Title: Convolutions of a Faculty Salary Equity Study
1Convolutions of a Faculty Salary Equity Study
Michael Tumeo, Ph.D. John Kalb, Ph.D. Southern
Methodist University
2Faculty Compensation Overview
- Faculty compensation while not the sole motivator
for faculty, is an important magnet for
attracting and retaining good faculty as well as
and interwoven component to boosting morale
(Shuster, Finkelstein, 2006). - While faculty salary is an important
consideration, other factors such a job location,
benefits, peer interactions, and non-tangible
factors also weigh into the attraction,
retention, and morale of faculty. - Faculty compensation has many facets, but this
study will focus on faculty salary specifically.
3Questions and Answers
- Are there Gender inequities regarding faculty
salaries at our institution? - At the 2007 AIR Forum in Kansas City, Porter,
Toutkoushian, Moore presented a paper in which
they show, using NSOPF (National Survey of
Postsecondary Faculty) data that gender
inequities are pervasive and long-term. - This then begs the question, Is the question of
gender inequities the right question to ask? or
has this become the duh question? - Perhaps the more appropriate questions become,
Where are the gender inequities? Can they be
explained? What can we do about them?
4SMU Solution
- Using a multifaceted approach we attempted to
explore the answers to the first two questions in
hopes of finding a solution to the third. - We used a graphical analysis, Multiple
Regression, and an inappropriate ANOVA - This presentation will walk you through what we
did, why we did it, and what we found. - We will also discuss some of the strengths and
weaknesses of each approach and hopefully solicit
some ideas for additional analysis.
5Graphical Approach
- Does time at the institution, or time since
degree impact salary equity? - Do tenure status, and discipline of the faculty
member impact salary equity? (only included
Tenured and Tenure-Track faculty in analysis)
Non-tenure track faculty unnecessarily
complicates an already complicated analysis - What is the best way to see the effect of these
variables on salary equity? - KISS method is important so as to not complicate
the graphic unnecessarily (using Tenure instead
of Rank, for example)
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10General Trends Found
- Can clearly see in all graphs apparent gender
salary inequity. - Time since degree seems to have a larger impact
on salary disparity than does time at the
institution. - Both factors of time have a disproportionate
effect depending on the tenure status of faculty. - Provides a wonderful display of salary
compression for tenured faculty at an equal rate
for both males and females. - Does not address the discipline question.
- Discipline is defined by 2-digit CIP Codes.
11Salaries by Years Since Degree
Discipline Area based upon 2-digit CIP Code
Classification
NOTE All charts are based upon the same unit
scale (original)
Years Since Degree
12Salaries by Years Since Degree
Discipline Area based upon 2-digit CIP Code
Classification
NOTE All charts are based upon the same unit
scale (original)
Years Since Degree
13Salaries by Years at the Institution
Discipline Area based upon 2-digit CIP Code
Classification
NOTE All charts are based upon the same unit
scale (original)
Years at Institution
14Salaries by Years at the Institution
Discipline Area based upon 2-digit CIP Code
Classification
NOTE All charts are based upon the same unit
scale (original)
Years at Institution
15Multiple Regression Analysis(Enter Method)
- Variables used based upon Luna (2007) and the
previous graphical analysis. - Rank (Professor, Associate, Assistant)
- Terminal degree (dummy coded Yes)
- Years since degree
- Years at Institution
- Gender (dummy coded Female)
- Market Ratio (account for discipline differences)
- Dependent Variable (Annual Salary)
16Table of Terminal and Non-terminal Degrees
Degree Type Terminal (Y or N) Degree Type Terminal (Y or N)
AA N MBA N
AMD Y MD Y
AS N MED Y
BA N MFA Y
BBA N MLA N
BFA N MMED N
BJ N MM N
BM N MPA N
BS N MPP N
CERT N MS N
DED Y MSA N
DENG Y MSE N
DM Y MT N
DMA Y MTH N
DME Y PHD Y
DMIN Y SJD Y
DPA Y STD Y
DTH Y THD Y
EDD Y
JD Y
LLB Y
LLM Y
LTR N
MA N
MAST N
17Multiple Regression Coefficients and t-scores
Model Unstandardized Coefficients Unstandardized Coefficients t Sig.
B Std. Error
(Constant) -45418.277 6651.084 -6.829 .000
FEMALE -5702.960 2543.721 -2.242 .025
TERMINAL DEGREE 11373.917 5004.147 2.273 .024
YEARS SINCE DEG 568.848 180.677 3.148 .002
YEARS AT INSTITUTION -1082.334 152.975 -7.075 .000
MARKET RATIO 86554.912 4521.985 19.141 .000
STUDY RANK 22630.020 1959.562 11.549 .000
a Dependent Variable Annual Salary
18Studentized Residual Plots
19Studentized Residual Plots
20Influence and Leverage Plot
21Multiple Regression Analysis(Stepwise Method)
- Same variables used in the previous analysis
- Interested in model selection
- Most parsimonious model selected using change in
R2 rule - y -41,625.651 89,844.209 Market Ratio
26,581.145 Rank (-711.610 Years at
Institution).
22Stepwise Data Table
Model R R Square Adjusted R Square Std. Error of the Estimate Change Statistics Change Statistics Change Statistics Change Statistics Change Statistics
Model R R Square Adjusted R Square Std. Error of the Estimate R Square Change F Change df1 df2 Sig. F Change
1 .640(a) .410 .408 29,157.236 .410 312.984 1 451 .000
2 .777(b) .604 .602 23,916.244 .194 220.322 1 450 .000
3 .799(c) .639 .637 22,846.032 .035 44.148 1 449 .000
4 .803(d) .644 .641 22,713.234 .005 6.266 1 448 .013
5 .806(e) .649 .645 22,572.063 .005 6.621 1 447 .010
6 .808(f) .653 .649 22,467.606 .004 5.166 1 446 .024
a Predictors (Constant), MARKET_RATIO b
Predictors (Constant), MARKET_RATIO, RANK c
Predictors (Constant), MARKET_RATIO, RANK,
YEARS_AT_INST d Predictors (Constant),
MARKET_RATIO, RANK, YEARS_AT_INST, FEMALE e
Predictors (Constant), MARKET_RATIO, RANK,
YEARS_AT_INST, FEMALE, YEARS_SINCE_DEG f
Predictors (Constant), MARKET_RATIO, RANK,
YEARS_AT_INST, FEMALE, YEARS_SINCE_DEG,
TERM_DEGREE
23Model Validation
- Condition Index of the Collinearity Diagnostics
table yielded a value of 11.6 - General Rule (values of 15 or higher moderate
risk of mulitcollinearity while 30 or higher is a
serious risk). - Two additional Multiple Regressions were run
(Forward and Backward) to ensure the Stepwise
Regression was not a mathematical artifact. - Did not do a split sample validation or a cross
sample validation, but the model is not being
used for predictive purposes so further
validation procedures were deemed unnecessary at
this time.
24ANOVAThe Final Frontier
- Wanted to explore possible interactions between
gender and other factors related to salary equity
(finally getting back to the original question) - Market Ratio was categorized into Market Value
(based on Luna 2007, paper) - 3-way ANOVA with Gender (Female, Male), Market
Value (Below Average, Average, Above Average),
and Rank (Assistant, Associate, Full) with
Dependent Variable (Salary)
25ANOVA Cautionary Notes
- Violated several fundamental rules for an ANOVA,
but this was exploratory, so tread lightly. - ANOVA done on a population, not a sample (All
faculty were included because of sample size
concerns). - Not really a true experimental design.
- Groups size differences at more refined levels
are a concern because of variance differences. - Interpretation of results and generalizations are
very tentative because of these caveats.
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29Conclusions
- The simple answer to the question of gender
salary inequity at SMU is YES (a simple
question deserves a simple answer after all,
right?). - As you can see the real answer is quite a bit
more complicated than, simply Yes. - Factors like rank and discipline complicate the
picture considerably. - Complications regarding sampling, and group size
differences additionally complicate finding a
clear statistical answer.
30Added Factors not Considered
- Additional information regarding faculty standing
would be critical to gaining a fuller picture of
any potential gender inequities. - Time in rank
- Performance measures (publications, class and
supervisor evaluations, service, etc) - Outside job offers
- Changing market demands
- Etc.
31Lessons Learned and Next Steps
- Discipline specific evaluations may be needed
instead of University level evaluations - Better data about performance measures needed
- Need to explore ways to counter salary
compression for both genders - Need to look more closely at the disparities at
the higher ranks to determine the reality of
those disparities or if other factors are
influencing the apparent salary disparities
32References
- Barbezat, D. A. (2003). From here to seniority
The effect of experience and job tenure on
faculty salaries. New Directions for
Institutional Research, 117, 21- 47. - Bellas, M. L. (1997). Disciplinary differences in
faculty salaries Does gender bias play a role?
The Journal of Higher Education, 68 (3), 299-321. - Boudreau, N., Sullivan, J., Balzer, W., Ryan, A.
M., Yonker, R., Thorsteinson, T., Hutchinson.
(1997). Should faculty rank be included as a
predictor variable in studies of gender equity
in university faculty salaries? Research in
Higher Education, 38 (3), 297-312. - Luna, A. L. (2006). Faculty salary equity cases
combining statistics with the law. The Journal
of Higher Education, 77 (2), 193-224. - Luna, A. L. (2007). Using market ratio factor in
faculty salary equity studies. AIR Professional
File, 103, 1-16. - Schuster, J. H., Finkelstein, M. J. (2006). The
American Faculty The restructuring of
Academic Work and Careers. Baltimore, MD The
Johns Hopkins University Press. - Porter, S. R., Toutkoushian, R. K., Moore, J.
V. (2007) Gender differences in salary for
recently-hired faculty, 1998-2004. Scholarly
Paper, Presented at the 2007 AIR Forum in Kansas
City MO. - Webster, A. L. (1995). Demographic factors
affecting faculty salary. Educational and
Psychological Measurement, 55 (5), 728-735.