Title: Quantitative Methods
1Quantitative Methods
- Checking the models I independence
2Checking the models I independence
Assumptions of GLM
3Checking the models I independence
Assumptions of GLM
BACAFTER BACBEFTREATMNT
(Model Formula)
(Model)
(Fitted Value Equation or Best Fit Equation)
4Checking the models I independence
Assumptions of GLM
BACAFTER BACBEFTREATMNT
(Model Formula)
(Model)
5Checking the models I independence
Assumptions of GLM
(Model)
6Checking the models I independence
Assumptions of GLM
(Model)
Assumptions of GLM Independence Homogeneity of
variance Normality of error Linearity/additivity
7Checking the models I independence
Assumptions of GLM
(Model)
Assumptions of GLM Independence Homogeneity of
variance Normality of error Linearity/additivity
8Checking the models I independence
Independence in principle
9Checking the models I independence
Heterogeneous data
10Checking the models I independence
Heterogeneous data
11Checking the models I independence
Heterogeneous data
12Checking the models I independence
Heterogeneous data
13Checking the models I independence
Heterogeneous data
14Checking the models I independence
Heterogeneous data
15Checking the models I independence
Repeated measures
16Checking the models I independence
Repeated measures
17Checking the models I independence
Repeated measures
18Checking the models I independence
Repeated measures
Single summary approach Multivariate approach Few
summaries approach
19Checking the models I independence
Repeated measures
name C100 wtg let wtgLOGWT20-LOGWT3 glm
wtgdiet
GLM RATEDIET
LET K33-31/3 ! 31/3 is the
average of LET K88-31/3 ! 3,
8 and 20 LET K2020-31/3 LET K1K32K82K202
LET RATE(K3LOGWT3K8LOGWT8K20LOGWT20)/K1
20Checking the models I independence
Repeated measures
21Checking the models I independence
Repeated measures
GLM LOGWT60 RATE DIET MANOVA NOUNIVARIATE.
22Checking the models I independence
Nested data
23Checking the models I independence
Nested data
24Checking the models I independence
Detecting non-independence
In principle would knowing the error for one or
more datapoints help you guess the error for some
other datapoint? Experiments Does the datapoint
correspond to the level of randomisation? Observat
ions Are there groups of datapoints which are
very likely to have similar residuals? Be
suspicious of - Too many datapoints -
Implausible results - Repeated measures
25Checking the models I independence
Last words
- Independence is a key assumption, and is the most
problematic in practice - Always be alert to possible violations
- Know what can be done at the analysis stage
- Realise that mistakes at the design stage are
often unrecoverable at analysis
Checking the models II the other three
assumptions Read Chapter 9