Model to Meaning
How to Interpret Statistical Models with R and Python
Seiten
2025
Chapman & Hall/CRC (Verlag)
978-1-032-90872-4 (ISBN)
Chapman & Hall/CRC (Verlag)
978-1-032-90872-4 (ISBN)
Proposes a consistent workflow that can be applied to (almost) any statistical or machine learning model. Readers will learn how to transform complex parameter estimates into quantities that are readily interpretable, intuitive, and understandable.
Our world is complex. To make sense of it, data analysts routinely fit sophisticated statistical or machine learning models. Interpreting the results produced by such models can be challenging, and researchers often struggle to communicate their findings to colleagues and stakeholders. Model to Meaning is a book designed to bridge that gap. It is a practical guide for anyone who needs to translate model outputs into accurate insights that are accessible to a wide audience.
Features:
Presents a simple and powerful conceptual framework to interpret the results from a wide variety of statistical or machine learning models.
Features in-depth case studies covering topics such as causal inference, experiments, interactions, categorical variables, multilevel regression, weighting, and machine learning.
Includes extensive practical examples in both R and Python using the marginal effects software.
Accompanied by comprehensive online documentation, tutorials, and bonus case studies.
Model to Meaning introduces a simple and powerful conceptual framework to help analysts describe the statistical quantities that can shed light on their research questions, estimate those quantities, and communicate the results clearly and rigorously. Based on this framework, the book proposes a consistent workflow that can be applied to (almost) any statistical or machine learning model. Readers will learn how to transform complex parameter estimates into quantities that are readily interpretable, intuitive, and understandable.
Written for data scientists, researchers, and students, the book speaks to newcomers seeking practical skills, and to experienced analysts who are ready to adopt new tools and rethink entrenched habits. It offers useful ideas, concrete workflows, powerful software, and detailed case studies, presented using real-world data and code examples.
Our world is complex. To make sense of it, data analysts routinely fit sophisticated statistical or machine learning models. Interpreting the results produced by such models can be challenging, and researchers often struggle to communicate their findings to colleagues and stakeholders. Model to Meaning is a book designed to bridge that gap. It is a practical guide for anyone who needs to translate model outputs into accurate insights that are accessible to a wide audience.
Features:
Presents a simple and powerful conceptual framework to interpret the results from a wide variety of statistical or machine learning models.
Features in-depth case studies covering topics such as causal inference, experiments, interactions, categorical variables, multilevel regression, weighting, and machine learning.
Includes extensive practical examples in both R and Python using the marginal effects software.
Accompanied by comprehensive online documentation, tutorials, and bonus case studies.
Model to Meaning introduces a simple and powerful conceptual framework to help analysts describe the statistical quantities that can shed light on their research questions, estimate those quantities, and communicate the results clearly and rigorously. Based on this framework, the book proposes a consistent workflow that can be applied to (almost) any statistical or machine learning model. Readers will learn how to transform complex parameter estimates into quantities that are readily interpretable, intuitive, and understandable.
Written for data scientists, researchers, and students, the book speaks to newcomers seeking practical skills, and to experienced analysts who are ready to adopt new tools and rethink entrenched habits. It offers useful ideas, concrete workflows, powerful software, and detailed case studies, presented using real-world data and code examples.
Vincent Arel-Bundock is Professor at the Université de Montréal, where he teaches political economy and research methods. His research focuses on making the interpretation of statistical models more rigorous and accessible. Vincent is the creator of the widely-used marginaleffects software package, available for both R and Python.
1 Who is this book for? 2 Models and meaning 3 Conceptual frameword 4 Hypothesis and equivalence tests 5 Predictions 6 Counterfactual comparisons 7 Slopes 8 Causal inference with G-computation 9 Experiments 10 Interactions and polynomials 11 Categorical and ordinal outcomes 12 Multilevel regression with poststratification 13 Machine learning 14 Uncertainty 15 Online content 16 Python
| Erscheinungsdatum | 04.10.2025 |
|---|---|
| Zusatzinfo | 5 Tables, black and white; 30 Line drawings, black and white; 30 Illustrations, black and white |
| Sprache | englisch |
| Maße | 156 x 234 mm |
| Gewicht | 480 g |
| Themenwelt | Geisteswissenschaften ► Psychologie |
| Mathematik / Informatik ► Mathematik | |
| ISBN-10 | 1-032-90872-6 / 1032908726 |
| ISBN-13 | 978-1-032-90872-4 / 9781032908724 |
| Zustand | Neuware |
| Informationen gemäß Produktsicherheitsverordnung (GPSR) | |
| Haben Sie eine Frage zum Produkt? |
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