27.03.2013 Views

SPSS® 12.0 Command Syntax Reference

SPSS® 12.0 Command Syntax Reference

SPSS® 12.0 Command Syntax Reference

SHOW MORE
SHOW LESS

You also want an ePaper? Increase the reach of your titles

YUMPU automatically turns print PDFs into web optimized ePapers that Google loves.

HILOGLINEAR<br />

Overview<br />

HILOGLINEAR is available in the Advanced Models option.<br />

HILOGLINEAR {varlist} (min,max) [varlist ...]<br />

{ALL }<br />

[/METHOD [= BACKWARD]]<br />

[/MAXORDER = k]<br />

[/CRITERIA = [CONVERGE({0.25**})] [ITERATE({20**})] [P({0.05**})]<br />

{n } {n } {prob }<br />

[DELTA({0.5**})] [MAXSTEPS({10**})]<br />

{d } {n }<br />

[DEFAULT] ]<br />

[/CWEIGHT = {varname }]<br />

{(matrix)}<br />

[/PRINT = {[FREQ**] [RESID**] [ESTIM**][ASSOCIATION**]}]<br />

{DEFAULT** }<br />

{ALL }<br />

{NONE }<br />

[/PLOT = [{NONE** } ]<br />

{DEFAULT }<br />

{[RESID] [NORMPROB]}<br />

{ALL }<br />

[/MISSING = [{EXCLUDE**}]]<br />

{INCLUDE }<br />

[/DESIGN = effectname effectname*effectname ...]<br />

** Default if subcommand or keyword is omitted.<br />

Example<br />

HILOGLINEAR V1(1,2) V2(1,2)<br />

/DESIGN=V1*V2.<br />

HILOGLINEAR fits hierarchical loglinear models to multidimensional contingency tables<br />

using an iterative proportional-fitting algorithm. HILOGLINEAR also estimates parameters<br />

for saturated models. These techniques are described in Everitt (1977), Bishop et al.<br />

(1975), and Goodman (1978). HILOGLINEAR is much more efficient for these models than<br />

the LOGLINEAR procedure because HILOGLINEAR uses an iterative proportional-fitting<br />

algorithm rather than the Newton-Raphson method used in LOGLINEAR.<br />

717

Hooray! Your file is uploaded and ready to be published.

Saved successfully!

Ooh no, something went wrong!