Veridical Data Science Veridical Data Science
Adaptive Computation and Machine Learning series

Veridical Data Science

The Practice of Responsible Data Analysis and Decision Making

    • Pre-Order
    • Expected 15 Oct 2024
    • 49,99 €
    • Pre-Order
    • 49,99 €

Publisher Description

Using real-world data case studies, this innovative and accessible textbook introduces an actionable framework for conducting trustworthy data science.

Most textbooks present data science as a linear analytic process involving a set of statistical and computational techniques without accounting for the challenges intrinsic to real-world applications. Veridical Data Science, by contrast, embraces the reality that most projects begin with an ambiguous domain question and messy data; it acknowledges that datasets are mere approximations of reality while analyses are mental constructs. 
Bin Yu and Rebecca Barter employ the innovative Predictability, Computability, and Stability (PCS) framework to assess the trustworthiness and relevance of data-driven results relative to three sources of uncertainty that arise throughout the data science life cycle: the human decisions and judgment calls made during data collection, cleaning, and modeling. By providing real-world data case studies, intuitive explanations of common statistical and machine learning techniques, and supplementary R and Python code, Veridical Data Science offers a clear and actionable guide for conducting responsible data science. Requiring little background knowledge, this lucid, self-contained textbook provides a solid foundation and principled framework for future study of advanced methods in machine learning, statistics, and data science. 

Presents the Predictability, Computability, and Stability (PCS) methodology for producing trustworthy data-driven resultsTeaches how a data science project should be conducted from beginning to end, including extensive discussion of the data scientist's decision-making processCultivates critical thinking throughout the entire data science life cycleProvides practical examples and illuminating case studies of real-world data analysis problems with associated code, exercises, and solutionsSuitable for advanced undergraduate and graduate students, domain scientists, and practitioners

GENRE
Computing & Internet
AVAILABLE
2024
15 October
LANGUAGE
EN
English
LENGTH
526
Pages
PUBLISHER
MIT Press

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Other Books in This Series

Introduction to Machine Learning, fourth edition Introduction to Machine Learning, fourth edition
2020
Deep Learning Deep Learning
2016
Foundations of Machine Learning, second edition Foundations of Machine Learning, second edition
2018
Learning Theory from First Principles Learning Theory from First Principles
2024
Foundations of Computer Vision Foundations of Computer Vision
2024
Fairness and Machine Learning Fairness and Machine Learning
2023