Statistical Methods for Psychology

(Michael S) #1

You can think of very much the way you thought of the treatment effect ( ) in the
analysis of variance. It is the contribution of. But for the analysis of variance,
was the amount that was addedto the grand mean to obtain the column mean. Here, on
the other hand, is the amount by which we multiply to obtain the column’s expected
frequency. 5 1.6062 says that the column one expected frequency is 1.6062 times
larger than the overall mean—or 160.62% of it. For the Not Guilty column,


Then we can show that for this model


For cell 11, we would have 80.3119 3 1.6062 5 129, which has reproduced the expected
frequency that we used in Table 17.2. The other expected cell frequencies follow because
rows and columns must sum to row and column totals; we have 1 df.
We have a similar model when we consider just the Fault variable instead of just the
Verdict variable. Here we have


To go one step further, we can consider the independence model (Table 17.1), which
contained both Fault and Verdict effects but not their interaction. Here we will need
both and to account for both Verdict and Fault. Working with the expected frequen-
cies from the independence model we have:


Then, for example,


which agrees, within rounding error, with the actual expected value for the independence
model. You should verify for yourself that in the general case, for the independence model,
the expected frequency for cellijis


I have led you through the last few paragraphs to make a simple but very important point.
In the analysis of variance we wrote an additivelinear model for observations in each cell as


With log-linear models of categorical data, we have seen that we can write the multi-
plicativeindependence model for expected cell frequenciesas


Fij=NttNiVtNjF

Xijk=m1ai1bj1abij 1 eijk

Fij=NttNiVtNjF

F 11 =tNNt 1 VtNF 1 =80.3069 3 1.6062 3 0.9889=127.557

Nt 2 F=

1 (130.441)(50.559)


tN

=


81.2094


80.3069


=1.0112


Nt 1 F=

(^1) (127.559)(49.441)
tN


=


79.4144


80.3069


=0.9889


Nt 2 V=

(^1) (49.441)(50.559)
tN


=


49.9969


80.3069


=0.6226


Nt 1 V=

(^1) (127.559)(130.441)
tN


=


128.9920


80.3069


=1.6062


tN= 14 (127.559)(49.441)(130.441)(50.559)=80.3069

tVj tFi

Fij=NttNiF

Fij=NttNjV

Nt 2 V=

1 (50)(50)


tN

=


50


80.3119


=0.6226


tNjV

NtjV tN

columnj bj

NtjV bj

Section 17.2 Model Specification 637
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