Categorical Data Analysis with Structural Equation Models: Applications in Mplus and Lavaan
暫譯: 結構方程模型的類別資料分析:Mplus與Lavaan的應用

Grimm, Kevin J.

  • 出版商: The Guilford Press
  • 出版日期: 2025-10-10
  • 售價: $3,190
  • 貴賓價: 9.8$3,126
  • 語言: 英文
  • 頁數: 368
  • 裝訂: Hardcover - also called cloth, retail trade, or trade
  • ISBN: 1462558313
  • ISBN-13: 9781462558315
  • 相關分類: R 語言
  • 海外代購書籍(需單獨結帳)

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商品描述

Multivariate categorical outcomes, such as Likert scale responses and disease diagnoses, require specialized structural equation modeling (SEM) software to be analyzed properly. Providing needed skills for applied researchers and graduate students, this book leads readers from regression analysis with categorical outcomes to complex SEMs with latent variables for categorical indicators. The initial section sets the stage by demonstrating regression analyses for binary, ordered, or count outcomes using R. Chapters then reanalyze the same data using Mplus and R lavaan to show how univariate models for categorical outcomes can be estimated and interpreted with SEM programs. Subsequently, the book turns to multivariate models, discussing path models, confirmatory factor models, and latent variable path models with categorical outcomes. Concluding chapters cover advanced SEM with categorical outcomes, including growth models, latent class models, and survival models. Worked-through examples are featured throughout. The companion website provides R (including lavaan), Mplus, and SAS code, as applicable, for the examples.

商品描述(中文翻譯)

多變量類別結果,例如李克特量表的回應和疾病診斷,需要專門的結構方程模型(SEM)軟體來進行正確的分析。本書為應用研究者和研究生提供所需的技能,帶領讀者從具有類別結果的迴歸分析進入具有潛在變數的複雜SEM。初始部分通過使用R展示二元、有序或計數結果的迴歸分析來奠定基礎。接下來的章節使用Mplus和R的lavaan重新分析相同的數據,以展示如何使用SEM程式估計和解釋類別結果的單變量模型。隨後,本書轉向多變量模型,討論路徑模型、驗證性因素模型和具有類別結果的潛在變數路徑模型。結尾章節涵蓋了具有類別結果的高級SEM,包括成長模型、潛在類別模型和生存模型。全書中都有詳細的範例。伴隨的網站提供了R(包括lavaan)、Mplus和SAS的程式碼,以供範例使用。

作者簡介

Kevin J. Grimm, PhD, is Professor of Psychology at Arizona State University. His research interests include multivariate methods for the analysis of change, multiple group and latent class models for understanding divergent developmental processes, categorical data analysis, machine learning techniques for psychological data, and cognitive/achievement development. Dr. Grimm teaches graduate quantitative courses, including Longitudinal Growth Modeling, Machine Learning in Psychology, Structural Equation Modeling, Advanced Categorical Data Analysis, and Intermediate Statistics. He has also taught workshops sponsored by the American Psychological Association's Advanced Training Institute, Statistical Horizons, Instats, Stats Camp, and various departments and schools across the country.

作者簡介(中文翻譯)

凱文·J·格里姆(Kevin J. Grimm)博士是亞利桑那州立大學的心理學教授。他的研究興趣包括變量分析的多變量方法、用於理解不同發展過程的多組和潛在類別模型、類別數據分析、心理數據的機器學習技術,以及認知/成就發展。格里姆博士教授研究生的定量課程,包括縱向成長模型、心理學中的機器學習、結構方程模型、高級類別數據分析和中級統計學。他還曾教授由美國心理學會的高級培訓學院、Statistical Horizons、Instats、Stats Camp以及全國各地的不同部門和學校贊助的工作坊。