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Model Selection II: datasets with several explanatory variables

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Presentation on theme: "Model Selection II: datasets with several explanatory variables"— Presentation transcript:

1 Model Selection II: datasets with several explanatory variables
Quantitative Methods Model Selection II: datasets with several explanatory variables

2 The problem of model choice
Model Selection II: several explanatory variables The problem of model choice

3 The problem of model choice
Model Selection II: several explanatory variables The problem of model choice

4 The problem of model choice
Model Selection II: several explanatory variables The problem of model choice With 5 x-variables, there are 25=32 possible models, not including interactions. If we include two-way interactions without squared terms, there are 1x1 + 5x1 + 10x2 + 10x8 + 5x64 + 1x1024 = 1450 models If we do allow squared terms, there are 1x1 + 5x2 + 10x8 + 10x64 + 5x x32768 = models. With multiple models, there are many p-values and possible “right-leg/left-leg” and “poets’ dates” effects.

5 The problem of model choice
Model Selection II: several explanatory variables The problem of model choice Economy of variables Multiplicity of p-values Marginality

6 The problem of model choice
Model Selection II: several explanatory variables The problem of model choice

7 Model Selection II: several explanatory variables
Economy of variables

8 Model Selection II: several explanatory variables
Economy of variables

9 Economy of variables Model Selection II: several explanatory variables
all variables increase R2 F<1 - adding the variable decreased R2 adj F>1 - adding the variable increased R2 adj

10 Economy of variables Model Selection II: several explanatory variables
continuous

11 Model Selection II: several explanatory variables
Economy of variables

12 Economy of variables Model Selection II: several explanatory variables
(Predictions for datapoint 39)

13 Multiplicity of p-values
Model Selection II: several explanatory variables Multiplicity of p-values

14 Multiplicity of p-values
Model Selection II: several explanatory variables Multiplicity of p-values

15 Multiplicity of p-values
Model Selection II: several explanatory variables Multiplicity of p-values Focus, don’t fish - reduce number of X-variables - use outside information to decide on inclusion - use outside information to decide on exclusion Stringency - reduce nominal p-value Combine model terms - for once, reverse the usual splitting

16 Multiplicity of p-values
Model Selection II: several explanatory variables Multiplicity of p-values

17 Multiplicity of p-values
Model Selection II: several explanatory variables Multiplicity of p-values DF SeqSS 1 42.7 1 14.7 MS=424.3/3=141.4 F = 141.4/108.9 = 1.30 on 3 and 30 DF Single p-value from Minitab using CDF: p=0.293 CDF 1.30 K1; F LET K2=1-K1

18 Model Selection II: several explanatory variables
Stepwise regression

19 Model Selection II: several explanatory variables
Stepwise regression

20 Stepwise regression Model Selection II: several explanatory variables
General Linear Model: LRGWHAL versus Source DF Seq SS Adj SS Adj MS F P VIS Error Total Term Coef SE Coef T P Constant VIS

21 Stepwise regression Model Selection II: several explanatory variables
General Linear Model: LRGWHAL versus Source DF Seq SS Adj SS Adj MS F P VIS Error Total Term Coef SE Coef T P Constant VIS

22 Stepwise regression Model Selection II: several explanatory variables
General Linear Model: LRGWHAL versus Source DF Seq SS Adj SS Adj MS F P VIS Error Total Term Coef SE Coef T P Constant VIS

23 Stepwise regression Model Selection II: several explanatory variables
General Linear Model: LRGWHAL versus Source DF Seq SS Adj SS Adj MS F P VIS Error Total Term Coef SE Coef T P Constant VIS

24 Model Selection II: several explanatory variables
Stepwise regression

25 Stepwise regression Model Selection II: several explanatory variables
Forward ≠ Backward Forward = Backward

26 Model Selection II: several explanatory variables
Stepwise regression

27 Model Selection II: several explanatory variables
Stepwise regression

28 Model Selection II: several explanatory variables
Stepwise regression

29 Model Selection II: several explanatory variables
Stepwise regression

30 Model Selection II: several explanatory variables
Stepwise regression

31 Random Effects Read Chapter 12 Last words…
Model Selection II: several explanatory variables Last words… Economy of variables: prediction, adjusted R2 Multiplicity: outside information, focussing, stringency, combining model terms Stepwise regressions not usually suitable -- but are for initial sifting of a large number of potential predictors in a preliminary study Random Effects Read Chapter 12


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