Abstract
Data analysis is highly critical for a value added research output but very tricky to handle by the researchers. Each statistical technique in research methodology has its own nuts and bolts that the researcher has to take care of. The purpose of present study is to present the most important aspects, issues and procedures to examine the characteristics of data and relationships of interest prior to Structural Equation Modeling technique. Through literature review the authors have noted some main issues and procedures in examination of data prior to a SEM analysis. Major issues discussed in the paper are model complexity, sample size, nature of data, and measurement model fit. An example in the field of Management Development (MD) is also presented to explain the procedure of data analysis in SEM. Findings of the research revealed that by devoting considerable time and effort on examining and exploring the nature of data and the relationships among variables, before the application of this technique, can help researchers in resolving procedural issues that eventually lead to better prediction and reliability of results. The present study contributes to literature on SEM by providing a more holistic view of data examination before SEM analysis and practical guidance for researchers to use SEM more effectively.

Ghulam Dastgeer, Atiq ur Rehman, Wali Rahman. (2012) Examining Data and Measurement Model Specification in SEM: An Illustration from Management Development, , Volume-04, Issue-1.
  • Views 274
  • Downloads

Article Details

Volume
Issue
Type
Language