Mining imperfect data : with examples in R and Python

Bibliographic Information

Mining imperfect data : with examples in R and Python

Ronald K. Pearson, GeoVera Holdings, Inc., Fairfield, California

Society for Industrial and Applied Mathematics, c2020

2d ed.

  • pbk.

Available at  / 1 libraries

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Note

Includes bibliographical and index

Description and Table of Contents

Description

It has been estimated that as much as 80% of the total effort in a typical data analysis project is taken up with data preparation, including reconciling and merging data from different sources, identifying and interpreting various data anomalies, and selecting and implementing appropriate treatment strategies for the anomalies that are found. This book focuses on the identification and treatment of data anomalies, including examples that highlight different types of anomalies, their potential consequences if left undetected and untreated, and options for dealing with them. As both data sources and free, open-source data analysis software environments proliferate, more people and organizations are motivated to extract useful insights and information from data of many different kinds (e.g., numerical, categorical, and text). The book emphasizes the range of open-source tools available for identifying and treating data anomalies, mostly in R but also with several examples in Python. Mining Imperfect Data: With Examples in R and Python, Second Edition presents a unified coverage of 10 different types of data anomalies (outliers, missing data, inliers, metadata errors, misalignment errors, thin levels in categorical variables, noninformative variables, duplicated records, coarsening of numerical data, and target leakage); includes an in-depth treatment of time-series outliers and simple nonlinear digital filtering strategies for dealing with them; and provides a detailed introduction to several useful mathematical characteristics of important data characterizations that do not appear to be widely known among practitioners, such as functional equations and key inequalities.

by "Nielsen BookData"

Details

  • NCID
    BC04314337
  • ISBN
    • 9781611976267
  • LCCN
    2020022249
  • Country Code
    us
  • Title Language Code
    eng
  • Text Language Code
    eng
  • Place of Publication
    Philadelphia
  • Pages/Volumes
    ix, 481 p.
  • Size
    26 cm
  • Classification
  • Subject Headings
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