Title: Quantitative Issues in Research Methods
1Quantitative Issues in Research Methods
ANZAM Mid-Year Doctoral Workshop 9 June 2009
David V. Day Woodside Professor of Leadership and
Management University of Western Australia
Business School
2Session Overview
- Introductions
- Measurement, Design, Analysis
- 10 Common Research Mistakes
- Designing Problem-Centred Research
- Discussion and Additional Issues
3Statistics Throughout History
- There are 3 kinds of lies Lies, damned lies,
and statistics. Mark Twain (1906) courtesy of
Benjamin Disraeli - Some people hate the very name statistics, but I
find them full of beauty and interest. Whenever
they are not brutalised, but delicately handled
by the higher methods, and are warily
interpreted, their power of dealing with
complicated phenomena is extraordinary.
--Sir Francis Galton (1889) - No amount of technical proficiency will do you
any good if you do not think. Pedhazur
Schmelkin (1991)
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5Systems Approach to Research
MEASUREMENT
RESEARCH PROBLEM
DESIGN
ANALYSIS
Pedhazur, E. J., Schmelkin, L. P. (1991).
Measurement, design, and analysis An integrated
approach. Hillsdale, NJ Erlbaum.
6Systems Approach to Research
- MEASUREMENT
- Quantification of constructs or objects
- Supplies the numbers used in statistical analyses
- Meaningless numbers meaningless results!
- Scales of measurement
- Nominal, ordinal, interval, ratio
- Classical Test Theory (X T E)
- Reliability
- Stability
- Internal consistency
- Validity
- Numbers measure what the claim to measure
- Reference
- Nunnally, J., Bernstein, I. H. (1993).
Psychometric theory (3rd ed.). New York McGraw-
Hill.
7Systems Approach to Research
- DESIGN
- Research questions
- General, theory-based statements about study
goals - Hypotheses
- Specific statements about the predicted
relationships between or among variables - Causality
- Random assignment
- Control condition
- Manipulation of IV
- Threats to validity (alternative explanations)
- Statistical conclusions inferences from
statistical tests - Internal assertions regarding effects of IV(s)
on DV(s) - Construct correspondence between measure and
construct - External generalizability of findings to target
populations, settings - Reference
- Cook, T. D., Campbell, D. T. (1979).
Quasi-experimentation Design and analysis for
field settings. Boston Houghton Mifflin.
8Systems Approach to Research
- Analysis
- Univariate
- Mean, standard deviation
- Bivariate
- Correlation
- Multivariate
- Multiple regression
- Structural equation modeling
- Types of statistics
- Nonparametric statistics
- Descriptive statistics
- Inferential statistics
- Normality
- Homoscedasticity
- Independence
Reference Cohen et al. (2003). Applied multiple
regression/ correlation analysis for the
behavioral sciences (3rd ed.). Mahwah, NJ Erlbaum
910 Common Research Mistakes
And how to avoid them
101. No theory.
11What Theory is Not
- References are not theory.
- Data are not theory.
- Lists of variables or constructs are not theory.
- Diagrams are not theory.
- Hypotheses are not theory
- Reference
- Sutton, R. I., Staw, B. M. (1995). What theory
is not. Administrative Science Quarterly, 40,
371-384.
122. Untestable hypotheses.
13Whats wrong?
- H1 Job satisfaction occurs only under certain
conditions. - H2 Job satisfaction significantly predicts job
performance. - H3 Job satisfaction positively influences job
performance. - H4 Job satisfaction is unrelated to performance.
14- 3. Lousy or inappropriate measures.
15Common Measurement Problems
- Poor reliability (e.g., a lt .70) lousy measure
- Jingle fallacy
- Two constructs with equivalent labels are in
reality quite different (e.g., measures labelled
impulsivity may reflect constructs as diverse as
a short attention span and a tendency to
participate in risky behaviour). - Jangle fallacy
- Two constructs with different labels are actually
the same - Reference
- Block, J. (1995). A contrarian view of the
five-factor approach to personality description.
Psychological Bulletin 117, 187215.
16- 4. Single-shot, cross-sectional, self-report
survey designs.
17Common Method Bias
- Common Method Variance
- Variance attributable to measurement method
rather than to the constructs the measures
represent. - Sources of Common Method Biases
- Common source or rater
- Item characteristics (e.g., social desirability)
- Item context
- Measurement context
- Study design vs. Statistical remedies
- Reference
- Podsakoff, P. M., MacKenzie, S. B., Lee, J.-Y.,
Podsakoff, N. P. (2003). Common method biases in
behavioral research A critical review of the
literature and recommended remedies. Journal of
Applied Psychology, 88, 879-903.
18- 5. Violating statistical assumptions.
19Whats wrong?
- Employees (n200) rate their supervisors (n50)
on perceived leadership behaviour. - Leadership ratings are correlated with job
satisfaction ratings of employees. - Correlation found to be large (r .75) and
statistically significant (p lt .001). - WOW!!
20Comparing OLS with HLM
Y b0 b1X1 e
Y
X
21- 6. Model conceptual confusion.
22Mediators Moderators
- Mediation
- X ? M ? Y
- Moderation
- X ? Y varies as a function of Z (moderator)
- Moderated mediation (Z moderates X?M)
- Mediated moderation (Z moderates M?Y)
- Reference
- Edwards, J. R., Lambert, L. S. (2007). Methods
for integrating moderation and mediation A
general analytical framework using moderated path
analysis. Psychological Methods, 12, 1-22.
23- 7. Levels of analysis confusion.
24Whats wrong?
- Researcher hypothesizes that team climate is
related to team performance. - Team members complete individual climate surveys,
which are correlated with team performance. - Whats wrong? (Hint Within-group agreement or
reliability) - Reference
- Bliese, P. D. (2000). Within-group agreement,
non-independence, and reliability Implications
for data aggregation and analysis. In K. J. Klein
S. W. J. Kozlowski (Eds.), Multilevel theory,
research, and methods in organizations
Foundations, extensions, and new directions (pp.
349-381). San Francisco Jossey-Bass.
25- 8. Making strong causal inferences from weak
research designs.
26Whats wrong?
- Researcher hypothesizes mediational relationship
- Well-being (M) mediates the relationship between
job autonomy (X) and job performance (Y) - Support found for full mediation X?M?Y
- No effect of X directly on Y (partial mediation)
- Researcher concludes that X influences M and that
M affects Y
279. Inadequate statistical power.
28Concepts of Power Analysis
- Type I error (a)
- Reject null hypothesis when true (false positive)
- Type II error (ß)
- Fail to reject null when false (false negative)
- Statistical power (1-ß)
- Rejecting null when false (not making Type II
error) - Function of a, effect size, and SAMPLE SIZE
-
- Reference
- Cohen, J. (1988). Statistical power analysis for
the behavioral sciences (2nd ed.). Hillsdale, NJ
Erlbaum.
2910. Believing that fancy statistics will
compensate for lousy measures or a poor design.
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31Designing Effective Research
- Identify interesting problem
- Formulate key research questions
- Derive hypotheses
- Choose/develop measures (operationalise
constructs) - Design research strategy
- Outline analysis approach