Title: Psych 7 Final Review
1Psych 7 Final Review
2Theory
Extraverts have low baseline levels of
physiological arousal
Extraverts will be high in sensation-seeking
Hypotheses
People who score highly on the NEO extraversion
scale will report stronger desire to try
sky-diving
Predictions
Data/Observations
Data from a specific sample do or do not support
the prediction
Theory is provisionally supported or
hypotheses/theory may require modification
Conclusions
3Reliability
- Will a measure produce the same results
consistently? - Test-retest reliability (stability over time)
correlation between first and second measurement
of same individuals. - Internal consistency reliability (how are
different sub-components of the measure
related?) correlation between scores on
different scales of a measure. - Split-half reliability correlation between
scores on first half with those of second half. - Cronbachs alpha average of inter-correlations
across all items in a measure/scale. - Inter-rater reliability (accuracy of an objective
coding system) correlation between ratings made
by different raters.
4Construct Validity
- How well does a measure tap into the theoretical
construct of interest? - Face validity the measure satisfies intuition
about the content of a construct. - E.g., A measure of male genetic quality
- ?Fluctuating asymmetry mm deviations from
perfect bilateral symmetry on traits like the
ears, feet, and elbows. - Not very face valid (i.e. not what you would
picture when you think of genetic quality) - But actually a theoretically compelling measure.
5Construct Validity
- Predictive validity the extent to which scores
on the measure predict (i.e. are correlated with)
behaviors that should theoretically be related to
the construct. - E.g., Fluctuating asymmetry as a measure of
genetic quality - Does fluctuating asymmetry correlate negatively
with the number of times men have been chosen as
an extra-pair sexual partner? - Yes. (Gangestad et al., 1997)
6Construct Validity
- Concurrent validity (criterion groups validity)
Do specific populations score on the measure as
they would theoretically be predicted to? - E.g., Fluctuating asymmetry
- Do male models have lower fluctuating asymmetry
than a sample of men from a Star Trek convention? - Note you are a weirdo if you actually collect
this data.
7Construct Validity
- Convergent validity Does a measure relate to
other measures of a similar construct? - E.g., does fluctuating asymmetry correlate
negatively with male facial masculinity? - Indeed, it does. (Gangestad Thornhill, 1998)
- Discriminant validity Is the measure
(relatively) unrelated to measures of constructs
you would theoretically predict it wouldnt be? - E.g., does fluctuating asymmetry fail to
correlate with female facial masculinity? - Yes
8Predicting Behavior behavior at the voting booth
Relationship (correlation) Between Variables
positive linear relationship
negative linear relationship
r -.90
r .90
curvilinear relationship
no relationship
r 0
9Alternative vs. Clarifying Explanations
causes
causes
Ice cream
Cramps
Drowning
Temperature
Ice cream
Drowning
10Basic Experimental Designs
- Posttest Only Design
- Pretest-Posttest Design
- Repeated Measures Design
- Matched Pairs Design
11Dealing with Order Effects in Repeated Measures
Designs
- Complete Counterbalancing Present the different
conditions in every possible order - For 2 conditions (control/experimental) only 2
possible orders - For 4 conditions, 24 possible orders
- Randomized blocks Present conditions in random
order - Distracter Tasks/Time Lags Present one type of
stimulus but then have rest period (avoid
fatigue) or intervening task (e.g., count
backwards) to avoid practice or contrast effects
12The Latin Square
- In the Latin Square that appears above, four
experimental conditions are represented by A, B,
C, and D. The order in which subjects go through
the conditions is represented by the sequence of
letters in each row. Do the orders represented in
this example validly implement the two rules for
constructing a Latin Square? - A) Yes each condition appears at each ordinal
position and no rules are violated - B) No, because the conditions are unequally
represented in the third ordinal position - C) No, because ABCD is a valid order but does not
appear in the table - D) b and c
- E) No, for a reason that is not listed in the
above choices
13Latin Square Designs
- Rule 1 Each condition appears at each ordinal
position. - Rule 2 Each condition precedes and follows each
condition one (and only one!) time.
14Factors vs Levels
- Factors variables which can contain numerous
levels - e.g., caffeine, sex
- Levels within each factor
- Caffeine level 1? 0 mg
- level 2? 50 mg
- level 3? 100 mg
- Sex level 1? male
- level 2? female
-
15Main Effects
- Question How many main effects can there be for
the factor caffeine (w/ 3 levels)? - Caffeine level 1? 0 mg
- level 2? 50 mg
- level 3? 100 mg
- Answer 1
What kind of relationship could you test for
with this design that you couldnt with two
levels?
Answer A curvilinear/non-monotonic relationship
like an inverted U.
16Alcohol Study in Factorial Notation
Expectation
Alcohol
No Alcohol
Alcohol
4.3
Actually Get
4.2
No Alcohol
5.05
3.45
17Simple Main Effects in American Idol
Yeah!! Go Corey!
Type of Song
Overall Avg.
Love Song
Rock Song
150
Main Effect of Sex F M
Male
Sex of Singer
Female
250
DV of votes (in thousands)
18Graphing Results of Factorial Designs
For Interaction Effects Plot all of the data as
line graphs. Nonparallel lines indicate an
interaction.
19Comparing 2 Means
- Null hypothesis (H0) Population means are equal.
Any differences between sample means are due to
chance (random error remember, this is
everything not in our manipulation). - Research hypothesis (H1) Population means are
not equal. - T-test Test statistic associated with a
probability of obtaining sample means that differ
by observed amount if population means were equal
(null hypothesis is true)
20p-values
- Statistical significance assesses the
probability that results could be due to chance
rather than the hypothesized cause - E.g., could difference between 2 means be as
large as it is by chance? - Where chance is everything not accounted for
in your manipulation - Another way to think of statistical significance
is a measure of how likely it is that we have a
true or real difference between groups
21Phone numbers physics classes
Phone numbers no physics classes
t Difference between groups (means)
Normal variability within group(s)
22Type I Type II Errors
- Type I error (a) incorrectly rejecting the null
hypothesis when it is in fact correct (false
positive) - Men are designed to commit type I errors about
female sexual desire. - Male A Dude, did you see that? She totally
wants me - Male B Yeah. Sorry dude, but Im pretty sure I
saw her clutching her can of mace - Type II error (ß) incorrectly accepting the null
hypothesis when it is in fact false (false
negative) - E.g., Lloyd and Harry at the end of Dumb
Dumber - Alpha is the p-value at which we decide to reject
the null hypothesis - As alpha gets larger, the probability of a type I
error increases and the probability of a type II
error decreases - As N (sample size) increases, probability of a
type II error decreases power (1- ß) increases
23- Thats all, folks. Good Luck!
- Feel free to swing by Psych 2525 between 1 4
today to ask additional questions.