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Psychology 412

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Dependent samples. SWL1 and SWL2 are not independent 'Dependence' means 'correlation' ... Candy. 1. 6. 7. Joe. 1. 5. 6. Maggie. 2. 4. 6. Karen. 3. 3. 6. Julia ... – PowerPoint PPT presentation

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Title: Psychology 412


1
Psychology 412
  • Instructor Adam Kramer
  • Week 2

2
Last week
  • Questions lead to measurement
  • Measurement leads to variability
  • Summaries can be made
  • Variability quantifies the likelihood of the
    summary
  • Standard deviations are useful
  • The central limit theorem gives us p

3
Some comments
4
Sampling Distributions
  • You have a sample size of n
  • Variance and SD have are EXPECTED to vary as a
    function of n
  • You only have ONE sample size, so how much
    variability does IT have?

5
t distributions
6
But the original distribution...
  • The prior slide shows t-distributions for MEANS,
    not for POINTS...

7
UNIFORM distribution
8
SKEWED distribution
9
Back to our data...
  • Are we SATISFIED?
  • Moreso than a KNOWN population z
  • Moreso than an ESTIMATED pop (i.s.) t
  • Moreso than a CONSTANT (o.s.) t
  • Do our scales DIFFER?
  • SWL measure 1 vs measure 2

10
Dependent samples
  • SWL1 and SWL2 are not independent
  • Dependence means correlation
  • Or, knowing one tells us about the other
  • This is because they share raters
  • Namely, us.
  • So we cant compare us to ourselves the same way
    we compare us to the student body.

11
Dependent samples
  • Solution Remove the dependence.
  • Are the measures different?

12
Dependent samples
  • Are they different?
  • On average, do they differ
  • On average, are the differences nonzero?
  • Hypothesis µ1-µ20
  • A one-sample t-test on the differences
    sd2.748, se.97, µ0.125, t(7)0.123, n.s.

13
Not different...
  • Is that because n is small?
  • Are they related to each other at all?
  • Relative, of course, to the variability

14
Variance again.
  • The average squared deviation from the mean.
  • But now we have two variances two average
    squared deviations from each mean
  • Do they go up and down together?

15
Two variances
  • When one observation is above the mean for the
    variable, is the other?
  • How much higher?
  • Or lower, or neithersimilarity of highness is
    what matters

16
Comparing deviations
  • Two variances
  • Multiply them!
  • Review -11-1, 111, -1-11
  • Applied If x and y are on the same side of the
    mean, the product is positive
  • If x and y are on opposite sides, negative

17
Comparing deviations
  • Result
  • If a person is above average or below average
    on both measures, the product is high.
  • If a person is above average on one and below
    on the other, the product is low
  • So, if we add them

18
Adding deviation products
  • With the variance, we couldnt add
  • Because the sum of deviations from average is
    zero
  • With the deviation products, we can!
  • Because each deviation from average is enhanced
    by another variables deviation!
  • This value is called the cross product.

19
Covariance
  • Variance averaged squared deviations
  • We average co-deviation in the same way
  • and call it covariance.
  • but theres no nifty greek symbol for it. (

20
Our example
21
Un-squaring covariance
  • Variance was square rooted to get stdev because
    variance is the average squared deviation
  • Covariance is not squared deviation, its the
    product of two unsquared deviations
  • BUT WAIT! Stdev is an un-squared unit!

22
Un-squaring covariance
  • Divide the covariance by which stdev?

23
Un-squaring covariance
  • The result
  • A product term over
  • a square-rooted square
  • product term, over sqrt(n-1), just like stdev
  • The bottom is always positive
  • The top determines the sign on average,
  • are both variables on the same side of the
  • mean, or opposite sides?

24
Un-squaring covariance
  • The deviation on top is removed on the bottom
  • For both variables.
  • The result is fully un-scaled the scale is
    gone
  • Hence, it can only range between 0 and 1, with
    the sign determined by the top

25
Correlation
  • Its the correlation!
  • You probably saw that coming.
  • Correlation r is between -1 and 1
  • Distance from zero indicates relatedness
  • Positive Similar, Negative Opposite
  • Zero Not related

26
Correlation
  • Because it is unscaled, the scales become
    irrelevant
  • Its as if both variables were put on the same
    level it doesnt matter if we say x is
    correlated with y or y with x
  • One variable may have had more variance, but that
    has been removed.

27
Correlation and Prediction
  • So, the degree to which variables are related
    should indicate the degree to which one predicts
    the other
  • Predict Guess one from the other
  • Degree to which How well we can do it
  • Back to variabilityhow much can we account for?
  • We seek to explain variance.

28
Correlation and Prediction
  • But that pesky -1 to 1 range
  • How much does an overlap of -.5 mean?
  • Squaring to the rescue!
  • The square of the sum of products over the
    product of the sums of squares
  • Or, covariance out of ALL variance!

29
Correlation and Prediction
  • Covariance out of ALL variance sounds like a
    proportion
  • Indeed it is. R2 is the proportion (percent) of
    standardized variance that one variable
    explains of the other
  • But is it meaningful?
  • Er, significant

30
Testing correlations
  • You may have noted how t-formula like the
    correlation formula is.
  • Indeed, r is distributed as
  • n-2 because we computed TWO means
  • This transformation gives r the infinite scope of
    t but undefined at r1.0.

31
Our data
  • We find r-.60large, negative, but insignificant
  • Remember, n8 is tiny!
  • How do we interpret this?

32
Using correlations
  • People know what a correlation is
  • R2, too
  • But they are weirdly distributed
  • An actual correlation of 0.5 could be
    under-estimated by up to 1.5, but overestimated
    by only up to 0.5.

33
Using correlations
  • Transfrom the r to a z under the null hypothesis
  • Gives you
  • how many sd
  • your r is above no relationship
  • But your deviation and n are gone!
  • You cant estimate how accurate your r is.

34
Two steps back
This is where Tuesdays lecture ended.
  • Two basic tools
  • Differences, similarities
  • But wait!
  • The tools come after the data
  • The data comes after the research question

35
The story of a correlation
  • Forming a research question
  • Lots of people in this world
  • Some of them are really bad at emotion regulation
  • Man, thats unfortunate for them. I wonder why it
    is

36
The story of a correlation
  • Forming a research question
  • Can I think of anything that would describe which
    people have bad regulation patterns? Or good
    ones?
  • Hmm, types of people.

37
The Big 5
  • Personality trait sounds like a good way of
    typing people!
  • Openness, Conscientiousness, Extraversion,
    Agreeableness, Neuroticism
  • Closed-mindedness, Ignoring of others,
    Introversion, Disagreeableness, Emotional
    Stability
  • Which ones go where?

38
Measuring constructs
  • How would you measure personality?
  • How would you measure emotion regulation?

39
Measuring constructs
  • How would you measure personality?
  • A bunch of questions, aggregated
  • One question per trait
  • How would you measure emotion regulation?
  • A bunch of questions, aggregated
  • One question per strategy

40
Research design
  • Bring someone in, ask them lots of questions!
  • Time-tested, advisor-approved, tastes great, too!
  • Like 2 pencil lead.
  • Why might this not work?
  • What questions do we want to ask?
  • Depends on what answers we want to get

41
Scales
  • Continuous or categorical?
  • Is this person an INTROVERT?
  • Does this person have a LEVEL of Int/Ext?
  • Similar for emotional regulation strategies?
  • What is our question?

42
Emoreg Scales
  • Whats good emoreg?

43
Emoreg Scales
  • Whats good emoreg?
  • SWL, Savoring

44
Time-lapse sequence here
  • Write the IRB proposal, reserve the room, run the
    study, collect the data
  • Compute the scale values
  • Designing scales is a statistical issue we might
    get to, but were talking about pre-validated
    scales

45
EDA
46
EDA
47
EDA
48
EDA
  • Sweeeet. Looks good.
  • The good thing about pre-designed scales
  • We may proceed!

49
Questions to Hypotheses
  • We hypothesize that
  • Higher E predicts higher SWL
  • Higher N yields lower SWL
  • Higher A predicts higher SWL, Savoring

50
Hypotheses to strategies
  • We would test that by
  • Higher E predicts higher SWL
  • Es SWL compared to I (independent sample t)
  • Correlate SWL with E
  • Es SWL above 50 (one-sample t)
  • Higher N yields lower SWL
  • Higher A predicts higher SWL, Savoring
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