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Statistics: What do I need to know?

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Title: Statistics: What do I need to know?


1
Statistics What do I need to know?
  • What are Chi squares, t-tests, ANOVA,
    correlations and regressions?
  • How do I know if the researchers used the correct
    statistical tests?

2
How do statstics relate to an indivudal
participant
  • Difference between climate and weather
  • Can predict exactly what this person will do!

3
Participants 65 Pregnant Adolescents in Teen
Parent Programs
  • Means age 16.12, GPA 2.04, age/grade lag .17,
    Grade 10.8, FOB/MOB age difference 3.17 year
  • Percentage AA (13), Hispanic (42), Caucasian
    (45).
  • Refusal rate 2
  • Attrition 6 (fetal demise, diagnosis of CA)
  • 7 Sites Relationship of demographics to school
    attendance site, ethnicity, SES, age, grade,
    GPA
  • P values .13 - .95
  • Was I happy?

4
Statistical tests Were the right ones used?
  • Demographics 7 groups ANOVA used.. not 42
    T-Tests
  • Linear Regression Not single order correlations.
    Symbol is r
  • DV school attendance interval data 1-21 days.
  • Variables entered into the computer in a
    step-wise manner based on the TPB
  • 1st Demographics then TPB concepts

5
Theory of Planned Behavior
Demographics TBP Constructs Intention predicts behavior Outcome
Age SN
School success PC Intention Behavior
SES GPA Fx Hx Attitude
6
What are correlations?
  • The relationship between the IV (x axis) and the
    DV (the y axis)
  • R .6 for every 1 on the Y axis the x axis line
    goes up .6

7
What does Regression mean?
  • All the little dots are each data point (i.e each
    score)
  • r refers to how much y (DV) changes in
    relationship to X (IV)
  • The solid line is the line of best fit

8
Ven Diagrams and correlations
  • IV Red (attitude)
  • IV Blue (social norm)
  • DV Yellow (attendance)
  • Orange what attitude contributes uniquely to
    attendance (beta wt)
  • R2 orange white green

9
DV C School attendance IV A Attitude r
AC ABC R2 ACbeta AC IV B Social
Norm r BCABC beta BC
  • Visualizing Shared and Unique variance How much
    do we understand about the DV?

10
Single order correlations can be deceiving!
IVs beta F p
Attitude .006 .96
Perceived Control .098 .45
Social Norm .159 .17
Intention .234 .63
Full Model 3.07 .023
A PC SN I
School (DV) .06 (.67) .25 (.09) .29 (.04) .33 (.01)
A .10 (.52) .00 (.99) .06 (.69)
PC .28 (.05) .38 (.00)
SN .22 (.10)
11
Did the theory (model) work? How do you
know?Why are the R2 and Adjusted R2 different
(think sample size!)
R2 Adjusted R2 F P (.05)
.140 .093 3.007 .023
12
Does the TBP help us understand school attendance?
  • IVs Demographics Did not predict school
    attendance
  • P .28 - .62
  • IVs Attitude Social Norm Perceived Control
  • Intention
  • Predicted
  • DV School Attendance
  • Why is this a helpful thing to know?

13
Confidence Intervals
  • If crosses 0 or 1 then results are not
    significant
  • The larger dot is the mean
  • The line relates SD p value (p .05 then line
    .95)

14
Effect Size Chi Square
  • Small Effect size Dont smoke CA
  • Med Effect size smoke CA
  • Lge ES smoke/emphsyema/fx hx

Df N-1 Sm Med LGE
1 795 87 26
2 964 107 39
3 1090 121 44
15
Effect Size t test/ANOVA
  • Small Effect
  • Med Effect
  • Lge Effect

Df N-1 Small Med Large
2 393 67 26
3 322 52 21
4 274 45 18
16
ANOVA More than 2 groups
  • Where is the difference??
  • Post Hoc will tell you!
  • i.e. Significant difference between groups 1 3
    and 1 4 3 4

Group X Minutes of exercise X Weight loss (lbs) P value
1 0 -.1 .04
2 30 .2 .02
3 15 .3 .05
4 45 .8 .01
17
Did they use the right test?
  • Why we need p values
  • Chi Square comparing two or more groups using

18
Did they use the right tests means
  • T test comparing the means of two groups
  • ANOVA comparing the means of three or more groups
  • Did they do a post hoc test

19
Did they do the right tests comparisons
  • Correlations comparing two variables ( 1 IV 1
    DV) on a continuum
  • Regression there is more then one IV and there
    is one DV
  • IV 1 IV2 IV3 DV

20
P values and fishing expeditions
  • What does a p value of .05 mean?
  • So if I do 100 comparisons.. How many will be
    related by chance alone?

21
How much confidence should I have in statistics?
  • Statistics dont lie.. Liars use statistics
  • Based on what I know about this subject (people,
    disease) does this make sense
  • You can have statistical significance, but not
    clinical significance, but not the other way
    around!
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