Title: Why Beauty Matters An Experimental Investigation
1Why Beauty MattersAn Experimental Investigation
- Markus Mobius (Harvard University)
- Tanya Rosenblat (Wesleyan University)
- April 2004
2Is Beauty in the Eye of the Beholder?
- Surprisingly psychologists say No
- Strong agreement on what is considered
beautiful in facial photograph ratings across
genders and across cultures - Therefore beauty can be measured (objectively)!
3Is Beauty in the Eye of the Employer?
- Extensive research on beauty in social psychology
and human resource management - In economics, Hamermesh and Biddle (1994) Beauty
Premium - Establish that looks matter even after
controlling for many observable characteristics
(actual labor market experience, years of tenure
in a firm, union status, firm size, race,
geographic location, fathers' occupation,
childhood background, immigrant status of
respondents and their parents and grandparents)
4Psychology Literature
I. How are beautiful people perceived by others?
- Attractiveness or Beauty-Is-Good Stereotype
viewed superior along several dimensions
personality traits (sociability, dominance,
sexual warmth, modesty, character), mental
health, intelligence and academic ability, and
social skills
5Psychology Literature
II. To what extent is this stereotype true?
- Kernel of Truth Hypothesis
- Attractive people are treated better by others
throughout their life cycle. - Physical attractiveness rating does not change
much throughout life cycle. - A self-fulfilling prophecy? gt Become more
confident and more persuasive
6Experimental Literature
- Physical attractiveness in Experiments
- Ultimatum Game (Solnick and Schweitzer (1999))
- Prisoners Dilemma (Mulford, Orbell, Shatto and
Stockard (1998), Kahn, Hotes and Davis (1971)) - Public Goods (Andreoni and Petrie (2004))
- Trust Games (Eckel and Wilson (2004))
- Dictator Game
7How does beauty affect wages?
Decompose the effects of beauty
- Becker-type discrimination (employers have a
taste for good-looking employees) - Ability Effect - more physically-attractive have
superior skills at performing a task - Stereotype, Confidence and Persuasion Effects
during wage negotiation process
8How does beauty affect wages?
Wage Negotiation
- Employer forms a belief about workers ability
- Direct Stereotype Channel raises employer
belief about worker ability directly (because
beauty is good) - Indirect Stereotype Channel raises employer
belief indirectly during verbal interaction
through characteristics correlated with beauty
9How does beauty affect wages?
Wage Negotiation
- Worker forms a belief about his own ability
- Confidence Channel raises worker confidence in
his ability - Employer decides on the wage based on his prior
and workers confidence - Persuasion Channel raises wage by increasing
weight on workers confidence
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11Experimental Design
Job Description
- Employees were hired to perform a skilled task
of solving Yahoo! mazes for 15 minutes. - Before interviews they had a chance to solve a
practice maze of level Easy - During employment period they solved mazes one
level of difficulty higher
12Experimental Design
13Experimental Design
14Experimental Design
Why Mazes?
- We would not expect beauty to be directly
productive for this task. We can therefore focus
on worker/employer interaction alone - The task requires true skill. Gneezy, Niederle
and Rustichini (2003) have shown that there is
considerable variation in skill and speed of
learning for performing this task.
15Experimental Design
- Neither worker nor employer have well defined
focal points for predicting future performance if
presented with the practice time. - There is a significant amount of learning
possible in performing this task during the
allocated 15 min time period. - This allows for overconfidence effects and also
for true persuasion a confident worker might
truly believe that she can solve many mazes even
though she did poorly in the practice round, and
possibly can convince the employer to believe her.
16Experimental Design
- Playing the main game at the next level of
difficulty opens room for additional uncertainty
and thus further over-confidence and persuasion
effects.
17Experimental Design
Each worker enters her resume information
- College major, name of the degree granting
institution, matriculation year, hobbies, team
sports, age, gender, dream job, the number of
jobs previously held, the number of job
interviews they have participated in, and whether
they have internet connection at home (income
proxy) - Time it took to complete the practice round
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19Experimental Design
In addition,
- Each worker is asked to form an estimate of how
many mazes she will be able to solve in 15
minutes - This information is only provided for the
experimenter and is not revealed to the
employers. - Compensation is structured in an incentive
compatible manner to induce workers to truthfully
reveal their estimates. - Workers and employers complete a control
questionnaire to make sure they understand how
payments are calculated.
20Experimental Design
Each worker participates in 5 treatments in
random order
- Treatment A Resume only without a facial
photograph. - Treatment B Resume and facial photograph.
- Treatment C Resume without a photograph and oral
telephone communication. - Treatment D Resume with a facial photograph and
oral telephone communication. - Treatment E Resume with a facial photograph and
face-to-face interview.
21Only matters in treatments C, D, E
Does interaction of beauty and confidence matter
in Treatments C, D, E?
Treatments C, D, E (especially C - speech only!)
Treatments B, D, E (especially B - picture only!)
22Experimental Design
Timing
- Workers enter their resume information and
confidence estimates. - Workers interact with employers (treatments C, D,
E) or employers see workers files (treatments A,
B). - Employers find out whether their estimates of
worker productivity will be used to compensate
employees (80 of the time).
23Experimental Design
- Employers decide on their estimates of worker
productivity and submit their choices to the
experimenter after they have been the audience to
all 5 candidates. - Note, that all workers are hired, but get
different compensation. - Workers participate in 15 minute work period.
- Total compensation is determined for workers and
employers.
24Experimental Design
Why is employer wage used only in 80 of the
cases?
- To distinguish between
- Employers choosing to transfer some money to
workers independent of their skill and - Compensation for perceived skill
- Use this to check for direct taste-based
discrimination.
25Experimental Design
Compensation of Workers
- Workers get a piece rate of 100 points for each
maze they solve during the work period. - Workers get a wage determined by each employer.
This wage is used 80 of the time. 20 of the
time the wage is set by the experimenter all
wages are paid by the experimenter. - 40 points are subtracted from workers
compensation for each maze they mispredict (above
or below their estimate). This provides a
marginal incentive of 60 points per maze to
continue solving mazes even after they hit their
estimate.
26Experimental Design
Compensation of Employers
- Employers get a fixed fee of 4000 points.
- During the interview and resume review they form
an estimate of how many mazes each candidate can
solve. This number times 100 points becomes
employee wage in 80 of cases. - Regardless of whether employer wage is used or
not 40 points are subtracted from employers
compensation for each maze they mispredict (above
or below their estimate for each employee).
27Experimental Design
Beauty Ratings
- By a panel of 50 independent evaluators on a
scale from 1 to 5 - 1 - homely, far below average in attractiveness
2 - plain, below average in attractiveness 3 -
of average beauty 4 - above-average and 5 -
strikingly handsome or beautiful. - Standard passport-type photographs were presented
to evaluators in random order via a website.
28Subjects
- Undergraduate and masters students from Tucuman
University, Argentina - instructions in Spanish delivered orally and via
a computer - subjects completed a control questionnaire to
ensure understanding of compensation schemes - 33 sessions of 5 workers and 5 employers each
worker being reviewed by 5 employers (825
observations)
29Subjects
- Subjects were paid 12 pesos for participation
additional earnings described above - Average earnings 25 pesos for an experiment of up
to one and a half hours in length. - Made sure subjects did not know each other prior
to the experiment.
30Employee Subject Pool Description
- Subjects from 3 university campuses, 85 from UNT
- 56 male
- Average age 22.9 more graduate students
- Majors business and economics (21) science,
medicine, and information technology (46)
humanities and arts (33) - 51 have internet access at home (80 from
private 41 from public)
31Employee Subject Pool Description
- 61 participated in team sports
- 43 had no previous work experience (out of them
63 never interviewed for a job) - Those with work experience worked in education,
information technology, retail sales, business,
public sector, arts, food production and service,
and industry. - Intensity of interpersonal interaction on a job
- Hobbies in computers, recreation (listening to
music, reading), creative tasks (writing,
drawing, composing music), sports
32Average Performance
- The mean number of mazes solved was 9.5 (10.9 for
men 7.8 for women) - The average maze during 15 minute trial took 94
sec the average practice time was 127 sec - Subjects systematically underestimated their own
productivity by 24 on average. - Employers underestimated workers productivity in
a similar manner (20 on average).
33Variable Transformations
Confidence Measure
- Estimated number of rounds (ln)
Ability Measure
- Actual number of rounds (ln)
Prediction based on extrapolation from the
practice round
Becker Discrimination
- SETWAGE1 if employer estimate was used to
determine workers wage
34Beauty Measure
Detrend beauty ratings to get rid of measurement
error
- Measurement error arises because each rater has a
distinct definition of baseline beauty - Formally, for each rater we take her average
beauty rating and subtract it from each raw
rating for subject in order to define the
centered rating - The measure BEAUTY for subject is then defined as
the mean over all raters centered rating.
35Procedure for Data Analysis
- 1. Relationship between beauty and ability
- 2. Relationship between beauty and confidence
- 3. Wage regressions without controlling for
confidence - 4. Wage regressions with a control for confidence
- 5. Persuasion Effect
- 6. Pooled Regression
36Beauty and Ability
- Regression of actual ability during 15 min work
period measured by LNACTUAL on age, sex, family
wealth (approximated by INTERNET), and physical
attractiveness (with and w/o decision variables). - MALE is significant men are 30 better at
solving mazes in 15 minutes (can be also seen
from summary statistics 10.9 vs 7.8) - Beauty is NOT statistically significant!
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38Beauty is NOT statistically significant
39Beauty is NOT statistically significant
Practice time doesnt fully predict actual ability
40Men have better skills
Beauty is NOT statistically significant
Practice time doesnt fully predict actual ability
41Beauty and Ability
- Regression of predicted ability extrapolated from
the practice round PREDICT on age, sex, family
wealth, and physical attractiveness - Again men do better in the practice round
- In addition older subjects do better (with
decreasing returns to age) - Beauty is not significant
- Both regressions show that there is no
relationship between beauty and ability! - Note that we run two specifications with and
without major and hobby choices.
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43Beauty is NOT statistically significant
44Men are more skilled
Beauty is NOT statistically significant
45Older subjects do better, but with decreasing
returns
Men are more skilled
Beauty is NOT statistically significant
46Confidence
- Regression of confidence on beauty, true ability
and worker characteristics.
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48Actual ability weakly raises confidence (but
coef. is not 1)
49Rely on practice performance more so than is
justified based on ability regression before
50Men are not more confident if we control for
actual ability
Rely on practice performance
Actual ability weakly raises confidence (but
coef. is not 1)
51Raising Beauty by 1 standard deviation raises
confidence by 13
52Beauty raises confidence equally for men and
women.
53Confidence
- Regression of confidence on beauty, true ability
and worker characteristics. - Actual ability weakly raises confidence. A 1
increase in actual ability increases confidence
by about 0.15. - Note that if confidence were truthful and based
only on self- knowledge about true abilities then
we would expect a coefficient close to 1 on
LNACTUAL and all other variables to be not
significant. - The biggest boost of confidence is performance in
the practice round a 1 increase in predicted
performance raises confidence by at least .4.
54Confidence
- Male subjects are not more confident once we
control for their higher average ability in
solving mazes. - Physical attractiveness raises confidence equally
for men and women since coefficient on
interaction term beautymale is not significant. - There is a strongly significant (at the 1 percent
level) effect of physical attractiveness on
confidence. Raising beauty by one standard
deviation increases confidence about 13. - This effect is very large if we define a
beautiful person to be one standard deviation
above the mean and a plain person to be one
standard deviation below then the plain subject
is about 26 less confident than the beautiful
subject.
55Confidence
- Confidence is by no means a truthful reflection
of actual ability. The large coefficient on
PREDICT suggests that subjects have a hard time
evaluating their own ability and tend to
over-extrapolate from their practice performance.
- Interestingly, physical attractiveness has a very
large confidence-enhancing effect while gender
has none. Although men in our sample are more
confident, they actually perform better at the
task.
56Wage Regressions (w/o Confidence Controls)
- Fixed effects regressions of wages on workers
characteristics including BEAUTY but excluding
CONFIDENCE. (Separate regression for each
treatment). - y is wage of worker j set by employer i
- is employer fixed effect
- B is worker jth beauty
- S is SETWAGE1 if employer determines workers
wage directly - X vector of CV characteristics
57Dep. Var LNWage (w/o CV Controls)
Beauty Premium
58Dep. Var LNWage (w/ CV Controls)
Beauty Premium
59Dep. Var LNWage (w/o CV Controls)
Practice Performance Matters a lot!
Beauty Premium
No Evidence for direct taste-based discrimination
60Dep. Var LNWage (w/ CV Controls)
Practice Performance Matters a lot!
Beauty Premium
Not much evidence for direct taste-based
discrimination
61Wage Regressions (w/o Confidence Controls)
- Regressions of wages on workers characteristics
including BEAUTY but excluding CONFIDENCE.
(Separate regression for each treatment). - First of all, there is a beauty premium in our
experiment in all treatments except A ranging
from 9.4 to 12.7 without CV controls and from 12
to 17 with CV controls. - SETWAGEBEAUTY is not significant there is no
evidence for direct taste-based Becker-type
discrimination - 1 increase in practice performance increases
wages by .4 (from coefficient on PREDICT) - MALE is significant in treatments C and D only.
62Wage Regressions (w/ Confidence Controls)
- Fixed effects regressions of wages on workers
characteristics including BEAUTY and CONFIDENCE.
(Separate regression for each treatment). - C is worker js confidence
63Dep. Var LNWage (w/ CV Controls)
Confidence matters only in treatments with verbal
interaction
64Dep. Var LNWage (w/ CV Controls)
Beauty Premium declines in those treatments
Confidence matters only in treatments with verbal
interaction
65Dep. Var LNWage (w/ CV Controls)
As before, actual performance doesnt matter and
practice performance does.
Beauty Premium declines in those treatments
Confidence matters only in treatments with verbal
interaction
66Wage Regressions (w/ Confidence Controls)
- Same as regressions before but with an additional
control for confidence. - As expected, confident subjects do better in
treatments with verbal interaction. - A 1 increase in confidence raises wages by about
0.18 to 0.33. - The beauty effects in treatments B to E are
smaller by about 2 to 4. This decline is
consistent because we know that one standard
deviation in beauty increases confidence by about
13.
67Wage Regression w/ Confidence Controls
- The coefficient on MALE is the same as before
- LNACTUAL is still not significant
- SETWAGELNESTIMATED and SETWAGEBEAUTY are also
not significant
68Confidence channel
69Other Covariates
- One percent increase in practice performance
raises wages by about .4 percent in treatments A
and B and .3 percent in treatments C, D, and E gt
Employers put less emphasis on practice
performance when they can interact verbally with
the worker - Actual Ability is NOT statistically significant
in any treatment. - Gender effects in treatments C and D only
- Age effects in treatments D and E only
- Team sports and internet are not significant.
70Testing for Persuasion Channel
- Fixed effects regressions of wages on workers
characteristics including BEAUTY, CONFIDENCE, and
BEAUTYCONFIDENCE. (Separate regression for each
treatment).
71Testing for Persuasion Channel
- Coefficient on the interaction term is not
significant gt no evidence for persuasion channel
72Pooled Regression
- AUDIO 1 if worker and employer can talk to each
other (treatments C, D, and E) - VISUAL1 if employer can see workers picture
(treatments B, D, and E) - FTF1 if there is face-to-face communication
(treatment E) - Interact PREDICT, BEAUTY and LNESTIMATED with the
dummies above and include CV controls.
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74Direct Stereotype
75Direct Stereotype
Indirect Stereotype
76Direct Stereotype
Indirect Stereotype
Confidence
77Pooled Regression
- Direct Stereotype Channel identified by
coefficient on BEAUTYVISUAL (7.2 wage gain for
each standard deviation in beauty) - Indirect Stereotype Channel is captured by
coefficient on BEAUTYAUDIO (10.4 wage gain for
each standard deviation in beauty) - Confidence Channel raises wage by .3 for each 1
increase in confidence. This translates into
3.6 increase in wage for one standard deviation
increase in beauty
783.6 increase in wage for 1 standard deviation
increase in beauty
No Evidence
10.4 gain for 1 standard deviation increase in
beauty
7.2 gain for 1 standard deviation increase in
beauty
79Policy Implications
- Job interviews are currently the most common
method of employee selection. - Direct discrimination can be minimized by
reducing face-to-face interactions and relying on
telephone interviews instead or hard data like
test scores. - For example, Goldin and Rouse (2000) have found
that blind auditions reduce gender discrimination
in hiring women musicians. - We find that blind interview procedures (like
telephone interviews) can reduce beauty premium
by 40 (due to elimination of direct stereotype
effects). - Elimination of verbal interaction can eliminate
beauty premium completely. Too drastic
80What We Dont Know
- Is taste based discrimination present in repeated
relationships? - Do students care more about physical
attractiveness than older human resource
officers? - Are employers over-interpreting visual and audio
stimuli because those can be productive in most
other environments? - Can we design an experiment in which
self-confidence of workers is payoff-relevant for
employers?