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Applied Machine Learning for Data Science Practitioners [Kõva köide]

  • Formaat: Hardback, 656 pages, kõrgus x laius x paksus: 259x185x41 mm, kaal: 1089 g
  • Ilmumisaeg: 27-Mar-2025
  • Kirjastus: John Wiley & Sons Inc
  • ISBN-10: 1394155379
  • ISBN-13: 9781394155378
Teised raamatud teemal:
  • Formaat: Hardback, 656 pages, kõrgus x laius x paksus: 259x185x41 mm, kaal: 1089 g
  • Ilmumisaeg: 27-Mar-2025
  • Kirjastus: John Wiley & Sons Inc
  • ISBN-10: 1394155379
  • ISBN-13: 9781394155378
Teised raamatud teemal:

Single volume reference on using various aspects of data science to evaluate, understand, and solve business problems

A reference book for anyone in the field of data science, Applied Machine Learning for Data Science Practitioners walks readers through the end-to-end process of solving any machine learning problem by identifying, choosing, and applying the right solution for the issue at hand. The text enables readers to figure out optimal validation techniques based on the use case and data orientation, choose a range of pertinent models from different types of learning, and score models to apply metrics across all the estimators evaluated.

Unlike most books on data science in today's market that jump right into algorithms and coding and focus on the most-used algorithms, this text helps data scientists evaluate all pertinent techniques and algorithms to assess all these machine learning problems and suitable solutions. Readers can make an informed decision on which models and validation techniques to use based on the business problem, data availability, desired outcome, and more.

Written by an internationally recognized author in the field of data science, Applied Machine Learning for Data Science Practitioners also covers topics such as:

  • Data preparation, including basic data cleaning, integration, transformation, and compression methods, along with data visualization and exploratory analyses
  • Cross-validation in model validation techniques, including independent, identically distributed, imbalanced, blocked, and grouped data
  • Prediction using regression models and classification using classification models, with applicable performance measurements for each
  • Types of clustering in clustering models based on partition, hierarchy, fuzzy theory, distribution, density, and graph theory
  • Detecting anomalies, including types of anomalies and key terms like noise, rare events, and outliers

Applied Machine Learning for Data Science Practitioners is an essential resource for all data scientists and business professionals to cross-validate a range of different algorithms to find an optimal solution. Readers are assumed to have a basic understanding of solving business problems using data, high school level math, statistics, and coding skills.

About the Author xix

How do I Use this Book? xxi

Foreword xxv

Preface xxvi

Acknowledgments xxvii

About the Companion Website xxix

Section 1: Introduction to Machine Learning and Data Science

1 Data Science Overview 3

Section 2: Data Preparation and Feature Engineering

2 Data Preparation 31

3 Data Extraction 39

4 Machine Learning Problem Framing 57

5 Data Comprehension 75

6 Data Quality Engineering 135

7 Feature Optimization 173

8 Feature Set Finalization 183

Section 3: Build, Train, or Estimate the ML Model

9 Regression 211

10 Classification 279

11 Ranking 333

12 Clustering 357

13 Patterns 381

14 Time Series 401

15 Anomaly Detection 457

Section 4: Model Performance Optimization

16 Model Optimization & Model Selection 483

17 Decision Tree 507

18 Ensemble Methods 533

Section 5: ML Ethics

19 ML Ethics 569

Section 6: Productionalize the Machine Learning Model

20 Deploy and Monitor Models 599

Index 615
Vidya Subramanian is a passionate Data Science and Analytics leader, with experience leading teams at Google, Apple, and Intuit. Forbes recognized her as one of the "8 Female Analytics Experts From The Fortune 500." She authored Adobe Analytics with SiteCatalyst (Adobe Press) and McGraw-Hill's PMP Certification Mathematics (McGraw Hill). Vidya holds Master's degrees from Virginia Tech and Somaiya Institute of Management (India) and currently leads Data Science and Analytics for Google Play.