Statistics, data mining, and machine learning in astronomy : a practical Python guide for the analysis of survey data
Author(s)
Bibliographic Information
Statistics, data mining, and machine learning in astronomy : a practical Python guide for the analysis of survey data
(Princeton series in modern observational astronomy)
Princeton University Press, c2020
Updated ed
Available at 15 libraries
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  Iwate
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Library, Research Institute for Mathematical Sciences, Kyoto University数研
IVE||6||1200040099236
Note
Other editors: Andrew J. Connolly, Jacob T. VanderPlas, Alexander Gray
Includes bibliographical references and index
Description and Table of Contents
Description
Statistics, Data Mining, and Machine Learning in Astronomy is the essential introduction to the statistical methods needed to analyze complex data sets from astronomical surveys such as the Panoramic Survey Telescope and Rapid Response System, the Dark Energy Survey, and the Large Synoptic Survey Telescope. Now fully updated, it presents a wealth of practical analysis problems, evaluates the techniques for solving them, and explains how to use various approaches for different types and sizes of data sets. Python code and sample data sets are provided for all applications described in the book. The supporting data sets have been carefully selected from contemporary astronomical surveys and are easy to download and use. The accompanying Python code is publicly available, well documented, and follows uniform coding standards. Together, the data sets and code enable readers to reproduce all the figures and examples, engage with the different methods, and adapt them to their own fields of interest.
An accessible textbook for students and an indispensable reference for researchers, this updated edition features new sections on deep learning methods, hierarchical Bayes modeling, and approximate Bayesian computation. The chapters have been revised throughout and the astroML code has been brought completely up to date.
Fully revised and expanded
Describes the most useful statistical and data-mining methods for extracting knowledge from huge and complex astronomical data sets
Features real-world data sets from astronomical surveys
Uses a freely available Python codebase throughout
Ideal for graduate students, advanced undergraduates, and working astronomers
by "Nielsen BookData"