Computational Statistics in Data Science

Computational Statistics in Data Science book cover

Computational Statistics in Data Science

Author(s): Walter W. Piegorsch (Editor), Richard A. Levine (Editor), Hao Helen Zhang (Editor), Thomas C. M. Lee (Editor)

  • Publisher: Wiley
  • Publication Date: 21 April 2022
  • Edition: 1st
  • Language: English
  • Print length: 672 pages
  • ISBN-10: 1119561078
  • ISBN-13: 9781119561071

Book Description

An essential roadmap to the application of computational statistics in contemporary data science

In Computational Statistics in Data Science, a team of distinguished mathematicians and statisticians delivers an expert compilation of concepts, theories, techniques, and practices in computational statistics for readers who seek a single, standalone sourcebook on statistics in contemporary data science. The book contains multiple sections devoted to key, specific areas in computational statistics, offering modern and accessible presentations of up-to-date techniques.

Computational Statistics in Data Science provides complimentary access to finalized entries in the Wiley StatsRef: Statistics Reference Online compendium. Readers will also find:

  • A thorough introduction to computational statistics relevant and accessible to practitioners and researchers in a variety of data-intensive areas
  • Comprehensive explorations of active topics in statistics, including big data, data stream processing, quantitative visualization, and deep learning

Perfect for researchers and scholars working in any field requiring intermediate and advanced computational statistics techniques, Computational Statistics in Data Science will also earn a place in the libraries of scholars researching and developing computational data-scientific technologies and statistical graphics.

Editorial Reviews

Review

Select Guide Rating

From the Back Cover

An essential roadmap to the application of computational statistics in contemporary data science

In Computational Statistics in Data Science, a team of distinguished mathematicians and statisticians delivers an expert compilation of concepts, theories, techniques, and practices in computational statistics for readers who seek a single, standalone sourcebook on statistics in contemporary data science. The book contains multiple sections devoted to key, specific areas in computational statistics, offering modern and accessible presentations of up-to-date techniques. Computational Statistics in Data Science reproduces finalized entries from the Wiley StatsRef: Statistics Reference Online compendium, collected and edited into a valuable standalone collection. Readers will also find:

  • A thorough introduction to computational statistics relevant and accessible to practitioners and researchers in a variety of data-intensive areas
  • Comprehensive explorations of active topics in statistics, including big data, data stream processing, quantitative visualization, and deep learning

Perfect for researchers and scholars working in any field requiring intermediate and advanced computational statistics techniques, Computational Statistics in Data Science will also earn a place in the libraries of scholars researching and developing computational data-scientific technologies and statistical graphics.

View on Amazon

未经允许不得转载:Wow! eBook » Computational Statistics in Data Science