+AT_CLEANUP
+
+
+
+dnl An example to check the behaviour of LOGISTIC REGRESSION with a categorical
+dnl variable. This examṕle was inspired from that at:
+dnl http://www.ats.ucla.edu/stat/spss/dae/logit.htm
+AT_SETUP([LOGISTIC REGRESSION with categorical])
+
+AT_DATA([lr-cat.data], [dnl
+ 620 3.07 2 4
+ 800 4.00 3 9
+ 580 3.40 2 4
+ 600 3.13 2 4
+ 540 2.70 2 4
+ 660 3.31 4 4
+ 480 3.58 1 9
+ 620 4.00 1 9
+ 680 3.98 2 9
+ 580 3.40 4 4
+ 760 3.35 3 4
+ 700 3.72 2 4
+ 460 3.64 1 9
+ 540 3.28 3 4
+ 680 3.48 3 4
+ 740 3.31 1 4
+ 460 3.77 3 4
+ 740 3.54 1 4
+ 600 3.63 3 4
+ 620 3.05 2 4
+ 560 3.04 3 4
+ 520 2.70 3 4
+ 640 3.35 3 4
+ 620 3.58 2 4
+ 660 3.70 4 9
+ 500 2.86 4 4
+ 640 3.50 2 4
+ 720 4.00 3 4
+ 720 3.94 3 4
+ 400 3.65 2 4
+ 800 2.90 2 4
+ 520 2.90 3 4
+ 440 3.24 4 4
+ 580 3.51 2 4
+ 500 3.31 3 4
+ 440 3.22 1 4
+ 540 3.17 1 9
+ 420 3.02 1 4
+ 780 3.22 2 9
+ 440 3.13 4 4
+ 800 3.66 1 9
+ 580 3.32 2 9
+ 480 2.67 2 9
+ 700 4.00 1 9
+ 740 2.97 2 9
+ 700 3.83 2 4
+ 640 3.93 2 4
+ 800 3.90 2 4
+ 400 3.38 2 4
+ 700 3.52 2 4
+ 680 3.00 4 9
+ 540 3.20 1 4
+ 580 4.00 2 4
+ 780 4.00 2 9
+ 220 2.83 3 4
+ 580 3.20 2 9
+ 580 3.50 2 4
+ 620 3.30 1 4
+ 520 3.65 4 9
+ 600 3.38 3 9
+ 660 3.77 3 4
+ 580 2.86 4 9
+ 580 3.46 2 9
+ 560 3.36 3 4
+ 740 4.00 3 9
+ 480 3.44 3 4
+ 640 3.19 4 9
+ 600 3.54 1 9
+ 540 3.38 4 4
+ 500 2.81 3 4
+ 360 2.56 3 4
+ 460 3.15 4 4
+ 460 2.63 2 4
+ 440 2.76 2 4
+ 740 3.62 4 4
+ 380 3.38 2 4
+ 640 3.63 1 9
+ 800 3.73 1 4
+ 660 3.67 2 4
+ 760 3.00 2 9
+ 420 2.96 1 4
+ 740 3.74 4 4
+ 800 3.75 2 4
+ 620 3.40 2 4
+ 660 3.67 3 9
+ 400 3.35 3 4
+ 680 3.14 2 4
+ 660 3.47 3 9
+ 660 3.63 2 9
+ 420 3.41 4 4
+ 660 4.00 1 4
+ 680 3.70 2 4
+ 620 3.23 3 9
+ 520 3.35 3 4
+ 500 4.00 3 4
+ 400 3.36 2 4
+ 700 3.56 1 9
+ 540 3.81 1 9
+ 520 2.68 3 9
+ 540 3.50 2 4
+ 700 4.00 2 4
+ 600 3.64 3 9
+ 800 3.31 3 4
+ 520 3.29 1 4
+ 580 3.69 1 4
+ 380 3.43 3 4
+ 560 3.19 3 4
+ 760 2.81 1 9
+ 540 3.13 2 4
+ 660 3.14 2 9
+ 520 3.81 1 9
+ 680 3.19 4 4
+ 540 3.78 4 4
+ 500 3.57 3 4
+ 660 3.49 2 4
+ 340 3.00 2 9
+ 400 3.15 2 9
+ 420 3.92 4 4
+ 760 3.35 2 9
+ 700 2.94 2 4
+ 540 3.04 1 4
+ 780 3.87 4 4
+ 560 3.78 2 4
+ 700 3.82 3 4
+ 400 2.93 3 4
+ 440 3.45 2 9
+ 800 3.47 3 4
+ 340 3.15 3 4
+ 520 4.00 1 9
+ 520 3.15 3 4
+ 600 2.98 2 9
+ 420 2.69 2 4
+ 460 3.44 2 4
+ 620 3.71 1 9
+ 480 3.13 2 4
+ 580 3.40 3 4
+ 540 3.39 3 9
+ 540 3.94 3 4
+ 440 2.98 3 4
+ 380 3.59 4 4
+ 500 2.97 4 4
+ 340 2.92 3 4
+ 440 3.15 2 4
+ 600 3.48 2 4
+ 420 2.67 3 4
+ 460 3.07 2 4
+ 460 3.45 3 9
+ 480 3.39 4 4
+ 480 2.78 3 4
+ 720 3.42 2 9
+ 680 3.67 2 9
+ 800 3.89 2 4
+ 360 3.00 3 4
+ 620 3.17 2 9
+ 700 3.52 4 9
+ 540 3.19 2 4
+ 580 3.30 2 4
+ 800 4.00 3 9
+ 660 3.33 2 4
+ 380 3.34 3 4
+ 720 3.84 3 4
+ 600 3.59 2 4
+ 500 3.03 3 4
+ 640 3.81 2 4
+ 540 3.49 1 9
+ 680 3.85 3 9
+ 540 3.84 2 9
+ 460 2.93 3 4
+ 380 2.94 3 4
+ 620 3.22 2 4
+ 740 3.37 4 4
+ 620 4.00 2 4
+ 800 3.74 1 9
+ 400 3.31 3 4
+ 540 3.46 4 4
+ 620 3.18 2 9
+ 480 2.91 1 9
+ 300 2.84 2 9
+ 440 2.48 4 4
+ 640 2.79 2 4
+ 400 3.23 4 9
+ 680 3.46 2 9
+ 620 3.37 1 9
+ 700 3.92 2 4
+ 620 3.37 2 9
+ 620 3.63 2 4
+ 620 3.95 3 9
+ 560 2.52 2 4
+ 520 2.62 2 4
+ 600 3.35 2 4
+ 700 4.00 1 4
+ 640 3.67 3 4
+ 640 4.00 3 4
+ 520 2.93 4 4
+ 620 3.21 4 4
+ 680 3.99 3 4
+ 660 3.34 3 4
+ 700 3.45 3 4
+ 560 3.36 1 9
+ 800 2.78 2 4
+ 500 3.88 4 4
+ 700 3.65 2 4
+ 680 3.76 3 9
+ 660 3.07 3 4
+ 580 3.46 4 4
+ 460 2.87 2 4
+ 600 3.31 4 4
+ 620 3.94 4 4
+ 400 3.05 2 4
+ 800 3.43 2 9
+ 600 3.58 1 9
+ 580 3.36 2 4
+ 540 3.16 3 4
+ 500 2.71 2 4
+ 600 3.28 3 4
+ 600 2.82 4 4
+ 460 3.58 2 4
+ 520 2.85 3 4
+ 740 3.52 4 9
+ 500 3.95 4 4
+ 560 3.61 3 4
+ 620 3.45 2 9
+ 640 3.51 2 4
+ 660 3.44 2 9
+ 660 2.91 3 9
+ 540 3.28 1 4
+ 560 2.98 1 9
+ 800 3.97 1 4
+ 720 3.77 3 4
+ 720 3.64 1 9
+ 480 3.71 4 9
+ 680 3.34 2 4
+ 680 3.11 2 4
+ 540 2.81 3 4
+ 620 3.75 2 9
+ 540 3.12 1 4
+ 560 3.48 2 9
+ 720 3.40 3 4
+ 680 3.90 1 4
+ 640 3.76 3 4
+ 560 3.16 1 4
+ 520 3.30 2 9
+ 640 3.12 3 4
+ 580 3.57 3 4
+ 540 3.55 4 9
+ 780 3.63 4 9
+ 600 3.89 1 9
+ 800 4.00 1 9
+ 580 3.29 4 4
+ 360 3.27 3 4
+ 800 4.00 2 9
+ 640 3.52 4 4
+ 720 3.45 4 4
+ 580 3.06 2 4
+ 580 3.02 2 4
+ 500 3.60 3 9
+ 580 3.12 3 9
+ 600 2.82 4 4
+ 620 3.99 3 4
+ 700 4.00 3 4
+ 480 4.00 2 4
+ 560 2.95 2 4
+ 560 4.00 3 4
+ 560 2.65 3 9
+ 400 3.08 2 4
+ 480 2.62 2 9
+ 640 3.86 3 4
+ 480 3.57 2 4
+ 540 3.51 2 4
+ 380 3.33 4 4
+ 680 3.64 3 4
+ 400 3.51 3 4
+ 340 2.90 1 4
+ 700 3.08 2 4
+ 480 3.02 1 9
+ 600 3.15 2 9
+ 780 3.80 3 9
+ 520 3.74 2 9
+ 520 3.51 2 4
+ 640 3.73 3 4
+ 560 3.32 4 4
+ 620 2.85 2 4
+ 700 3.28 1 4
+ 760 4.00 1 9
+ 800 3.60 2 4
+ 580 3.34 2 4
+ 540 3.77 2 9
+ 640 3.17 2 4
+ 540 3.02 4 4
+ 680 3.08 4 4
+ 680 3.31 2 4
+ 680 2.96 3 9
+ 700 2.88 2 4
+ 580 3.77 4 4
+ 540 3.49 2 9
+ 700 3.56 2 9
+ 600 3.56 2 9
+ 560 3.59 2 4
+ 640 2.94 2 9
+ 560 3.33 4 4
+ 620 3.69 3 4
+ 680 3.27 2 9
+ 460 3.14 3 4
+ 500 3.53 4 4
+ 620 3.33 3 4
+ 600 3.62 3 4
+ 500 3.01 4 4
+ 740 3.34 4 4
+ 560 3.69 3 9
+ 620 3.95 3 9
+ 740 3.86 2 9
+ 800 3.53 1 9
+ 620 3.78 3 4
+ 700 3.27 2 4
+ 540 3.78 2 9
+ 700 3.65 2 4
+ 800 3.22 1 9
+ 560 3.59 2 9
+ 800 3.15 4 4
+ 520 3.90 3 9
+ 520 3.74 4 9
+ 480 2.55 1 4
+ 800 4.00 4 4
+ 620 3.09 4 4
+ 560 3.49 4 4
+ 500 3.17 3 4
+ 480 3.40 2 4
+ 460 2.98 1 4
+ 580 3.58 1 9
+ 640 3.30 2 4
+ 480 3.45 2 4
+ 440 3.17 2 4
+ 660 3.32 1 4
+ 500 3.08 3 4
+ 660 3.94 2 4
+ 720 3.31 1 4
+ 460 3.64 3 9
+ 500 2.93 4 4
+ 800 3.54 3 4
+ 580 2.93 2 4
+ 620 3.61 1 9
+ 500 2.98 3 4
+ 660 4.00 2 9
+ 560 3.24 4 4
+ 560 2.42 2 4
+ 580 3.80 2 4
+ 500 3.23 4 4
+ 680 2.42 1 9
+ 580 3.46 3 4
+ 800 3.91 3 4
+ 700 2.90 4 4
+ 520 3.12 2 4
+ 300 2.92 4 4
+ 560 3.43 3 4
+ 620 3.63 3 4
+ 500 2.79 4 4
+ 360 3.14 1 4
+ 640 3.94 2 9
+ 460 3.99 3 9
+ 300 3.01 3 4
+ 520 2.73 2 4
+ 600 3.47 2 9
+ 580 3.25 1 4
+ 520 3.10 4 4
+ 620 3.43 3 4
+ 380 2.91 4 4
+ 660 3.59 3 4
+ 660 3.95 2 9
+ 540 3.33 3 4
+ 740 4.00 3 4
+ 640 3.38 3 4
+ 600 3.89 3 4
+ 720 3.88 3 4
+ 580 4.00 3 4
+ 420 2.26 4 4
+ 520 4.00 2 9
+ 800 3.70 1 9
+ 700 4.00 1 9
+ 480 3.43 2 4
+ 660 3.45 4 4
+ 520 3.25 3 4
+ 560 2.71 3 4
+ 600 3.32 2 4
+ 580 2.88 2 4
+ 660 3.88 2 9
+ 600 3.22 1 4
+ 580 4.00 1 4
+ 660 3.60 3 9
+ 500 3.35 2 4
+ 520 2.98 2 4
+ 660 3.49 2 9
+ 560 3.07 2 4
+ 500 3.13 2 9
+ 720 3.50 3 9
+ 440 3.39 2 9
+ 640 3.95 2 9
+ 380 3.61 3 4
+ 800 3.05 2 9
+ 520 3.19 3 9
+ 600 3.40 3 4
+])
+
+AT_DATA([lr-cat.sps], [dnl
+set format=F20.3.
+
+data list notable list file='lr-cat.data' /b1 b2 bcat y.
+
+logistic regression
+ y with b1 b2 bcat
+ /categorical = bcat
+ .
+])
+
+AT_CHECK([pspp -O format=csv lr-cat.sps], [0],
+ [dnl
+Table: Dependent Variable Encoding
+Original Value,Internal Value
+4.000,0
+9.000,1
+
+Table: Case Processing Summary
+Unweighted Cases,N,Percent
+Included in Analysis,400,100.000
+Missing Cases,0,.000
+Total,400,100.000
+
+note: Estimation terminated at iteration number 4 because parameter estimates changed by less than 0.001
+
+Table: Model Summary
+Step 1,-2 Log likelihood,Cox & Snell R Square,Nagelkerke R Square
+,458.517,.098,.138
+
+Table: Categorical Variables' Codings
+,,,Parameter coding,,
+,,Frequency,(1),(2),(3)
+bcat,1.000,61,1,0,0
+,2.000,151,0,1,0
+,3.000,121,0,0,1
+,4.000,67,0,0,0
+
+Table: Classification Table
+,,,Predicted,,
+,,,y,,"Percentage
+Correct"
+,Observed,,4.000,9.000,
+Step 1,y,4.000,254,19,93.040
+,,9.000,97,30,23.622
+,Overall Percentage,,,,71.000
+
+Table: Variables in the Equation
+,,B,S.E.,Wald,df,Sig.,Exp(B)
+Step 1,b1,.002,.001,4.284,1,.038,1.002
+,b2,.804,.332,5.872,1,.015,2.235
+,bcat,,,20.895,3,.000,
+,bcat(1),1.551,.418,13.788,1,.000,4.718
+,bcat(2),.876,.367,5.706,1,.017,2.401
+,bcat(3),.211,.393,.289,1,.591,1.235
+,Constant,-5.541,1.138,23.709,1,.000,.004
+])
+
+AT_CLEANUP
+
+
+
+dnl This example is inspired by http://www.ats.ucla.edu/stat/spss/output/logistic.htm
+AT_SETUP([LOGISTIC REGRESSION with cat var 2])
+
+AT_DATA([lr-cat2.data], [dnl
+ 60.00 1.00 8.00 50.00
+ 47.00 .00 9.00 42.00
+ 57.00 1.00 7.00 53.00
+ 60.00 .00 8.00 53.00
+ 68.00 .00 8.00 66.00
+ 63.00 .00 8.00 55.00
+ 65.00 .00 8.00 63.00
+ 52.00 .00 8.00 61.00
+ 34.00 .00 9.00 42.00
+ 37.00 .00 8.00 39.00
+ 68.00 1.00 9.00 69.00
+ 60.00 .00 9.00 61.00
+ 44.00 .00 9.00 58.00
+ 42.00 .00 8.00 47.00
+ 57.00 1.00 7.00 61.00
+ 55.00 1.00 8.00 50.00
+ 55.00 .00 9.00 58.00
+ 44.00 .00 8.00 63.00
+ 50.00 1.00 9.00 66.00
+ 44.00 .00 8.00 39.00
+ 55.00 .00 8.00 58.00
+ 44.00 .00 8.00 50.00
+ 47.00 1.00 7.00 34.00
+ 48.00 .00 8.00 44.00
+ 45.00 .00 7.00 31.00
+ 43.00 .00 8.00 50.00
+ 39.00 .00 8.00 42.00
+ 63.00 .00 9.00 50.00
+ 47.00 .00 8.00 58.00
+ 42.00 .00 7.00 50.00
+ 50.00 .00 9.00 36.00
+ 47.00 .00 7.00 33.00
+ 60.00 .00 9.00 61.00
+ 47.00 .00 7.00 42.00
+ 68.00 1.00 9.00 69.00
+ 52.00 .00 8.00 54.00
+ 63.00 1.00 9.00 61.00
+ 65.00 1.00 9.00 61.00
+ 63.00 1.00 9.00 53.00
+ 57.00 .00 8.00 51.00
+ 34.00 .00 8.00 36.00
+ 50.00 .00 8.00 39.00
+ 52.00 1.00 7.00 56.00
+ 45.00 .00 7.00 34.00
+ 47.00 1.00 7.00 53.00
+ 34.00 .00 7.00 39.00
+ 50.00 1.00 8.00 55.00
+ 60.00 .00 9.00 58.00
+ 63.00 .00 8.00 58.00
+ 35.00 .00 7.00 51.00
+ 50.00 .00 8.00 58.00
+ 68.00 .00 8.00 63.00
+ 41.00 .00 9.00 34.00
+ 47.00 .00 8.00 47.00
+ 76.00 .00 9.00 64.00
+ 44.00 .00 8.00 44.00
+ 36.00 .00 9.00 50.00
+ 68.00 1.00 9.00 55.00
+ 47.00 1.00 8.00 50.00
+ 50.00 .00 7.00 53.00
+ 68.00 .00 8.00 74.00
+ 39.00 .00 7.00 44.00
+ 50.00 .00 8.00 55.00
+ 52.00 .00 9.00 61.00
+ 47.00 .00 8.00 53.00
+ 39.00 .00 7.00 47.00
+ 55.00 1.00 9.00 49.00
+ 68.00 1.00 8.00 50.00
+ 52.00 1.00 9.00 63.00
+ 55.00 .00 8.00 58.00
+ 57.00 .00 8.00 55.00
+ 66.00 1.00 9.00 61.00
+ 65.00 1.00 7.00 58.00
+ 42.00 .00 7.00 42.00
+ 68.00 1.00 7.00 59.00
+ 60.00 1.00 9.00 61.00
+ 52.00 .00 8.00 55.00
+ 57.00 1.00 7.00 54.00
+ 42.00 .00 9.00 50.00
+ 42.00 .00 8.00 47.00
+ 57.00 .00 8.00 50.00
+ 47.00 .00 7.00 45.00
+ 44.00 .00 7.00 40.00
+ 43.00 .00 9.00 55.00
+ 31.00 .00 8.00 39.00
+ 37.00 .00 7.00 33.00
+ 63.00 1.00 7.00 63.00
+ 47.00 .00 8.00 39.00
+ 57.00 1.00 8.00 63.00
+ 52.00 .00 8.00 44.00
+ 44.00 .00 7.00 35.00
+ 52.00 .00 7.00 55.00
+ 55.00 .00 7.00 69.00
+ 52.00 .00 8.00 53.00
+ 55.00 .00 9.00 61.00
+ 65.00 1.00 9.00 63.00
+ 55.00 .00 8.00 44.00
+ 63.00 .00 7.00 65.00
+ 44.00 .00 7.00 39.00
+ 47.00 .00 7.00 36.00
+ 63.00 1.00 9.00 55.00
+ 68.00 .00 8.00 66.00
+ 34.00 .00 8.00 39.00
+ 47.00 .00 9.00 50.00
+ 50.00 .00 9.00 58.00
+ 63.00 .00 8.00 66.00
+ 44.00 .00 7.00 34.00
+ 44.00 .00 8.00 50.00
+ 50.00 .00 8.00 53.00
+ 47.00 1.00 9.00 69.00
+ 65.00 .00 9.00 58.00
+ 57.00 .00 8.00 47.00
+ 39.00 .00 8.00 39.00
+ 47.00 .00 8.00 53.00
+ 50.00 1.00 7.00 63.00
+ 50.00 .00 8.00 50.00
+ 63.00 .00 9.00 53.00
+ 73.00 1.00 9.00 61.00
+ 44.00 .00 7.00 47.00
+ 47.00 .00 8.00 42.00
+ 47.00 .00 8.00 58.00
+ 36.00 .00 7.00 61.00
+ 57.00 1.00 8.00 55.00
+ 53.00 1.00 8.00 57.00
+ 63.00 .00 7.00 66.00
+ 50.00 .00 8.00 34.00
+ 47.00 .00 9.00 48.00
+ 57.00 1.00 8.00 58.00
+ 39.00 .00 8.00 53.00
+ 42.00 .00 8.00 42.00
+ 42.00 .00 9.00 31.00
+ 42.00 .00 8.00 72.00
+ 46.00 .00 8.00 44.00
+ 55.00 .00 8.00 42.00
+ 42.00 .00 8.00 47.00
+ 50.00 .00 8.00 44.00
+ 44.00 .00 9.00 39.00
+ 73.00 1.00 8.00 69.00
+ 71.00 1.00 9.00 58.00
+ 50.00 .00 9.00 49.00
+ 63.00 1.00 7.00 54.00
+ 42.00 .00 8.00 36.00
+ 47.00 .00 7.00 42.00
+ 39.00 .00 9.00 26.00
+ 63.00 .00 8.00 58.00
+ 50.00 .00 8.00 55.00
+ 65.00 1.00 8.00 55.00
+ 76.00 1.00 9.00 67.00
+ 71.00 1.00 8.00 66.00
+ 39.00 .00 9.00 47.00
+ 47.00 1.00 9.00 63.00
+ 60.00 .00 7.00 50.00
+ 63.00 .00 9.00 55.00
+ 54.00 1.00 9.00 55.00
+ 55.00 1.00 8.00 58.00
+ 57.00 .00 8.00 61.00
+ 55.00 1.00 9.00 63.00
+ 42.00 .00 7.00 50.00
+ 50.00 .00 8.00 44.00
+ 55.00 .00 8.00 42.00
+ 42.00 .00 7.00 50.00
+ 34.00 .00 8.00 39.00
+ 65.00 .00 9.00 46.00
+ 52.00 .00 7.00 58.00
+ 44.00 .00 8.00 39.00
+ 65.00 1.00 9.00 66.00
+ 47.00 .00 8.00 42.00
+ 41.00 .00 7.00 39.00
+ 68.00 .00 9.00 63.00
+ 63.00 1.00 8.00 72.00
+ 52.00 .00 8.00 53.00
+ 57.00 .00 8.00 50.00
+ 68.00 .00 8.00 55.00
+ 42.00 .00 8.00 56.00
+ 47.00 .00 8.00 48.00
+ 73.00 1.00 9.00 58.00
+ 39.00 .00 8.00 50.00
+ 63.00 1.00 9.00 69.00
+ 60.00 .00 8.00 55.00
+ 65.00 1.00 9.00 66.00
+ 73.00 1.00 8.00 63.00
+ 52.00 .00 8.00 55.00
+ 36.00 .00 8.00 42.00
+ 28.00 .00 7.00 44.00
+ 47.00 .00 8.00 44.00
+ 57.00 .00 7.00 47.00
+ 34.00 .00 7.00 29.00
+ 47.00 .00 9.00 66.00
+ 57.00 .00 8.00 58.00
+ 60.00 1.00 9.00 50.00
+ 50.00 .00 9.00 47.00
+ 73.00 1.00 9.00 55.00
+ 52.00 1.00 8.00 47.00
+ 55.00 .00 8.00 53.00
+ 47.00 .00 8.00 53.00
+ 50.00 .00 8.00 61.00
+ 61.00 .00 7.00 44.00
+ 52.00 .00 9.00 53.00
+ 47.00 .00 7.00 40.00
+ 47.00 .00 7.00 50.00
+])
+
+AT_DATA([stringcat.sps], [dnl
+set format=F20.3.
+data list notable file='lr-cat2.data' list /read honcomp wiz science *.
+
+string ses(a1).
+recode wiz (7 = "a") (8 = "b") (9 = "c") into ses.
+
+logistic regression honcomp with read science ses
+ /categorical = ses.
+
+])
+
+AT_CHECK([pspp -O format=csv stringcat.sps], [0],
+ [dnl
+Table: Dependent Variable Encoding
+Original Value,Internal Value
+.000,0
+1.000,1
+
+Table: Case Processing Summary
+Unweighted Cases,N,Percent
+Included in Analysis,200,100.000
+Missing Cases,0,.000
+Total,200,100.000
+
+note: Estimation terminated at iteration number 5 because parameter estimates changed by less than 0.001
+
+Table: Model Summary
+Step 1,-2 Log likelihood,Cox & Snell R Square,Nagelkerke R Square
+,165.701,.280,.408
+
+Table: Categorical Variables' Codings
+,,,Parameter coding,
+,,Frequency,(1),(2)
+ses,a,47,1,0
+,b,95,0,1
+,c,58,0,0
+
+Table: Classification Table
+,,,Predicted,,
+,,,honcomp,,"Percentage
+Correct"
+,Observed,,.000,1.000,
+Step 1,honcomp,.000,132,15,89.796
+,,1.000,26,27,50.943
+,Overall Percentage,,,,79.500
+
+Table: Variables in the Equation
+,,B,S.E.,Wald,df,Sig.,Exp(B)
+Step 1,read,.098,.025,15.199,1,.000,1.103
+,science,.066,.027,5.867,1,.015,1.068
+,ses,,,6.690,2,.035,
+,ses(1),.058,.532,.012,1,.913,1.060
+,ses(2),-1.013,.444,5.212,1,.022,.363
+,Constant,-9.561,1.662,33.113,1,.000,.000
+])
+
+AT_CLEANUP
+
+
+dnl Check that it doesn't crash if a categorical variable
+dnl has only one distinct value
+AT_SETUP([LOGISTIC REGRESSION identical categories])
+
+AT_DATA([crash.sps], [dnl
+data list notable list /y x1 x2*.
+begin data
+0 1 1
+1 2 1
+end data.
+
+logistic regression y with x1 x2
+ /categorical = x2.
+])
+
+AT_CHECK([pspp -O format=csv crash.sps], [1], [ignore])
+
+AT_CLEANUP
+
+
+dnl Test that missing values on the categorical predictors are treated
+dnl properly.
+AT_SETUP([LOGISTIC REGRESSION missing categoricals])
+
+AT_DATA([data.txt], [dnl
+ .00 3.69 .00
+ .00 1.16 1.00
+ 1.00 -12.99 .00
+ .00 2.97 1.00
+ .00 20.48 .00
+ .00 4.90 .00
+ 1.00 -4.38 .00
+ .00 -1.69 1.00
+ 1.00 -5.71 .00
+ 1.00 -14.28 .00
+ .00 9.00 .00
+ .00 2.89 1.00
+ .00 13.51 1.00
+ .00 23.32 1.00
+ .00 2.31 1.00
+ .00 -2.07 1.00
+ 1.00 -4.52 1.00
+ 1.00 -5.83 .00
+ 1.00 -1.91 .00
+ 1.00 -11.12 1.00
+ .00 -1.51 .00
+ .00 6.59 1.00
+ .00 19.28 1.00
+ .00 5.94 .00
+ .00 8.21 1.00
+ .00 8.11 1.00
+ .00 2.49 .00
+ .00 9.62 .00
+ 1.00 -20.74 1.00
+ .00 -1.41 1.00
+ .00 15.15 1.00
+ .00 9.39 .00
+ 1.00 -15.14 1.00
+ 1.00 -5.86 .00
+ 1.00 -11.64 1.00
+ 1.00 -14.36 .00
+ 1.00 -8.95 1.00
+ 1.00 -16.42 1.00
+ 1.00 -1.04 1.00
+ .00 12.89 1.00
+ .00 -7.08 1.00
+ .00 4.87 1.00
+ .00 11.53 1.00
+ 1.00 -6.24 1.00
+ .00 1.25 1.00
+ .00 4.39 1.00
+ .00 3.17 .00
+ .00 19.39 1.00
+ .00 13.03 1.00
+ .00 2.43 .00
+ 1.00 -14.73 1.00
+ .00 8.25 1.00
+ 1.00 -13.28 1.00
+ .00 5.27 1.00
+ 1.00 -3.46 1.00
+ .00 13.81 1.00
+ .00 1.35 1.00
+ 1.00 -3.94 1.00
+ .00 20.73 1.00
+ 1.00 -15.40 .00
+ 1.00 -11.01 1.00
+ .00 4.56 .00
+ 1.00 -15.35 1.00
+ .00 15.21 .00
+ .00 5.34 1.00
+ 1.00 -21.55 1.00
+ .00 10.12 1.00
+ .00 -.73 1.00
+ .00 15.28 1.00
+ .00 11.08 1.00
+ 1.00 -8.24 .00
+ .00 2.46 .00
+ .00 9.60 .00
+ .00 11.24 .00
+ .00 14.13 1.00
+ .00 19.72 1.00
+ .00 5.58 .00
+ .00 26.23 1.00
+ .00 7.25 .00
+ 1.00 -.79 .00
+ .00 6.24 .00
+ 1.00 1.16 .00
+ 1.00 -7.89 1.00
+ 1.00 -1.86 1.00
+ 1.00 -10.80 1.00
+ 1.00 -5.51 .00
+ .00 7.51 .00
+ .00 11.18 .00
+ .00 8.73 .00
+ 1.00 -11.21 1.00
+ 1.00 -13.24 .00
+ .00 19.34 .00
+ .00 9.32 1.00
+ .00 17.97 1.00
+ 1.00 -1.56 1.00
+ 1.00 -3.13 .00
+ .00 3.98 .00
+ .00 -1.21 1.00
+ .00 2.37 .00
+ 1.00 -18.03 1.00
+])
+
+AT_DATA([miss.sps], [dnl
+data list notable file='data.txt' list /y x1 cat0*.
+
+logistic regression y with x1 cat0
+ /categorical = cat0.
+])
+
+AT_CHECK([pspp -O format=csv miss.sps > file1], [0], [ignore])
+
+dnl Append a case with a missing categorical.
+AT_CHECK([echo '1 34 .' >> data.txt], [0], [ignore])
+
+AT_CHECK([pspp -O format=csv miss.sps > file2], [0], [ignore])
+
+AT_CHECK([diff file1 file2], [1], [dnl
+8,10c8,10
+< Included in Analysis,100,100.00
+< Missing Cases,0,.00
+< Total,100,100.00
+---
+> Included in Analysis,100,99.01
+> Missing Cases,1,.99
+> Total,101,100.00
+])
+
+AT_CLEANUP
+
+
+dnl Check that the confidence intervals are properly reported.
+dnl Use an example with categoricals, because that was buggy at
+dnl one point. The data in this example comes from:
+dnl http://people.ysu.edu/~gchang/SPSSE/SPSS_lab2Regression.pdf
+AT_SETUP([LOGISTIC REGRESSION confidence interval])
+
+AT_DATA([ci.sps], [dnl
+set FORMAT=F20.3
+data list notable list /disease age sciostat sector savings *.
+begin data.
+0 33 1 1 1
+0 35 1 1 1
+0 6 1 1 0
+0 60 1 1 1
+1 18 3 1 0
+0 26 3 1 0
+0 6 3 1 0
+1 31 2 1 1
+1 26 2 1 0
+0 37 2 1 0
+0 23 1 1 0
+0 23 1 1 0
+0 27 1 1 1
+1 9 1 1 1
+1 37 1 2 1
+1 22 1 2 1
+1 67 1 2 1
+0 8 1 2 1
+1 6 1 2 1
+1 15 1 2 1
+1 21 2 2 1
+1 32 2 2 1
+1 16 1 2 1
+0 11 2 2 0
+0 14 3 2 0
+0 9 2 2 0
+0 18 2 2 0
+0 2 3 1 0
+0 61 3 1 1
+0 20 3 1 0
+0 16 3 1 0
+0 9 2 1 0
+0 35 2 1 1
+0 4 1 1 1
+0 44 3 2 0
+1 11 3 2 0
+0 3 2 2 1
+0 6 3 2 0
+1 17 2 2 0
+0 1 3 2 1
+1 53 2 2 1
+1 13 1 2 0
+0 24 1 2 0
+1 70 1 2 1
+1 16 3 2 1
+0 12 2 2 1
+1 20 3 2 1
+0 65 3 2 1
+1 40 2 2 0
+1 38 2 2 1
+1 68 2 2 1
+1 74 1 2 1
+1 14 1 2 1
+1 27 1 2 1
+0 31 1 2 1
+0 18 1 2 1
+0 39 1 2 0
+0 50 1 2 1
+0 31 1 2 1
+0 61 1 2 1
+0 18 3 1 0
+0 5 3 1 0
+0 2 3 1 1
+0 16 3 1 0
+1 59 3 1 1
+0 22 3 1 0
+0 24 1 1 1
+0 30 1 1 1
+0 46 1 1 1
+0 28 1 1 0
+0 27 1 1 1
+1 27 1 1 0
+0 28 1 1 1
+1 52 1 1 1
+0 11 3 1 1
+0 6 2 1 1
+0 46 3 1 0
+1 20 2 1 1
+0 3 1 1 1
+0 18 2 1 0
+0 25 2 1 0
+0 6 3 1 1
+1 65 3 1 1
+0 51 3 1 1
+0 39 2 1 1
+0 8 1 1 1
+0 8 2 1 0
+0 14 3 1 0
+0 6 3 1 0
+0 6 3 1 1
+0 7 3 1 0
+0 4 3 1 0
+0 8 3 1 0
+0 9 2 1 0
+1 32 3 1 0
+0 19 3 1 0
+0 11 3 1 0
+0 35 3 1 0
+0 16 1 1 0
+0 1 1 1 1
+0 6 1 1 1
+0 27 1 1 1
+0 25 1 1 1
+0 18 1 1 0
+0 37 3 1 0
+1 33 3 1 0
+0 27 2 1 0
+0 2 1 1 0
+0 8 2 1 0
+0 5 1 1 0
+0 1 1 1 1
+0 32 1 1 0
+1 25 1 1 1
+0 15 1 2 0
+0 15 1 2 1
+0 26 1 2 1
+1 42 1 2 1
+0 7 1 2 1
+0 2 1 2 0
+1 65 1 2 1
+0 33 2 2 1
+1 8 2 2 0
+0 30 2 2 0
+0 5 3 2 0
+0 15 3 2 0
+1 60 3 2 1
+1 13 3 2 1
+0 70 3 1 1
+0 5 3 1 0
+0 3 3 1 1
+0 50 2 1 1
+0 6 2 1 0
+0 12 2 1 1
+1 39 3 2 0
+0 15 2 2 1
+1 35 2 2 0
+0 2 2 2 1
+0 17 3 2 0
+1 43 3 2 1
+0 30 2 2 1
+0 11 1 2 1
+1 39 1 2 1
+0 32 1 2 1
+0 17 1 2 1
+0 3 3 2 1
+0 7 3 2 0
+0 2 2 2 0
+1 64 2 2 1
+1 13 1 2 2
+1 15 2 2 1
+0 48 2 2 1
+0 23 1 2 1
+1 48 1 2 0
+0 25 1 2 1
+0 12 1 2 1
+1 46 1 2 1
+0 79 1 2 1
+0 56 1 2 1
+0 8 1 2 1
+1 29 3 1 0
+1 35 3 1 0
+1 11 3 1 0
+0 69 3 1 1
+1 21 3 1 0
+0 13 3 1 0
+0 21 1 1 1
+1 32 1 1 1
+1 24 1 1 0
+0 24 1 1 1
+0 73 1 1 1
+0 42 1 1 1
+1 34 1 1 1
+0 30 2 1 0
+0 7 2 1 0
+1 29 3 1 0
+1 22 3 1 0
+0 38 2 1 1
+0 13 2 1 1
+0 12 2 1 1
+0 42 3 1 0
+1 17 3 1 0
+0 21 3 1 1
+0 34 1 1 1
+0 1 3 1 0
+0 14 2 1 0
+0 16 2 1 0
+0 9 3 1 0
+0 53 3 1 0
+0 27 3 1 0
+0 15 3 1 0
+0 9 3 1 0
+0 4 2 1 1
+0 10 3 1 1
+0 31 3 1 0
+0 85 3 1 1
+0 24 2 1 0
+end data.
+
+logistic regression
+ disease WITH age sciostat sector savings
+ /categorical = sciostat sector
+ /print = ci(95).
+])
+
+AT_CHECK([pspp -O format=csv ci.sps], [0], [dnl
+Table: Dependent Variable Encoding
+Original Value,Internal Value
+.000,0
+1.000,1
+
+Table: Case Processing Summary
+Unweighted Cases,N,Percent
+Included in Analysis,196,100.000
+Missing Cases,0,.000
+Total,196,100.000
+
+note: Estimation terminated at iteration number 4 because parameter estimates changed by less than 0.001
+
+Table: Model Summary
+Step 1,-2 Log likelihood,Cox & Snell R Square,Nagelkerke R Square
+,211.195,.120,.172
+
+Table: Categorical Variables' Codings
+,,,Parameter coding,
+,,Frequency,(1),(2)
+sciostat,1.000,77,1,0
+,2.000,49,0,1
+,3.000,70,0,0
+sector,1.000,117,1,
+,2.000,79,0,
+
+Table: Classification Table
+,,,Predicted,,
+,,,disease,,"Percentage
+Correct"
+,Observed,,.000,1.000,
+Step 1,disease,.000,131,8,94.245
+,,1.000,41,16,28.070
+,Overall Percentage,,,,75.000
+
+Table: Variables in the Equation
+,,,,,,,,95% CI for Exp(B),
+,,B,S.E.,Wald,df,Sig.,Exp(B),Lower,Upper
+Step 1,age,.027,.009,8.647,1,.003,1.027,1.009,1.045
+,savings,.061,.386,.025,1,.874,1.063,.499,2.264
+,sciostat,,,.440,2,.803,,,
+,sciostat(1),-.278,.434,.409,1,.522,.757,.323,1.775
+,sciostat(2),-.219,.459,.227,1,.634,.803,.327,1.976
+,sector,,,11.974,1,.001,,,
+,sector(1),-1.235,.357,11.974,1,.001,.291,.145,.586
+,Constant,-.814,.452,3.246,1,.072,.443,,
+])
+
+AT_CLEANUP
+