An empirical comparison of statistical construct validation approaches

The use of measurement instruments to examine causal relationships among constructs constituting theoretical frameworks is important to advancing engineering management research. This paper examines two broad implementation approaches to statistical refinement and validation of measurement instruments. The two approaches differ in their refinement procedures in their use of principal component factor analysis (Approach A) and conventional confirmatory factor analysis (Approach B). It is difficult to evaluate the net impact of these fundamental differences between the two approaches on the resulting statistical construct validity merely using theoretical arguments. To assess their power of construct refinement and validation, the authors undertook a comparison of the outcomes of the two approaches using two measurement instruments (the TQM instrument and the Supervisor instrument). In addition, we tested the potential benefits of blending the two approaches into a third "Hybrid Approach". Results indicate that Approach B and the Hybrid Approach provide refined scales with higher unidimensionality, reliability, convergent validity, and discriminant validity. However, Approach A and the Hybrid Approach can identify and split constructs with underlying patterns indicating existence of multiple dimensions and yield better operationalization of the nomological framework. In conclusion, the Hybrid Approach combines the strengths of Approach A and Approach B. It performs well not only in terms of the statistical validity of constructs, but also incorporates the feature to recognize patterns suggested by exploratory methods. They recommend its use for refining and validating measurement instruments in relatively unexplored research domains as well as in matured research domains. The results have strong applicability for statistical construct validation of instruments in engineering management and other fields using measurement instruments.

[1]  L. Cronbach Coefficient alpha and the internal structure of tests , 1951 .

[2]  D. Campbell,et al.  Convergent and discriminant validation by the multitrait-multimethod matrix. , 1959, Psychological bulletin.

[3]  Jacob Cohen A Coefficient of Agreement for Nominal Scales , 1960 .

[4]  J. Hair Multivariate data analysis , 1972 .

[5]  Howard B. Lee,et al.  Foundations of Behavioral Research , 1973 .

[6]  K. Jöreskog,et al.  Intraclass Reliability Estimates: Testing Structural Assumptions , 1974 .

[7]  C. H. Lawshe A QUANTITATIVE APPROACH TO CONTENT VALIDITY , 1975 .

[8]  J. Nunnally Psychometric Theory (2nd ed), New York: McGraw-Hill. , 1978 .

[9]  T. Cook,et al.  Quasi-experimentation: Design & analysis issues for field settings , 1979 .

[10]  Edward G. Carmines,et al.  Reliability and Validity Assessment , 1979 .

[11]  P. Bentler,et al.  Significance Tests and Goodness of Fit in the Analysis of Covariance Structures , 1980 .

[12]  C. Fornell,et al.  Evaluating structural equation models with unobservable variables and measurement error. , 1981 .

[13]  J. P. Peter Construct Validity: A Review of Basic Issues and Marketing Practices , 1981 .

[14]  John P. Campbell,et al.  Measurement Theory for the Behavioral Sciences. , 1983 .

[15]  R. Bagozzi An Examination Of The Validity Of Two Models Of Attitude. , 1981, Multivariate behavioral research.

[16]  James C. Anderson,et al.  Some Methods for Respecifying Measurement Models to Obtain Unidimensional Construct Measurement , 1982 .

[17]  J. Long Confirmatory Factor Analysis , 1983 .

[18]  John Hattie,et al.  Methodology Review: Assessing Unidimensionality of Tests and ltenls , 1985 .

[19]  David A. Garvin,et al.  Quality Problems, Policies, and Attitudes in the United States and Japan: An Exploratory Study , 1986 .

[20]  R. P. McDonald,et al.  Structural Equations with Latent Variables , 1989 .

[21]  J. Spence,et al.  Psychological determinants of health and performance: the tangled web of desirable and undesirable characteristics. , 1991, Journal of personality and social psychology.

[22]  John P. Robinson,et al.  CHAPTER 1 – Criteria for Scale Selection and Evaluation , 1991 .

[23]  Richard P. Bagozzi,et al.  Assessing Construct Validity in Organizational Research , 1991 .

[24]  Maling Ebrahimpour,et al.  Employee involvement in quality improvement: a comparison of American and Japanese manufacturing firms operating in the US , 1992 .

[25]  E. Geisler Middle Managers as Internal Corporate Entrepreneurs: An Unfolding Agenda , 1993 .

[26]  Matthew A. Waller,et al.  LATENT VARIABLES IN BUSINESS LOGISTICS RESEARCH: SCALE DEVELOPMENT AND VALIDATION / , 1994 .

[27]  Roger G. Schroeder,et al.  A FRAMEWORK FOR QUALITY MANAGEMENT RESEARCH AND AN ASSOCIATED MEASUREMENT INSTRUMENT , 1994 .

[28]  J. Steenkamp,et al.  The Effects of Supplier Fairness on Vulnerable Resellers , 1995 .

[29]  K. Ramamurthy,et al.  The influence of planning an implementation success of advanced manufacturing technologies , 1995 .

[30]  L. J. Porter,et al.  Identification of the Critical Factors of TQM , 1996 .

[31]  Sanjay L. Ahire,et al.  Development and Validation of TQM Implementation Constructs , 1996 .

[32]  William E. Youngdahl,et al.  The adoption of advanced manufacturing technologies: human resource management implications , 1997 .

[33]  S. Ahire,et al.  Supervisors' participation in quality efforts in large and small manufacturing firms , 1997 .

[34]  S. Ahire,et al.  Supervisors’ role in TQM and non‐TQM firms , 1997 .

[35]  Robert J. Vokurka,et al.  The empirical assessment of construct validity , 1998 .

[36]  Roger G. Schroeder,et al.  Adoption of just-in-time manufacturing methods at US- and Japanese-owned plants: some empirical evidence , 1998 .

[37]  S. Ahire,et al.  The role of top management commitment in quality management: an empirical analysis of the auto parts industry , 1998 .

[38]  Diane E. Bailey,et al.  Comparison of manufacturing performance of three team structures in semiconductor plants , 1998 .

[39]  X. Koufteros Testing a model of pull production: a paradigm for manufacturing research using structural equation modeling , 1999 .

[40]  K. Ramamurthy,et al.  A multi-attribute measure for innovation adoption: the context of imaging technology , 1999 .

[41]  L. Sattler,et al.  Participative management: an empirical study of the semiconductor manufacturing industry , 1999 .

[42]  Shanthi Gopalakrishnan,et al.  The impact of organizational context on innovation adoption in commercial banks , 2000, IEEE Trans. Engineering Management.