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Local independence - Wikipedia, the free encyclopedia

Local independence

From Wikipedia, the free encyclopedia

Local independence is the underlying assumption of latent variable models. The observed items are independent of each other given an individual score on the latent variable(s). This means that the latent variable explains why the observed items are related to another. This can be explained by the following example.

[edit] Example

Local independence can be explained by an example of Lazarsfeld and Henry (1968). Suppose that a sample of 1000 people is asked whether they read journal A and B. Their responses were:

Read A

Did not read A

Total

Read B

260

140

400

Did not read B

240

360

600

Total

500

500

1000

you can easily see that the two variables (reading A and reading B) are strongly related, and thus dependent of each other. Readers of A tend to read B more often (52%) than non readers of A (28%). When reading A and B is independent, than P(A&B) = P(A)xP(B)

But 260/1000 isn't 400/1000 * 500/1000.

Thus reading A and B is dependent of each other.

But when we also look to the education level of these people we get these tables:

High education

Read A

Did not read A

Total

Low education

Read A

Did not read A

Total

Read B

240

60

300

Read B

20

80

100

Did not read B

160

40

200

Did not read B

80

320

400

Total

400

100

500

Total

100

400

500

And again if reading A and B are independent, than P(A&B) = P(A)xP(B) for each education level.

240/500 = 300/500*400/500 and 20/500 = 100/500*100/500.

Thus when we look separate to the high and low educated people, there is no relationship between the two journals. That is, reading A and B are independent within educational level. The educational level 'explains' the difference in reading A and B.

[edit] Latent variable

In latent variable models the latent variable can be seen as education in the example. This means that the manifest variables are locally independent given the latent variable(s). This assumption is also necessary to identify the latent variables.

[edit] References

Lazarsfeld, P.F., and Henry, N.W., 1968. Latent Structure analysis. Boston: Houghton Mill.


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