R version 2.15.2 (2012-10-26) -- "Trick or Treat" Copyright (C) 2012 The R Foundation for Statistical Computing ISBN 3-900051-07-0 Platform: i686-pc-linux-gnu (32-bit) R is free software and comes with ABSOLUTELY NO WARRANTY. You are welcome to redistribute it under certain conditions. Type 'license()' or 'licence()' for distribution details. R is a collaborative project with many contributors. Type 'contributors()' for more information and 'citation()' on how to cite R or R packages in publications. Type 'demo()' for some demos, 'help()' for on-line help, or 'help.start()' for an HTML browser interface to help. Type 'q()' to quit R. > x <- array(list(1418 + ,210907 + ,396 + ,81 + ,3 + ,79 + ,30 + ,869 + ,120982 + ,297 + ,55 + ,4 + ,58 + ,28 + ,1530 + ,176508 + ,559 + ,50 + ,12 + ,60 + ,38 + ,2172 + ,179321 + ,967 + ,125 + ,2 + ,108 + ,30 + ,901 + ,123185 + ,270 + ,40 + ,1 + ,49 + ,22 + ,463 + ,52746 + ,143 + ,37 + ,3 + ,0 + ,26 + ,3201 + ,385534 + ,1562 + ,63 + ,0 + ,121 + ,25 + ,371 + ,33170 + ,109 + ,44 + ,0 + ,1 + ,18 + ,1192 + ,101645 + ,371 + ,88 + ,0 + ,20 + ,11 + ,1583 + ,149061 + ,656 + ,66 + ,5 + ,43 + ,26 + ,1439 + ,165446 + ,511 + ,57 + ,0 + ,69 + ,25 + ,1764 + ,237213 + ,655 + ,74 + ,0 + ,78 + ,38 + ,1495 + ,173326 + ,465 + ,49 + ,7 + ,86 + ,44 + ,1373 + ,133131 + ,525 + ,52 + ,7 + ,44 + ,30 + ,2187 + ,258873 + ,885 + ,88 + ,3 + ,104 + ,40 + ,1491 + ,180083 + ,497 + ,36 + ,9 + ,63 + ,34 + ,4041 + ,324799 + ,1436 + ,108 + ,0 + ,158 + ,47 + ,1706 + ,230964 + ,612 + ,43 + ,4 + ,102 + ,30 + ,2152 + ,236785 + ,865 + ,75 + ,3 + ,77 + ,31 + ,1036 + ,135473 + ,385 + ,32 + ,0 + ,82 + ,23 + ,1882 + ,202925 + ,567 + ,44 + ,7 + ,115 + ,36 + ,1929 + ,215147 + ,639 + ,85 + ,0 + ,101 + ,36 + ,2242 + ,344297 + ,963 + ,86 + ,1 + ,80 + ,30 + ,1220 + ,153935 + ,398 + ,56 + ,5 + ,50 + ,25 + ,1289 + ,132943 + ,410 + ,50 + ,7 + ,83 + ,39 + ,2515 + ,174724 + ,966 + ,135 + ,0 + ,123 + ,34 + ,2147 + ,174415 + ,801 + ,63 + ,0 + ,73 + ,31 + ,2352 + ,225548 + ,892 + ,81 + ,5 + ,81 + ,31 + ,1638 + ,223632 + ,513 + ,52 + ,0 + ,105 + ,33 + ,1222 + ,124817 + ,469 + ,44 + ,0 + ,47 + ,25 + ,1812 + ,221698 + ,683 + ,113 + ,0 + ,105 + ,33 + ,1677 + ,210767 + ,643 + ,39 + ,3 + ,94 + ,35 + ,1579 + ,170266 + ,535 + ,73 + ,4 + ,44 + ,42 + ,1731 + ,260561 + ,625 + ,48 + ,1 + ,114 + ,43 + ,807 + ,84853 + ,264 + ,33 + ,4 + ,38 + ,30 + ,2452 + ,294424 + ,992 + ,59 + ,2 + ,107 + ,33 + ,829 + ,101011 + ,238 + ,41 + ,0 + ,30 + ,13 + ,1940 + ,215641 + ,818 + ,69 + ,0 + ,71 + ,32 + ,2662 + ,325107 + ,937 + ,64 + ,0 + ,84 + ,36 + ,186 + ,7176 + ,70 + ,1 + ,0 + ,0 + ,0 + ,1499 + ,167542 + ,507 + ,59 + ,2 + ,59 + ,28 + ,865 + ,106408 + ,260 + ,32 + ,1 + ,33 + ,14 + ,1793 + ,96560 + ,503 + ,129 + ,0 + ,42 + ,17 + ,2527 + ,265769 + ,927 + ,37 + ,2 + ,96 + ,32 + ,2747 + ,269651 + ,1269 + ,31 + ,10 + ,106 + ,30 + ,1324 + ,149112 + ,537 + ,65 + ,6 + ,56 + ,35 + ,2702 + ,175824 + ,910 + ,107 + ,0 + ,57 + ,20 + ,1383 + ,152871 + ,532 + ,74 + ,5 + ,59 + ,28 + ,1179 + ,111665 + ,345 + ,54 + ,4 + ,39 + ,28 + ,2099 + ,116408 + ,918 + ,76 + ,1 + ,34 + ,39 + ,4308 + ,362301 + ,1635 + ,715 + ,2 + ,76 + ,34 + ,918 + ,78800 + ,330 + ,57 + ,2 + ,20 + ,26 + ,1831 + ,183167 + ,557 + ,66 + ,0 + ,91 + ,39 + ,3373 + ,277965 + ,1178 + ,106 + ,8 + ,115 + ,39 + ,1713 + ,150629 + ,740 + ,54 + ,3 + ,85 + ,33 + ,1438 + ,168809 + ,452 + ,32 + ,0 + ,76 + ,28 + ,496 + ,24188 + ,218 + ,20 + ,0 + ,8 + ,4 + ,2253 + ,329267 + ,764 + ,71 + ,8 + ,79 + ,39 + ,744 + ,65029 + ,255 + ,21 + ,5 + ,21 + ,18 + ,1161 + ,101097 + ,454 + ,70 + ,3 + ,30 + ,14 + ,2352 + ,218946 + ,866 + ,112 + ,1 + ,76 + ,29 + ,2144 + ,244052 + ,574 + ,66 + ,5 + ,101 + ,44 + ,4691 + ,341570 + ,1276 + ,190 + ,1 + ,94 + ,21 + ,1112 + ,103597 + ,379 + ,66 + ,1 + ,27 + ,16 + ,2694 + ,233328 + ,825 + ,165 + ,5 + ,92 + ,28 + ,1973 + ,256462 + ,798 + ,56 + ,0 + ,123 + ,35 + ,1769 + ,206161 + ,663 + ,61 + ,12 + ,75 + ,28 + ,3148 + ,311473 + ,1069 + ,53 + ,8 + ,128 + ,38 + ,2474 + ,235800 + ,921 + ,127 + ,8 + ,105 + ,23 + ,2084 + ,177939 + ,858 + ,63 + ,8 + ,55 + ,36 + ,1954 + ,207176 + ,711 + ,38 + ,8 + ,56 + ,32 + ,1226 + ,196553 + ,503 + ,50 + ,2 + ,41 + ,29 + ,1389 + ,174184 + ,382 + ,52 + ,0 + ,72 + ,25 + ,1496 + ,143246 + ,464 + ,42 + ,5 + ,67 + ,27 + ,2269 + ,187559 + ,717 + ,76 + ,8 + ,75 + ,36 + ,1833 + ,187681 + ,690 + ,67 + ,2 + ,114 + ,28 + ,1268 + ,119016 + ,462 + ,50 + ,5 + ,118 + ,23 + ,1943 + ,182192 + ,657 + ,53 + ,12 + ,77 + ,40 + ,893 + ,73566 + ,385 + ,39 + ,6 + ,22 + ,23 + ,1762 + ,194979 + ,577 + ,50 + ,7 + ,66 + ,40 + ,1403 + ,167488 + ,619 + ,77 + ,2 + ,69 + ,28 + ,1425 + ,143756 + ,479 + ,57 + ,0 + ,105 + ,34 + ,1857 + ,275541 + ,817 + ,73 + ,4 + ,116 + ,33 + ,1840 + ,243199 + ,752 + ,34 + ,3 + ,88 + ,28 + ,1502 + ,182999 + ,430 + ,39 + ,6 + ,73 + ,34 + ,1441 + ,135649 + ,451 + ,46 + ,2 + ,99 + ,30 + ,1420 + ,152299 + ,537 + ,63 + ,0 + ,62 + ,33 + ,1416 + ,120221 + ,519 + ,35 + ,1 + ,53 + ,22 + ,2970 + ,346485 + ,1000 + ,106 + ,0 + ,118 + ,38 + ,1317 + ,145790 + ,637 + ,43 + ,5 + ,30 + ,26 + ,1644 + ,193339 + ,465 + ,47 + ,2 + ,100 + ,35 + ,870 + ,80953 + ,437 + ,31 + ,0 + ,49 + ,8 + ,1654 + ,122774 + ,711 + ,162 + ,0 + ,24 + ,24 + ,1054 + ,130585 + ,299 + ,57 + ,5 + ,67 + ,29 + ,937 + ,112611 + ,248 + ,36 + ,0 + ,46 + ,20 + ,3004 + ,286468 + ,1162 + ,263 + ,1 + ,57 + ,29 + ,2008 + ,241066 + ,714 + ,78 + ,0 + ,75 + ,45 + ,2547 + ,148446 + ,905 + ,63 + ,1 + ,135 + ,37 + ,1885 + ,204713 + ,649 + ,54 + ,1 + ,68 + ,33 + ,1626 + ,182079 + ,512 + ,63 + ,2 + ,124 + ,33 + ,1468 + ,140344 + ,472 + ,77 + ,6 + ,33 + ,25 + ,2445 + ,220516 + ,905 + ,79 + ,1 + ,98 + ,32 + ,1964 + ,243060 + ,786 + ,110 + ,4 + ,58 + ,29 + ,1381 + ,162765 + ,489 + ,56 + ,2 + ,68 + ,28 + ,1369 + ,182613 + ,479 + ,56 + ,3 + ,81 + ,28 + ,1659 + ,232138 + ,617 + ,43 + ,0 + ,131 + ,31 + ,2888 + ,265318 + ,925 + ,111 + ,10 + ,110 + ,52 + ,1290 + ,85574 + ,351 + ,71 + ,0 + ,37 + ,21 + ,2845 + ,310839 + ,1144 + ,62 + ,9 + ,130 + ,24 + ,1982 + ,225060 + ,669 + ,56 + ,7 + ,93 + ,41 + ,1904 + ,232317 + ,707 + ,74 + ,0 + ,118 + ,33 + ,1391 + ,144966 + ,458 + ,60 + ,0 + ,39 + ,32 + ,602 + ,43287 + ,214 + ,43 + ,4 + ,13 + ,19 + ,1743 + ,155754 + ,599 + ,68 + ,4 + ,74 + ,20 + ,1559 + ,164709 + ,572 + ,53 + ,0 + ,81 + ,31 + ,2014 + ,201940 + ,897 + ,87 + ,0 + ,109 + ,31 + ,2143 + ,235454 + ,819 + ,46 + ,0 + ,151 + ,32 + ,2146 + ,220801 + ,720 + ,105 + ,1 + ,51 + ,18 + ,874 + ,99466 + ,273 + ,32 + ,0 + ,28 + ,23 + ,1590 + ,92661 + ,508 + ,133 + ,1 + ,40 + ,17 + ,1590 + ,133328 + ,506 + ,79 + ,0 + ,56 + ,20 + ,1210 + ,61361 + ,451 + ,51 + ,0 + ,27 + ,12 + ,2072 + ,125930 + ,699 + ,207 + ,4 + ,37 + ,17 + ,1281 + ,100750 + ,407 + ,67 + ,0 + ,83 + ,30 + ,1401 + ,224549 + ,465 + ,47 + ,4 + ,54 + ,31 + ,834 + ,82316 + ,245 + ,34 + ,4 + ,27 + ,10 + ,1105 + ,102010 + ,370 + ,66 + ,3 + ,28 + ,13 + ,1272 + ,101523 + ,316 + ,76 + ,0 + ,59 + ,22 + ,1944 + ,243511 + ,603 + ,65 + ,0 + ,133 + ,42 + ,391 + ,22938 + ,154 + ,9 + ,0 + ,12 + ,1 + ,761 + ,41566 + ,229 + ,42 + ,5 + ,0 + ,9 + ,1605 + ,152474 + ,577 + ,45 + ,0 + ,106 + ,32 + ,530 + ,61857 + ,192 + ,25 + ,4 + ,23 + ,11 + ,1988 + ,99923 + ,617 + ,115 + ,0 + ,44 + ,25 + ,1386 + ,132487 + ,411 + ,97 + ,0 + ,71 + ,36 + ,2395 + ,317394 + ,975 + ,53 + ,1 + ,116 + ,31 + ,387 + ,21054 + ,146 + ,2 + ,0 + ,4 + ,0 + ,1742 + ,209641 + ,705 + ,52 + ,5 + ,62 + ,24 + ,620 + ,22648 + ,184 + ,44 + ,0 + ,12 + ,13 + ,449 + ,31414 + ,200 + ,22 + ,0 + ,18 + ,8 + ,800 + ,46698 + ,274 + ,35 + ,0 + ,14 + ,13 + ,1684 + ,131698 + ,502 + ,74 + ,0 + ,60 + ,19 + ,1050 + ,91735 + ,382 + ,103 + ,0 + ,7 + ,18 + ,2699 + ,244749 + ,964 + ,144 + ,2 + ,98 + ,33 + ,1606 + ,184510 + ,537 + ,60 + ,7 + ,64 + ,40 + ,1502 + ,79863 + ,438 + ,134 + ,1 + ,29 + ,22 + ,1204 + ,128423 + ,369 + ,89 + ,8 + ,32 + ,38 + ,1138 + ,97839 + ,417 + ,42 + ,2 + ,25 + ,24 + ,568 + ,38214 + ,276 + ,52 + ,0 + ,16 + ,8 + ,1459 + ,151101 + ,514 + ,98 + ,2 + ,48 + ,35 + ,2158 + ,272458 + ,822 + ,99 + ,0 + ,100 + ,43 + ,1111 + ,172494 + ,389 + ,52 + ,0 + ,46 + ,43 + ,1421 + ,108043 + ,466 + ,29 + ,1 + ,45 + ,14 + ,2833 + ,328107 + ,1255 + ,125 + ,3 + ,129 + ,41 + ,1955 + ,250579 + ,694 + ,106 + ,0 + ,130 + ,38 + ,2922 + ,351067 + ,1024 + ,95 + ,3 + ,136 + ,45 + ,1002 + ,158015 + ,400 + ,40 + ,0 + ,59 + ,31 + ,1060 + ,98866 + ,397 + ,140 + ,0 + ,25 + ,13 + ,956 + ,85439 + ,350 + ,43 + ,0 + ,32 + ,28 + ,2186 + ,229242 + ,719 + ,128 + ,4 + ,63 + ,31 + ,3604 + ,351619 + ,1277 + ,142 + ,4 + ,95 + ,40 + ,1035 + ,84207 + ,356 + ,73 + ,11 + ,14 + ,30 + ,1417 + ,120445 + ,457 + ,72 + ,0 + ,36 + ,16 + ,3261 + ,324598 + ,1402 + ,128 + ,0 + ,113 + ,37 + ,1587 + ,131069 + ,600 + ,61 + ,4 + ,47 + ,30 + ,1424 + ,204271 + ,480 + ,73 + ,0 + ,92 + ,35 + ,1701 + ,165543 + ,595 + ,148 + ,1 + ,70 + ,32 + ,1249 + ,141722 + ,436 + ,64 + ,0 + ,19 + ,27 + ,946 + ,116048 + ,230 + ,45 + ,0 + ,50 + ,20 + ,1926 + ,250047 + ,651 + ,58 + ,0 + ,41 + ,18 + ,3352 + ,299775 + ,1367 + ,97 + ,9 + ,91 + ,31 + ,1641 + ,195838 + ,564 + ,50 + ,1 + ,111 + ,31 + ,2035 + ,173260 + ,716 + ,37 + ,3 + ,41 + ,21 + ,2312 + ,254488 + ,747 + ,50 + ,10 + ,120 + ,39 + ,1369 + ,104389 + ,467 + ,105 + ,5 + ,135 + ,41 + ,1577 + ,136084 + ,671 + ,69 + ,0 + ,27 + ,13 + ,2201 + ,199476 + ,861 + ,46 + ,2 + ,87 + ,32 + ,961 + ,92499 + ,319 + ,57 + ,0 + ,25 + ,18 + ,1900 + ,224330 + ,612 + ,52 + ,1 + ,131 + ,39 + ,1254 + ,135781 + ,433 + ,98 + ,2 + ,45 + ,14 + ,1335 + ,74408 + ,434 + ,61 + ,4 + ,29 + ,7 + ,1597 + ,81240 + ,503 + ,89 + ,0 + ,58 + ,17 + ,207 + ,14688 + ,85 + ,0 + ,0 + ,4 + ,0 + ,1645 + ,181633 + ,564 + ,48 + ,2 + ,47 + ,30 + ,2429 + ,271856 + ,824 + ,91 + ,1 + ,109 + ,37 + ,151 + ,7199 + ,74 + ,0 + ,0 + ,7 + ,0 + ,474 + ,46660 + ,259 + ,7 + ,0 + ,12 + ,5 + ,141 + ,17547 + ,69 + ,3 + ,0 + ,0 + ,1 + ,1639 + ,133368 + ,535 + ,54 + ,1 + ,37 + ,16 + ,872 + ,95227 + ,239 + ,70 + ,0 + ,37 + ,32 + ,1318 + ,152601 + ,438 + ,36 + ,2 + ,46 + ,24 + ,1018 + ,98146 + ,459 + ,37 + ,0 + ,15 + ,17 + ,1383 + ,79619 + ,426 + ,123 + ,3 + ,42 + ,11 + ,1314 + ,59194 + ,288 + ,247 + ,6 + ,7 + ,24 + ,1335 + ,139942 + ,498 + ,46 + ,0 + ,54 + ,22 + ,1403 + ,118612 + ,454 + ,72 + ,2 + ,54 + ,12 + ,910 + ,72880 + ,376 + ,41 + ,0 + ,14 + ,19 + ,616 + ,65475 + ,225 + ,24 + ,2 + ,16 + ,13 + ,1407 + ,99643 + ,555 + ,45 + ,1 + ,33 + ,17 + ,771 + ,71965 + ,252 + ,33 + ,1 + ,32 + ,15 + ,766 + ,77272 + ,208 + ,27 + ,2 + ,21 + ,16 + ,473 + ,49289 + ,130 + ,36 + ,1 + ,15 + ,24 + ,1376 + ,135131 + ,481 + ,87 + ,0 + ,38 + ,15 + ,1232 + ,108446 + ,389 + ,90 + ,1 + ,22 + ,17 + ,1521 + ,89746 + ,565 + ,114 + ,3 + ,28 + ,18 + ,572 + ,44296 + ,173 + ,31 + ,0 + ,10 + ,20 + ,1059 + ,77648 + ,278 + ,45 + ,0 + ,31 + ,16 + ,1544 + ,181528 + ,609 + ,69 + ,0 + ,32 + ,16 + ,1230 + ,134019 + ,422 + ,51 + ,0 + ,32 + ,18 + ,1206 + ,124064 + ,445 + ,34 + ,1 + ,43 + ,22 + ,1205 + ,92630 + ,387 + ,60 + ,4 + ,27 + ,8 + ,1255 + ,121848 + ,339 + ,45 + ,0 + ,37 + ,17 + ,613 + ,52915 + ,181 + ,54 + ,0 + ,20 + ,18 + ,721 + ,81872 + ,245 + ,25 + ,0 + ,32 + ,16 + ,1109 + ,58981 + ,384 + ,38 + ,7 + ,0 + ,23 + ,740 + ,53515 + ,212 + ,52 + ,2 + ,5 + ,22 + ,1126 + ,60812 + ,399 + ,67 + ,0 + ,26 + ,13 + ,728 + ,56375 + ,229 + ,74 + ,7 + ,10 + ,13 + ,689 + ,65490 + ,224 + ,38 + ,3 + ,27 + ,16 + ,592 + ,80949 + ,203 + ,30 + ,0 + ,11 + ,16 + ,995 + ,76302 + ,333 + ,26 + ,0 + ,29 + ,20 + ,1613 + ,104011 + ,384 + ,67 + ,6 + ,25 + ,22 + ,2048 + ,98104 + ,636 + ,132 + ,2 + ,55 + ,17 + ,705 + ,67989 + ,185 + ,42 + ,0 + ,23 + ,18 + ,301 + ,30989 + ,93 + ,35 + ,0 + ,5 + ,17 + ,1803 + ,135458 + ,581 + ,118 + ,3 + ,43 + ,12 + ,799 + ,73504 + ,248 + ,68 + ,0 + ,23 + ,7 + ,861 + ,63123 + ,304 + ,43 + ,1 + ,34 + ,17 + ,1186 + ,61254 + ,344 + ,76 + ,1 + ,36 + ,14 + ,1451 + ,74914 + ,407 + ,64 + ,0 + ,35 + ,23 + ,628 + ,31774 + ,170 + ,48 + ,1 + ,0 + ,17 + ,1161 + ,81437 + ,312 + ,64 + ,0 + ,37 + ,14 + ,1463 + ,87186 + ,507 + ,56 + ,0 + ,28 + ,15 + ,742 + ,50090 + ,224 + ,71 + ,0 + ,16 + ,17 + ,979 + ,65745 + ,340 + ,75 + ,0 + ,26 + ,21 + ,675 + ,56653 + ,168 + ,39 + ,0 + ,38 + ,18 + ,1241 + ,158399 + ,443 + ,42 + ,0 + ,23 + ,18 + ,676 + ,46455 + ,204 + ,39 + ,0 + ,22 + ,17 + ,1049 + ,73624 + ,367 + ,93 + ,0 + ,30 + ,17 + ,620 + ,38395 + ,210 + ,38 + ,0 + ,16 + ,16 + ,1081 + ,91899 + ,335 + ,60 + ,0 + ,18 + ,15 + ,1688 + ,139526 + ,364 + ,71 + ,0 + ,28 + ,21 + ,736 + ,52164 + ,178 + ,52 + ,0 + ,32 + ,16 + ,617 + ,51567 + ,206 + ,27 + ,2 + ,21 + ,14 + ,812 + ,70551 + ,279 + ,59 + ,0 + ,23 + ,15 + ,1051 + ,84856 + ,387 + ,40 + ,1 + ,29 + ,17 + ,1656 + ,102538 + ,490 + ,79 + ,1 + ,50 + ,15 + ,705 + ,86678 + ,238 + ,44 + ,0 + ,12 + ,15 + ,945 + ,85709 + ,343 + ,65 + ,0 + ,21 + ,10 + ,554 + ,34662 + ,232 + ,10 + ,0 + ,18 + ,6 + ,1597 + ,150580 + ,530 + ,124 + ,0 + ,27 + ,22 + ,982 + ,99611 + ,291 + ,81 + ,0 + ,41 + ,21 + ,222 + ,19349 + ,67 + ,15 + ,0 + ,13 + ,1 + ,1212 + ,99373 + ,397 + ,92 + ,1 + ,12 + ,18 + ,1143 + ,86230 + ,467 + ,42 + ,0 + ,21 + ,17 + ,435 + ,30837 + ,178 + ,10 + ,0 + ,8 + ,4 + ,532 + ,31706 + ,175 + ,24 + ,0 + ,26 + ,10 + ,882 + ,89806 + ,299 + ,64 + ,0 + ,27 + ,16 + ,608 + ,62088 + ,154 + ,45 + ,1 + ,13 + ,16 + ,459 + ,40151 + ,106 + ,22 + ,0 + ,16 + ,9 + ,578 + ,27634 + ,189 + ,56 + ,0 + ,2 + ,16 + ,826 + ,76990 + ,194 + ,94 + ,0 + ,42 + ,17 + ,509 + ,37460 + ,135 + ,19 + ,0 + ,5 + ,7 + ,717 + ,54157 + ,201 + ,35 + ,0 + ,37 + ,15 + ,637 + ,49862 + ,207 + ,32 + ,0 + ,17 + ,14 + ,857 + ,84337 + ,280 + ,35 + ,0 + ,38 + ,14 + ,830 + ,64175 + ,260 + ,48 + ,0 + ,37 + ,18 + ,652 + ,59382 + ,227 + ,49 + ,0 + ,29 + ,12 + ,707 + ,119308 + ,239 + ,48 + ,0 + ,32 + ,16 + ,954 + ,76702 + ,333 + ,62 + ,0 + ,35 + ,21 + ,1461 + ,103425 + ,428 + ,96 + ,1 + ,17 + ,19 + ,672 + ,70344 + ,230 + ,45 + ,0 + ,20 + ,16 + ,778 + ,43410 + ,292 + ,63 + ,0 + ,7 + ,1 + ,1141 + ,104838 + ,350 + ,71 + ,1 + ,46 + ,16 + ,680 + ,62215 + ,186 + ,26 + ,0 + ,24 + ,10 + ,1090 + ,69304 + ,326 + ,48 + ,6 + ,40 + ,19 + ,616 + ,53117 + ,155 + ,29 + ,3 + ,3 + ,12 + ,285 + ,19764 + ,75 + ,19 + ,1 + ,10 + ,2 + ,1145 + ,86680 + ,361 + ,45 + ,2 + ,37 + ,14 + ,733 + ,84105 + ,261 + ,45 + ,0 + ,17 + ,17 + ,888 + ,77945 + ,299 + ,67 + ,0 + ,28 + ,19 + ,849 + ,89113 + ,300 + ,30 + ,0 + ,19 + ,14 + ,1182 + ,91005 + ,450 + ,36 + ,3 + ,29 + ,11 + ,528 + ,40248 + ,183 + ,34 + ,1 + ,8 + ,4 + ,642 + ,64187 + ,238 + ,36 + ,0 + ,10 + ,16 + ,947 + ,50857 + ,165 + ,34 + ,0 + ,15 + ,20 + ,819 + ,56613 + ,234 + ,37 + ,1 + ,15 + ,12 + ,757 + ,62792 + ,176 + ,46 + ,0 + ,28 + ,15 + ,894 + ,72535 + ,329 + ,44 + ,0 + ,17 + ,16) + ,dim=c(7 + ,289) + ,dimnames=list(c('pageviews' + ,'time' + ,'compinfo' + ,'comppr' + ,'sharedcomp' + ,'bloggedcomp' + ,'compreviewed') + ,1:289)) > y <- array(NA,dim=c(7,289),dimnames=list(c('pageviews','time','compinfo','comppr','sharedcomp','bloggedcomp','compreviewed'),1:289)) > for (i in 1:dim(x)[1]) + { + for (j in 1:dim(x)[2]) + { + y[i,j] <- as.numeric(x[i,j]) + } + } > par4 = 'no' > par3 = '2' > par2 = 'quantiles' > par1 = '2' > library(party) Loading required package: survival Loading required package: splines Loading required package: grid Loading required package: modeltools Loading required package: stats4 Loading required package: coin Loading required package: mvtnorm Loading required package: zoo Attaching package: 'zoo' The following object(s) are masked from 'package:base': as.Date, as.Date.numeric Loading required package: sandwich Loading required package: strucchange Loading required package: vcd Loading required package: MASS Loading required package: colorspace > library(Hmisc) Hmisc library by Frank E Harrell Jr Type library(help='Hmisc'), ?Overview, or ?Hmisc.Overview') to see overall documentation. NOTE:Hmisc no longer redefines [.factor to drop unused levels when subsetting. To get the old behavior of Hmisc type dropUnusedLevels(). Attaching package: 'Hmisc' The following object(s) are masked from 'package:survival': untangle.specials The following object(s) are masked from 'package:base': format.pval, round.POSIXt, trunc.POSIXt, units > par1 <- as.numeric(par1) > par3 <- as.numeric(par3) > x <- data.frame(t(y)) > is.data.frame(x) [1] TRUE > x <- x[!is.na(x[,par1]),] > k <- length(x[1,]) > n <- length(x[,1]) > colnames(x)[par1] [1] "time" > x[,par1] [1] 210907 120982 176508 179321 123185 52746 385534 33170 101645 149061 [11] 165446 237213 173326 133131 258873 180083 324799 230964 236785 135473 [21] 202925 215147 344297 153935 132943 174724 174415 225548 223632 124817 [31] 221698 210767 170266 260561 84853 294424 101011 215641 325107 7176 [41] 167542 106408 96560 265769 269651 149112 175824 152871 111665 116408 [51] 362301 78800 183167 277965 150629 168809 24188 329267 65029 101097 [61] 218946 244052 341570 103597 233328 256462 206161 311473 235800 177939 [71] 207176 196553 174184 143246 187559 187681 119016 182192 73566 194979 [81] 167488 143756 275541 243199 182999 135649 152299 120221 346485 145790 [91] 193339 80953 122774 130585 112611 286468 241066 148446 204713 182079 [101] 140344 220516 243060 162765 182613 232138 265318 85574 310839 225060 [111] 232317 144966 43287 155754 164709 201940 235454 220801 99466 92661 [121] 133328 61361 125930 100750 224549 82316 102010 101523 243511 22938 [131] 41566 152474 61857 99923 132487 317394 21054 209641 22648 31414 [141] 46698 131698 91735 244749 184510 79863 128423 97839 38214 151101 [151] 272458 172494 108043 328107 250579 351067 158015 98866 85439 229242 [161] 351619 84207 120445 324598 131069 204271 165543 141722 116048 250047 [171] 299775 195838 173260 254488 104389 136084 199476 92499 224330 135781 [181] 74408 81240 14688 181633 271856 7199 46660 17547 133368 95227 [191] 152601 98146 79619 59194 139942 118612 72880 65475 99643 71965 [201] 77272 49289 135131 108446 89746 44296 77648 181528 134019 124064 [211] 92630 121848 52915 81872 58981 53515 60812 56375 65490 80949 [221] 76302 104011 98104 67989 30989 135458 73504 63123 61254 74914 [231] 31774 81437 87186 50090 65745 56653 158399 46455 73624 38395 [241] 91899 139526 52164 51567 70551 84856 102538 86678 85709 34662 [251] 150580 99611 19349 99373 86230 30837 31706 89806 62088 40151 [261] 27634 76990 37460 54157 49862 84337 64175 59382 119308 76702 [271] 103425 70344 43410 104838 62215 69304 53117 19764 86680 84105 [281] 77945 89113 91005 40248 64187 50857 56613 62792 72535 > if (par2 == 'kmeans') { + cl <- kmeans(x[,par1], par3) + print(cl) + clm <- matrix(cbind(cl$centers,1:par3),ncol=2) + clm <- clm[sort.list(clm[,1]),] + for (i in 1:par3) { + cl$cluster[cl$cluster==clm[i,2]] <- paste('C',i,sep='') + } + cl$cluster <- as.factor(cl$cluster) + print(cl$cluster) + x[,par1] <- cl$cluster + } > if (par2 == 'quantiles') { + x[,par1] <- cut2(x[,par1],g=par3) + } > if (par2 == 'hclust') { + hc <- hclust(dist(x[,par1])^2, 'cen') + print(hc) + memb <- cutree(hc, k = par3) + dum <- c(mean(x[memb==1,par1])) + for (i in 2:par3) { + dum <- c(dum, mean(x[memb==i,par1])) + } + hcm <- matrix(cbind(dum,1:par3),ncol=2) + hcm <- hcm[sort.list(hcm[,1]),] + for (i in 1:par3) { + memb[memb==hcm[i,2]] <- paste('C',i,sep='') + } + memb <- as.factor(memb) + print(memb) + x[,par1] <- memb + } > if (par2=='equal') { + ed <- cut(as.numeric(x[,par1]),par3,labels=paste('C',1:par3,sep='')) + x[,par1] <- as.factor(ed) + } > table(x[,par1]) [ 7176,121848) [121848,385534] 145 144 > colnames(x) [1] "pageviews" "time" "compinfo" "comppr" "sharedcomp" [6] "bloggedcomp" "compreviewed" > colnames(x)[par1] [1] "time" > x[,par1] [1] [121848,385534] [ 7176,121848) [121848,385534] [121848,385534] [5] [121848,385534] [ 7176,121848) [121848,385534] [ 7176,121848) [9] [ 7176,121848) [121848,385534] [121848,385534] [121848,385534] [13] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [17] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [21] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [25] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [29] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [33] [121848,385534] [121848,385534] [ 7176,121848) [121848,385534] [37] [ 7176,121848) [121848,385534] [121848,385534] [ 7176,121848) [41] [121848,385534] [ 7176,121848) [ 7176,121848) [121848,385534] [45] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [49] [ 7176,121848) [ 7176,121848) [121848,385534] [ 7176,121848) [53] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [57] [ 7176,121848) [121848,385534] [ 7176,121848) [ 7176,121848) [61] [121848,385534] [121848,385534] [121848,385534] [ 7176,121848) [65] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [69] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [73] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [77] [ 7176,121848) [121848,385534] [ 7176,121848) [121848,385534] [81] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [85] [121848,385534] [121848,385534] [121848,385534] [ 7176,121848) [89] [121848,385534] [121848,385534] [121848,385534] [ 7176,121848) [93] [121848,385534] [121848,385534] [ 7176,121848) [121848,385534] [97] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [101] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [105] [121848,385534] [121848,385534] [121848,385534] [ 7176,121848) [109] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [113] [ 7176,121848) [121848,385534] [121848,385534] [121848,385534] [117] [121848,385534] [121848,385534] [ 7176,121848) [ 7176,121848) [121] [121848,385534] [ 7176,121848) [121848,385534] [ 7176,121848) [125] [121848,385534] [ 7176,121848) [ 7176,121848) [ 7176,121848) [129] [121848,385534] [ 7176,121848) [ 7176,121848) [121848,385534] [133] [ 7176,121848) [ 7176,121848) [121848,385534] [121848,385534] [137] [ 7176,121848) [121848,385534] [ 7176,121848) [ 7176,121848) [141] [ 7176,121848) [121848,385534] [ 7176,121848) [121848,385534] [145] [121848,385534] [ 7176,121848) [121848,385534] [ 7176,121848) [149] [ 7176,121848) [121848,385534] [121848,385534] [121848,385534] [153] [ 7176,121848) [121848,385534] [121848,385534] [121848,385534] [157] [121848,385534] [ 7176,121848) [ 7176,121848) [121848,385534] [161] [121848,385534] [ 7176,121848) [ 7176,121848) [121848,385534] [165] [121848,385534] [121848,385534] [121848,385534] [121848,385534] [169] [ 7176,121848) [121848,385534] [121848,385534] [121848,385534] [173] [121848,385534] [121848,385534] [ 7176,121848) [121848,385534] [177] [121848,385534] [ 7176,121848) [121848,385534] [121848,385534] [181] [ 7176,121848) [ 7176,121848) [ 7176,121848) [121848,385534] [185] [121848,385534] [ 7176,121848) [ 7176,121848) [ 7176,121848) [189] [121848,385534] [ 7176,121848) [121848,385534] [ 7176,121848) [193] [ 7176,121848) [ 7176,121848) [121848,385534] [ 7176,121848) [197] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [201] [ 7176,121848) [ 7176,121848) [121848,385534] [ 7176,121848) [205] [ 7176,121848) [ 7176,121848) [ 7176,121848) [121848,385534] [209] [121848,385534] [121848,385534] [ 7176,121848) [121848,385534] [213] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [217] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [221] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [225] [ 7176,121848) [121848,385534] [ 7176,121848) [ 7176,121848) [229] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [233] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [237] [121848,385534] [ 7176,121848) [ 7176,121848) [ 7176,121848) [241] [ 7176,121848) [121848,385534] [ 7176,121848) [ 7176,121848) [245] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [249] [ 7176,121848) [ 7176,121848) [121848,385534] [ 7176,121848) [253] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [257] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [261] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [265] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [269] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [273] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [277] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [281] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [285] [ 7176,121848) [ 7176,121848) [ 7176,121848) [ 7176,121848) [289] [ 7176,121848) Levels: [ 7176,121848) [121848,385534] > if (par2 == 'none') { + m <- ctree(as.formula(paste(colnames(x)[par1],' ~ .',sep='')),data = x) + } > > #Note: the /var/fisher/rcomp/createtable file can be downloaded at http://www.wessa.net/cretab > load(file="/var/fisher/rcomp/createtable") > > if (par2 != 'none') { + m <- ctree(as.formula(paste('as.factor(',colnames(x)[par1],') ~ .',sep='')),data = x) + if (par4=='yes') { + a<-table.start() + a<-table.row.start(a) + a<-table.element(a,'10-Fold Cross Validation',3+2*par3,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'',1,TRUE) + a<-table.element(a,'Prediction (training)',par3+1,TRUE) + a<-table.element(a,'Prediction (testing)',par3+1,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'Actual',1,TRUE) + for (jjj in 1:par3) a<-table.element(a,paste('C',jjj,sep=''),1,TRUE) + a<-table.element(a,'CV',1,TRUE) + for (jjj in 1:par3) a<-table.element(a,paste('C',jjj,sep=''),1,TRUE) + a<-table.element(a,'CV',1,TRUE) + a<-table.row.end(a) + for (i in 1:10) { + ind <- sample(2, nrow(x), replace=T, prob=c(0.9,0.1)) + m.ct <- ctree(as.formula(paste('as.factor(',colnames(x)[par1],') ~ .',sep='')),data =x[ind==1,]) + if (i==1) { + m.ct.i.pred <- predict(m.ct, newdata=x[ind==1,]) + m.ct.i.actu <- x[ind==1,par1] + m.ct.x.pred <- predict(m.ct, newdata=x[ind==2,]) + m.ct.x.actu <- x[ind==2,par1] + } else { + m.ct.i.pred <- c(m.ct.i.pred,predict(m.ct, newdata=x[ind==1,])) + m.ct.i.actu <- c(m.ct.i.actu,x[ind==1,par1]) + m.ct.x.pred <- c(m.ct.x.pred,predict(m.ct, newdata=x[ind==2,])) + m.ct.x.actu <- c(m.ct.x.actu,x[ind==2,par1]) + } + } + print(m.ct.i.tab <- table(m.ct.i.actu,m.ct.i.pred)) + numer <- 0 + for (i in 1:par3) { + print(m.ct.i.tab[i,i] / sum(m.ct.i.tab[i,])) + numer <- numer + m.ct.i.tab[i,i] + } + print(m.ct.i.cp <- numer / sum(m.ct.i.tab)) + print(m.ct.x.tab <- table(m.ct.x.actu,m.ct.x.pred)) + numer <- 0 + for (i in 1:par3) { + print(m.ct.x.tab[i,i] / sum(m.ct.x.tab[i,])) + numer <- numer + m.ct.x.tab[i,i] + } + print(m.ct.x.cp <- numer / sum(m.ct.x.tab)) + for (i in 1:par3) { + a<-table.row.start(a) + a<-table.element(a,paste('C',i,sep=''),1,TRUE) + for (jjj in 1:par3) a<-table.element(a,m.ct.i.tab[i,jjj]) + a<-table.element(a,round(m.ct.i.tab[i,i]/sum(m.ct.i.tab[i,]),4)) + for (jjj in 1:par3) a<-table.element(a,m.ct.x.tab[i,jjj]) + a<-table.element(a,round(m.ct.x.tab[i,i]/sum(m.ct.x.tab[i,]),4)) + a<-table.row.end(a) + } + a<-table.row.start(a) + a<-table.element(a,'Overall',1,TRUE) + for (jjj in 1:par3) a<-table.element(a,'-') + a<-table.element(a,round(m.ct.i.cp,4)) + for (jjj in 1:par3) a<-table.element(a,'-') + a<-table.element(a,round(m.ct.x.cp,4)) + a<-table.row.end(a) + a<-table.end(a) + table.save(a,file="/var/fisher/rcomp/tmp/113sl1354895303.tab") + } + } > m Conditional inference tree with 6 terminal nodes Response: as.factor(time) Inputs: pageviews, compinfo, comppr, sharedcomp, bloggedcomp, compreviewed Number of observations: 289 1) bloggedcomp <= 42; criterion = 1, statistic = 146.8 2) compinfo <= 467; criterion = 1, statistic = 45.101 3) pageviews <= 1192; criterion = 1, statistic = 16.033 4)* weights = 110 3) pageviews > 1192 5)* weights = 20 2) compinfo > 467 6)* weights = 18 1) bloggedcomp > 42 7) compreviewed <= 17; criterion = 1, statistic = 30.823 8)* weights = 9 7) compreviewed > 17 9) compinfo <= 382; criterion = 0.996, statistic = 11.469 10)* weights = 7 9) compinfo > 382 11)* weights = 125 > postscript(file="/var/fisher/rcomp/tmp/2xjrp1354895303.ps",horizontal=F,onefile=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > plot(m) > dev.off() null device 1 > postscript(file="/var/fisher/rcomp/tmp/3p0z51354895303.ps",horizontal=F,onefile=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > plot(x[,par1] ~ as.factor(where(m)),main='Response by Terminal Node',xlab='Terminal Node',ylab='Response') > dev.off() null device 1 > if (par2 == 'none') { + forec <- predict(m) + result <- as.data.frame(cbind(x[,par1],forec,x[,par1]-forec)) + colnames(result) <- c('Actuals','Forecasts','Residuals') + print(result) + } > if (par2 != 'none') { + print(cbind(as.factor(x[,par1]),predict(m))) + myt <- table(as.factor(x[,par1]),predict(m)) + print(myt) + } [,1] [,2] [1,] 2 2 [2,] 1 1 [3,] 2 2 [4,] 2 2 [5,] 2 1 [6,] 1 1 [7,] 2 2 [8,] 1 1 [9,] 1 1 [10,] 2 2 [11,] 2 2 [12,] 2 2 [13,] 2 2 [14,] 2 2 [15,] 2 2 [16,] 2 2 [17,] 2 2 [18,] 2 2 [19,] 2 2 [20,] 2 2 [21,] 2 2 [22,] 2 2 [23,] 2 2 [24,] 2 2 [25,] 2 2 [26,] 2 2 [27,] 2 2 [28,] 2 2 [29,] 2 2 [30,] 2 2 [31,] 2 2 [32,] 2 2 [33,] 2 2 [34,] 2 2 [35,] 1 1 [36,] 2 2 [37,] 1 1 [38,] 2 2 [39,] 2 2 [40,] 1 1 [41,] 2 2 [42,] 1 1 [43,] 1 2 [44,] 2 2 [45,] 2 2 [46,] 2 2 [47,] 2 2 [48,] 2 2 [49,] 1 1 [50,] 1 2 [51,] 2 2 [52,] 1 1 [53,] 2 2 [54,] 2 2 [55,] 2 2 [56,] 2 2 [57,] 1 1 [58,] 2 2 [59,] 1 1 [60,] 1 1 [61,] 2 2 [62,] 2 2 [63,] 2 2 [64,] 1 1 [65,] 2 2 [66,] 2 2 [67,] 2 2 [68,] 2 2 [69,] 2 2 [70,] 2 2 [71,] 2 2 [72,] 2 2 [73,] 2 1 [74,] 2 2 [75,] 2 2 [76,] 2 2 [77,] 1 2 [78,] 2 2 [79,] 1 1 [80,] 2 2 [81,] 2 2 [82,] 2 2 [83,] 2 2 [84,] 2 2 [85,] 2 2 [86,] 2 2 [87,] 2 2 [88,] 1 2 [89,] 2 2 [90,] 2 2 [91,] 2 2 [92,] 1 1 [93,] 2 2 [94,] 2 1 [95,] 1 1 [96,] 2 2 [97,] 2 2 [98,] 2 2 [99,] 2 2 [100,] 2 2 [101,] 2 2 [102,] 2 2 [103,] 2 2 [104,] 2 2 [105,] 2 2 [106,] 2 2 [107,] 2 2 [108,] 1 1 [109,] 2 2 [110,] 2 2 [111,] 2 2 [112,] 2 1 [113,] 1 1 [114,] 2 2 [115,] 2 2 [116,] 2 2 [117,] 2 2 [118,] 2 2 [119,] 1 1 [120,] 1 2 [121,] 2 2 [122,] 1 1 [123,] 2 2 [124,] 1 2 [125,] 2 2 [126,] 1 1 [127,] 1 1 [128,] 1 1 [129,] 2 2 [130,] 1 1 [131,] 1 1 [132,] 2 2 [133,] 1 1 [134,] 1 2 [135,] 2 2 [136,] 2 2 [137,] 1 1 [138,] 2 2 [139,] 1 1 [140,] 1 1 [141,] 1 1 [142,] 2 2 [143,] 1 1 [144,] 2 2 [145,] 2 2 [146,] 1 1 [147,] 2 1 [148,] 1 1 [149,] 1 1 [150,] 2 2 [151,] 2 2 [152,] 2 2 [153,] 1 1 [154,] 2 2 [155,] 2 2 [156,] 2 2 [157,] 2 2 [158,] 1 1 [159,] 1 1 [160,] 2 2 [161,] 2 2 [162,] 1 1 [163,] 1 1 [164,] 2 2 [165,] 2 2 [166,] 2 2 [167,] 2 2 [168,] 2 1 [169,] 1 1 [170,] 2 2 [171,] 2 2 [172,] 2 2 [173,] 2 2 [174,] 2 2 [175,] 1 2 [176,] 2 2 [177,] 2 2 [178,] 1 1 [179,] 2 2 [180,] 2 1 [181,] 1 1 [182,] 1 1 [183,] 1 1 [184,] 2 2 [185,] 2 2 [186,] 1 1 [187,] 1 1 [188,] 1 1 [189,] 2 2 [190,] 1 1 [191,] 2 2 [192,] 1 1 [193,] 1 1 [194,] 1 1 [195,] 2 2 [196,] 1 1 [197,] 1 1 [198,] 1 1 [199,] 1 2 [200,] 1 1 [201,] 1 1 [202,] 1 1 [203,] 2 2 [204,] 1 1 [205,] 1 2 [206,] 1 1 [207,] 1 1 [208,] 2 2 [209,] 2 1 [210,] 2 2 [211,] 1 1 [212,] 2 1 [213,] 1 1 [214,] 1 1 [215,] 1 1 [216,] 1 1 [217,] 1 1 [218,] 1 1 [219,] 1 1 [220,] 1 1 [221,] 1 1 [222,] 1 1 [223,] 1 1 [224,] 1 1 [225,] 1 1 [226,] 2 1 [227,] 1 1 [228,] 1 1 [229,] 1 1 [230,] 1 1 [231,] 1 1 [232,] 1 1 [233,] 1 2 [234,] 1 1 [235,] 1 1 [236,] 1 1 [237,] 2 1 [238,] 1 1 [239,] 1 1 [240,] 1 1 [241,] 1 1 [242,] 2 1 [243,] 1 1 [244,] 1 1 [245,] 1 1 [246,] 1 1 [247,] 1 1 [248,] 1 1 [249,] 1 1 [250,] 1 1 [251,] 2 2 [252,] 1 1 [253,] 1 1 [254,] 1 1 [255,] 1 1 [256,] 1 1 [257,] 1 1 [258,] 1 1 [259,] 1 1 [260,] 1 1 [261,] 1 1 [262,] 1 1 [263,] 1 1 [264,] 1 1 [265,] 1 1 [266,] 1 1 [267,] 1 1 [268,] 1 1 [269,] 1 1 [270,] 1 1 [271,] 1 1 [272,] 1 1 [273,] 1 1 [274,] 1 1 [275,] 1 1 [276,] 1 1 [277,] 1 1 [278,] 1 1 [279,] 1 1 [280,] 1 1 [281,] 1 1 [282,] 1 1 [283,] 1 1 [284,] 1 1 [285,] 1 1 [286,] 1 1 [287,] 1 1 [288,] 1 1 [289,] 1 1 [ 7176,121848) [121848,385534] [ 7176,121848) 134 11 [121848,385534] 12 132 > postscript(file="/var/fisher/rcomp/tmp/4kagi1354895303.ps",horizontal=F,onefile=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > if(par2=='none') { + op <- par(mfrow=c(2,2)) + plot(density(result$Actuals),main='Kernel Density Plot of Actuals') + plot(density(result$Residuals),main='Kernel Density Plot of Residuals') + plot(result$Forecasts,result$Actuals,main='Actuals versus Predictions',xlab='Predictions',ylab='Actuals') + plot(density(result$Forecasts),main='Kernel Density Plot of Predictions') + par(op) + } > if(par2!='none') { + plot(myt,main='Confusion Matrix',xlab='Actual',ylab='Predicted') + } > dev.off() null device 1 > if (par2 == 'none') { + detcoef <- cor(result$Forecasts,result$Actuals) + a<-table.start() + a<-table.row.start(a) + a<-table.element(a,'Goodness of Fit',2,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'Correlation',1,TRUE) + a<-table.element(a,round(detcoef,4)) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'R-squared',1,TRUE) + a<-table.element(a,round(detcoef*detcoef,4)) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'RMSE',1,TRUE) + a<-table.element(a,round(sqrt(mean((result$Residuals)^2)),4)) + a<-table.row.end(a) + a<-table.end(a) + table.save(a,file="/var/fisher/rcomp/tmp/51lnu1354895303.tab") + a<-table.start() + a<-table.row.start(a) + a<-table.element(a,'Actuals, Predictions, and Residuals',4,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'#',header=TRUE) + a<-table.element(a,'Actuals',header=TRUE) + a<-table.element(a,'Forecasts',header=TRUE) + a<-table.element(a,'Residuals',header=TRUE) + a<-table.row.end(a) + for (i in 1:length(result$Actuals)) { + a<-table.row.start(a) + a<-table.element(a,i,header=TRUE) + a<-table.element(a,result$Actuals[i]) + a<-table.element(a,result$Forecasts[i]) + a<-table.element(a,result$Residuals[i]) + a<-table.row.end(a) + } + a<-table.end(a) + table.save(a,file="/var/fisher/rcomp/tmp/6whec1354895303.tab") + } > if (par2 != 'none') { + a<-table.start() + a<-table.row.start(a) + a<-table.element(a,'Confusion Matrix (predicted in columns / actuals in rows)',par3+1,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'',1,TRUE) + for (i in 1:par3) { + a<-table.element(a,paste('C',i,sep=''),1,TRUE) + } + a<-table.row.end(a) + for (i in 1:par3) { + a<-table.row.start(a) + a<-table.element(a,paste('C',i,sep=''),1,TRUE) + for (j in 1:par3) { + a<-table.element(a,myt[i,j]) + } + a<-table.row.end(a) + } + a<-table.end(a) + table.save(a,file="/var/fisher/rcomp/tmp/7so4e1354895303.tab") + } > > try(system("convert tmp/2xjrp1354895303.ps tmp/2xjrp1354895303.png",intern=TRUE)) character(0) > try(system("convert tmp/3p0z51354895303.ps tmp/3p0z51354895303.png",intern=TRUE)) character(0) > try(system("convert tmp/4kagi1354895303.ps tmp/4kagi1354895303.png",intern=TRUE)) character(0) > > > proc.time() user system elapsed 5.029 0.519 5.534