소장자료
LDR | 05122cam a2200301 a 4500 | ||
001 | 0091882298▲ | ||
005 | 20180520044156▲ | ||
008 | 110812s2010 fluab b 001 0 eng ▲ | ||
010 | ▼a2010008252▲ | ||
020 | ▼a9781584887201 (hc : alk. paper)▲ | ||
020 | ▼a1584887206▲ | ||
035 | ▼a(KERIS)REF000016121436▲ | ||
040 | ▼aDLC▼cDLC▼dBTCTA▼dBAKER▼dYDXCP▼dC#P▼dBWX▼dCDX▼dDLC▼d221016▲ | ||
042 | ▼apcc▲ | ||
050 | 0 | 0 | ▼aQA279.5▼b.C66 2010▲ |
082 | 0 | 0 | ▼a519.5/42▼221▲ |
090 | ▼a519.542▼bC749aA▲ | ||
100 | 1 | ▼aCongdon, P.▲ | |
245 | 1 | 0 | ▼aApplied Bayesian hierarchical methods /▼cPeter D. Congdon.▲ |
260 | ▼aBoca Raton :▼bCRC Press,▼cc2010.▲ | ||
300 | ▼axiii, 590 p. :▼bill., maps ;▼c25 cm.▲ | ||
500 | ▼a"A Chapman & Hall book."▲ | ||
504 | ▼aIncludes bibliographical references and index.▲ | ||
505 | 0 | ▼aBayesian Methods for Complex Data: Estimation and Inference Introduction Posterior Inference from Bayes Formula Markov Chain Sampling in Relation to Monte Carlo Methods: Obtaining Posterior Inferences Hierarchical Bayes Applications Metropolis Sampling Choice of Proposal Density Obtaining Full Conditional Densities Metropolis--Hastings Sampling Gibbs Sampling Assessing Efficiency and Convergence: Ways of Improving Convergence Choice of Prior Density Model Fit, Comparison, and Checking Introduction Formal Methods: Approximating Marginal Likelihoods Effective Model Dimension and Deviance Information Criterion Variance Component Choice and Model Averaging Predictive Methods for Model Choice and Checking Estimating Posterior Model Probabilities Hierarchical Estimation for Exchangeable Units: Continuous and Discrete Mixture Approaches Introduction Hierarchical Priors for Ensemble Estimation using Continuous Mixtures The Normal-Normal Hierarchical Model and Its Applications Priors for Second Stage Variance Parameters Multivariate Meta-Analysis Heterogeneity in Count Data: Hierarchical Poisson Models Binomial and Multinomial Heterogeneity Discrete Mixtures and Nonparametric Smoothing Methods Nonparametric Mixing via Dirichlet Process and Polya Tree Priors Structured Priors Recognizing Similarity over Time and Space Introduction Modeling Temporal Structure: Autoregressive Models State Space Priors for Metric Data Time Series for Discrete Responses: State Space Priors and Alternatives Stochastic Variances Modeling Discontinuities in Time Spatial Smoothing and Prediction for Area Data Conditional Autoregressive Priors Priors on Variances in Conditional Spatial Models Spatial Discontinuity and Robust Smoothing Models for Point Processes Regression Techniques using Hierarchical Priors Introduction Regression for Overdispersed Discrete Data Latent Scales for Binary and Categorical Data Nonconstant Regression Relationships and Variance Heterogeneity Heterogeneous Regression and Discrete Mixture Regressions Time Series Regression: Correlated Errors and Time-Varying Regression Effects Spatial Correlation in Regression Residuals Spatially Varying Regression Effects: Geographically Weighted Linear Regression and Bayesian Spatially Varying Coefficient Models Bayesian Multilevel Models Introduction The Normal Linear Mixed Model for Hierarchical Data Discrete Responses: General Linear Mixed Model, Conjugate, and Augmented Data Models Crossed and Multiple Membership Random Effects Robust Multilevel Models Multivariate Priors, with a Focus on Factor and Structural Equation Models Introduction The Normal Linear SEM and Factor Models Identifiability and Priors on Loadings Multivariate Exponential Family Outcomes and General Linear Factor Models Robust Options in Multivariate and Factor Analysis Multivariate Spatial Priors for Discrete Area Frameworks Spatial Factor Models Multivariate Time Series Hierarchical Models for Panel Data Introduction General Linear Mixed Models for Panel Data Temporal Correlation and Autocorrelated Residuals Categorical Choice Panel Data Observation-Driven Autocorrelation: Dynamic Panel Models Robust Panel Models: Heteroscedasticity, Generalized Error Densities, and Discrete Mixtures Multilevel, Multivariate, and Multiple Time Scale Longitudinal Data Missing Data in Panel Models Survival and Event History Models Introduction Survival Analysis in Continuous Time Semiparametric Hazards Including Frailty Discrete Time Hazard Models Dependent Survival Times: Multivariate and Nested Survival Times Competing Risks Hierarchical Methods for Nonlinear Regression Introduction Nonparametric Basis Function Models for the Regression Mean Multivariate Basis Function Regression Heteroscedasticity via Adaptive Nonparametric Regression General Additive Methods Nonparametric Regression Methods for Longitudinal Analysis Appendix: Using WinBUGS and BayesX References Index▲ | |
520 | ▼aBayesian methods facilitate the analysis of complex models and data structures. Emphasizing data applications, alternative modeling specifications, and computer implementation, this book provides a practical overview of methods for Bayesian analysis of hierarchical models▲ | ||
650 | 0 | ▼aMultilevel models (Statistics)▲ | |
650 | 0 | ▼aBayesian statistical decision theory.▲ | |
999 | ▼c정영주▲ |
Applied Bayesian hierarchical methods
자료유형
국외단행본
서명/책임사항
Applied Bayesian hierarchical methods / Peter D. Congdon.
개인저자
발행사항
Boca Raton : CRC Press , c2010.
형태사항
xiii, 590 p. : ill., maps ; 25 cm.
일반주기
"A Chapman & Hall book."
서지주기
Includes bibliographical references and index.
내용주기
Bayesian Methods for Complex Data: Estimation and Inference Introduction Posterior Inference from Bayes Formula Markov Chain Sampling in Relation to Monte Carlo Methods: Obtaining Posterior Inferences Hierarchical Bayes Applications Metropolis Sampling Choice of Proposal Density Obtaining Full Conditional Densities Metropolis--Hastings Sampling Gibbs Sampling Assessing Efficiency and Convergence: Ways of Improving Convergence Choice of Prior Density Model Fit, Comparison, and Checking Introduction Formal Methods: Approximating Marginal Likelihoods Effective Model Dimension and Deviance Information Criterion Variance Component Choice and Model Averaging Predictive Methods for Model Choice and Checking Estimating Posterior Model Probabilities Hierarchical Estimation for Exchangeable Units: Continuous and Discrete Mixture Approaches Introduction Hierarchical Priors for Ensemble Estimation using Continuous Mixtures The Normal-Normal Hierarchical Model and Its Applications Priors for Second Stage Variance Parameters Multivariate Meta-Analysis Heterogeneity in Count Data: Hierarchical Poisson Models Binomial and Multinomial Heterogeneity Discrete Mixtures and Nonparametric Smoothing Methods Nonparametric Mixing via Dirichlet Process and Polya Tree Priors Structured Priors Recognizing Similarity over Time and Space Introduction Modeling Temporal Structure: Autoregressive Models State Space Priors for Metric Data Time Series for Discrete Responses: State Space Priors and Alternatives Stochastic Variances Modeling Discontinuities in Time Spatial Smoothing and Prediction for Area Data Conditional Autoregressive Priors Priors on Variances in Conditional Spatial Models Spatial Discontinuity and Robust Smoothing Models for Point Processes Regression Techniques using Hierarchical Priors Introduction Regression for Overdispersed Discrete Data Latent Scales for Binary and Categorical Data Nonconstant Regression Relationships and Variance Heterogeneity Heterogeneous Regression and Discrete Mixture Regressions Time Series Regression: Correlated Errors and Time-Varying Regression Effects Spatial Correlation in Regression Residuals Spatially Varying Regression Effects: Geographically Weighted Linear Regression and Bayesian Spatially Varying Coefficient Models Bayesian Multilevel Models Introduction The Normal Linear Mixed Model for Hierarchical Data Discrete Responses: General Linear Mixed Model, Conjugate, and Augmented Data Models Crossed and Multiple Membership Random Effects Robust Multilevel Models Multivariate Priors, with a Focus on Factor and Structural Equation Models Introduction The Normal Linear SEM and Factor Models Identifiability and Priors on Loadings Multivariate Exponential Family Outcomes and General Linear Factor Models Robust Options in Multivariate and Factor Analysis Multivariate Spatial Priors for Discrete Area Frameworks Spatial Factor Models Multivariate Time Series Hierarchical Models for Panel Data Introduction General Linear Mixed Models for Panel Data Temporal Correlation and Autocorrelated Residuals Categorical Choice Panel Data Observation-Driven Autocorrelation: Dynamic Panel Models Robust Panel Models: Heteroscedasticity, Generalized Error Densities, and Discrete Mixtures Multilevel, Multivariate, and Multiple Time Scale Longitudinal Data Missing Data in Panel Models Survival and Event History Models Introduction Survival Analysis in Continuous Time Semiparametric Hazards Including Frailty Discrete Time Hazard Models Dependent Survival Times: Multivariate and Nested Survival Times Competing Risks Hierarchical Methods for Nonlinear Regression Introduction Nonparametric Basis Function Models for the Regression Mean Multivariate Basis Function Regression Heteroscedasticity via Adaptive Nonparametric Regression General Additive Methods Nonparametric Regression Methods for Longitudinal Analysis Appendix: Using WinBUGS and BayesX References Index
요약주기
Bayesian methods facilitate the analysis of complex models and data structures. Emphasizing data applications, alternative modeling specifications, and computer implementation, this book provides a practical overview of methods for Bayesian analysis of hierarchical models
ISBN
9781584887201 (hc : alk. paper) 1584887206
청구기호
519.542 C749aA
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