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Core statistics

By: Material type: TextTextSeries: Institute of mathematical statistics textbooksPublication details: New York Cambridge University Press 2015Description: viii, 250 pISBN:
  • 9781107415041
Subject(s): DDC classification:
  • 519.5 W6C6
Summary: Based on a starter course for beginning graduate students, Core Statistics provides concise coverage of the fundamentals of inference for parametric statistical models, including both theory and practical numerical computation. The book considers both frequentist maximum likelihood and Bayesian stochastic simulation while focusing on general methods applicable to a wide range of models and emphasizing the common questions addressed by the two approaches. This compact package serves as a lively introduction to the theory and tools that a beginning graduate student needs in order to make the transition to serious statistical analysis: inference; modeling; computation, including some numerics; and the R language. Aimed also at any quantitative scientist who uses statistical methods, this book will deepen readers' understanding of why and when methods work and explain how to develop suitable methods for non-standard situations, such as in ecology, big data and genomics. Contains over 50 exercises Offers a concise treatment of the core methods of Bayesian and frequentist statistics Presents both theory and computation
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Holdings
Item type Current library Collection Call number Status Date due Barcode Item holds
Book Book Nagpur On Display Non-fiction 519.5 W6C6 (Browse shelf(Opens below)) Available IIMN-002140
Total holds: 0

Table of Contents 1. Random variables 2. R 3. Statistical models and inference 4. Theory of maximum likelihood estimation 5. Numerical maximum likelihood estimation 6. Bayesian computation 7. Linear models.

Based on a starter course for beginning graduate students, Core Statistics provides concise coverage of the fundamentals of inference for parametric statistical models, including both theory and practical numerical computation. The book considers both frequentist maximum likelihood and Bayesian stochastic simulation while focusing on general methods applicable to a wide range of models and emphasizing the common questions addressed by the two approaches. This compact package serves as a lively introduction to the theory and tools that a beginning graduate student needs in order to make the transition to serious statistical analysis: inference; modeling; computation, including some numerics; and the R language. Aimed also at any quantitative scientist who uses statistical methods, this book will deepen readers' understanding of why and when methods work and explain how to develop suitable methods for non-standard situations, such as in ecology, big data and genomics. Contains over 50 exercises Offers a concise treatment of the core methods of Bayesian and frequentist statistics Presents both theory and computation

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