An Introduction to Panel Data QCA in R

An Introduction to Panel Data QCA in R by Preya Bhattacharya, published by CRC Press, Taylor & Francis Group in 2024, offers a comprehensive exploration of Qualitative Comparative Analysis (QCA) as a significant research method in social science. This 164-page book provides an overview of QCA and its application to both cross-sectional and panel data, detailing the development of various QCA models that researchers can utilize.
Readers will find a thorough comparison of four distinct panel data QCA models: Cluster QCA, Multiple Sub-QCA, Remote-Proximate Panel, and Relevant Variation Panel. The book outlines the assumptions and steps involved in the QCA research process, presenting a step-by-step guide for each model. Additionally, it discusses the strengths and weaknesses of these models, offering practical scenarios for their application. Supplementary materials, including datasets and codes, are provided at the end of each chapter and are also accessible online, making this book suitable for both introductory and advanced courses on panel data QCA.
Official synopsis Publisher
In the last few years, Qualitative Comparative Analysis (QCA) has become one of the most important research approaches in social science. This has encouraged researchers to apply QCA, to analyze cross-sectional and panel data, leading to the development of a variety of cross-sectional and panel data QCA models.
This book compares four different panel data QCA models: Cluster QCA, Multiple Sub-QCA, Remote-Proximate Panel, and Relevant Variation Panel. It starts by introducing QCA as a research approach, then discusses the assumptions, and steps in a QCA research process. It then applies these assumptions and steps to demonstrate each of the 4 afore-mentioned panel data QCA models. Each chapter also provides a step-by-step guide, that researchers can follow while building any of these 4 panel data QCA models. Finally, it compares the strengths and weaknesses of each of these models and suggests scenarios where researchers can apply them. This book is supplemented by materials like datasets and codes, available at the end of each chapter, and online on Harvard Dataverse. This book can be used as a textbook for introductory and advanced courses on panel data QCA.
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