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Fundamentals of mathematical statistics

By: Series: Chapman and Hall/CRC texts in statistical sciencePublication details: CRC Press 2023 Boca RatonDescription: 244 pISBN:
  • 9781032223827
Subject(s): DDC classification:
  • 519.5 LAU
Summary: This book is meant for a standard one-semester advanced undergraduate or graduate-level course in Mathematical Statistics. It covers all the key topics--statistical models, linear normal models, exponential families, estimation, asymptotics of maximum likelihood, significance testing, and models for tables of counts. It assumes a good background in mathematical analysis, linear algebra, and probability but includes an appendix with basic results from these areas. Throughout the text, there are numerous examples and graduated exercises that illustrate the topics covered, rendering the book suitable for teaching or self-study. Features A concise yet rigorous introduction to a one-semester course in Mathematical Statistics Covers all the key topics Assumes a solid background in Mathematics and Probability Numerous examples illustrate the topics Many exercises enhance understanding of the material and enable course use This textbook will be a perfect fit for an advanced course in Mathematical Statistics or Statistical Theory.
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Item type Current library Collection Call number Status Date due Barcode Item holds
Book Book Jammu General Stacks Non-fiction 519.5 LAU (Browse shelf(Opens below)) Available IIMJ-8125
Total holds: 0

1. Statistical Models. 2. Linear Normal Models 3. Exponential Families 4. Estimation 5. Asymptotic Theory 6. Set Estimation 7. Significance Testing 8. Models for Tables of Counts

This book is meant for a standard one-semester advanced undergraduate or graduate-level course in Mathematical Statistics. It covers all the key topics--statistical models, linear normal models, exponential families, estimation, asymptotics of maximum likelihood, significance testing, and models for tables of counts. It assumes a good background in mathematical analysis, linear algebra, and probability but includes an appendix with basic results from these areas. Throughout the text, there are numerous examples and graduated exercises that illustrate the topics covered, rendering the book suitable for teaching or self-study. Features A concise yet rigorous introduction to a one-semester course in Mathematical Statistics Covers all the key topics Assumes a solid background in Mathematics and Probability Numerous examples illustrate the topics Many exercises enhance understanding of the material and enable course use This textbook will be a perfect fit for an advanced course in Mathematical Statistics or Statistical Theory.

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