X-Git-Url: https://pintos-os.org/cgi-bin/gitweb.cgi?a=blobdiff_plain;f=doc%2Fregression.texi;h=8b6d7e4d70f268bd3a83fc6b1ddf5393d57a6a8a;hb=dde7b813c5747fba5d14e47f6dd82bb7b4dc7cf1;hp=22b9f58ff664c196a574565aeac548983f452f1f;hpb=54bc9183a551c4249fb9eabc008beade0e751b78;p=pspp-builds.git diff --git a/doc/regression.texi b/doc/regression.texi index 22b9f58f..8b6d7e4d 100644 --- a/doc/regression.texi +++ b/doc/regression.texi @@ -1,6 +1,9 @@ -@node REGRESSION, , ONEWAY, Statistics +@node REGRESSION +@comment node-name, next, previous, up @section REGRESSION +@cindex regression +@cindex linear regression The REGRESSION procedure fits linear models to data via least-squares estimation. The procedure is appropriate for data which satisfy those assumptions typical in linear regression: @@ -35,7 +38,7 @@ linear model. * Examples:: Using the REGRESSION procedure. @end menu -@node Syntax, Examples, , REGRESSION +@node Syntax @subsection Syntax @vindex REGRESSION @@ -45,7 +48,7 @@ REGRESSION /DEPENDENT=var_list /STATISTICS=@{ALL, DEFAULTS, R, COEFF, ANOVA, BCOV@} /EXPORT ('file-name') - /SAVE + /SAVE=@{PRED, RESID@} @end display The @cmd{REGRESSION} procedure reads the active file and outputs @@ -54,7 +57,7 @@ statistics relevant to the linear model specified by the user. The VARIABLES subcommand, which is required, specifies the list of variables to be analyzed. Keyword VARIABLES is required. The DEPENDENT subcommand specifies the dependent variable of the linear -model. The DEPENDENT subcommond is required. All variables listed in +model. The DEPENDENT subcommand is required. All variables listed in the VARIABLES subcommand, but not listed in the DEPENDENT subcommand, are treated as explanatory variables in the linear model. @@ -76,10 +79,13 @@ Analysis of variance table for the model. The covariance matrix for the estimated model coefficients. @end table -The SAVE subcommand causes PSPP to save the residuals from the fitted +The SAVE subcommand causes PSPP to save the residuals or predicted +values from the fitted model to the active file. PSPP will store the residuals in a variable called RES1 if no such variable exists, RES2 if RES1 already exists, -RES3 if RES1 and RES2 already exist, etc. +RES3 if RES1 and RES2 already exist, etc. It will choose the name of +the variable for the predicted values similarly, but with PRED as a +prefix. The EXPORT subcommand causes PSPP to write a C program containing functions related to the model. One such function accepts values of @@ -93,9 +99,10 @@ to a file called pspp_model_reg.h. The user can then compile the C program and use it as part of another program. This subcommand is a PSPP extension. -@node Examples, , Syntax, REGRESSION +@node Examples @subsection Examples -The following PSPP code will generate the default output, and save the +The following PSPP syntax will generate the default output, save the +predicted values and residuals to the active file, and save the linear model in a program called ``model.c.'' @example @@ -114,7 +121,8 @@ a 8.838262 -29.25689 b 6.200189 -18.58219 end data. list. -regression /variables=v0 v1 v2 /statistics defaults /dependent=v2 /export (model.c) /method=enter. +regression /variables=v0 v1 v2 /statistics defaults /dependent=v2 + /export (model.c) /save pred resid /method=enter. @end example The file pspp_model_reg.h contains these declarations: