Most data involving organizations are hierarchical in nature and often contain variables measured at multiple levels of analysis. Hierarchical linear modeling (HLM) is a relatively new and innovative statistical method that organizational scientists have used to alleviate some common problems associated with multilevel data, thus advancing our understanding of organizations. This article presents a broad overview of HLM’s logic through an empirical analysis and outlines how its use can strengthen sport management research. For illustration purposes, we use both HLM and the traditional linear regression model to analyze how organizational and individual factors in Major League Baseball impact individual players’ salaries. A key implication i...
Organizations are hierarchical in nature. Individuals are subject to various group influences; and t...
Increasingly, researchers are faced with nested and cross‐level data. For example, students are clus...
Researchers in education and many other fields (e.g., psychology, sociology) are frequently confront...
Most data involving organizations are hierarchical in nature and often contain variables measured at...
In social research work, the structure of the data are often hierarchical. Hierarchical linear model...
This paper employs a hierarchical linear model (HLM) to assess the importance of both player- and te...
Top management support has long been conceivable as an important factor for the success of IS projec...
A cross-level interaction is said to occur when the effects of client or employee characteristics in...
This tutorial aims to introduce Hierarchical Linear Modeling (HLM). A simple explanation of HLM is p...
Information Systems researchers are often concerned with empirical questions spanning more than one ...
Whenever research is concerned with the analysis of relationships between lowerlevel units (e.g., in...
Organizational researchers, including those carrying out occupational stress research, often conduct...
This paper presents results from a comparison of the multiple regression (MR) approach to examining ...
Abstract Previous publications on hierarchical linear modeling (HLM) have provided guidance on how ...
Empirical analyses of hierarchical data are important in various disciplines, but are most common to...
Organizations are hierarchical in nature. Individuals are subject to various group influences; and t...
Increasingly, researchers are faced with nested and cross‐level data. For example, students are clus...
Researchers in education and many other fields (e.g., psychology, sociology) are frequently confront...
Most data involving organizations are hierarchical in nature and often contain variables measured at...
In social research work, the structure of the data are often hierarchical. Hierarchical linear model...
This paper employs a hierarchical linear model (HLM) to assess the importance of both player- and te...
Top management support has long been conceivable as an important factor for the success of IS projec...
A cross-level interaction is said to occur when the effects of client or employee characteristics in...
This tutorial aims to introduce Hierarchical Linear Modeling (HLM). A simple explanation of HLM is p...
Information Systems researchers are often concerned with empirical questions spanning more than one ...
Whenever research is concerned with the analysis of relationships between lowerlevel units (e.g., in...
Organizational researchers, including those carrying out occupational stress research, often conduct...
This paper presents results from a comparison of the multiple regression (MR) approach to examining ...
Abstract Previous publications on hierarchical linear modeling (HLM) have provided guidance on how ...
Empirical analyses of hierarchical data are important in various disciplines, but are most common to...
Organizations are hierarchical in nature. Individuals are subject to various group influences; and t...
Increasingly, researchers are faced with nested and cross‐level data. For example, students are clus...
Researchers in education and many other fields (e.g., psychology, sociology) are frequently confront...