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▼2 23
▼a Rossi, Peter E.
▼q (Peter Eric),
▼d 1955-,
▼e author.
▼a Bayesian non- and semi-parametric methods and applications /:
▼c Peter E. Rossi.
▼a Princeton:
▼b Princeton University Press,
▼c [2014],
▼c 짤2014.
▼a 1 online resource (xiii, 202 pages):
▼b illustrations.
▼a text
▼b txt
▼2 rdacontent
▼a computer
▼b c
▼2 rdamedia
▼a online resource
▼b cr
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▼a The econometric and tinbergen institutes lectures
▼a Includes bibliographical references (pages 195-200) and index.
▼a 1.1. Finite Mixture of Normals Likelihood Function -- 1.2. Maximum Likelihood Estimation -- 1.3. Bayesian Inference for the Mixture of Normals Model -- 1.4. Priors and the Bayesian Model -- 1.5. Unconstrained Gibbs Sampler -- 1.6. Label-Switching -- 1.7. Examples -- 1.8. Clustering Observations -- 1.9. Marginalized Samplers -- \
▼a 2.1. Dirichlet Processes-A Construction -- 2.2. Finite and Infinite Mixture Models -- 2.3. Stick-Breaking Representation -- 2.4. Polya Urn Representation and Associated Gibbs Sampler -- 2.5. Priors on DP Parameters and Hyper-parameters -- 2.6. Gibbs Sampler for DP Models and Density Estimation -- 2.7. Scaling the Data -- 2.8. Density Estimation Examples.
▼a 3.1. Joint vs. Conditional Density Approaches -- 3.2. Implementing the Joint Approach with Mixtures of Normals -- 3.3. Examples of Non-parametric Regression Using Joint Approach -- 3.4. Discrete Dependent Variables -- 3.5. An Example of Expenditure Function Estimation.
▼a 4.1. Semi-parametric Regression with DP Priors -- 4.2. Semi-parametric IV Models.
▼a 5.1. Introduction -- 5.2. Semi-parametric Random Coefficient Logit Models -- 5.3. An Empirical Example of a Semi-parametric Random Coefficient Logit Model.
▼a 6.1. When Are Non-parametric and Semi-parametric Methods Most Useful? -- 6.2. Semi-parametric or Non-parametric Methods? -- 6.3. Extensions.
▼a This book reviews and develops Bayesian non-parametric and semi-parametric methods for applications in microeconometrics and quantitative marketing. Most econometric models used in microeconomics and marketing applications involve arbitrary distributional assumptions. As more data becomes available, a natural desire to provide methods that relax these assumptions arises. Peter Rossi advocates a Bayesian approach in which specific distributional assumptions are replaced with more flexible distributions based on mixtures of normals. The Bayesian approach can use either a large but fixed number.
▼a Print version record.
▼a eBooks on EBSCOhost
▼b All EBSCO eBooks
▼a Econometrics.
▼a Bayesian statistical decision theory.
▼a Economics, Mathematical.
▼a BUSINESS & ECONOMICS
▼x Economics
▼x General.
▼2 bisacsh
▼a BUSINESS & ECONOMICS
▼x Reference.
▼2 bisacsh
▼a Bayesian statistical decision theory.
▼2 fast
▼0 (OCoLC)fst00829019
▼a Econometrics.
▼2 fast
▼0 (OCoLC)fst00901574
▼a Economics, Mathematical.
▼2 fast
▼0 (OCoLC)fst00902260
▼a Electronic books.
▼i Print version:
▼a Rossi, Peter E. (Peter Eric), 1955-
▼t Bayesian non- and semi-parametric methods and applications,
▼z 9780691145327
▼w (DLC) 2013038609
▼w (OCoLC)859168674
▼a Econometric and Tinbergen Institutes lectures.
▼u http://search.ebscohost.com/login.aspx?direct=true&scope=site&db=nlebk&AN=681619
▼a Coutts Information Services
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| 자료유형 : | eBook |
|---|---|
| ISBN : | 9781400850303 |
| ISBN : | 1400850304 |
| ISBN : | |
| ISBN : | |
| ISBN : | |
| ISBN : | |
| 개인저자 : | Rossi, Peter E. (Peter Eric), 1955-, author. |
| 서명/저자사항 : | Bayesian non- and semi-parametric methods and applications /: Peter E. Rossi. |
| 발행사항 : | Princeton: Princeton University Press, [2014], 짤2014. |
| 형태사항 : | 1 online resource (xiii, 202 pages): illustrations. |
| 총서사항 : | The econometric and tinbergen institutes lectures |
| 서지주기 : | Includes bibliographical references (pages 195-200) and index. |
| 내용주기 : | 1.1. Finite Mixture of Normals Likelihood Function -- 1.2. Maximum Likelihood Estimation -- 1.3. Bayesian Inference for the Mixture of Normals Model -- 1.4. Priors and the Bayesian Model -- 1.5. Unconstrained Gibbs Sampler -- 1.6. Label-Switching -- 1.7. Examples -- 1.8. Clustering Observations -- 1.9. Marginalized Samplers -- \ |
| 내용주기 : | 2.1. Dirichlet Processes-A Construction -- 2.2. Finite and Infinite Mixture Models -- 2.3. Stick-Breaking Representation -- 2.4. Polya Urn Representation and Associated Gibbs Sampler -- 2.5. Priors on DP Parameters and Hyper-parameters -- 2.6. Gibbs Sampler for DP Models and Density Estimation -- 2.7. Scaling the Data -- 2.8. Density Estimation Examples. |
| 내용주기 : | 3.1. Joint vs. Conditional Density Approaches -- 3.2. Implementing the Joint Approach with Mixtures of Normals -- 3.3. Examples of Non-parametric Regression Using Joint Approach -- 3.4. Discrete Dependent Variables -- 3.5. An Example of Expenditure Function Estimation. |
| 내용주기 : | 4.1. Semi-parametric Regression with DP Priors -- 4.2. Semi-parametric IV Models. |
| 내용주기 : | 5.1. Introduction -- 5.2. Semi-parametric Random Coefficient Logit Models -- 5.3. An Empirical Example of a Semi-parametric Random Coefficient Logit Model. |
| 내용주기 : | 6.1. When Are Non-parametric and Semi-parametric Methods Most Useful? -- 6.2. Semi-parametric or Non-parametric Methods? -- 6.3. Extensions. |
| 요약 : | This book reviews and develops Bayesian non-parametric and semi-parametric methods for applications in microeconometrics and quantitative marketing. Most econometric models used in microeconomics and marketing applications involve arbitrary distributional assumptions. As more data becomes available, a natural desire to provide methods that relax these assumptions arises. Peter Rossi advocates a Bayesian approach in which specific distributional assumptions are replaced with more flexible distributions based on mixtures of normals. The Bayesian approach can use either a large but fixed number. |
| 일반주제명 : | Econometrics. -- |
| 일반주제명 : | Bayesian statistical decision theory. -- |
| 일반주제명 : | Economics, Mathematical. -- |
| 일반주제명 : | BUSINESS & ECONOMICS -- Economics -- General. -- |
| 일반주제명 : | BUSINESS & ECONOMICS -- Reference. -- |
| 일반주제명 : | Bayesian statistical decision theory. -- |
| 일반주제명 : | Econometrics. -- |
| 일반주제명 : | Economics, Mathematical. -- |
| 기타형태 저록 : | Print version: Rossi, Peter E. (Peter Eric), 1955- Bayesian non- and semi-parametric methods and applications, 9780691145327 |
| 언어 | 영어 |
| URL : |
|---|
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