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Book Cover
E-book
Author Jacobucci, Ross, author.

Title Machine learning for social and behavioral research / Ross Jacobucci, Kevin J. Grimm, Zhiyong Zhang
Published New York, NY : The Guilford Press, [2023]

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Description 1 online resource (xvi, 408 pages )
Series Methodology in the social sciences
Methodology in the social sciences
Contents Part I. Fundamental Concepts -- 1. Introduction -- 1.1 Why the Term Machine Learning? -- 1.1.1 Why Not Just Call It Statistics? -- 1.2 Why Do We Need Machine Learning? -- 1.2.1 Machine Learning Thesis -- 1.3 How Is This Book Different? -- 1.3.1 Prerequisites for the Book -- 1.4 Definitions -- 1.4.1 Model vs. Algorithm -- 1.4.2 Prediction -- 1.5 Software -- 1.6 Datasets -- 1.6.1 Grit -- 1.6.2 National Survey on Drug Use and Health from 2014
1.6.3 Early Childhood Learning Study-Kindergarten Cohort -- 1.6.4 Big Five Inventory -- 1.6.5 Holzinger-Swineford -- 1.6.6 PHE Exposure -- 1.6.7 Professor Ratings -- 2. The Principles of Machine Learning Research -- 2.1 Key Terminology -- 2.2 Overview -- 2.3 Principle #1: Machine Learning Is Not Just Lazy Induction -- 2.3.1 Complexity -- 2.3.2 Abduction -- 2.4 Principle #2: Orienting Our Goals Relative to Prediction, Explanation, and Description -- 2.5 Principle #3: Labeling a Study as Exploratory or Confirmatory Is Too Simplistic -- 2.5.1 Model Size -- 2.5.2 Level of Hypothesis -- 2.5.3 Example
2.5.4 Types of Relationships -- 2.5.5 Exploratory Data Analysis -- 2.6 Principle #4: Report Everything -- 2.7 Summary -- 2.7.1 Further Reading -- 3. The Practices of Machine Learning -- 3.1 Key Terminology -- 3.2 Comparing Algorithms and Models -- 3.3 Model Fit -- 3.3.1 Regression -- 3.4 Bias-Variance Trade-Off -- 3.5 Resampling -- 3.5.1 k-Fold CV -- 3.5.2 Nested CV -- 3.5.3 Bootstrap Sampling -- 3.5.4 Recommendations -- 3.6 Classification -- 3.6.1 Receiver Operating Characteristic (ROC) Curves -- 3.7 Imbalanced Outcomes -- 3.7.1 Sampling -- 3.8 Conclusion -- 3.8.1 Further Reading
3.8.2 Computational Time and Resources -- Part II. Algorithms for Univariate Outcomes -- 4. Regularized Regression -- 4.1 Key Terminology -- 4.2 Linear Regression -- 4.3 Logistic Regression -- 4.3.1 Motivating Example -- 4.3.2 The Logistic Model -- 4.4 Regularization -- 4.4.1 Regularization Formulation -- 4.4.2 Choosing a Final Model -- 4.4.3 Rationale for Regularization -- 4.4.4 Bias and Variance -- 4.5 Alternative Forms of Regularization -- 4.5.1 Lasso P-Values -- 4.5.2 Stability of Selection -- 4.5.3 Interactions -- 4.5.4 Group Regularization -- 4.6 Bayesian Regression -- 4.7 Summary
4.7.1 Further Reading -- 4.7.2 Computational Time and Resources -- 5. Decision Trees -- 5.1 Key Terminology -- 5.2 Introduction -- 5.2.1 Example 1 -- 5.3 Describing the Tree -- 5.3.1 Example 2 -- 5.4 Decision Tree Algorithms -- 5.4.1 CART -- 5.4.2 Pruning -- 5.4.3 Conditional Inference Trees -- 5.5 Miscellaneous Topics -- 5.5.1 Interactions -- 5.5.2 Pathways -- 5.5.3 Stability -- 5.5.4 Missing Data -- 5.5.5 Variable Importance -- 5.6 Summary -- 5.6.1 Further Reading -- 5.6.2 Computational Time and Resources -- 6. Ensembles -- 6.1 Key Terminology -- 6.2 Bagging -- 6.3 Random Forests -- 6.4 Gradient Boosting
Summary "Over the past 20 years, there has been an incredible change in the size, structure, and types of data collected in the social and behavioral sciences. Thus, social and behavioral researchers have increasingly been asking the question: "What do I do with all of this data?" The goal of this book is to help answer that question. It is our viewpoint that in social and behavioral research, to answer the question "What do I do with all of this data?", one needs to know the latest advances in the algorithms and think deeply about the interplay of statistical algorithms, data, and theory. An important distinction between this book and most other books in the area of machine learning is our focus on theory"-- Provided by publisher
Notes Description based upon print version of record
Bibliography Includes bibliographical references and indexes
Subject Social sciences -- Research -- Data processing
Machine learning.
Machine learning.
Social sciences -- Research -- Data processing.
Form Electronic book
Author Grimm, Kevin J., author
Zhang, Zhiyong, author
ISBN 1462552951
9781462552955