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Effect Size and Power

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P-values are heavily influenced by sample size (n) ... Effect size is what tells you about this, and we will discuss this today, in more detail ... – PowerPoint PPT presentation

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Title: Effect Size and Power


1
Effect Size and Power
2
Effect Size and Power
  • Two things mentioned previously
  • P-values are heavily influenced by sample size
    (n)
  • Statistics Commandment 1 P-values are silent on
    the strength of the relationship between two
    variables
  • Effect size is what tells you about this, and we
    will discuss this today, in more detail
  • Dont forget, if you havent already, read
    Cohens (1992) Power Primer
  • Its only five pages long, simply-worded, and the
    best article in statistics youll ever read

3
Effect Size and Power
  • P-values are influence heavily by n
  • So heavily influenced, in fact, that with enough
    people anything is significant (a Type I Error)
  • Ex Data with two samples, and N10
  • Group 1 mean 6, s 3.16
  • Group 2 mean 7, s 3.16
  • t -.5, p .63 ? We would fail to reject Ho

2 3
4 5
6 7
8 9
10 11
4
Effect Size and Power
  • Take same data, but multiply Nx20 (N 200)
  • Group 1 mean still 6, s still 3.16
  • Group 2 mean still 7, s still 3.16
  • But now t -2.46, p .02 ? We would reject Ho

2 3
4 5
6 7
8 9
10 11
2 3
4 5
6 7
8 9
Etc Etc
5
Effect Size and Power
  • As I said before, with enough n, anything is
    significant
  • Because p-values dont say anything about the
    size of your effect, you can have two groups that
    are almost identical (like in our example) that
    your statistics say are significant
  • P-values just say how likely it is that if you
    took another sample, that youd get the same
    result the results from big samples are stable,
    as wed expect

6
Effect Size and Power
  • Therefore, we need something to report in
    addition to p-values that are less influenced by
    n, and can say something about the size of our
    IVs effect
  • In the previous example, we have a low p-value,
    but our IV had little effect, because both of our
    groups (both with it and without it) had almost
    the same mean score
  • Jacob Cohen to the rescue!
  • Cohen and others have been pointing out this flaw
    in exclusively using p-based statistics for
    decades and psychologists and medical research
    are only beginning to catch on most research
    still only reports p-values

7
Effect Size and Power
  • Cohen (and others) championed the use of Effect
    Size statistics that provide us with this
    information, and are not influenced by sample
    size
  • Effect Size the strength of the effect that our
    IV had on our DV
  • There is no one formula for effect size,
    depending on your data, there are many different
    formulas, and many different statistics (see the
    Cohen article) they all take the general form

8
Effect Size and Power
  • Ex. The effect size estimate for the
    Independent-Samples T-Test is
  • This looks a lot like our formula for z, and is
    interpreted similarly
  • D-hat the number of standard deviations mean1
    is from mean2 just like z was interpreted as
    the number of standard deviations our score fell
    from the mean

9
Effect Size and Power
  • Interpreting Effect Size
  • How do we know when our effect size is large?
  • 1. Prior Research if previous research
    investigating an educational intervention for
    low-income kids only increases their grades in
    school by .5 standard deviations and your does so
    by 1 s, you can say this is a large effect
    (twice as large, to be exact)
  • 2. Theoretical Prediction if were developing a
    treatment for Borderline Personality Disorder,
    theory behind this disorder says that its stable
    across time and therefore difficult to treat, so
    we may only look for a medium effect size before
    we declare success

10
Effect Size and Power
  • Interpreting Effect Size
  • How do we know when our effect size is large?
  • 3. Practical Considerations if our treatment
    has the potential to benefit a lot of people
    inexpensively, even if it only helps a little
    (i.e. a small effect), this may be significant
  • I.e. the average effect size for using aspirin to
    treat heart disease is small, but since it is
    inexpensive and easily implemented, and can
    therefore help many people (even if only a
    little), this is an important finding
  • Fun Fact the GRE predicts GPA in graduate
    school in psychology at an effect size of only r
    .15 (which is small), but is still used because
    there are no better standardized tests available

11
Effect Size and Power
  • Interpreting Effect Size
  • How do we know when our effect size is large?
  • 4. Tradition/Convention when your research is
    novel and exploratory in nature (i.e. there is
    little prior research or theory to guide your
    expectations), we need an alternative to these
    methods
  • Cohen has devised standard conventions for large,
    medium, and small effects for the various effect
    size statistics (see the Cohen article)
  • However, what is large for one effect size
    statistics IS NOT NECESSARILY large for another
  • Ex. r .5 corresponds to a large effect size,
    but d .5 only corresponds to a medium effect

12
Effect Size and Power
  • Take Home Messages
  • 1. Interpreting effect size statistics requires
    detailed knowledge about your experiment
  • Without any knowledge of how an effect size
    statistic was obtained, if someone asks Is an r
    .25 a large effect?, your answer should be
    It depends.
  • 2. When reporting effect size, you CANNOT say
    My effect size was .05, and so was large,
    because different effect size statistics have
    different conventions for small to large values
  • Even David Barlow, a world-renowned expert on the
    treatment of anxiety disorders in his book The
    Clinical Handbook of Psychological Disorders made
    this mistake

13
Effect Size and Power
  • Just like with too large a sample anything is
    significant, with too small a sample nothing is
    significant
  • This refers to the probability of a Type II Error
    (ß), incorrectly failing to reject Ho (AKA
    rejecting H1)
  • How do we determine what sample size is therefore
    neither too large, nor too small?

14
Effect Size and Power
  • We try to maximize power (1 ß), which is the
    reverse of a Type II Error (ß)
  • Type II Error incorrectly failing to reject Ho
    ( when it is false) Power correctly rejecting
    Ho (when it is false)
  • How do we maximize power?
  • 1. Increase Type I Error (a)
  • This is problematic for obvious reasons we
    dont want to decrease making one type of error
    for another if we can help it

15
Effect Size and Power
  • How do we maximize power?
  • 2. Increase Effect Size
  • We accomplish this by trying to make our IV as
    potent as possible, or choose a weak control
    group
  • I.e. Comparing our treatment to an alternative
    treatment will result in a lower effect size than
    if we compare it to no treatment
  • 3. Increase n or decrease s
  • Remember in our statistical tests we are
    dividing by the standard error (s/vn)
    decreasing s makes this number smaller, as does
    increasing n dividing by a smaller number gives
    us a larger value of z or t, which results in an
    increased chance of rejecting Ho

16
Effect Size and Power
  • What is good power?
  • Statistical convention says that power .8 is a
    good value that minimizes both Type I and Type II
    Error
  • Power .80 ? 20 chance of making Type II Error
  • Before we conduct our experiment, i.e. a priori,
    we need to do what is called a Power Analysis
    that tells us what sample size will give us our
    needed power
  • You can download a program called GPower from
    the internet that does these calculations for you
  • You type in the kind of test youre doing
    (remember how tests can be more or less
    powerful), your alpha, the power you want, and
    the effect size you expect, and it gives you the
    sample size youd need
  • Other programs also do this, like Power and
    Precision, but GPower is free
  • Find it at
  • http//www.psycho.uni-duesseldorf.de/aap/projects/
    gpower/

17
Effect Size and Power
  • You can also do the calculations by hand (see the
    textbook)
  • However, understanding the concept of effect size
    and power is more important than knowing how to
    calculate it by hand, and since I dont want to
    overwhelm you guys, you wont be tested on these
    calculations (you can skip Secs. 8.3 - 8.5)

18
Effect Size and Power
  • What is good power?
  • Power Analysis
  • Involves estimating a predicted effect size ahead
    of time
  • Prediction based on interpretation guidelines
  • Prior Research
  • Theory
  • Practical Considerations
  • Convention

19
Effect Size and Power
  • How does effect size add to interpretation of
    study results over-and-above p-values?

P-value/E.s High Low
High IV had a strong and reliable effect on DV IV had a weak effect on DV inflated by large n
Low IV had a strong effect on DV, but too low n to detect it/IV had a strong effect of unknown reliability IV had a weak effect on DV
20
Effect Size and Power
  • Retrospective Power
  • SPSS provides an estimate of power given the
    p-value and effect size obtained and sample size
    used
  • Tempting to interpret low power as indication
    that too few subjects were used to detect the
    effect obtained
  • Recall though that this information inferred
    directly from p-value and e.s., which are used to
    calculate power
  • Retrospective power estimates add nothing to
    interpretation of p-values and e.s.
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