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Elements of large-sample theory / E.L. Lehmann
Elements of large-sample theory / E.L. Lehmann
Autore Lehmann, Erich Leo
Pubbl/distr/stampa New York : Springer, c 1999
Descrizione fisica XII, 632 p. ; 23 cm
Disciplina 519.52
Collana Springer texts in statistics
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione ita
Record Nr. UNINA-990006887490403321
Lehmann, Erich Leo  
New York : Springer, c 1999
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Elements of large-sample theory / E L. Lehmann
Elements of large-sample theory / E L. Lehmann
Autore LEHMANN, Erich Leo
Pubbl/distr/stampa New York [etc.] : Springer-Verlag, 1998
Descrizione fisica XII, 631 p. ; 25 cm.
Disciplina 519.52
Collana Springer texts in statistics
Soggetto topico Campionamento - Teorie
ISBN 0-387-98595-6
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNISA-990005487910203316
LEHMANN, Erich Leo  
New York [etc.] : Springer-Verlag, 1998
Materiale a stampa
Lo trovi qui: Univ. di Salerno
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Emerging topics in modeling interval-censored survival data / / Jianguo Sun, Ding-Geng Chen, editors
Emerging topics in modeling interval-censored survival data / / Jianguo Sun, Ding-Geng Chen, editors
Pubbl/distr/stampa Cham, Switzerland : , : Springer, , [2022]
Descrizione fisica 1 online resource (322 pages)
Disciplina 519.52
Collana ICSA book series in statistics
Soggetto topico Censored observations (Statistics)
Statistics - Methodology
Estadística
Metodologia
Soggetto genere / forma Llibres electrònics
ISBN 3-031-12366-2
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Intro -- Preface -- Part I: Introduction and Review (Chapters 1 -3) -- Part II: Emerging Topics in Methodology (Chapters 4 -9) -- Part III: Emerging Topics in Applications (Chapters 10 -15) -- Contents -- Editors and Contributors -- About the Editors -- Contributors -- Part I Introduction and Review -- Overview of Historical Developments in Modeling Interval-Censored Survival Data -- 1 Emerging Interval-Censored Data -- 2 Emerging Methods in Analyzing Interval-Censored Data -- 3 More on Emerging Methods in Analyzing Interval-Censored Data -- References -- Overview of Recent Advances on the Analysis of Interval-Censored Failure Time Data -- 1 Introduction -- 2 Regression Analysis of Univariate Interval-Censored Failure Time Data -- 2.1 Regression Analysis with Time-Dependent Covariates -- 2.2 Regression Analysis in the Presence of a Cured Subgroup -- 2.3 Variable Section for Interval-Censored Data -- 3 Regression Analysis with Informative Interval Censoring -- 4 Regression Analysis of Clustered and Multivariate Interval-Censored Data -- 5 Other Topics on Regression Analysis of Interval-Censored Data -- 6 Concluding Remarks -- References -- Predictive Accuracy of Prediction Model for Interval-Censored Data -- 1 Introduction -- 2 Time-dependent AUC -- 2.1 Review of ROC Curve -- 2.2 ROC for Interval Censored Data -- 2.3 Simulation -- 3 Time-Dependent C-index -- 3.1 Review of C-index -- 3.2 C-index for Interval Censored Data -- 3.3 Simulation -- 4 Brier Score -- 4.1 Review of Brier Score -- 4.2 Brier Score for Interval Censored Data -- 4.3 Simulation -- 5 Application to Dementia Dataset -- 6 Concluding Remarks -- Appendix: R code -- References -- Part II Emerging Topics in Methodology -- A Practical Guide to Exact Confidence Intervals for a Distribution of Current Status Data Using the Binomial Approach -- 1 Introduction.
2 Current Status Data and Point Estimations -- 2.1 Current Status Data -- 2.2 The R package csci: Current Status Confidence Intervals -- 2.3 Point Estimation for F(t) -- 3 Valid Binomial Approach Confidence Intervals -- 3.1 A Structure of the Valid Confidence Interval for F(t) -- 3.2 A Specific Form of the Functions a(t,n,C) and b(t,n,C) -- 3.3 Choice of mn -- 4 The ABA (Approximate Binomial Approach) Confidence Intervals -- 4.1 The Structure of the ABA Confidence Interval -- 4.2 Choice of m†n -- 4.3 Aesthetic Adjustments -- 5 Simulation Studies -- 5.1 Simulation 1 -- 5.2 Simulation 2 -- 6 Analyzing the Hepatitis A Data in Bulgaria -- 7 Conclusion -- References -- Accelerated Hazards Model and Its Extensions for Interval-Censored Data -- 1 Why Is Accelerated Hazards Model Needed? -- 2 Accelerated Hazards Model with Interval-Censored Data -- 3 Estimation Procedure -- 3.1 Sieve Semiparametric Maximum Likelihood Estimator -- 3.2 Implementation -- 3.3 Choosing the Number of Base Splines -- 4 Large Sample Properties -- 5 Simulation Study -- 6 Example 1: Diabetes Conversion Data -- 7 Extensions of Accelerated Hazards Model -- 7.1 Generalized Accelerated Hazards Model -- 7.2 GAH Mixture Cure Model -- 8 Sieve Maximum Likelihood Estimation for GAHCure Model -- 8.1 Sieve Likelihood -- 8.2 Algorithm -- 8.3 Simulation Results -- 9 Example 2: Smoking Cessation Data -- References -- Maximum Likelihood Estimation of Semiparametric Regression Models with Interval-Censored Data -- 1 Introduction -- 2 Cox Model and Right-Censored Data -- 3 Interval-Censored Data -- 4 Competing Risks -- 5 Multivariate Failure Time Data -- 6 Remarks -- References -- Use of the INLA Approach for the Analysis of Interval-Censored Data -- 1 Introduction -- 2 Approximate Bayesian Inference with INLA -- 2.1 INLA -- 2.2 The R-INLA Package -- 3 Interval Censored Survival Analysis with INLA.
3.1 Survival Models as LGMs -- 3.2 Capabilities and Possibilities for Survival Models in INLA -- 4 Examples -- 4.1 Diabetic Nephropathy: Frailty Log-Logistic Model -- 4.1.1 Frailty Log-Logistic Model as a Latent Gaussian Model -- 4.1.2 Using R-INLA for Full Bayesian Inference -- 4.1.3 Results -- 4.2 Epilepsy Drug Efficacy: Non-linear Joint Model with Competing Risks and Interval Censoring -- 4.2.1 Non-linear Joint Model with Competing Risks as a Latent Gaussian Model -- 4.2.2 Results -- 5 Discussion -- Appendix -- References -- Copula Models and Diagnostics for Multivariate Interval-Censored Data -- 1 Introduction -- 2 Notation and Methods -- 2.1 Copula Model for Multivariate Interval-Censored Data -- 2.2 Joint Likelihood for Bivariate Interval-Censored Data -- 2.3 Choice of Marginal Models -- 3 Parameter Estimation -- 3.1 Sieve Likelihood with Bernstein Polynomials -- 4 Goodness-of-Fit Test for Copula Specification -- 4.1 Hypothesis and Test Statistic -- 4.2 Estimation of IR Statistic -- 4.3 Test Procedure -- 5 Simulation Studies -- 5.1 Generating Bivariate Interval-Censored Times -- 5.2 Simulation-I: Parameter Estimation -- 5.3 Simulation-II: Joint Survival Probability Estimation Performance -- 5.4 Simulation III: IR Test Performance -- 6 Real Examples -- 7 Conclusion -- References -- Efficient Estimation of the Additive Risks Model for Interval-Censored Data -- 1 Introduction -- 2 Statistical Model -- 2.1 Notations and Setup -- 2.2 Likelihood -- 3 Estimation -- 3.1 MM Algorithm -- 3.2 Variance Estimation -- 3.3 Complexity Analysis -- 4 Simulation Study -- 5 Application: Breast Cancer Data -- 6 Implementation: R Package MMIntAdd -- 7 Conclusions -- Appendix -- Proof of Theorem 1 -- References -- Part III Emerging Topics in Applications -- Modeling and Analysis of Chronic Disease Processes Under Intermittent Observation -- 1 Introduction.
2 Modeling Multistate Disease and Observation Processes -- 2.1 Multistate Models -- 2.2 Joint Models for the Disease and Visit Process -- 3 Partially Specified Models for Marginal Features -- 4 Cox Models with Markers Under Intermittent Observation -- 4.1 Joint Marker-Failure Visit Process Models -- 4.2 Limiting Value of a Cox Model Coefficient Under LOCF -- 4.3 A Bone Marker and Event-Free Survival -- 5 Discussion -- References -- Case-Cohort Studies with Time-Dependent Covariates and Interval-Censored Outcome -- 1 Introduction -- 2 Model Specification -- 2.1 Full Cohort -- 2.2 Case-Cohort -- 3 Simulation -- 4 Hormonal Contraceptive HIV Data -- 5 Discussion -- Supporting Information -- References -- The BivarIntCensored: An R Package for Nonparametric Inference of Bivariate Interval-Censored Data -- 1 Introduction -- 2 Method -- 2.1 Spline-Based Sieve NPMLE -- 2.1.1 Notation -- 2.1.2 Likelihood Function -- 2.1.3 Spline-Based Sieve NPMLE -- 2.2 A Nonparametric Association Test -- 3 Implementation -- 4 BivarIntCensored Package and Its Illustration -- 4.1 Main Functions -- 4.2 Example -- 5 Conclusions -- References -- Joint Modeling for Longitudinal and Interval-Censored Survival Data: Application to IMPI Multi-Center HIV/AIDS Clinical Trial -- 1 Introduction -- 2 Data and Methods -- 2.1 Data Structure -- 2.1.1 Survival Data -- 2.1.2 Longitudinal Data -- 2.2 The Joint Model -- 2.2.1 The Shared Parameter Joint Model -- 2.2.2 The Joint Models for Interval-Censored Data -- 3 Data Analysis -- 3.1 Illustration Using the IMPI Trial Data -- 3.2 Survival Data Analysis with Time-Dependent Covariates -- 3.3 Longitudinal Data Analysis: Linear Mixed-Effects Model -- 3.4 Joint Modeling for Longitudinal CD4 Counts and Interval-Censored Survival Data -- 4 Discussions -- References.
Regression Analysis with Interval-Censored Covariates. Application to Liquid Chromatography -- 1 Introduction -- 1.1 Interval-Censored Covariates in Regression Models: State of the Art -- 1.2 Outline -- 2 Motivating Data -- 2.1 Notation -- 2.1.1 Single Compounds -- 2.1.2 Sum of Compounds -- 3 Regression Methods Accounting for Limits of Detection and Quantitation -- 3.1 The GEL Method -- 3.2 Extension to the Generalized Linear Model -- 3.2.1 Regression with the Gamma Distribution -- 3.2.2 Logistic Regression -- 3.3 Comments on the Inclusion of Exact Observations -- 3.4 Residuals for Interval-Censored Covariates -- 3.4.1 Residuals for the Linear Model -- 3.4.2 Extension of GEL Residuals to the Generalized Linear Model -- 3.5 Implementation -- 4 Illustration -- 4.1 Linear Regression Model to Model log(Glucose) -- 4.2 Gamma Regression Model to Model Glucose Levels -- 4.3 Logistic Regression Model for Association with Obesity -- 5 Discussion -- References -- Misclassification Simulation Extrapolation Procedure for Interval-Censored Log-Logistic Accelerated Failure Time Model -- 1 Introduction -- 2 Methodology -- 2.1 Interval-Censored (Type II) Survival Data and Log-Logistic AFT Model with Misclassification Matrix -- 2.2 MC-SIMEX -- 3 Monte-Carlo Simulation Study -- 3.1 Simulation Design -- 3.2 Results of Simulation -- 4 Real Data Analysis -- 5 Discussions -- References -- Index.
Record Nr. UNINA-9910633918703321
Cham, Switzerland : , : Springer, , [2022]
Materiale a stampa
Lo trovi qui: Univ. Federico II
Opac: Controlla la disponibilità qui
Emerging topics in modeling interval-censored survival data / / Jianguo Sun, Ding-Geng Chen, editors
Emerging topics in modeling interval-censored survival data / / Jianguo Sun, Ding-Geng Chen, editors
Pubbl/distr/stampa Cham, Switzerland : , : Springer, , [2022]
Descrizione fisica 1 online resource (322 pages)
Disciplina 519.52
Collana ICSA book series in statistics
Soggetto topico Censored observations (Statistics)
Statistics - Methodology
Estadística
Metodologia
Soggetto genere / forma Llibres electrònics
ISBN 3-031-12366-2
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Nota di contenuto Intro -- Preface -- Part I: Introduction and Review (Chapters 1 -3) -- Part II: Emerging Topics in Methodology (Chapters 4 -9) -- Part III: Emerging Topics in Applications (Chapters 10 -15) -- Contents -- Editors and Contributors -- About the Editors -- Contributors -- Part I Introduction and Review -- Overview of Historical Developments in Modeling Interval-Censored Survival Data -- 1 Emerging Interval-Censored Data -- 2 Emerging Methods in Analyzing Interval-Censored Data -- 3 More on Emerging Methods in Analyzing Interval-Censored Data -- References -- Overview of Recent Advances on the Analysis of Interval-Censored Failure Time Data -- 1 Introduction -- 2 Regression Analysis of Univariate Interval-Censored Failure Time Data -- 2.1 Regression Analysis with Time-Dependent Covariates -- 2.2 Regression Analysis in the Presence of a Cured Subgroup -- 2.3 Variable Section for Interval-Censored Data -- 3 Regression Analysis with Informative Interval Censoring -- 4 Regression Analysis of Clustered and Multivariate Interval-Censored Data -- 5 Other Topics on Regression Analysis of Interval-Censored Data -- 6 Concluding Remarks -- References -- Predictive Accuracy of Prediction Model for Interval-Censored Data -- 1 Introduction -- 2 Time-dependent AUC -- 2.1 Review of ROC Curve -- 2.2 ROC for Interval Censored Data -- 2.3 Simulation -- 3 Time-Dependent C-index -- 3.1 Review of C-index -- 3.2 C-index for Interval Censored Data -- 3.3 Simulation -- 4 Brier Score -- 4.1 Review of Brier Score -- 4.2 Brier Score for Interval Censored Data -- 4.3 Simulation -- 5 Application to Dementia Dataset -- 6 Concluding Remarks -- Appendix: R code -- References -- Part II Emerging Topics in Methodology -- A Practical Guide to Exact Confidence Intervals for a Distribution of Current Status Data Using the Binomial Approach -- 1 Introduction.
2 Current Status Data and Point Estimations -- 2.1 Current Status Data -- 2.2 The R package csci: Current Status Confidence Intervals -- 2.3 Point Estimation for F(t) -- 3 Valid Binomial Approach Confidence Intervals -- 3.1 A Structure of the Valid Confidence Interval for F(t) -- 3.2 A Specific Form of the Functions a(t,n,C) and b(t,n,C) -- 3.3 Choice of mn -- 4 The ABA (Approximate Binomial Approach) Confidence Intervals -- 4.1 The Structure of the ABA Confidence Interval -- 4.2 Choice of m†n -- 4.3 Aesthetic Adjustments -- 5 Simulation Studies -- 5.1 Simulation 1 -- 5.2 Simulation 2 -- 6 Analyzing the Hepatitis A Data in Bulgaria -- 7 Conclusion -- References -- Accelerated Hazards Model and Its Extensions for Interval-Censored Data -- 1 Why Is Accelerated Hazards Model Needed? -- 2 Accelerated Hazards Model with Interval-Censored Data -- 3 Estimation Procedure -- 3.1 Sieve Semiparametric Maximum Likelihood Estimator -- 3.2 Implementation -- 3.3 Choosing the Number of Base Splines -- 4 Large Sample Properties -- 5 Simulation Study -- 6 Example 1: Diabetes Conversion Data -- 7 Extensions of Accelerated Hazards Model -- 7.1 Generalized Accelerated Hazards Model -- 7.2 GAH Mixture Cure Model -- 8 Sieve Maximum Likelihood Estimation for GAHCure Model -- 8.1 Sieve Likelihood -- 8.2 Algorithm -- 8.3 Simulation Results -- 9 Example 2: Smoking Cessation Data -- References -- Maximum Likelihood Estimation of Semiparametric Regression Models with Interval-Censored Data -- 1 Introduction -- 2 Cox Model and Right-Censored Data -- 3 Interval-Censored Data -- 4 Competing Risks -- 5 Multivariate Failure Time Data -- 6 Remarks -- References -- Use of the INLA Approach for the Analysis of Interval-Censored Data -- 1 Introduction -- 2 Approximate Bayesian Inference with INLA -- 2.1 INLA -- 2.2 The R-INLA Package -- 3 Interval Censored Survival Analysis with INLA.
3.1 Survival Models as LGMs -- 3.2 Capabilities and Possibilities for Survival Models in INLA -- 4 Examples -- 4.1 Diabetic Nephropathy: Frailty Log-Logistic Model -- 4.1.1 Frailty Log-Logistic Model as a Latent Gaussian Model -- 4.1.2 Using R-INLA for Full Bayesian Inference -- 4.1.3 Results -- 4.2 Epilepsy Drug Efficacy: Non-linear Joint Model with Competing Risks and Interval Censoring -- 4.2.1 Non-linear Joint Model with Competing Risks as a Latent Gaussian Model -- 4.2.2 Results -- 5 Discussion -- Appendix -- References -- Copula Models and Diagnostics for Multivariate Interval-Censored Data -- 1 Introduction -- 2 Notation and Methods -- 2.1 Copula Model for Multivariate Interval-Censored Data -- 2.2 Joint Likelihood for Bivariate Interval-Censored Data -- 2.3 Choice of Marginal Models -- 3 Parameter Estimation -- 3.1 Sieve Likelihood with Bernstein Polynomials -- 4 Goodness-of-Fit Test for Copula Specification -- 4.1 Hypothesis and Test Statistic -- 4.2 Estimation of IR Statistic -- 4.3 Test Procedure -- 5 Simulation Studies -- 5.1 Generating Bivariate Interval-Censored Times -- 5.2 Simulation-I: Parameter Estimation -- 5.3 Simulation-II: Joint Survival Probability Estimation Performance -- 5.4 Simulation III: IR Test Performance -- 6 Real Examples -- 7 Conclusion -- References -- Efficient Estimation of the Additive Risks Model for Interval-Censored Data -- 1 Introduction -- 2 Statistical Model -- 2.1 Notations and Setup -- 2.2 Likelihood -- 3 Estimation -- 3.1 MM Algorithm -- 3.2 Variance Estimation -- 3.3 Complexity Analysis -- 4 Simulation Study -- 5 Application: Breast Cancer Data -- 6 Implementation: R Package MMIntAdd -- 7 Conclusions -- Appendix -- Proof of Theorem 1 -- References -- Part III Emerging Topics in Applications -- Modeling and Analysis of Chronic Disease Processes Under Intermittent Observation -- 1 Introduction.
2 Modeling Multistate Disease and Observation Processes -- 2.1 Multistate Models -- 2.2 Joint Models for the Disease and Visit Process -- 3 Partially Specified Models for Marginal Features -- 4 Cox Models with Markers Under Intermittent Observation -- 4.1 Joint Marker-Failure Visit Process Models -- 4.2 Limiting Value of a Cox Model Coefficient Under LOCF -- 4.3 A Bone Marker and Event-Free Survival -- 5 Discussion -- References -- Case-Cohort Studies with Time-Dependent Covariates and Interval-Censored Outcome -- 1 Introduction -- 2 Model Specification -- 2.1 Full Cohort -- 2.2 Case-Cohort -- 3 Simulation -- 4 Hormonal Contraceptive HIV Data -- 5 Discussion -- Supporting Information -- References -- The BivarIntCensored: An R Package for Nonparametric Inference of Bivariate Interval-Censored Data -- 1 Introduction -- 2 Method -- 2.1 Spline-Based Sieve NPMLE -- 2.1.1 Notation -- 2.1.2 Likelihood Function -- 2.1.3 Spline-Based Sieve NPMLE -- 2.2 A Nonparametric Association Test -- 3 Implementation -- 4 BivarIntCensored Package and Its Illustration -- 4.1 Main Functions -- 4.2 Example -- 5 Conclusions -- References -- Joint Modeling for Longitudinal and Interval-Censored Survival Data: Application to IMPI Multi-Center HIV/AIDS Clinical Trial -- 1 Introduction -- 2 Data and Methods -- 2.1 Data Structure -- 2.1.1 Survival Data -- 2.1.2 Longitudinal Data -- 2.2 The Joint Model -- 2.2.1 The Shared Parameter Joint Model -- 2.2.2 The Joint Models for Interval-Censored Data -- 3 Data Analysis -- 3.1 Illustration Using the IMPI Trial Data -- 3.2 Survival Data Analysis with Time-Dependent Covariates -- 3.3 Longitudinal Data Analysis: Linear Mixed-Effects Model -- 3.4 Joint Modeling for Longitudinal CD4 Counts and Interval-Censored Survival Data -- 4 Discussions -- References.
Regression Analysis with Interval-Censored Covariates. Application to Liquid Chromatography -- 1 Introduction -- 1.1 Interval-Censored Covariates in Regression Models: State of the Art -- 1.2 Outline -- 2 Motivating Data -- 2.1 Notation -- 2.1.1 Single Compounds -- 2.1.2 Sum of Compounds -- 3 Regression Methods Accounting for Limits of Detection and Quantitation -- 3.1 The GEL Method -- 3.2 Extension to the Generalized Linear Model -- 3.2.1 Regression with the Gamma Distribution -- 3.2.2 Logistic Regression -- 3.3 Comments on the Inclusion of Exact Observations -- 3.4 Residuals for Interval-Censored Covariates -- 3.4.1 Residuals for the Linear Model -- 3.4.2 Extension of GEL Residuals to the Generalized Linear Model -- 3.5 Implementation -- 4 Illustration -- 4.1 Linear Regression Model to Model log(Glucose) -- 4.2 Gamma Regression Model to Model Glucose Levels -- 4.3 Logistic Regression Model for Association with Obesity -- 5 Discussion -- References -- Misclassification Simulation Extrapolation Procedure for Interval-Censored Log-Logistic Accelerated Failure Time Model -- 1 Introduction -- 2 Methodology -- 2.1 Interval-Censored (Type II) Survival Data and Log-Logistic AFT Model with Misclassification Matrix -- 2.2 MC-SIMEX -- 3 Monte-Carlo Simulation Study -- 3.1 Simulation Design -- 3.2 Results of Simulation -- 4 Real Data Analysis -- 5 Discussions -- References -- Index.
Record Nr. UNISA-996499868103316
Cham, Switzerland : , : Springer, , [2022]
Materiale a stampa
Lo trovi qui: Univ. di Salerno
Opac: Controlla la disponibilità qui
Esempi sul campionamento da popolazioni finite / Daniela Cocchi, Marilena Pillati
Esempi sul campionamento da popolazioni finite / Daniela Cocchi, Marilena Pillati
Autore Cocchi, Daniela
Pubbl/distr/stampa Bologna, : CLUEB, \1996!
Descrizione fisica 321 p. ; 25 cm.
Disciplina 519.52
Altri autori (Persone) Pillati, Marilena
Collana Alma materiali, . Didattica
Soggetto topico Campionamento
ISBN 8880913484
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione ita
Record Nr. UNISANNIO-UBO0251452
Cocchi, Daniela  
Bologna, : CLUEB, \1996!
Materiale a stampa
Lo trovi qui: Univ. del Sannio
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Estimation of victimization prevalence using data from the national crime survey / Diane Griffin Saphire
Estimation of victimization prevalence using data from the national crime survey / Diane Griffin Saphire
Autore Saphire, Diane Griffin
Pubbl/distr/stampa Berlin : Springer-Verlag, 1984
Descrizione fisica iv, 165 p. ; 24 cm.
Disciplina 519.52
Collana Lecture notes in statistics ; 23
Soggetto topico Sample surveys
Sampling theory
ISBN 3540960201
Classificazione AMS 62D05
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNISALENTO-991000878549707536
Saphire, Diane Griffin  
Berlin : Springer-Verlag, 1984
Materiale a stampa
Lo trovi qui: Univ. del Salento
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Exact confidence bounds when sampling from small finite universes : an easy reference based on the hypergeometric distribution / Tommy Wright
Exact confidence bounds when sampling from small finite universes : an easy reference based on the hypergeometric distribution / Tommy Wright
Autore Wright, Tommy
Pubbl/distr/stampa Berlin [etc.] : Springer, c1991
Descrizione fisica XVI, 430 p. ; 25 cm.
Disciplina 519.52
Collana Lecture notes in statistics
Soggetto topico Statistica
Probabilità
ISBN 3-540-97515-2
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNIBAS-000016305
Wright, Tommy  
Berlin [etc.] : Springer, c1991
Materiale a stampa
Lo trovi qui: Univ. della Basilicata
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Exponential family nonlinear models / Bo-Cheng Wei
Exponential family nonlinear models / Bo-Cheng Wei
Autore Wei, Bo-Cheng
Pubbl/distr/stampa Singapore [etc.] : Springer, c1998
Descrizione fisica IX, 230 p. ; 24 cm.
Disciplina 519.52
Collana Lecture notes in statistics
Soggetto topico Statistica
ISBN 981-3083-29-8
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNIBAS-000016356
Wei, Bo-Cheng  
Singapore [etc.] : Springer, c1998
Materiale a stampa
Lo trovi qui: Univ. della Basilicata
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Finite population sampling and inference : a prediction approach / Richard Valliant, Alan H. Dorfman, Richard M. Royall
Finite population sampling and inference : a prediction approach / Richard Valliant, Alan H. Dorfman, Richard M. Royall
Autore Valliant, Richard
Pubbl/distr/stampa New York : Wiley, c2000
Disciplina 519.52
Altri autori (Persone) Dorfman, Alan H.
Royall, Richard M.
Collana Wiley series in probability and statistics. Survey methodology section
Soggetto non controllato Campionamento
Pianificazioni di indagini
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNINA-990003829970403321
Valliant, Richard  
New York : Wiley, c2000
Materiale a stampa
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Foundation of inference in survey sampling / Claes Magnus Cassel, Carl Erik Sarndal, Jan Hakan Wretman
Foundation of inference in survey sampling / Claes Magnus Cassel, Carl Erik Sarndal, Jan Hakan Wretman
Autore CASSEL, Claes Magnus
Disciplina 519.52(Teoria del campionamento)
Altri autori (Persone) SARNDAL, Carl Erik
WRETMAN, Jan Hakan
Soggetto topico campionamento statistico
Formato Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione eng
Record Nr. UNISA-990005443730203316
CASSEL, Claes Magnus  
Materiale a stampa
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