Title: Statistics: What do I need to know?
1Statistics 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?
2How do statstics relate to an indivudal
participant
- Difference between climate and weather
- Can predict exactly what this person will do!
3Participants 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?
4Statistical 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
5Theory of Planned Behavior
Demographics TBP Constructs Intention predicts behavior Outcome
Age SN
School success PC Intention Behavior
SES GPA Fx Hx Attitude
6What 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
7What 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
8Ven 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
9DV 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?
10Single 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)
11Did 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
12Does 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?
13Confidence 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)
14Effect 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
15Effect 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
16ANOVA 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
17Did they use the right test?
- Why we need p values
- Chi Square comparing two or more groups using
18Did 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
19Did 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
20P 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?
21How 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!