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Author's title

Author*The author of this computation has been verified*
R Software Modulerwasp_im2_dm1.wasp
Title produced by softwareData Mining
Date of computationTue, 01 May 2012 18:45:58 -0400
Cite this page as followsStatistical Computations at FreeStatistics.org, Office for Research Development and Education, URL https://freestatistics.org/blog/index.php?v=date/2012/May/01/t13359124604u8c2wlt8ri556q.htm/, Retrieved Sat, 04 May 2024 19:17:17 +0000
Statistical Computations at FreeStatistics.org, Office for Research Development and Education, URL https://freestatistics.org/blog/index.php?pk=165871, Retrieved Sat, 04 May 2024 19:17:17 +0000
QR Codes:

Original text written by user:
IsPrivate?No (this computation is public)
User-defined keywords
Estimated Impact72
Family? (F = Feedback message, R = changed R code, M = changed R Module, P = changed Parameters, D = changed Data)
-       [Data Mining] [verschil female e...] [2012-05-01 22:45:58] [de50302416ae5d0bdedd77e4c0468c33] [Current]
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Summary of computational transaction
Raw Inputview raw input (R code)
Raw Outputview raw output of R engine
Computing time6 seconds
R Server'Gertrude Mary Cox' @ cox.wessa.net

\begin{tabular}{lllllllll}
\hline
Summary of computational transaction \tabularnewline
Raw Input & view raw input (R code)  \tabularnewline
Raw Output & view raw output of R engine  \tabularnewline
Computing time & 6 seconds \tabularnewline
R Server & 'Gertrude Mary Cox' @ cox.wessa.net \tabularnewline
\hline
\end{tabular}
%Source: https://freestatistics.org/blog/index.php?pk=165871&T=0

[TABLE]
[ROW][C]Summary of computational transaction[/C][/ROW]
[ROW][C]Raw Input[/C][C]view raw input (R code) [/C][/ROW]
[ROW][C]Raw Output[/C][C]view raw output of R engine [/C][/ROW]
[ROW][C]Computing time[/C][C]6 seconds[/C][/ROW]
[ROW][C]R Server[/C][C]'Gertrude Mary Cox' @ cox.wessa.net[/C][/ROW]
[/TABLE]
Source: https://freestatistics.org/blog/index.php?pk=165871&T=0

Globally Unique Identifier (entire table): ba.freestatistics.org/blog/index.php?pk=165871&T=0

As an alternative you can also use a QR Code:  

The GUIDs for individual cells are displayed in the table below:

Summary of computational transaction
Raw Inputview raw input (R code)
Raw Outputview raw output of R engine
Computing time6 seconds
R Server'Gertrude Mary Cox' @ cox.wessa.net







Computational Result
> myoutput
$Xcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$Ycor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$XYcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20         A11         A12
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
            A13         A14         A15         A16        A17        A18
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
           A19        A20
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
> myxlabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"
> myylabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"

\begin{tabular}{lllllllll}
\hline
Computational Result \tabularnewline
> myoutput
$Xcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$Ycor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$XYcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20         A11         A12
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
            A13         A14         A15         A16        A17        A18
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
           A19        A20
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
> myxlabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"
> myylabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"
\tabularnewline \hline \end{tabular} %Source: https://freestatistics.org/blog/index.php?pk=165871&T=1

[TABLE]
[ROW][C]Computational Result[/C][/ROW]
[ROW][C]
> myoutput
$Xcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$Ycor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$XYcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20         A11         A12
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
            A13         A14         A15         A16        A17        A18
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
           A19        A20
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
> myxlabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"
> myylabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"
[/C][/ROW] [/TABLE] Source: https://freestatistics.org/blog/index.php?pk=165871&T=1

Globally Unique Identifier (entire table): ba.freestatistics.org/blog/index.php?pk=165871&T=1

As an alternative you can also use a QR Code:  

The GUIDs for individual cells are displayed in the table below:

Computational Result
> myoutput
$Xcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$Ycor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20
A11 0.04731553 0.20258145 0.08450427 0.05071967
A12 0.10325301 0.07004630 0.10855974 0.13879183
A13 0.01290683 0.05531742 0.05742868 0.05537578
A14 0.09080841 0.09624589 0.14676043 0.09675897
A15 0.11721917 0.23266467 0.34157366 0.10237476
A16 0.10111400 0.15413080 0.08213462 0.15660044
A17 1.00000000 0.20951592 0.10922031 0.19937112
A18 0.20951592 1.00000000 0.22922775 0.13197469
A19 0.10922031 0.22922775 1.00000000 0.12368186
A20 0.19937112 0.13197469 0.12368186 1.00000000
$XYcor
            A11         A12         A13         A14         A15         A16
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
A11  1.00000000 -0.18171585 -0.08351232 -0.05311615  0.24895096  0.24756225
A12 -0.18171585  1.00000000  0.12106599  0.28176448 -0.01588026 -0.02534289
A13 -0.08351232  0.12106599  1.00000000  0.12059695 -0.01800629 -0.12212467
A14 -0.05311615  0.28176448  0.12059695  1.00000000  0.05599151  0.01830714
A15  0.24895096 -0.01588026 -0.01800629  0.05599151  1.00000000  0.26332585
A16  0.24756225 -0.02534289 -0.12212467  0.01830714  0.26332585  1.00000000
A17  0.04731553  0.10325301  0.01290683  0.09080841  0.11721917  0.10111400
A18  0.20258145  0.07004630  0.05531742  0.09624589  0.23266467  0.15413080
A19  0.08450427  0.10855974  0.05742868  0.14676043  0.34157366  0.08213462
A20  0.05071967  0.13879183  0.05537578  0.09675897  0.10237476  0.15660044
           A17        A18        A19        A20         A11         A12
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
A11 0.04731553 0.20258145 0.08450427 0.05071967  1.00000000 -0.18171585
A12 0.10325301 0.07004630 0.10855974 0.13879183 -0.18171585  1.00000000
A13 0.01290683 0.05531742 0.05742868 0.05537578 -0.08351232  0.12106599
A14 0.09080841 0.09624589 0.14676043 0.09675897 -0.05311615  0.28176448
A15 0.11721917 0.23266467 0.34157366 0.10237476  0.24895096 -0.01588026
A16 0.10111400 0.15413080 0.08213462 0.15660044  0.24756225 -0.02534289
A17 1.00000000 0.20951592 0.10922031 0.19937112  0.04731553  0.10325301
A18 0.20951592 1.00000000 0.22922775 0.13197469  0.20258145  0.07004630
A19 0.10922031 0.22922775 1.00000000 0.12368186  0.08450427  0.10855974
A20 0.19937112 0.13197469 0.12368186 1.00000000  0.05071967  0.13879183
            A13         A14         A15         A16        A17        A18
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
A11 -0.08351232 -0.05311615  0.24895096  0.24756225 0.04731553 0.20258145
A12  0.12106599  0.28176448 -0.01588026 -0.02534289 0.10325301 0.07004630
A13  1.00000000  0.12059695 -0.01800629 -0.12212467 0.01290683 0.05531742
A14  0.12059695  1.00000000  0.05599151  0.01830714 0.09080841 0.09624589
A15 -0.01800629  0.05599151  1.00000000  0.26332585 0.11721917 0.23266467
A16 -0.12212467  0.01830714  0.26332585  1.00000000 0.10111400 0.15413080
A17  0.01290683  0.09080841  0.11721917  0.10111400 1.00000000 0.20951592
A18  0.05531742  0.09624589  0.23266467  0.15413080 0.20951592 1.00000000
A19  0.05742868  0.14676043  0.34157366  0.08213462 0.10922031 0.22922775
A20  0.05537578  0.09675897  0.10237476  0.15660044 0.19937112 0.13197469
           A19        A20
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
A11 0.08450427 0.05071967
A12 0.10855974 0.13879183
A13 0.05742868 0.05537578
A14 0.14676043 0.09675897
A15 0.34157366 0.10237476
A16 0.08213462 0.15660044
A17 0.10922031 0.19937112
A18 0.22922775 0.13197469
A19 1.00000000 0.12368186
A20 0.12368186 1.00000000
> myxlabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"
> myylabs
 [1] "A11" "A12" "A13" "A14" "A15" "A16" "A17" "A18" "A19" "A20"



Parameters (Session):
par1 = correlation matrix ; par2 = ATTLES separate ; par3 = ATTLES separate ; par4 = female ; par5 = all ; par6 = all ;
Parameters (R input):
par1 = correlation matrix ; par2 = ATTLES separate ; par3 = ATTLES separate ; par4 = female ; par5 = all ; par6 = all ;
R code (references can be found in the software module):
myxlabs <- 'NA'
image.plot <- function (..., add = FALSE, nlevel = 64, horizontal = FALSE,
legend.shrink = 0.9, legend.width = 1.2, legend.mar = ifelse(horizontal,
3.1, 5.1), legend.lab = NULL, graphics.reset = FALSE,
bigplot = NULL, smallplot = NULL, legend.only = FALSE, col = tim.colors(nlevel),
lab.breaks = NULL, axis.args = NULL, legend.args = NULL,
midpoint = FALSE)
{
old.par <- par(no.readonly = TRUE)
info <- image.plot.info(...)
if (add) {
big.plot <- old.par$plt
}
if (legend.only) {
graphics.reset <- TRUE
}
if (is.null(legend.mar)) {
legend.mar <- ifelse(horizontal, 3.1, 5.1)
}
temp <- image.plot.plt(add = add, legend.shrink = legend.shrink,
legend.width = legend.width, legend.mar = legend.mar,
horizontal = horizontal, bigplot = bigplot, smallplot = smallplot)
smallplot <- temp$smallplot
bigplot <- temp$bigplot
if (!legend.only) {
if (!add) {
par(plt = bigplot)
}
if (!info$poly.grid) {
image(..., add = add, col = col)
}
else {
poly.image(..., add = add, col = col, midpoint = midpoint)
}
big.par <- par(no.readonly = TRUE)
}
if ((smallplot[2] < smallplot[1]) | (smallplot[4] < smallplot[3])) {
par(old.par)
stop('plot region too small to add legend
')
}
ix <- 1
minz <- info$zlim[1]
maxz <- info$zlim[2]
binwidth <- (maxz - minz)/nlevel
midpoints <- seq(minz + binwidth/2, maxz - binwidth/2, by = binwidth)
iy <- midpoints
iz <- matrix(iy, nrow = 1, ncol = length(iy))
breaks <- list(...)$breaks
par(new = TRUE, pty = 'm', plt = smallplot, err = -1)
if (is.null(breaks)) {
axis.args <- c(list(side = ifelse(horizontal, 1, 4),
mgp = c(3, 1, 0), las = ifelse(horizontal, 0, 2)),
axis.args)
}
else {
if (is.null(lab.breaks)) {
lab.breaks <- format(breaks)
}
axis.args <- c(list(side = ifelse(horizontal, 1, 4),
mgp = c(3, 1, 0), las = ifelse(horizontal, 0, 2),
at = breaks, labels = lab.breaks), axis.args)
}
if (!horizontal) {
if (is.null(breaks)) {
image(ix, iy, iz, xaxt = 'n', yaxt = 'n', xlab = '',
ylab = '', col = col)
}
else {
image(ix, iy, iz, xaxt = 'n', yaxt = 'n', xlab = '',
ylab = '', col = col, breaks = breaks)
}
}
else {
if (is.null(breaks)) {
image(iy, ix, t(iz), xaxt = 'n', yaxt = 'n', xlab = '',
ylab = '', col = col)
}
else {
image(iy, ix, t(iz), xaxt = 'n', yaxt = 'n', xlab = '',
ylab = '', col = col, breaks = breaks)
}
}
box()
if (!is.null(legend.lab)) {
legend.args <- list(text = legend.lab, side = ifelse(horizontal,
1, 4), line = legend.mar - 2)
}
if (!is.null(legend.args)) {
}
mfg.save <- par()$mfg
if (graphics.reset | add) {
par(old.par)
par(mfg = mfg.save, new = FALSE)
invisible()
}
else {
par(big.par)
par(plt = big.par$plt, xpd = FALSE)
par(mfg = mfg.save, new = FALSE)
invisible()
}
}
image.plot.plt <- function (x, add = FALSE, legend.shrink = 0.9, legend.width = 1,
horizontal = FALSE, legend.mar = NULL, bigplot = NULL, smallplot = NULL,
...)
{
old.par <- par(no.readonly = TRUE)
if (is.null(smallplot))
stick <- TRUE
else stick <- FALSE
if (is.null(legend.mar)) {
legend.mar <- ifelse(horizontal, 3.1, 5.1)
}
char.size <- ifelse(horizontal, par()$cin[2]/par()$din[2],
par()$cin[1]/par()$din[1])
offset <- char.size * ifelse(horizontal, par()$mar[1], par()$mar[4])
legend.width <- char.size * legend.width
legend.mar <- legend.mar * char.size
if (is.null(smallplot)) {
smallplot <- old.par$plt
if (horizontal) {
smallplot[3] <- legend.mar
smallplot[4] <- legend.width + smallplot[3]
pr <- (smallplot[2] - smallplot[1]) * ((1 - legend.shrink)/2)
smallplot[1] <- smallplot[1] + pr
smallplot[2] <- smallplot[2] - pr
}
else {
smallplot[2] <- 1 - legend.mar
smallplot[1] <- smallplot[2] - legend.width
pr <- (smallplot[4] - smallplot[3]) * ((1 - legend.shrink)/2)
smallplot[4] <- smallplot[4] - pr
smallplot[3] <- smallplot[3] + pr
}
}
if (is.null(bigplot)) {
bigplot <- old.par$plt
if (!horizontal) {
bigplot[2] <- min(bigplot[2], smallplot[1] - offset)
}
else {
bottom.space <- old.par$mar[1] * char.size
bigplot[3] <- smallplot[4] + offset
}
}
if (stick & (!horizontal)) {
dp <- smallplot[2] - smallplot[1]
smallplot[1] <- min(bigplot[2] + offset, smallplot[1])
smallplot[2] <- smallplot[1] + dp
}
return(list(smallplot = smallplot, bigplot = bigplot))
}
image.plot.info <- function (...)
{
temp <- list(...)
xlim <- NA
ylim <- NA
zlim <- NA
poly.grid <- FALSE
if (is.list(temp[[1]])) {
xlim <- range(temp[[1]]$x, na.rm = TRUE)
ylim <- range(temp[[1]]$y, na.rm = TRUE)
zlim <- range(temp[[1]]$z, na.rm = TRUE)
if (is.matrix(temp[[1]]$x) & is.matrix(temp[[1]]$y) &
is.matrix(temp[[1]]$z)) {
poly.grid <- TRUE
}
}
if (length(temp) >= 3) {
if (is.matrix(temp[[1]]) & is.matrix(temp[[2]]) & is.matrix(temp[[3]])) {
poly.grid <- TRUE
}
}
if (is.matrix(temp[[1]]) & !poly.grid) {
xlim <- c(0, 1)
ylim <- c(0, 1)
zlim <- range(temp[[1]], na.rm = TRUE)
}
if (length(temp) >= 3) {
if (is.matrix(temp[[3]])) {
xlim <- range(temp[[1]], na.rm = TRUE)
ylim <- range(temp[[2]], na.rm = TRUE)
zlim <- range(temp[[3]], na.rm = TRUE)
}
}
if (is.matrix(temp$x) & is.matrix(temp$y) & is.matrix(temp$z)) {
poly.grid <- TRUE
}
xthere <- match('x', names(temp))
ythere <- match('y', names(temp))
zthere <- match('z', names(temp))
if (!is.na(zthere))
zlim <- range(temp$z, na.rm = TRUE)
if (!is.na(xthere))
xlim <- range(temp$x, na.rm = TRUE)
if (!is.na(ythere))
ylim <- range(temp$y, na.rm = TRUE)
if (!is.null(temp$zlim))
zlim <- temp$zlim
if (!is.null(temp$xlim))
xlim <- temp$xlim
if (!is.null(temp$ylim))
ylim <- temp$ylim
list(xlim = xlim, ylim = ylim, zlim = zlim, poly.grid = poly.grid)
}
matcor <- function (X, Y, method='kendall') {
matcorX = cor(X, use = 'pairwise', method=method)
matcorY = cor(Y, use = 'pairwise', method=method)
matcorXY = cor(cbind(X, Y), use = 'pairwise', method=method)
return(list(Xcor = matcorX, Ycor = matcorY, XYcor = matcorXY))
}
matcor.p <- function (X, Y, method='kendall') {
lx <- length(X[1,])
ly <- length(Y[1,])
myretarr <- array(NA,dim=c(lx,ly))
mymetaarr.x <- array(0,dim=c(lx,10))
mymetaarr.y <- array(0,dim=c(ly,10))
mymetaarr.xp <- array(0,dim=c(lx,10))
mymetaarr.yp <- array(0,dim=c(ly,10))
for (xi in 1:lx) {
for (yi in 1:ly) {
myretarr[xi,yi] <- cor.test(X[,xi],Y[,yi],method=method)$p.value
for (myp in (1:10)) {
if (myretarr[xi,yi] < myp/1000) {
mymetaarr.x[xi,myp] = mymetaarr.x[xi,myp] + 1
mymetaarr.y[yi,myp] = mymetaarr.y[yi,myp] + 1
}
}
}
}
mymetaarr.xp = mymetaarr.x / ly
mymetaarr.yp = mymetaarr.y / lx
return(list(XYcor = myretarr, Xmeta = mymetaarr.x, Ymeta = mymetaarr.y, Xmetap = mymetaarr.xp, Ymetap = mymetaarr.yp))
}
tim.colors <- function (n = 64) {
orig <- c('#00008F', '#00009F', '#0000AF', '#0000BF', '#0000CF',
'#0000DF', '#0000EF', '#0000FF', '#0010FF', '#0020FF',
'#0030FF', '#0040FF', '#0050FF', '#0060FF', '#0070FF',
'#0080FF', '#008FFF', '#009FFF', '#00AFFF', '#00BFFF',
'#00CFFF', '#00DFFF', '#00EFFF', '#00FFFF', '#10FFEF',
'#20FFDF', '#30FFCF', '#40FFBF', '#50FFAF', '#60FF9F',
'#70FF8F', '#80FF80', '#8FFF70', '#9FFF60', '#AFFF50',
'#BFFF40', '#CFFF30', '#DFFF20', '#EFFF10', '#999999',
'#FFEF00', '#FFDF00', '#FFCF00', '#FFBF00', '#FFAF00',
'#FF9F00', '#FF8F00', '#FF8000', '#FF7000', '#FF6000',
'#FF5000', '#FF4000', '#FF3000', '#FF2000', '#FF1000',
'#FF0000', '#EF0000', '#DF0000', '#CF0000', '#BF0000',
'#AF0000', '#9F0000', '#8F0000', '#800000')
if (n == 64)
return(orig)
rgb.tim <- t(col2rgb(orig))
temp <- matrix(NA, ncol = 3, nrow = n)
x <- seq(0, 1, , 64)
xg <- seq(0, 1, , n)
for (k in 1:3) {
hold <- splint(x, rgb.tim[, k], xg)
hold[hold < 0] <- 0
hold[hold > 255] <- 255
temp[, k] <- round(hold)
}
rgb(temp[, 1], temp[, 2], temp[, 3], maxColorValue = 255)
}
img.matcor <- function (correl, title='XY correlation') {
matcorX = correl$Xcor
matcorY = correl$Ycor
matcorXY = correl$XYcor
lX = ncol(matcorX)
lY = ncol(matcorY)
def.par <- par(no.readonly = TRUE)
par(mfrow = c(1, 1), pty = 's')
image(1:(lX + lY), 1:(lX + lY), t(matcorXY[nrow(matcorXY):1,]), zlim = c(-1, 1), main = title,
col = tim.colors(64), axes = FALSE, , xlab = '', ylab = '')
box()
abline(h = lY + 0.5, v = lX + 0.5, lwd = 2, lty = 2)
image.plot(legend.only = TRUE, zlim = c(-1, 1), col = tim.colors(64), horizontal = TRUE)
par(def.par)
}
x <- as.data.frame(read.table(file='https://automated.biganalytics.eu/download/utaut.csv',sep=',',header=T))
x$U25 <- 6-x$U25
if(par4 == 'female') x <- x[x$Gender==0,]
if(par4 == 'male') x <- x[x$Gender==1,]
if(par5 == 'prep') x <- x[x$Pop==1,]
if(par5 == 'bachelor') x <- x[x$Pop==0,]
if(par6 != 'all') {
x <- x[x$Year==as.numeric(par6),]
}
cAc <- with(x,cbind( A1, A2, A3, A4, A5, A6, A7, A8, A9,A10))
cAs <- with(x,cbind(A11,A12,A13,A14,A15,A16,A17,A18,A19,A20))
cA <- cbind(cAc,cAs)
cCa <- with(x,cbind(C1,C3,C5,C7, C9,C11,C13,C15,C17,C19,C21,C23,C25,C27,C29,C31,C33,C35,C37,C39,C41,C43,C45,C47))
cCp <- with(x,cbind(C2,C4,C6,C8,C10,C12,C14,C16,C18,C20,C22,C24,C26,C28,C30,C32,C34,C36,C38,C40,C42,C44,C46,C48))
cC <- cbind(cCa,cCp)
cU <- with(x,cbind(U1,U2,U3,U4,U5,U6,U7,U8,U9,U10,U11,U12,U13,U14,U15,U16,U17,U18,U19,U20,U21,U22,U23,U24,U25,U26,U27,U28,U29,U30,U31,U32,U33))
cE <- with(x,cbind(BC,NNZFG,MRT,AFL,LPM,LPC,W,WPA))
cX <- with(x,cbind(X1,X2,X3,X4,X5,X6,X7,X8,X9,X10,X11,X12,X13,X14,X15,X16,X17,X18))
if (par2=='ATTLES connected') myX <- cAc
if (par3=='ATTLES connected') myY <- cAc
if (par2=='ATTLES separate') myX <- cAs
if (par3=='ATTLES separate') myY <- cAs
if (par2=='ATTLES all') myX <- cA
if (par3=='ATTLES all') myY <- cA
if (par2=='COLLES actuals') myX <- cCa
if (par3=='COLLES actuals') myY <- cCa
if (par2=='COLLES preferred') myX <- cCp
if (par3=='COLLES preferred') myY <- cCp
if (par2=='COLLES all') myX <- cC
if (par3=='COLLES all') myY <- cC
if (par2=='CSUQ') myX <- cU
if (par3=='CSUQ') myY <- cU
if (par2=='Learning Activities') myX <- cE
if (par3=='Learning Activities') myY <- cE
if (par2=='Exam Items') myX <- cX
if (par3=='Exam Items') myY <- cX
bitmap(file='pic1.png')
if (par1=='correlation matrix') {
correl <- with(x,matcor(myX,myY))
myoutput <- correl
myxlabs <- colnames(myX)
myylabs <- colnames(myY)
img.matcor(correl, title=paste(par2,' and ',par3,sep=''))
dev.off()
}
if (par1=='meta analysis (separate)') {
myl <- length(myY[1,])
nr <- round(sqrt(myl))
nc <- nr
if (nr*nr < myl) nc = nc +1
r <- matcor.p(myX,myY)
myoutput <- r$Ymetap
myylabs <- colnames(myY)
op <- par(mfrow=c(nr,nc))
for (i in 1:myl) {
plot((1:10)/1000,r$Ymetap[i,],xlab='type I error',ylab='#sign./#corr.',main=colnames(myY)[i], type='b',ylim=c(0,max(r$Ymetap[i,])))
abline(0,1)
grid()
}
par(op)
dev.off()
}
if (par1=='meta analysis (overlay)') {
myl <- length(myY[1,])
r <- matcor.p(myX,myY)
myoutput <- r$Ymetap
myylabs <- colnames(myY)
plot((1:10)/1000,r$Ymetap[1,], xlab='type I error', ylab='#sign./#corr.', main=par3, type='b', ylim=c(0,max(r$Ymetap)), xlim=c(0.001,0.01+ (myl+1)*0.0002))
abline(0,1)
grid()
for (i in 2:myl) {
lines((1:10)/1000,r$Ymetap[i,],type='b',lty=i)
}
for (i in 1:myl) text(0.0105+0.0002*i, r$Ymetap[i,10], labels = colnames(myY)[i], cex=0.7)
dev.off()
}
load(file='createtable')
a<-table.start()
a<-table.row.start(a)
a<-table.element(a,'Computational Result',1,TRUE)
a<-table.row.end(a)
a<-table.row.start(a)
a<-table.element(a,paste('
',RC.texteval('myoutput; myxlabs; myylabs'),'
',sep=''))
a<-table.row.end(a)
a<-table.end(a)
table.save(a,file='mytable.tab')