소장기관정보
        • 대구한의대학교 향산도서관 소장기관정보
        • 덕성여자대학교 도서관 소장기관정보
        • 부산대학교 중앙도서관 소장기관정보
        • 부산외국어대학교 도서관 소장기관정보
        • 서울대학교 중앙도서관 소장기관정보 Deep Link
        • 서울시립대학교 도서관 소장기관정보
        • 성균관대학교 중앙학술정보관 소장기관정보 Deep Link
        • 성신여자대학교 도서관 소장기관정보
        • 숙명여자대학교 도서관 소장기관정보
        • 순천향대학교 도서관 소장기관정보
        • 연세대학교 학술문화처 도서관 소장기관정보 Deep Link
        • 육군사관학교 도서관 소장기관정보
        • 이화여자대학교 도서관 소장기관정보 Deep Link
        • 인하대학교 도서관 소장기관정보
        • 전남대학교 중앙도서관 소장기관정보
        • 전북대학교 중앙도서관 소장기관정보
        • 중앙대학교 서울캠퍼스 학술정보원 소장기관정보 Deep Link
        • 한국과학기술원(KAIST) 학술문화관 소장기관정보
        • 한국외국어대학교 글로벌캠퍼스 도서관 소장기관정보
      • 0

        상세조회
      • 0

        다운로드
      서지정보 열기
      • 내보내기
      • 내책장담기
      • 공유하기
      • 오류접수

      부가정보

      목차 (Table of Contents)

      • 자료제공 : yes24
      • Preface xiii
      • 1 Introduction: Distributions and Inference for Categorical Data 1
      • 1.1 Categorical Response Data, 1
      • 1.2 Distributions for Categorical Data, 5
      • 자료제공 : yes24
      • Preface xiii
      • 1 Introduction: Distributions and Inference for Categorical Data 1
      • 1.1 Categorical Response Data, 1
      • 1.2 Distributions for Categorical Data, 5
      • 1.3 Statistical Inference for Categoric
      더보기

      온라인 도서 정보

      온라인 서점 구매

      온라인 서점 구매 정보
      서점명 서명 판매현황 종이책 전자책 구매링크
      정가 판매가(할인율) 포인트(포인트몰)
      예스24.com

      Categorical Data Analysis

      판매중 74,000원 74,000원 (0%)

      종이책 구매

      1,480포인트 (2%)
      • 포인트 적립은 해당 온라인 서점 회원인 경우만 해당됩니다.
      • 상기 할인율 및 적립포인트는 온라인 서점에서 제공하는 정보와 일치하지 않을 수 있습니다.
      • RISS 서비스에서는 해당 온라인 서점에서 구매한 상품에 대하여 보증하거나 별도의 책임을 지지 않습니다.

      책소개

      자료제공 : NAVER

      Categorical Data Analysis, 3/E

      The use of statistical methods for analyzing categorical data has increased dramatically, particularly in the biomedical, social sciences, and financial industries. Responding to new developments, this book offers a comprehensive treatment of the most important methods for categorical data analysis. Categorical Data Analysis, Third Edition summarizes the latest methods for univariate and correlated multivariate categorical responses.

      more

      분석정보

      View

      상세정보조회

      0

      Usage

      원문다운로드

      0

      대출신청

      0

      복사신청

      0

      EDDS신청

      0

      동일 주제 내 활용도 TOP

      더보기

      이 자료와 함께 이용한 RISS 자료

      나만을 위한 추천자료

      해외이동버튼