/* Lesson 17-1 */
/* File Name = les1701.sas 11/09/00 */
data food; :
infile 'food.dat'; : ファイルの読み込み
input X01-X10; : 変量リスト、連続的に
label X01='M(-15)' : 各変量に解りやすい名前を付ける
X02='M(16-20)' : M : 男性
X03='M(21-30)' : F : 女性
X04='M(31-40)' : ()内 : 年齢
X05='M(41-)' :
X06='F(-15)' :
X07='F(16-20)' :
X08='F(21-30)' :
X09='F(31-40)' :
X10='F(41-)'; :
:
proc print data=food(obs=10); : データの表示
run; :
proc factor data=food; : 因子分析
var X01-X10; : 解析に使う変量リスト
run; :
SAS システム 1
16:05 Monday, October 30, 2000
OBS X01 X02 X03 X04 X05 X06 X07 X08 X09 X10
1 7.69 7.31 7.47 7.76 7.87 7.51 7.24 7.70 7.91 7.95
2 6.59 5.56 6.21 6.04 5.81 6.64 6.11 6.53 6.44 6.64
3 4.55 4.18 4.36 4.25 4.53 4.60 3.66 4.04 3.68 4.43
4 6.78 6.11 6.30 5.98 5.56 6.37 6.29 5.43 5.32 5.28
5 6.47 6.24 6.02 5.42 5.88 6.00 5.60 4.60 5.40 5.95
6 6.96 6.81 6.91 6.48 6.23 7.09 7.27 7.13 6.86 7.36
7 6.57 5.70 5.89 5.16 5.30 6.07 5.56 4.50 4.92 5.33
8 7.32 6.95 6.02 4.98 4.88 6.82 6.40 5.53 5.61 5.33
9 6.51 6.15 5.51 4.68 4.16 5.17 4.81 4.70 4.86 3.82
10 6.86 6.05 5.85 6.14 6.75 6.71 5.39 5.42 6.03 6.59
SAS システム 2
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Prior Communality Estimates: ONE
Eigenvalues of the Correlation Matrix: Total = 10 Average = 1
1 2 3 4 5
Eigenvalue 6.8280 1.7619 0.7545 0.2624 0.1216
Difference 5.0661 1.0074 0.4921 0.1408 0.0236
Proportion 0.6828 0.1762 0.0754 0.0262 0.0122
Cumulative 0.6828 0.8590 0.9344 0.9607 0.9728
6 7 8 9 10
Eigenvalue 0.0980 0.0721 0.0441 0.0358 0.0219
Difference 0.0259 0.0280 0.0083 0.0139
Proportion 0.0098 0.0072 0.0044 0.0036 0.0022
Cumulative 0.9826 0.9898 0.9942 0.9978 1.0000
SAS システム 3
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
2 factors will be retained by the MINEIGEN criterion.
SAS システム 4
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Factor Pattern
FACTOR1 FACTOR2
X01 0.74741 -0.59244 M(-15)
X02 0.86579 -0.31836 M(16-20)
X03 0.84491 0.22079 M(21-30)
X04 0.78216 0.47602 M(31-40)
X05 0.68129 0.67325 M(41-)
X06 0.80647 -0.54140 F(-15)
X07 0.89959 -0.33542 F(16-20)
X08 0.90901 -0.04289 F(21-30)
X09 0.90316 0.21817 F(31-40)
X10 0.79262 0.35477 F(41-)
SAS システム 5
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Variance explained by each factor
FACTOR1 FACTOR2
6.827955 1.761873
Final Communality Estimates: Total = 8.589828
X01 X02 X03 X04 X05
0.909618 0.850950 0.762624 0.838371 0.917413
X06 X07 X08 X09 X10
0.943520 0.921775 0.828147 0.863298 0.754112
/* Lesson 17-2 */
/* File Name = les1702.sas 11/09/00 */
data food;
infile 'food.dat';
input X01-X10;
label X01='M(-15)'
X02='M(16-20)'
X03='M(21-30)'
X04='M(31-40)'
X05='M(41-)'
X06='F(-15)'
X07='F(16-20)'
X08='F(21-30)'
X09='F(31-40)'
X10='F(41-)';
proc print data=food(obs=10);
run; :
proc factor data=food nfactor=3 out=fscore; : 因子数3、出力の保存
var X01-X10; :
run; :
proc plot data=fscore; :
plot factor1*factor2/vref=0.0 href=0.0; : 第1因子 x 第2因子、軸
plot factor2*factor3/vref=0.0 href=0.0; : 第2因子 x 第3因子、軸
run; :
SAS システム 3
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
3 factors will be retained by the NFACTOR criterion.
SAS システム 4
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Factor Pattern
FACTOR1 FACTOR2 FACTOR3
X01 0.74741 -0.59244 0.16808 M(-15)
X02 0.86579 -0.31836 0.29190 M(16-20)
X03 0.84491 0.22079 0.38417 M(21-30)
X04 0.78216 0.47602 0.32604 M(31-40)
X05 0.68129 0.67325 0.11067 M(41-)
X06 0.80647 -0.54140 -0.07270 F(-15)
X07 0.89959 -0.33542 -0.14888 F(16-20)
X08 0.90901 -0.04289 -0.25110 F(21-30)
X09 0.90316 0.21817 -0.27989 F(31-40)
X10 0.79262 0.35477 -0.45389 F(41-)
SAS システム 5
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Variance explained by each factor
FACTOR1 FACTOR2 FACTOR3
6.827955 1.761873 0.754451
Final Communality Estimates: Total = 9.344279
X01 X02 X03 X04 X05
0.937870 0.936157 0.910210 0.944673 0.929662
X06 X07 X08 X09 X10
0.948805 0.943939 0.891197 0.941637 0.960129
SAS システム 6
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Scoring Coefficients Estimated by Regression
Squared Multiple Correlations of the Variables with each Factor
FACTOR1 FACTOR2 FACTOR3
1.000000 1.000000 1.000000
SAS システム 7
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Standardized Scoring Coefficients
FACTOR1 FACTOR2 FACTOR3
X01 0.10946 -0.33626 0.22279 M(-15)
X02 0.12680 -0.18069 0.38691 M(16-20)
X03 0.12374 0.12531 0.50920 M(21-30)
X04 0.11455 0.27018 0.43215 M(31-40)
X05 0.09978 0.38212 0.14670 M(41-)
X06 0.11811 -0.30729 -0.09636 F(-15)
X07 0.13175 -0.19038 -0.19733 F(16-20)
X08 0.13313 -0.02434 -0.33282 F(21-30)
X09 0.13227 0.12383 -0.37099 F(31-40)
X10 0.11609 0.20136 -0.60162 F(41-)
SAS システム 8
16:05 Monday, October 30, 2000
プロット : FACTOR1*FACTOR2. 凡例: A = 1 OBS, B = 2 OBS, ...
5 + |
| |
FACTOR1 | |
| A A |A B A
| A A A AA BBA AAADA BB A AA A A A
0 +----A-------A----AAB--AAA----ACA---BABAAA-B--AAAAA--AA-A--A--A-
| A AA A A A A A A A | ABAAABB BA A A A
| A A A | A A
| | A
| |
-5 + |
--+-----------+-----------+-----------+-----------+-----------+-
-3 -2 -1 0 1 2
FACTOR2
SAS システム 9
16:05 Monday, October 30, 2000
プロット : FACTOR2*FACTOR3. 凡例: A = 1 OBS, B = 2 OBS, ...
FACTOR2 | |
2.5 + |
| A A A A | AC A A A
| AA ABA ADABA AB| B A AA AA A
0.0 +---BA----AAAA-CBA--A-+-ECB-A------A----A--------A--------------
| A A BAA ABB AB AABAB
| B AA B AAAAA A A
-2.5 + | A
| |
| |
-5.0 + |
--+---------+---------+---------+---------+---------+---------+-
-2 -1 0 1 2 3 4
FACTOR3
/* Lesson 17-3 */
/* File Name = les1703.sas 11/09/00 */
data food;
infile 'food.dat';
input X01-X10;
label X01='M(-15)'
X02='M(16-20)'
X03='M(21-30)'
X04='M(31-40)'
X05='M(41-)'
X06='F(-15)'
X07='F(16-20)'
X08='F(21-30)'
X09='F(31-40)'
X10='F(41-)';
proc print data=food(obs=10);
run;
proc factor data=food nfactor=3 rotate=varimax out=fscore2;
var X01-X10; : 回転の指定
run; :
proc print data=fscore2;
run;
proc plot data=fscore2;
plot factor1*factor2/vref=0.0 href=0.0;
plot factor2*factor3/vref=0.0 href=0.0;
plot factor3*factor1/vref=0.0 href=0.0;
run;
SAS システム 6
11:40 Monday, October 30, 2000
Rotation Method: Varimax
Orthogonal Transformation Matrix
1 2 3
1 0.65751 0.53576 0.52976
2 -0.73452 0.61238 0.29234
3 0.16779 0.58134 -0.79617
SAS システム 7
11:40 Monday, October 30, 2000
Rotation Method: Varimax
Rotated Factor Pattern
FACTOR1 FACTOR2 FACTOR3
X01 0.95480 0.13534 0.08893 M(-15)
X02 0.85209 0.43859 0.13319 M(16-20)
X03 0.45782 0.81121 0.20628 M(21-30)
X04 0.21933 0.90009 0.29393 M(31-40)
X05 -0.02799 0.84163 0.46962 M(41-)
X06 0.91574 0.05827 0.32684 F(-15)
X07 0.81289 0.19001 0.49704 F(16-20)
X08 0.58706 0.31477 0.66894 F(21-30)
X09 0.38662 0.45477 0.76508 F(31-40)
X10 0.18442 0.37804 0.88499 F(41-)
SAS システム 8
11:40 Monday, October 30, 2000
Rotation Method: Varimax
Variance explained by each factor
FACTOR1 FACTOR2 FACTOR3
3.923686 2.875550 2.545044
Final Communality Estimates: Total = 9.344279
X01 X02 X03 X04 X05
0.937870 0.936157 0.910210 0.944673 0.929662
X06 X07 X08 X09 X10
0.948805 0.943939 0.891197 0.941637 0.960129
SAS システム 9
11:40 Monday, October 30, 2000
Rotation Method: Varimax
Scoring Coefficients Estimated by Regression
Squared Multiple Correlations of the Variables with each Factor
FACTOR1 FACTOR2 FACTOR3
1.000000 1.000000 1.000000
SAS システム 10
11:40 Monday, October 30, 2000
Rotation Method: Varimax
Standardized Scoring Coefficients
FACTOR1 FACTOR2 FACTOR3
X01 0.35634 -0.01776 -0.21769 M(-15)
X02 0.28101 0.18221 -0.29369 M(16-20)
X03 0.07475 0.43906 -0.30323 M(21-30)
X04 -0.05062 0.47805 -0.20440 M(31-40)
X05 -0.19046 0.37274 0.04777 M(41-)
X06 0.28720 -0.18091 0.04945 F(-15)
X07 0.19335 -0.16071 0.17125 F(16-20)
X08 0.04957 -0.13707 0.32839 F(21-30)
X09 -0.06623 -0.06897 0.40164 F(31-40)
X10 -0.17252 -0.16424 0.59935 F(41-)
SAS システム 11
11:40 Monday, October 30, 2000
OBS X01 X02 X03 X04 X05 X06 X07 X08
1 7.69 7.31 7.47 7.76 7.87 7.51 7.24 7.70
2 6.59 5.56 6.21 6.04 5.81 6.64 6.11 6.53
3 4.55 4.18 4.36 4.25 4.53 4.60 3.66 4.04
4 6.78 6.11 6.30 5.98 5.56 6.37 6.29 5.43
5 6.47 6.24 6.02 5.42 5.88 6.00 5.60 4.60
6 6.96 6.81 6.91 6.48 6.23 7.09 7.27 7.13
OBS X09 X10 FACTOR1 FACTOR2 FACTOR3
1 7.91 7.95 0.66848 1.82089 1.58151
2 6.44 6.64 0.16753 -0.19985 1.19223
3 3.68 4.43 -1.03317 -1.44074 -0.47196
4 5.32 5.28 0.63828 0.22675 -0.50040
5 5.40 5.95 0.18212 0.09192 -0.20819
6 6.86 7.36 0.74098 0.36705 1.34820
(略)
SAS システム 27
11:40 Monday, October 30, 2000
OBS X01 X02 X03 X04 X05 X06 X07 X08
97 7.81 7.31 6.93 7.42 6.60 8.10 7.56 7.79
98 8.29 7.45 7.00 6.76 6.69 8.14 7.09 6.83
99 7.20 6.42 6.23 5.92 5.91 6.98 6.44 6.04
100 7.62 7.33 6.91 6.90 6.47 7.33 6.69 7.23
OBS X09 X10 FACTOR1 FACTOR2 FACTOR3
97 7.82 7.67 1.18227 0.72902 1.67725
98 6.83 7.13 1.41828 0.79855 0.65451
99 6.14 6.02 0.78541 0.01100 0.33576
100 6.79 6.70 1.06526 0.90338 0.58077
SAS システム 28
11:40 Monday, October 30, 2000
プロット : FACTOR1*FACTOR2. 凡例: A = 1 OBS, B = 2 OBS, ...
2 + A | A
| A AA A A | A A
FACTOR1 | A AA |A A A A A
| A B AA AB B C A A A A A
| A A A B | A AA A A A
0 +-----------------A-A---------B-+AA-AA--A-AA--------------------
| A B AA AA| A A A A A
| A AA A|A C AA
| A A AA A AA B | A A A
| A A | AA A
-2 + A A A| A
--+---------+---------+---------+---------+---------+---------+-
-3 -2 -1 0 1 2 3
FACTOR2
SAS システム 29
11:40 Monday, October 30, 2000
プロット : FACTOR2*FACTOR3. 凡例: A = 1 OBS, B = 2 OBS, ...
FACTOR2 | |
4 + |
| |
| A A |
2 + A | A A
| A AA A | AAA A A A
| A A A A A AAA |ABB BAB A B AA
0 +--------------------------A------B--D--AA+ACB-AAABAB-A---------
| A A AAA A C| BA BA C A A
| A A CA A | A B AB A
-2 + A A AA |
--+---------+---------+---------+---------+---------+---------+-
-4 -3 -2 -1 0 1 2
FACTOR3
SAS システム 30
11:40 Monday, October 30, 2000
プロット : FACTOR3*FACTOR1. 凡例: A = 1 OBS, B = 2 OBS, ...
FACTOR3 | |
2.5 + |
| A B |A BA A
| A BABA A C ABBAA AAA AB A A A A
0.0 +-------------A-----BA-A-AAA---A--A-A-+-BAAC-AABAA-A--AC-AA-----
| A AA A A A B B| B A ABBB A AA
| A A |A AA A
-2.5 + A A | A
| A |
| |
-5.0 + |
--+-----------+-----------+-----------+-----------+-----------+-
-3 -2 -1 0 1 2
FACTOR1
/* Lesson 17-4 */
/* File Name = les1704.sas 11/09/00 */
data hobby;
infile 'syumi.dat';
input code $ X1-X6;
label X1='M(-29)'
X2='M(30-49)'
X3='M(50-)'
X4='F(-29)'
X5='F(30-49)'
X6='F(50-)';
proc print data=hobby(obs=10);
run;
proc factor data=hobby nfactor=2 out=fscore;
var X1-X6;
run;
proc plot data=fscore; : 回転前
plot factor1*factor2=code/vref=0.0 href=0.0; : コード化した記号
run; :
proc factor data=hobby nfactor=2 rotate=varimax out=fscore2;
var X1-X6;
run;
proc plot data=fscore2; : 回転後
plot factor1*factor2=code/vref=0.0 href=0.0; : コード化した記号
run; :
SAS システム 1
16:05 Monday, October 30, 2000
OBS CODE X1 X2 X3 X4 X5 X6
1 A 4.00 4.25 3.83 4.50 4.67 4.00
2 B 4.17 3.89 4.00 4.50 4.17 3.75
3 C 3.83 3.44 2.83 3.57 3.17 1.50
4 D 2.83 4.22 3.83 3.71 3.00 2.25
5 E 4.17 4.11 3.83 3.57 4.00 3.75
6 F 2.33 3.56 3.33 2.93 2.83 2.75
7 G 1.83 2.44 2.33 3.71 3.83 3.75
8 H 2.50 1.89 2.00 4.21 3.17 3.75
9 I 2.00 1.44 2.00 4.07 3.33 3.50
10 J 4.00 3.33 3.33 3.00 3.17 2.25
SAS システム 2
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Prior Communality Estimates: ONE
Eigenvalues of the Correlation Matrix: Total = 6 Average = 1
1 2 3
Eigenvalue 2.7435 1.7477 0.7451
Difference 0.9958 1.0027 0.3571
Proportion 0.4573 0.2913 0.1242
Cumulative 0.4573 0.7485 0.8727
4 5 6
Eigenvalue 0.3879 0.2263 0.1495
Difference 0.1616 0.0768
Proportion 0.0647 0.0377 0.0249
Cumulative 0.9374 0.9751 1.0000
SAS システム 3
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
2 factors will be retained by the NFACTOR criterion.
Factor Pattern
FACTOR1 FACTOR2
X1 0.52708 0.63297 M(-29)
X2 0.59628 0.64623 M(30-49)
X3 0.64192 0.47370 M(50-)
X4 0.82757 -0.35514 F(-29)
X5 0.79607 -0.43033 F(30-49)
X6 0.61604 -0.62750 F(50-)
SAS システム 4
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Variance explained by each factor
FACTOR1 FACTOR2
2.743514 1.747721
Final Communality Estimates: Total = 4.491236
X1 X2 X3 X4 X5 X6
0.678467 0.773166 0.636447 0.810993 0.818906 0.773257
SAS システム 5
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Scoring Coefficients Estimated by Regression
Squared Multiple Correlations of the Variables with each Factor
FACTOR1 FACTOR2
1.000000 1.000000
SAS システム 6
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Standardized Scoring Coefficients
FACTOR1 FACTOR2
X1 0.19212 0.36217 M(-29)
X2 0.21734 0.36976 M(30-49)
X3 0.23398 0.27104 M(50-)
X4 0.30164 -0.20320 F(-29)
X5 0.29016 -0.24622 F(30-49)
X6 0.22454 -0.35904 F(50-)
SAS システム 7
16:05 Monday, October 30, 2000
プロット : FACTOR1*FACTOR2. 使用するプロット文字: CODE の値.
(NOTE: 1 オブザベーションを表示していません.)
2 + A B
| | Z E
FACTOR1 | R |
| |
| 3 Q M | DL O
0 +--------------HG------------S-----2--+--F-------C--------------
| I K P | V N
| | U W
| 1|Y
| T X
-2 + 4 |
--+-----------+-----------+-----------+-----------+-----------+-
-3 -2 -1 0 1 2
FACTOR2
SAS システム 8
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Prior Communality Estimates: ONE
Eigenvalues of the Correlation Matrix: Total = 6 Average = 1
1 2 3
Eigenvalue 2.7435 1.7477 0.7451
Difference 0.9958 1.0027 0.3571
Proportion 0.4573 0.2913 0.1242
Cumulative 0.4573 0.7485 0.8727
4 5 6
Eigenvalue 0.3879 0.2263 0.1495
Difference 0.1616 0.0768
Proportion 0.0647 0.0377 0.0249
Cumulative 0.9374 0.9751 1.0000
SAS システム 9
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
2 factors will be retained by the NFACTOR criterion.
Factor Pattern
FACTOR1 FACTOR2
X1 0.52708 0.63297 M(-29)
X2 0.59628 0.64623 M(30-49)
X3 0.64192 0.47370 M(50-)
X4 0.82757 -0.35514 F(-29)
X5 0.79607 -0.43033 F(30-49)
X6 0.61604 -0.62750 F(50-)
SAS システム 10
16:05 Monday, October 30, 2000
Initial Factor Method: Principal Components
Variance explained by each factor
FACTOR1 FACTOR2
2.743514 1.747721
Final Communality Estimates: Total = 4.491236
X1 X2 X3 X4 X5 X6
0.678467 0.773166 0.636447 0.810993 0.818906 0.773257
SAS システム 11
16:05 Monday, October 30, 2000
Rotation Method: Varimax
Orthogonal Transformation Matrix
1 2
1 0.77751 0.62886
2 -0.62886 0.77751
SAS システム 12
16:05 Monday, October 30, 2000
Rotation Method: Varimax
Rotated Factor Pattern
FACTOR1 FACTOR2
X1 0.01176 0.82361 M(-29)
X2 0.05723 0.87743 M(30-49)
X3 0.20121 0.77199 M(50-)
X4 0.86678 0.24430 F(-29)
X5 0.88957 0.16603 F(30-49)
X6 0.87359 -0.10049 F(50-)
Variance explained by each factor
FACTOR1 FACTOR2
2.349707 2.141529
SAS システム 13
16:05 Monday, October 30, 2000
Rotation Method: Varimax
Final Communality Estimates: Total = 4.491236
X1 X2 X3 X4 X5 X6
0.678467 0.773166 0.636447 0.810993 0.818906 0.773257
Scoring Coefficients Estimated by Regression
Squared Multiple Correlations of the Variables with each Factor
FACTOR1 FACTOR2
1.000000 1.000000
SAS システム 14
16:05 Monday, October 30, 2000
Rotation Method: Varimax
Standardized Scoring Coefficients
FACTOR1 FACTOR2
X1 -0.07838 0.40241 M(-29)
X2 -0.06354 0.42417 M(30-49)
X3 0.01147 0.35788 M(50-)
X4 0.36232 0.03170 F(-29)
X5 0.38045 -0.00897 F(30-49)
X6 0.40037 -0.13795 F(50-)
SAS システム 15
16:05 Monday, October 30, 2000
プロット : FACTOR1*FACTOR2. 使用するプロット文字: CODE の値.
2 + |
| | A
FACTOR1 | I H G 3 | R ZB
| Q | E
| K S |M
0 +---------------------P-2--+------------D-------------
| |F CJ L O
| Y | V N
| 4 1 T | U
| X | W
-2 + |
---+-----------+-----------+-----------+-----------+--
-2 -1 0 1 2
FACTOR2