1. THIS WEEK’S PLAYLIST
1
Artist Song
1. Weezer
Perfect Situation
Power of the Situation
2 will.i.am
I Got It From My Mama
Nature vs. Nurture; Proximal vs. Distal Influences
4. Taylor Swift
I Knew You Were Trouble
Hindsight Bias
5. Bill Withers
Lean On Me
Collectivist Cultural Values
6. Haddaway
What Is Love?
Operationalizing Constructs
7 Notorious B.I.G.
Mo Money Mo Problems
Understanding Correlations
3. METHODS: OVERVIEW
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○ Why do social psychologists do research?
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○ How do social psychologists test ideas?
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○ What are useful concepts for understanding research?
5. FOLK WISDOM
“The whole of science is nothing more than
the refinement of everyday thinking.”
6. FOLK WISDOM
!
○ A “common-sense,” intuitive explanation for behavior
!
○ Some folk theories are correct, but...
Do birds of a feather flock together, or do opposites attract?
7. FOLK WISDOM
!
○ A “common-sense,” intuitive explanation for behavior
!
○ Some folk theories are correct, but...
Does absence make the heart grow fonder, or out of sight, out of mind?
8. FOLK WISDOM
○ Role of psychology
● When do certain “correct” folk theories apply?
● Why does this happen?
!
○ Many unexpected influences on behavior
!
○ Must empirically test theories to avoid biases
● Importance of the scientific method!
!
○ Dan Simons debunks some folk theories
● http://www.youtube.com/watch?v=5YPiVSdh-
RY&feature=mh_lolz&list=HL1314121729
10. MEASUREMENT
!
○ If a chemist wants to measure a certain reaction, he/
she knows exactly what to do & what to measure.
!
!
○ With psychology, it’s a little less obvious...
● How exactly do you measure self-esteem?
● How exactly do you measure happiness?
11. MEASUREMENT
!
○ Operationalization
● Wikipedia: “The process of defining a fuzzy concept so as to
make the concept clearly distinguishable or measurable and
to understand it in terms of empirical observations.”
!
!
○ Now you will try operationalizing something...
12. LET’S SAY YOU WANT TO STUDY
THE EFFECTS OF DRINKING ON DRIVING...
○ You can’t bring a bunch of students into the lab, get them drunk,
and have them drive around on Green Street.
!
● You might get in some trouble. Maybe.
!
○ You have to get creative & think of a way to “get at” your question.
!
● Why would drunk people have trouble driving?
○ Poor motor control
!
○ Are there safer (and more legal) ways for you to study the effects of
drinking on motor control so you can get at this question a different way?
15. ...BUT WOULD YOU WANT THIS GUY TO BE
RESPONSIBLE FOR DRIVING YOU HOME?
16. ○ Operationalization
● How to measure an abstract idea in an observable way.
● Spells out exactly how the concept will be measured
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!
!
!
!
!
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○ Example: Aggression
● How many times do you punch a doll in front of you?
● How much does your blood pressure rise?
● How long does it take before you yell at someone?
17. WHAT IS LOVE?
!
You are conducting a study, and you need to measure how
much someone experiences love.
!
In order to do this, you need to first operationalize the
“fuzzy concept” of love.
Baby, don’t hurt me. Don’t hurt me. No more.
18. WHAT IS LOVE?
Physiological
Angelina might
operationalize her love for
Brad as how much her
heart races, her palms
sweat, and her stomach
gets butterflies when she
sees Brad.
19. WHAT IS LOVE?
Behavioral
My very fat cat Mason
might operationalize love
as how much food and how
many pets I give him
20. WHAT IS LOVE?
Self-Report (Open-Ended)
Noah and Allie might
operationalize love with a
complicated, long-winded answer...
!
Fighting, calling each other out on
things, but wanting to do that
every day & not with anyone else.
!
Not easily measured by a “scale.”
http://youtu.be/VHqU7L1rVFI?t=2m
21. WHAT IS LOVE?
Self-Report (Closed-Ended)
...or, you could just shush them
and make them circle a response
for how much they love each other
on a scale of 1 to 5.
http://youtu.be/VHqU7L1rVFI?t=2m
22. TYPES OF RESEARCH
○ Correlational
● Measuring the relationship between X and Y
!
!
○ Experimental
● Designing an experiment to figure out if X causes Y
!
!
○ Note: Experiments can still involve correlations. The
difference is whether you are simply measuring
variables to get this correlation, or if you are designing
an experiment to test your question.
23. CORRELATIONAL VS. EXPERIMENTAL
○ Measure 2+ variables; no
variables are manipulated
!
○ Measured as they occur in
the “real world.”
!
○ No assignment to levels of
a variable
○ Measure 1+ variable(s),
manipulate 1+ variable(s)
!
○ Experimenters set as a
“control condition.”
!
○ Random assignment to
levels of the manipulated
variable
Correlational Experimental
24. DO VIOLENT VIDEO GAMES CAUSE
AGGRESSION?
● Follow 100 kids for 1 week.
!
● Measure how many hours they
spend playing violent video
games.
!
● Measure how many acts of
aggression each kid performs.
!
● At the end of the week, compute a
statistical correlation between
hours of violent gaming and
number of aggressive actions.
○ Randomly assign 5 groups of
20 children to play 0, 5, 10, 15,
or 20 hours of violent games
for 1 week
!
○ Measure how many acts of
aggression each kid performs.
!
○ At the end of the week, the
researchers compute a
statistical correlation between
hours of violent gaming and
number of aggressive actions.
Correlational Experimental
25. DO VIOLENT VIDEO GAMES CAUSE
AGGRESSION?
● Follow 100 kids for 1 week.
!
● Measure how many hours they
spend playing violent video
games.
!
● Measure how many acts of
aggression each kid performs.
!
● At the end of the week, compute a
statistical correlation between
hours of violent gaming and
number of aggressive actions.
○ Randomly assign 5 groups of
20 children to play 0, 5, 10, 15,
or 20 hours of violent games
for 1 week
!
○ Measure how many acts of
aggression each kid performs.
!
○ At the end of the week, the
researchers compute a
statistical correlation between
hours of violent gaming and
number of aggressive actions.
Correlational Experimental
26. DO VIOLENT VIDEO GAMES CAUSE
AGGRESSION?
● Follow 100 kids for 1 week.
!
● Measure how many hours
they spend playing violent
video games.
!
● Measure how many acts of
aggression each kid performs.
!
● At the end of the week, compute a
statistical correlation between
hours of violent gaming and
number of aggressive actions.
○ Randomly assign 5 groups
of 20 children to play 0, 5,
10, 15, or 20 hours of
violent games for 1 week
!
○ Measure how many acts of
aggression each kid performs.
!
○ At the end of the week, the
researchers compute a
statistical correlation between
hours of violent gaming and
number of aggressive actions.
Correlational Experimental
27. STATISTICAL CORRELATION
○ Correlation Coefficient: A statistical value that indicates
how well you can predict one variable using another
● A number between -1.00 and +1.00
!
○ All of these correlation coefficients COULD have come from
a correlational design or an experimental design.
!
○ Also... CORRELATION DOES NOT IMPLY CAUSATION!
● The ability to say one variables CAUSES the other comes from the
type of research design, not the type of results
28. UNDERSTANDING CORRELATIONS
○ Magnitude
● The size of the correlation
● 0.8 is “stronger” than 0.2
○ Correlation between coffee consumption and exam grade: 0.8
○ Correlation between water consumption and exam grade: 0.2
○ Coffee & grades have a stronger correlation than water & grades
!
○ Direction
● Whether the correlation is positive or negative
● -0.8 is negative; 0.8 is positive
○ Correlation between coffee consumption and exam grade: 0.8
○ Drinking more coffee is related to HIGHER exam grades
○ Correlation between coffee consumption and exam grade: -0.8
○ Drinking more coffee is related to LOWER exam grades
29. UNDERSTANDING CORRELATIONS
!
○ Magnitude
● How strong is the relationship?
● How closely are the two variables related to each other?
● Doesn’t matter if one goes up when the other goes down.
!
!
○ Direction
● Do the variables go in the same direction (as one gets bigger,
the other gets bigger) or the opposite direction (as one gets
bigger, the other gets smaller)?
31. THINKING ABOUT CORRELATIONS
!
! Reverse causality
! X may cause Y
! Y may cause X
!
!
! Third variable problem
! X and Y may BOTH be caused by some
unmeasured variable
36. CAUSALITY
!
○ We should only make causal claims (“x causes y”) if we
have conducted an experiment that includes:
● Manipulation of independent variables
● Random assignment
● [Control conditions]
!
○ These factors take care of concerns with both reverse
causality and the third variable problem
37. CAUSALITY
○ Even if we believe a causal link exists, we can’t take
evidence from a correlational design as proof.
● Saying we can’t show causation with a correlational study is
different than saying the causal link does not exist!!!
● It may exist, but we are obligated to provide solid, persuasive
evidence to show that it does.
● Correlational study designs simply don’t meet that standard –
they leave room for too many alternative explanations.
!
○ Social psychologists generally prefer experimental
research designs because they establish causality.
38. The Notorious B.I.G. claims that there
is a positive correlation between mo’
money and mo’ problems.
!
Can we assume causality here?
39. MO’ MONEY, MO’ PROBLEMS.
○ Having more money could
cause someone to have
more problems
○ Having more problems
could cause someone to
want to make more money
○ Jay-Z Corollary: A
romantic relationship
could affect the two
variables in no fewer than
99 ways.
○ Randomly assign one group
to get a lot of money, and one
group to be broke
○ Because it is randomized,
you assume the two groups
are equal in ALL WAYS
other than amount of money
○ If there is still a difference in
the number of problems, you
can conclude that the money
caused them.
Correlational Experimental
41. EXPERIMENTAL DESIGN
○ Independent variable (IV)
● The variable that is manipulated by the researcher
● The IV is hypothesized to cause changes in the DV
● Assignment to different levels of the IV must be random!
!
!
○ Dependent variables (DV)
● The variable that is measured – behavior, thoughts, outcomes.
● In social psych, the DV is almost always “average behavior”
when we look across all individuals in a condition
42. EXPERIMENTAL DESIGN
○ Control condition (CC)
● A group assigned to some “inherently meaningful” level of an
IV… often “0” (the absence of the IV), but sometimes not
● Used as the comparison group
● Example: Mo’ Money, Mo’ Problems
○ Control Group = Broke
!
!
○ Random assignment
● Assigning participants to different groups, so they are just as
likely to be placed into one group as into another
● For us, this “cancels out” personality – allows us to focus
on the manipulation/environment
43. EXPERIMENTAL DESIGN
○ Random assignment to a manipulated independent
variable (IV) is the hallmark of experimental design
● This ensures that individuals are evenly distributed across
conditions (it “cancels out” differences between subjects)
!
○ This allows us to conclude that different levels of the IV
actually cause differences in the DV
● No longer need to be worried about reverse causality because
we changed one variable before measuring the other
● No longer need to be worried about third variable problems
44. MORE ON EXPERIMENTAL DESIGN
○ Hypothesis: Giving a public speech temporarily increases
extroversion
Extroverts
Introverts
Initial group
Give speech
Control condition
45. MORE ON EXPERIMENTAL DESIGN
○ Without Random Assignment:
Give speech
Control condition
46. MORE ON EXPERIMENTAL DESIGN
○ With Random Assignment:
Give speech
Control condition
47. MORE ON EXPERIMENTAL DESIGN
○ Does random assignment solve all of our concerns?
● No!
● You can still get biased samples for various reasons
● It’s important to replicate findings (ideally, with different subject
populations and different measures).
!
○ Overall, if a result replicates while using random
assignment and manipulating IVs, we’re comfortable making
claims about causality.
!
○ Causal logic is not a black-and-white “yes/no” decision.
● Or, it shouldn’t be.
48. OTHER TYPES OF RESEARCH
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○ Observational research
● Researchers observe & take notes about people doing stuff.
● Do more kids hit each other on Playground A or B?
!
○ Archival research
● Analyzing behaviors that are documented in records.
● Do Republican and Democratic presidential candidates talk
about different overall themes in their convention speeches?
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○ Survey research
● Asking questions through a survey or interview.
● How happy are you? How often do you brush your teeth?
49. OTHER TYPES OF RESEARCH
!
○ Observational, Archival, and Survey research designs are
usually correlational.
!
○ Correlational designs often used as a “first step” before an
experimental design because they are easier & cheaper.
!
○ When are they not?
● If you manipulate something and participants are randomly
assigned to receive different manipulations!
● Example: Half of your participants get your survey on green
paper, and the other half get it on pink paper.
51. RELIABILITY & VALIDITY
X Y
!
!
x y
!
○ Example: Does self-esteem (X) lead to success (Y)?
!
○ Operationalizing
● We can use GPA or income (y) to represent success (Y)
● We can use a survey (x) to represent self-esteem (X)
52. RELIABILITY & VALIDITY
○ Validity
● Does the measure (x) accurately capture the variable (X)?
!
● Example: I.Q. tests (x) are one way to measure intelligence
(X), but they may not capture everything important.
!
○ Reliability
● Does the measure (x) consistently give you the same
assessment of the variable (X)?
!
● Example: If you take an I.Q. test four times over a year, will
you get the same results (or pretty close) every time?
54. RELIABILITY & VALIDITY
○ Weighing yourself on a scale...
● Let’s say you “really” weigh 150 pounds
● You weigh yourself every day for 1 week
!
○ Scale #1: Reliable but not valid
○ 120, 121, 119, 120, 120, 123, 117
○ Consistent, but nowhere close to 150
!
○ Scale #2: Valid but not reliable
○ 150, 140, 160, 145, 165, 130, 170
○ Averages out to 150, but very inconsistent
!
In both cases, you should probably buy a new scale.
55. RELIABILITY & VALIDITY
!
○ Example: Intelligence & IQ
!
!
○ If IQ is a reliable measure, we should get roughly the
same IQ score every single time we take an IQ test.
!
○ If IQ is a valid measure, then it should correlate
strongly & positively with your GPA, SAT/ACT scores,
teacher evaluations, and scores on other intelligence
tests, like the Cognitive Reflection Test.
56. RELIABILITY & VALIDITY
!
○ Example: What Is Love?
Operational Definition: Palm Sweatiness & Heart Rate
!
○ If PSHR is a reliable measure, your amount of palm sweat
and your heart rate should be roughly the same every time you
look at your significant other.
!
○ If PSHR is a valid measure, it should be able to predict
whether or not you’re still together in 6 weeks & how often you
fight, and it should correlate with how much you say you love
your significant other, how often you kiss/hug, how often you
talk to each other, etc.
57. VALIDITY
○ Internal validity
● Did anything else except your IV affect the DV?
● Did we really measure what we wanted to measure?
!
○ External validity
● “Generalizability”
● Does it resemble real life and real situations?
● Could you get the same results again, even if you used...
○ Other operationalizations of the variables?
○ Other samples of people?
○ Other situations/contexts?
58. VALIDITY
!
○ Internal and external validity can be a trade-off.
!
!
○ The more closely your experiment resembles real-life
and could be generalized to other people and situations
(external validity), the more difficult it becomes to
control all of the variables and isolate the one that you
are truly interested in studying (internal validity).
59. APPLYING VALIDITY
For this study, what are…
The IV?
The DV?
Does this study have…
Internal validity?
External validity?
Construct validity?
Reliability?
60. APPLYING VALIDITY
○ IV: Drunkenness
● Operational Definition: Number of Drinks
○ DV: Motor Skills
● Operational Definition: Writing Ability
○ Internal validity:
● Can we be sure that the drinks are what caused the participants’
differences in motor skills?
○ External validity:
● Can we be sure that this would apply to other motor skills, other
groups of people, other situations? Does this resemble the real-life
problem?
○ Reliability:
● Would we get the same results if we did the test again?
61. FOR A QUIZ/TEST...
○ If you are given an experiment, you should be able
to identify...
● Independent Variable(s)
● Dependent Variable(s)
● If it has validity
● If it has reliability
62. CHAPTER 2:
MOST IMPORTANT POINTS
○ Different types of
research
!
!
○ Importance of
Experiments
!
!
○ Experiment Components
○ Correlational vs.
Experimental
!
!
○ Reliability & Validity
!
!
○ Random Assignment:
What is it? Why is it
important?