R version 2.9.0 (2009-04-17) Copyright (C) 2009 The R Foundation for Statistical Computing ISBN 3-900051-07-0 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(0 + ,24 + ,14 + ,0 + ,11 + ,0 + ,12 + ,0 + ,24 + ,0 + ,26 + ,0 + ,0 + ,25 + ,11 + ,0 + ,7 + ,0 + ,8 + ,0 + ,25 + ,0 + ,23 + ,0 + ,0 + ,17 + ,6 + ,0 + ,17 + ,0 + ,8 + ,0 + ,30 + ,0 + ,25 + ,0 + ,1 + ,18 + ,12 + ,12 + ,10 + ,10 + ,8 + ,8 + ,19 + ,19 + ,23 + ,23 + ,1 + ,18 + ,8 + ,8 + ,12 + ,12 + ,9 + ,9 + ,22 + ,22 + ,19 + ,19 + ,1 + ,16 + ,10 + ,10 + ,12 + ,12 + ,7 + ,7 + ,22 + ,22 + ,29 + ,29 + ,1 + ,20 + ,10 + ,10 + ,11 + ,11 + ,4 + ,4 + ,25 + ,25 + ,25 + ,25 + ,1 + ,16 + ,11 + ,11 + ,11 + ,11 + ,11 + ,11 + ,23 + ,23 + ,21 + ,21 + ,1 + ,18 + ,16 + ,16 + ,12 + ,12 + ,7 + ,7 + ,17 + ,17 + ,22 + ,22 + ,1 + ,17 + ,11 + ,11 + ,13 + ,13 + ,7 + ,7 + ,21 + ,21 + ,25 + ,25 + ,0 + ,23 + ,13 + ,0 + ,14 + ,0 + ,12 + ,0 + ,19 + ,0 + ,24 + ,0 + ,0 + ,30 + ,12 + ,0 + ,16 + ,0 + ,10 + ,0 + ,19 + ,0 + ,18 + ,0 + ,1 + ,23 + ,8 + ,8 + ,11 + ,11 + ,10 + ,10 + ,15 + ,15 + ,22 + ,22 + ,1 + ,18 + ,12 + ,12 + ,10 + ,10 + ,8 + ,8 + ,16 + ,16 + ,15 + ,15 + ,1 + ,15 + ,11 + ,11 + ,11 + ,11 + ,8 + ,8 + ,23 + ,23 + ,22 + ,22 + ,1 + ,12 + ,4 + ,4 + ,15 + ,15 + ,4 + ,4 + ,27 + ,27 + ,28 + ,28 + ,0 + ,21 + ,9 + ,0 + ,9 + ,0 + ,9 + ,0 + ,22 + ,0 + ,20 + ,0 + ,1 + ,15 + ,8 + ,8 + ,11 + ,11 + ,8 + ,8 + ,14 + ,14 + ,12 + ,12 + ,1 + ,20 + ,8 + ,8 + ,17 + ,17 + ,7 + ,7 + ,22 + ,22 + ,24 + ,24 + ,0 + ,31 + ,14 + ,0 + ,17 + ,0 + ,11 + ,0 + ,23 + ,0 + ,20 + ,0 + ,0 + ,27 + ,15 + ,0 + ,11 + ,0 + ,9 + ,0 + ,23 + ,0 + ,21 + ,0 + ,1 + ,34 + ,16 + ,16 + ,18 + ,18 + ,11 + ,11 + ,21 + ,21 + ,20 + ,20 + ,1 + ,21 + ,9 + ,9 + ,14 + ,14 + ,13 + ,13 + ,19 + ,19 + ,21 + ,21 + ,1 + ,31 + ,14 + ,14 + ,10 + ,10 + ,8 + ,8 + ,18 + ,18 + ,23 + ,23 + ,1 + ,19 + ,11 + ,11 + ,11 + ,11 + ,8 + ,8 + ,20 + ,20 + ,28 + ,28 + ,0 + ,16 + ,8 + ,0 + ,15 + ,0 + ,9 + ,0 + ,23 + ,0 + ,24 + ,0 + ,1 + ,20 + ,9 + ,9 + ,15 + ,15 + ,6 + ,6 + ,25 + ,25 + ,24 + ,24 + ,1 + ,21 + ,9 + ,9 + ,13 + ,13 + ,9 + ,9 + ,19 + ,19 + ,24 + ,24 + ,1 + ,22 + ,9 + ,9 + ,16 + ,16 + ,9 + ,9 + ,24 + ,24 + ,23 + ,23 + ,1 + ,17 + ,9 + ,9 + ,13 + ,13 + ,6 + ,6 + ,22 + ,22 + ,23 + ,23 + ,1 + ,24 + ,10 + ,10 + ,9 + ,9 + ,6 + ,6 + ,25 + ,25 + ,29 + ,29 + ,0 + ,25 + ,16 + ,0 + ,18 + ,0 + ,16 + ,0 + ,26 + ,0 + ,24 + ,0 + ,0 + ,26 + ,11 + ,0 + ,18 + ,0 + ,5 + ,0 + ,29 + ,0 + ,18 + ,0 + ,1 + ,25 + ,8 + ,8 + ,12 + ,12 + ,7 + ,7 + ,32 + ,32 + ,25 + ,25 + ,1 + ,17 + ,9 + ,9 + ,17 + ,17 + ,9 + ,9 + ,25 + ,25 + ,21 + ,21 + ,1 + ,32 + ,16 + ,16 + ,9 + ,9 + ,6 + ,6 + ,29 + ,29 + ,26 + ,26 + ,1 + ,33 + ,11 + ,11 + ,9 + ,9 + ,6 + ,6 + ,28 + ,28 + ,22 + ,22 + ,1 + ,13 + ,16 + ,16 + ,12 + ,12 + ,5 + ,5 + ,17 + ,17 + ,22 + ,22 + ,1 + ,32 + ,12 + ,12 + ,18 + ,18 + ,12 + ,12 + ,28 + ,28 + ,22 + ,22 + ,1 + ,25 + ,12 + ,12 + ,12 + ,12 + ,7 + ,7 + ,29 + ,29 + ,23 + ,23 + ,1 + ,29 + ,14 + ,14 + ,18 + ,18 + ,10 + ,10 + ,26 + ,26 + ,30 + ,30 + ,1 + ,22 + ,9 + ,9 + ,14 + ,14 + ,9 + ,9 + ,25 + ,25 + ,23 + ,23 + ,1 + ,18 + ,10 + ,10 + ,15 + ,15 + ,8 + ,8 + ,14 + ,14 + ,17 + ,17 + ,1 + ,17 + ,9 + ,9 + ,16 + ,16 + ,5 + ,5 + ,25 + ,25 + ,23 + ,23 + ,0 + ,20 + ,10 + ,0 + ,10 + ,0 + ,8 + ,0 + ,26 + ,0 + ,23 + ,0 + ,1 + ,15 + ,12 + ,12 + ,11 + ,11 + ,8 + ,8 + ,20 + ,20 + ,25 + ,25 + ,1 + ,20 + ,14 + ,14 + ,14 + ,14 + ,10 + ,10 + ,18 + ,18 + ,24 + ,24 + ,1 + ,33 + ,14 + ,14 + ,9 + ,9 + ,6 + ,6 + ,32 + ,32 + ,24 + ,24 + ,0 + ,29 + ,10 + ,0 + ,12 + ,0 + ,8 + ,0 + ,25 + ,0 + ,23 + ,0 + ,1 + ,23 + ,14 + ,14 + ,17 + ,17 + ,7 + ,7 + ,25 + ,25 + ,21 + ,21 + ,0 + ,26 + ,16 + ,0 + ,5 + ,0 + ,4 + ,0 + ,23 + ,0 + ,24 + ,0 + ,1 + ,18 + ,9 + ,9 + ,12 + ,12 + ,8 + ,8 + ,21 + ,21 + ,24 + ,24 + ,0 + ,20 + ,10 + ,0 + ,12 + ,0 + ,8 + ,0 + ,20 + ,0 + ,28 + ,0 + ,11 + ,6 + ,0 + ,6 + ,0 + ,4 + ,0 + ,15 + ,0 + ,16 + ,0 + ,1 + ,28 + ,8 + ,8 + ,24 + ,24 + ,20 + ,20 + ,30 + ,30 + ,20 + ,20 + ,1 + ,26 + ,13 + ,13 + ,12 + ,12 + ,8 + ,8 + ,24 + ,24 + ,29 + ,29 + ,0 + ,22 + ,10 + ,0 + ,12 + ,0 + ,8 + ,0 + ,26 + ,0 + ,27 + ,0 + ,1 + ,17 + ,8 + ,8 + ,14 + ,14 + ,6 + ,6 + ,24 + ,24 + ,22 + ,22 + ,0 + ,12 + ,7 + ,0 + ,7 + ,0 + ,4 + ,0 + ,22 + ,0 + ,28 + ,0 + ,1 + ,14 + ,15 + ,15 + ,13 + ,13 + ,8 + ,8 + ,14 + ,14 + ,16 + ,16 + ,1 + ,17 + ,9 + ,9 + ,12 + ,12 + ,9 + ,9 + ,24 + ,24 + ,25 + ,25 + ,1 + ,21 + ,10 + ,10 + ,13 + ,13 + ,6 + ,6 + ,24 + ,24 + ,24 + ,24 + ,1 + ,19 + ,12 + ,12 + ,14 + ,14 + ,7 + ,7 + ,24 + ,24 + ,28 + ,28 + ,1 + ,18 + ,13 + ,13 + ,8 + ,8 + ,9 + ,9 + ,24 + ,24 + ,24 + ,24 + ,0 + ,10 + ,10 + ,0 + ,11 + ,0 + ,5 + ,0 + ,19 + ,0 + ,23 + ,0 + ,0 + ,29 + ,11 + ,0 + ,9 + ,0 + ,5 + ,0 + ,31 + ,0 + ,30 + ,0 + ,1 + ,31 + ,8 + ,8 + ,11 + ,11 + ,8 + ,8 + ,22 + ,22 + ,24 + ,24 + ,0 + ,19 + ,9 + ,0 + ,13 + ,0 + ,8 + ,0 + ,27 + ,0 + ,21 + ,0 + ,1 + ,9 + ,13 + ,13 + ,10 + ,10 + ,6 + ,6 + ,19 + ,19 + ,25 + ,25 + ,1 + ,20 + ,11 + ,11 + ,11 + ,11 + ,8 + ,8 + ,25 + ,25 + ,25 + ,25 + ,1 + ,28 + ,8 + ,8 + ,12 + ,12 + ,7 + ,7 + ,20 + ,20 + ,22 + ,22 + ,0 + ,19 + ,9 + ,0 + ,9 + ,0 + ,7 + ,0 + ,21 + ,0 + ,23 + ,0 + ,0 + ,30 + ,9 + ,0 + ,15 + ,0 + ,9 + ,0 + ,27 + ,0 + ,26 + ,0 + ,0 + ,29 + ,15 + ,0 + ,18 + ,0 + ,11 + ,0 + ,23 + ,0 + ,23 + ,0 + ,0 + ,26 + ,9 + ,0 + ,15 + ,0 + ,6 + ,0 + ,25 + ,0 + ,25 + ,0 + ,0 + ,23 + ,10 + ,0 + ,12 + ,0 + ,8 + ,0 + ,20 + ,0 + ,21 + ,0 + ,1 + ,13 + ,14 + ,14 + ,13 + ,13 + ,6 + ,6 + ,21 + ,21 + ,25 + ,25 + ,1 + ,21 + ,12 + ,12 + ,14 + ,14 + ,9 + ,9 + ,22 + ,22 + ,24 + ,24 + ,1 + ,19 + ,12 + ,12 + ,10 + ,10 + ,8 + ,8 + ,23 + ,23 + ,29 + ,29 + ,1 + ,28 + ,11 + ,11 + ,13 + ,13 + ,6 + ,6 + ,25 + ,25 + ,22 + ,22 + ,1 + ,23 + ,14 + ,14 + ,13 + ,13 + ,10 + ,10 + ,25 + ,25 + ,27 + ,27 + ,1 + ,18 + ,6 + ,6 + ,11 + ,11 + ,8 + ,8 + ,17 + ,17 + ,26 + ,26 + ,0 + ,21 + ,12 + ,0 + ,13 + ,0 + ,8 + ,0 + ,19 + ,0 + ,22 + ,0 + ,1 + ,20 + ,8 + ,8 + ,16 + ,16 + ,10 + ,10 + ,25 + ,25 + ,24 + ,24 + ,1 + ,23 + ,14 + ,14 + ,8 + ,8 + ,5 + ,5 + ,19 + ,19 + ,27 + ,27 + ,1 + ,21 + ,11 + ,11 + ,16 + ,16 + ,7 + ,7 + ,20 + ,20 + ,24 + ,24 + ,1 + ,21 + ,10 + ,10 + ,11 + ,11 + ,5 + ,5 + ,26 + ,26 + ,24 + ,24 + ,1 + ,15 + ,14 + ,14 + ,9 + ,9 + ,8 + ,8 + ,23 + ,23 + ,29 + ,29 + ,1 + ,28 + ,12 + ,12 + ,16 + ,16 + ,14 + ,14 + ,27 + ,27 + ,22 + ,22 + ,1 + ,19 + ,10 + ,10 + ,12 + ,12 + ,7 + ,7 + ,17 + ,17 + ,21 + ,21 + ,1 + ,26 + ,14 + ,14 + ,14 + ,14 + ,8 + ,8 + ,17 + ,17 + ,24 + ,24 + ,1 + ,10 + ,5 + ,5 + ,8 + ,8 + ,6 + ,6 + ,19 + ,19 + ,24 + ,24 + ,0 + ,16 + ,11 + ,0 + ,9 + ,0 + ,5 + ,0 + ,17 + ,0 + ,23 + ,0 + ,1 + ,22 + ,10 + ,10 + ,15 + ,15 + ,6 + ,6 + ,22 + ,22 + ,20 + ,20 + ,1 + ,19 + ,9 + ,9 + ,11 + ,11 + ,10 + ,10 + ,21 + ,21 + ,27 + ,27 + ,1 + ,31 + ,10 + ,10 + ,21 + ,21 + ,12 + ,12 + ,32 + ,32 + ,26 + ,26 + ,0 + ,31 + ,16 + ,0 + ,14 + ,0 + ,9 + ,0 + ,21 + ,0 + ,25 + ,0 + ,1 + ,29 + ,13 + ,13 + ,18 + ,18 + ,12 + ,12 + ,21 + ,21 + ,21 + ,21 + ,0 + ,19 + ,9 + ,0 + ,12 + ,0 + ,7 + ,0 + ,18 + ,0 + ,21 + ,0 + ,1 + ,22 + ,10 + ,10 + ,13 + ,13 + ,8 + ,8 + ,18 + ,18 + ,19 + ,19 + ,1 + ,23 + ,10 + ,10 + ,15 + ,15 + ,10 + ,10 + ,23 + ,23 + ,21 + ,21 + ,0 + ,15 + ,7 + ,0 + ,12 + ,0 + ,6 + ,0 + ,19 + ,0 + ,21 + ,0 + ,0 + ,20 + ,9 + ,0 + ,19 + ,0 + ,10 + ,0 + ,20 + ,0 + ,16 + ,0 + ,1 + ,18 + ,8 + ,8 + ,15 + ,15 + ,10 + ,10 + ,21 + ,21 + ,22 + ,22 + ,1 + ,23 + ,14 + ,14 + ,11 + ,11 + ,10 + ,10 + ,20 + ,20 + ,29 + ,29 + ,1 + ,25 + ,14 + ,14 + ,11 + ,11 + ,5 + ,5 + ,17 + ,17 + ,15 + ,15 + ,1 + ,21 + ,8 + ,8 + ,10 + ,10 + ,7 + ,7 + ,18 + ,18 + ,17 + ,17 + ,1 + ,24 + ,9 + ,9 + ,13 + ,13 + ,10 + ,10 + ,19 + ,19 + ,15 + ,15 + ,1 + ,25 + ,14 + ,14 + ,15 + ,15 + ,11 + ,11 + ,22 + ,22 + ,21 + ,21 + ,1 + ,17 + ,14 + ,14 + ,12 + ,12 + ,6 + ,6 + ,15 + ,15 + ,21 + ,21 + ,1 + ,13 + ,8 + ,8 + ,12 + ,12 + ,7 + ,7 + ,14 + ,14 + ,19 + ,19 + ,1 + ,28 + ,8 + ,8 + ,16 + ,16 + ,12 + ,12 + ,18 + ,18 + ,24 + ,24 + ,0 + ,21 + ,8 + ,0 + ,9 + ,0 + ,11 + ,0 + ,24 + ,0 + ,20 + ,0 + ,1 + ,25 + ,7 + ,7 + ,18 + ,18 + ,11 + ,11 + ,35 + ,35 + ,17 + ,17 + ,0 + ,9 + ,6 + ,0 + ,8 + ,0 + ,11 + ,0 + ,29 + ,0 + ,23 + ,0 + ,1 + ,16 + ,8 + ,8 + ,13 + ,13 + ,5 + ,5 + ,21 + ,21 + ,24 + ,24 + ,1 + ,19 + ,6 + ,6 + ,17 + ,17 + ,8 + ,8 + ,25 + ,25 + ,14 + ,14 + ,1 + ,17 + ,11 + ,11 + ,9 + ,9 + ,6 + ,6 + ,20 + ,20 + ,19 + ,19 + ,1 + ,25 + ,14 + ,14 + ,15 + ,15 + ,9 + ,9 + ,22 + ,22 + ,24 + ,24 + ,1 + ,20 + ,11 + ,11 + ,8 + ,8 + ,4 + ,4 + ,13 + ,13 + ,13 + ,13 + ,1 + ,29 + ,11 + ,11 + ,7 + ,7 + ,4 + ,4 + ,26 + ,26 + ,22 + ,22 + ,1 + ,14 + ,11 + ,11 + ,12 + ,12 + ,7 + ,7 + ,17 + ,17 + ,16 + ,16 + ,1 + ,22 + ,14 + ,14 + ,14 + ,14 + ,11 + ,11 + ,25 + ,25 + ,19 + ,19 + ,1 + ,15 + ,8 + ,8 + ,6 + ,6 + ,6 + ,6 + ,20 + ,20 + ,25 + ,25 + ,0 + ,19 + ,20 + ,0 + ,8 + ,0 + ,7 + ,0 + ,19 + ,0 + ,25 + ,0 + ,1 + ,20 + ,11 + ,11 + ,17 + ,17 + ,8 + ,8 + ,21 + ,21 + ,23 + ,23 + ,0 + ,15 + ,8 + ,0 + ,10 + ,0 + ,4 + ,0 + ,22 + ,0 + ,24 + ,0 + ,1 + ,20 + ,11 + ,11 + ,11 + ,11 + ,8 + ,8 + ,24 + ,24 + ,26 + ,26 + ,1 + ,18 + ,10 + ,10 + ,14 + ,14 + ,9 + ,9 + ,21 + ,21 + ,26 + ,26 + ,1 + ,33 + ,14 + ,14 + ,11 + ,11 + ,8 + ,8 + ,26 + ,26 + ,25 + ,25 + ,1 + ,22 + ,11 + ,11 + ,13 + ,13 + ,11 + ,11 + ,24 + ,24 + ,18 + ,18 + ,1 + ,16 + ,9 + ,9 + ,12 + ,12 + ,8 + ,8 + ,16 + ,16 + ,21 + ,21 + ,1 + ,17 + ,9 + ,9 + ,11 + ,11 + ,5 + ,5 + ,23 + ,23 + ,26 + ,26 + ,1 + ,16 + ,8 + ,8 + ,9 + ,9 + ,4 + ,4 + ,18 + ,18 + ,23 + ,23 + ,0 + ,21 + ,10 + ,0 + ,12 + ,0 + ,8 + ,0 + ,16 + ,0 + ,23 + ,0 + ,0 + ,26 + ,13 + ,0 + ,20 + ,0 + ,10 + ,0 + ,26 + ,0 + ,22 + ,0 + ,1 + ,18 + ,13 + ,13 + ,12 + ,12 + ,6 + ,6 + ,19 + ,19 + ,20 + ,20 + ,1 + ,18 + ,12 + ,12 + ,13 + ,13 + ,9 + ,9 + ,21 + ,21 + ,13 + ,13 + ,1 + ,17 + ,8 + ,8 + ,12 + ,12 + ,9 + ,9 + ,21 + ,21 + ,24 + ,24 + ,1 + ,22 + ,13 + ,13 + ,12 + ,12 + ,13 + ,13 + ,22 + ,22 + ,15 + ,15 + ,1 + ,30 + ,14 + ,14 + ,9 + ,9 + ,9 + ,9 + ,23 + ,23 + ,14 + ,14 + ,0 + ,30 + ,12 + ,0 + ,15 + ,0 + ,10 + ,0 + ,29 + ,0 + ,22 + ,0 + ,1 + ,24 + ,14 + ,14 + ,24 + ,24 + ,20 + ,20 + ,21 + ,21 + ,10 + ,10 + ,1 + ,21 + ,15 + ,15 + ,7 + ,7 + ,5 + ,5 + ,21 + ,21 + ,24 + ,24 + ,1 + ,21 + ,13 + ,13 + ,17 + ,17 + ,11 + ,11 + ,23 + ,23 + ,22 + ,22 + ,1 + ,29 + ,16 + ,16 + ,11 + ,11 + ,6 + ,6 + ,27 + ,27 + ,24 + ,24 + ,1 + ,31 + ,9 + ,9 + ,17 + ,17 + ,9 + ,9 + ,25 + ,25 + ,19 + ,19 + ,1 + ,20 + ,9 + ,9 + ,11 + ,11 + ,7 + ,7 + ,21 + ,21 + ,20 + ,20 + ,0 + ,16 + ,9 + ,0 + ,12 + ,0 + ,9 + ,0 + ,10 + ,0 + ,13 + ,0 + ,0 + ,22 + ,8 + ,0 + ,14 + ,0 + ,10 + ,0 + ,20 + ,0 + ,20 + ,0 + ,1 + ,20 + ,7 + ,7 + ,11 + ,11 + ,9 + ,9 + ,26 + ,26 + ,22 + ,22 + ,1 + ,28 + ,16 + ,16 + ,16 + ,16 + ,8 + ,8 + ,24 + ,24 + ,24 + ,24 + ,1 + ,38 + ,11 + ,11 + ,21 + ,21 + ,7 + ,7 + ,29 + ,29 + ,29 + ,29 + ,0 + ,22 + ,9 + ,0 + ,14 + ,0 + ,6 + ,0 + ,19 + ,0 + ,12 + ,0 + ,1 + ,20 + ,11 + ,11 + ,20 + ,20 + ,13 + ,13 + ,24 + ,24 + ,20 + ,20 + ,0 + ,17 + ,9 + ,0 + ,13 + ,0 + ,6 + ,0 + ,19 + ,0 + ,21 + ,0 + ,1 + ,28 + ,14 + ,14 + ,11 + ,11 + ,8 + ,8 + ,24 + ,24 + ,24 + ,24 + ,1 + ,22 + ,13 + ,13 + ,15 + ,15 + ,10 + ,10 + ,22 + ,22 + ,22 + ,22 + ,0 + ,31 + ,16 + ,0 + ,19 + ,0 + ,16 + ,0 + ,17 + ,0 + ,20 + ,0) + ,dim=c(12 + ,159) + ,dimnames=list(c('Gender' + ,'Concernovermistakes' + ,'Doubtsaboutactions' + ,'DoubtsaboutactionsMale' + ,'Parentalexpectations' + ,'ParentalexpectationsMale' + ,'Parentalcritism' + ,'ParentalcritismMale' + ,'Personalstandards' + ,'PersonalstandarsMale' + ,'Organization' + ,'OrganizationMale') + ,1:159)) > y <- array(NA,dim=c(12,159),dimnames=list(c('Gender','Concernovermistakes','Doubtsaboutactions','DoubtsaboutactionsMale','Parentalexpectations','ParentalexpectationsMale','Parentalcritism','ParentalcritismMale','Personalstandards','PersonalstandarsMale','Organization','OrganizationMale'),1:159)) > for (i in 1:dim(x)[1]) + { + for (j in 1:dim(x)[2]) + { + y[i,j] <- as.numeric(x[i,j]) + } + } > par3 = 'No Linear Trend' > par2 = 'Do not include Seasonal Dummies' > par1 = '2' > #'GNU S' R Code compiled by R2WASP v. 1.0.44 () > #Author: Prof. Dr. P. Wessa > #To cite this work: AUTHOR(S), (YEAR), YOUR SOFTWARE TITLE (vNUMBER) in Free Statistics Software (v$_version), Office for Research Development and Education, URL http://www.wessa.net/rwasp_YOURPAGE.wasp/ > #Source of accompanying publication: Office for Research, Development, and Education > #Technical description: Write here your technical program description (don't use hard returns!) > library(lattice) > library(lmtest) Loading required package: zoo Attaching package: 'zoo' The following object(s) are masked from package:base : as.Date.numeric > n25 <- 25 #minimum number of obs. for Goldfeld-Quandt test > par1 <- as.numeric(par1) > x <- t(y) > k <- length(x[1,]) > n <- length(x[,1]) > x1 <- cbind(x[,par1], x[,1:k!=par1]) > mycolnames <- c(colnames(x)[par1], colnames(x)[1:k!=par1]) > colnames(x1) <- mycolnames #colnames(x)[par1] > x <- x1 > if (par3 == 'First Differences'){ + x2 <- array(0, dim=c(n-1,k), dimnames=list(1:(n-1), paste('(1-B)',colnames(x),sep=''))) + for (i in 1:n-1) { + for (j in 1:k) { + x2[i,j] <- x[i+1,j] - x[i,j] + } + } + x <- x2 + } > if (par2 == 'Include Monthly Dummies'){ + x2 <- array(0, dim=c(n,11), dimnames=list(1:n, paste('M', seq(1:11), sep =''))) + for (i in 1:11){ + x2[seq(i,n,12),i] <- 1 + } + x <- cbind(x, x2) + } > if (par2 == 'Include Quarterly Dummies'){ + x2 <- array(0, dim=c(n,3), dimnames=list(1:n, paste('Q', seq(1:3), sep =''))) + for (i in 1:3){ + x2[seq(i,n,4),i] <- 1 + } + x <- cbind(x, x2) + } > k <- length(x[1,]) > if (par3 == 'Linear Trend'){ + x <- cbind(x, c(1:n)) + colnames(x)[k+1] <- 't' + } > x Concernovermistakes Gender Doubtsaboutactions DoubtsaboutactionsMale 1 24 0 14 0 2 25 0 11 0 3 17 0 6 0 4 18 1 12 12 5 18 1 8 8 6 16 1 10 10 7 20 1 10 10 8 16 1 11 11 9 18 1 16 16 10 17 1 11 11 11 23 0 13 0 12 30 0 12 0 13 23 1 8 8 14 18 1 12 12 15 15 1 11 11 16 12 1 4 4 17 21 0 9 0 18 15 1 8 8 19 20 1 8 8 20 31 0 14 0 21 27 0 15 0 22 34 1 16 16 23 21 1 9 9 24 31 1 14 14 25 19 1 11 11 26 16 0 8 0 27 20 1 9 9 28 21 1 9 9 29 22 1 9 9 30 17 1 9 9 31 24 1 10 10 32 25 0 16 0 33 26 0 11 0 34 25 1 8 8 35 17 1 9 9 36 32 1 16 16 37 33 1 11 11 38 13 1 16 16 39 32 1 12 12 40 25 1 12 12 41 29 1 14 14 42 22 1 9 9 43 18 1 10 10 44 17 1 9 9 45 20 0 10 0 46 15 1 12 12 47 20 1 14 14 48 33 1 14 14 49 29 0 10 0 50 23 1 14 14 51 26 0 16 0 52 18 1 9 9 53 20 0 10 0 54 6 11 0 6 55 8 28 8 24 56 13 26 13 12 57 10 22 0 12 58 8 17 8 14 59 7 12 0 7 60 15 14 15 13 61 9 17 9 12 62 10 21 10 13 63 12 19 12 14 64 13 18 13 8 65 10 10 0 11 66 11 29 0 9 67 8 31 8 11 68 9 19 0 13 69 13 9 13 10 70 11 20 11 11 71 8 28 8 12 72 9 19 0 9 73 9 30 0 15 74 15 29 0 18 75 9 26 0 15 76 10 23 0 12 77 14 13 14 13 78 12 21 12 14 79 12 19 12 10 80 11 28 11 13 81 14 23 14 13 82 6 18 6 11 83 12 21 0 13 84 8 20 8 16 85 14 23 14 8 86 11 21 11 16 87 10 21 10 11 88 14 15 14 9 89 12 28 12 16 90 10 19 10 12 91 14 26 14 14 92 5 10 5 8 93 11 16 0 9 94 10 22 10 15 95 9 19 9 11 96 10 31 10 21 97 16 31 0 14 98 13 29 13 18 99 9 19 0 12 100 10 22 10 13 101 10 23 10 15 102 7 15 0 12 103 9 20 0 19 104 8 18 8 15 105 14 23 14 11 106 14 25 14 11 107 8 21 8 10 108 9 24 9 13 109 14 25 14 15 110 14 17 14 12 111 8 13 8 12 112 8 28 8 16 113 8 21 0 9 114 7 25 7 18 115 6 9 0 8 116 8 16 8 13 117 6 19 6 17 118 11 17 11 9 119 14 25 14 15 120 11 20 11 8 121 11 29 11 7 122 11 14 11 12 123 14 22 14 14 124 8 15 8 6 125 20 19 0 8 126 11 20 11 17 127 8 15 0 10 128 11 20 11 11 129 10 18 10 14 130 14 33 14 11 131 11 22 11 13 132 9 16 9 12 133 9 17 9 11 134 8 16 8 9 135 10 21 0 12 136 13 26 0 20 137 13 18 13 12 138 12 18 12 13 139 8 17 8 12 140 13 22 13 12 141 14 30 14 9 142 12 30 0 15 143 14 24 14 24 144 15 21 15 7 145 13 21 13 17 146 16 29 16 11 147 9 31 9 17 148 9 20 9 11 149 9 16 0 12 150 8 22 0 14 151 7 20 7 11 152 16 28 16 16 153 11 38 11 21 154 9 22 0 14 155 11 20 11 20 156 9 17 0 13 157 14 28 14 11 158 13 22 13 15 159 16 31 0 19 Parentalexpectations ParentalexpectationsMale Parentalcritism 1 11 0 12 2 7 0 8 3 17 0 8 4 10 10 8 5 12 12 9 6 12 12 7 7 11 11 4 8 11 11 11 9 12 12 7 10 13 13 7 11 14 0 12 12 16 0 10 13 11 11 10 14 10 10 8 15 11 11 8 16 15 15 4 17 9 0 9 18 11 11 8 19 17 17 7 20 17 0 11 21 11 0 9 22 18 18 11 23 14 14 13 24 10 10 8 25 11 11 8 26 15 0 9 27 15 15 6 28 13 13 9 29 16 16 9 30 13 13 6 31 9 9 6 32 18 0 16 33 18 0 5 34 12 12 7 35 17 17 9 36 9 9 6 37 9 9 6 38 12 12 5 39 18 18 12 40 12 12 7 41 18 18 10 42 14 14 9 43 15 15 8 44 16 16 5 45 10 0 8 46 11 11 8 47 14 14 10 48 9 9 6 49 12 0 8 50 17 17 7 51 5 0 4 52 12 12 8 53 12 0 8 54 0 4 0 55 24 20 20 56 12 8 8 57 0 8 0 58 14 6 6 59 0 4 0 60 13 8 8 61 12 9 9 62 13 6 6 63 14 7 7 64 8 9 9 65 0 5 0 66 0 5 0 67 11 8 8 68 0 8 0 69 10 6 6 70 11 8 8 71 12 7 7 72 0 7 0 73 0 9 0 74 0 11 0 75 0 6 0 76 0 8 0 77 13 6 6 78 14 9 9 79 10 8 8 80 13 6 6 81 13 10 10 82 11 8 8 83 0 8 0 84 16 10 10 85 8 5 5 86 16 7 7 87 11 5 5 88 9 8 8 89 16 14 14 90 12 7 7 91 14 8 8 92 8 6 6 93 0 5 0 94 15 6 6 95 11 10 10 96 21 12 12 97 0 9 0 98 18 12 12 99 0 7 0 100 13 8 8 101 15 10 10 102 0 6 0 103 0 10 0 104 15 10 10 105 11 10 10 106 11 5 5 107 10 7 7 108 13 10 10 109 15 11 11 110 12 6 6 111 12 7 7 112 16 12 12 113 0 11 0 114 18 11 11 115 0 11 0 116 13 5 5 117 17 8 8 118 9 6 6 119 15 9 9 120 8 4 4 121 7 4 4 122 12 7 7 123 14 11 11 124 6 6 6 125 0 7 0 126 17 8 8 127 0 4 0 128 11 8 8 129 14 9 9 130 11 8 8 131 13 11 11 132 12 8 8 133 11 5 5 134 9 4 4 135 0 8 0 136 0 10 0 137 12 6 6 138 13 9 9 139 12 9 9 140 12 13 13 141 9 9 9 142 0 10 0 143 24 20 20 144 7 5 5 145 17 11 11 146 11 6 6 147 17 9 9 148 11 7 7 149 0 9 0 150 0 10 0 151 11 9 9 152 16 8 8 153 21 7 7 154 0 6 0 155 20 13 13 156 0 6 0 157 11 8 8 158 15 10 10 159 0 16 0 ParentalcritismMale Personalstandards PersonalstandarsMale Organization 1 0 24 0 26 2 0 25 0 23 3 0 30 0 25 4 8 19 19 23 5 9 22 22 19 6 7 22 22 29 7 4 25 25 25 8 11 23 23 21 9 7 17 17 22 10 7 21 21 25 11 0 19 0 24 12 0 19 0 18 13 10 15 15 22 14 8 16 16 15 15 8 23 23 22 16 4 27 27 28 17 0 22 0 20 18 8 14 14 12 19 7 22 22 24 20 0 23 0 20 21 0 23 0 21 22 11 21 21 20 23 13 19 19 21 24 8 18 18 23 25 8 20 20 28 26 0 23 0 24 27 6 25 25 24 28 9 19 19 24 29 9 24 24 23 30 6 22 22 23 31 6 25 25 29 32 0 26 0 24 33 0 29 0 18 34 7 32 32 25 35 9 25 25 21 36 6 29 29 26 37 6 28 28 22 38 5 17 17 22 39 12 28 28 22 40 7 29 29 23 41 10 26 26 30 42 9 25 25 23 43 8 14 14 17 44 5 25 25 23 45 0 26 0 23 46 8 20 20 25 47 10 18 18 24 48 6 32 32 24 49 0 25 0 23 50 7 25 25 21 51 0 23 0 24 52 8 21 21 24 53 0 20 0 28 54 15 0 16 0 55 30 30 20 20 56 24 24 29 29 57 26 0 27 0 58 24 24 22 22 59 22 0 28 0 60 14 14 16 16 61 24 24 25 25 62 24 24 24 24 63 24 24 28 28 64 24 24 24 24 65 19 0 23 0 66 31 0 30 0 67 22 22 24 24 68 27 0 21 0 69 19 19 25 25 70 25 25 25 25 71 20 20 22 22 72 21 0 23 0 73 27 0 26 0 74 23 0 23 0 75 25 0 25 0 76 20 0 21 0 77 21 21 25 25 78 22 22 24 24 79 23 23 29 29 80 25 25 22 22 81 25 25 27 27 82 17 17 26 26 83 19 0 22 0 84 25 25 24 24 85 19 19 27 27 86 20 20 24 24 87 26 26 24 24 88 23 23 29 29 89 27 27 22 22 90 17 17 21 21 91 17 17 24 24 92 19 19 24 24 93 17 0 23 0 94 22 22 20 20 95 21 21 27 27 96 32 32 26 26 97 21 0 25 0 98 21 21 21 21 99 18 0 21 0 100 18 18 19 19 101 23 23 21 21 102 19 0 21 0 103 20 0 16 0 104 21 21 22 22 105 20 20 29 29 106 17 17 15 15 107 18 18 17 17 108 19 19 15 15 109 22 22 21 21 110 15 15 21 21 111 14 14 19 19 112 18 18 24 24 113 24 0 20 0 114 35 35 17 17 115 29 0 23 0 116 21 21 24 24 117 25 25 14 14 118 20 20 19 19 119 22 22 24 24 120 13 13 13 13 121 26 26 22 22 122 17 17 16 16 123 25 25 19 19 124 20 20 25 25 125 19 0 25 0 126 21 21 23 23 127 22 0 24 0 128 24 24 26 26 129 21 21 26 26 130 26 26 25 25 131 24 24 18 18 132 16 16 21 21 133 23 23 26 26 134 18 18 23 23 135 16 0 23 0 136 26 0 22 0 137 19 19 20 20 138 21 21 13 13 139 21 21 24 24 140 22 22 15 15 141 23 23 14 14 142 29 0 22 0 143 21 21 10 10 144 21 21 24 24 145 23 23 22 22 146 27 27 24 24 147 25 25 19 19 148 21 21 20 20 149 10 0 13 0 150 20 0 20 0 151 26 26 22 22 152 24 24 24 24 153 29 29 29 29 154 19 0 12 0 155 24 24 20 20 156 19 0 21 0 157 24 24 24 24 158 22 22 22 22 159 17 0 20 0 OrganizationMale 1 0 2 0 3 0 4 23 5 19 6 29 7 25 8 21 9 22 10 25 11 0 12 0 13 22 14 15 15 22 16 28 17 0 18 12 19 24 20 0 21 0 22 20 23 21 24 23 25 28 26 0 27 24 28 24 29 23 30 23 31 29 32 0 33 0 34 25 35 21 36 26 37 22 38 22 39 22 40 23 41 30 42 23 43 17 44 23 45 0 46 25 47 24 48 24 49 0 50 21 51 0 52 24 53 0 54 1 55 1 56 0 57 1 58 0 59 1 60 1 61 1 62 1 63 1 64 0 65 0 66 1 67 0 68 1 69 1 70 1 71 0 72 0 73 0 74 0 75 0 76 1 77 1 78 1 79 1 80 1 81 1 82 0 83 1 84 1 85 1 86 1 87 1 88 1 89 1 90 1 91 1 92 0 93 1 94 1 95 1 96 0 97 1 98 0 99 1 100 1 101 0 102 0 103 1 104 1 105 1 106 1 107 1 108 1 109 1 110 1 111 1 112 0 113 1 114 0 115 1 116 1 117 1 118 1 119 1 120 1 121 1 122 1 123 1 124 0 125 1 126 0 127 1 128 1 129 1 130 1 131 1 132 1 133 1 134 0 135 0 136 1 137 1 138 1 139 1 140 1 141 0 142 1 143 1 144 1 145 1 146 1 147 1 148 0 149 0 150 1 151 1 152 1 153 0 154 1 155 0 156 1 157 1 158 0 159 0 > k <- length(x[1,]) > df <- as.data.frame(x) > (mylm <- lm(df)) Call: lm(formula = df) Coefficients: (Intercept) Gender Doubtsaboutactions 17.70790 0.03659 0.69515 DoubtsaboutactionsMale Parentalexpectations ParentalexpectationsMale -0.07838 -0.22316 -0.17356 Parentalcritism ParentalcritismMale Personalstandards 0.32364 -0.51176 0.32085 PersonalstandarsMale Organization OrganizationMale 0.18288 -0.52914 0.18713 > (mysum <- summary(mylm)) Call: lm(formula = df) Residuals: Min 1Q Median 3Q Max -9.9508 -2.3153 -0.1563 1.6761 11.8593 Coefficients: Estimate Std. Error t value Pr(>|t|) (Intercept) 17.70790 1.12879 15.687 < 2e-16 *** Gender 0.03659 0.07405 0.494 0.621910 Doubtsaboutactions 0.69515 0.11709 5.937 2.00e-08 *** DoubtsaboutactionsMale -0.07838 0.12186 -0.643 0.521109 Parentalexpectations -0.22316 0.13824 -1.614 0.108598 ParentalexpectationsMale -0.17356 0.16425 -1.057 0.292390 Parentalcritism 0.32364 0.18380 1.761 0.080347 . ParentalcritismMale -0.51176 0.09829 -5.207 6.37e-07 *** Personalstandards 0.32085 0.08990 3.569 0.000484 *** PersonalstandarsMale 0.18288 0.08723 2.097 0.037741 * Organization -0.52914 0.09470 -5.587 1.09e-07 *** OrganizationMale 0.18713 0.08845 2.116 0.036064 * --- Signif. codes: 0 '***' 0.001 '**' 0.01 '*' 0.05 '.' 0.1 ' ' 1 Residual standard error: 3.689 on 147 degrees of freedom Multiple R-squared: 0.7137, Adjusted R-squared: 0.6923 F-statistic: 33.32 on 11 and 147 DF, p-value: < 2.2e-16 > if (n > n25) { + kp3 <- k + 3 + nmkm3 <- n - k - 3 + gqarr <- array(NA, dim=c(nmkm3-kp3+1,3)) + numgqtests <- 0 + numsignificant1 <- 0 + numsignificant5 <- 0 + numsignificant10 <- 0 + for (mypoint in kp3:nmkm3) { + j <- 0 + numgqtests <- numgqtests + 1 + for (myalt in c('greater', 'two.sided', 'less')) { + j <- j + 1 + gqarr[mypoint-kp3+1,j] <- gqtest(mylm, point=mypoint, alternative=myalt)$p.value + } + if (gqarr[mypoint-kp3+1,2] < 0.01) numsignificant1 <- numsignificant1 + 1 + if (gqarr[mypoint-kp3+1,2] < 0.05) numsignificant5 <- numsignificant5 + 1 + if (gqarr[mypoint-kp3+1,2] < 0.10) numsignificant10 <- numsignificant10 + 1 + } + gqarr + } [,1] [,2] [,3] [1,] 0.2991972 5.983943e-01 7.008028e-01 [2,] 0.3609508 7.219016e-01 6.390492e-01 [3,] 0.2268251 4.536502e-01 7.731749e-01 [4,] 0.2647185 5.294370e-01 7.352815e-01 [5,] 0.4014865 8.029730e-01 5.985135e-01 [6,] 0.3343432 6.686864e-01 6.656568e-01 [7,] 0.3957985 7.915971e-01 6.042015e-01 [8,] 0.7759977 4.480047e-01 2.240023e-01 [9,] 0.7305070 5.389859e-01 2.694930e-01 [10,] 0.9801151 3.976970e-02 1.988485e-02 [11,] 0.9693397 6.132057e-02 3.066029e-02 [12,] 0.9565731 8.685377e-02 4.342688e-02 [13,] 0.9420070 1.159861e-01 5.799305e-02 [14,] 0.9243451 1.513098e-01 7.565492e-02 [15,] 0.8998909 2.002182e-01 1.001091e-01 [16,] 0.8736853 2.526294e-01 1.263147e-01 [17,] 0.9447732 1.104536e-01 5.522680e-02 [18,] 0.9423096 1.153808e-01 5.769042e-02 [19,] 0.9439951 1.120098e-01 5.600492e-02 [20,] 0.9646226 7.075478e-02 3.537739e-02 [21,] 0.9695731 6.085388e-02 3.042694e-02 [22,] 0.9728391 5.432173e-02 2.716087e-02 [23,] 0.9951461 9.707787e-03 4.853893e-03 [24,] 0.9994663 1.067442e-03 5.337209e-04 [25,] 0.9998482 3.036058e-04 1.518029e-04 [26,] 0.9997613 4.773641e-04 2.386820e-04 [27,] 0.9998729 2.542618e-04 1.271309e-04 [28,] 0.9998281 3.437944e-04 1.718972e-04 [29,] 0.9998188 3.623148e-04 1.811574e-04 [30,] 0.9997478 5.044962e-04 2.522481e-04 [31,] 0.9996330 7.339919e-04 3.669959e-04 [32,] 0.9998571 2.857841e-04 1.428920e-04 [33,] 0.9998036 3.927114e-04 1.963557e-04 [34,] 0.9998185 3.630445e-04 1.815222e-04 [35,] 0.9999999 2.224059e-07 1.112029e-07 [36,] 0.9999998 3.871051e-07 1.935525e-07 [37,] 1.0000000 2.130340e-08 1.065170e-08 [38,] 1.0000000 3.755226e-08 1.877613e-08 [39,] 1.0000000 2.748281e-20 1.374141e-20 [40,] 1.0000000 1.017888e-21 5.089439e-22 [41,] 1.0000000 3.342562e-21 1.671281e-21 [42,] 1.0000000 3.407694e-21 1.703847e-21 [43,] 1.0000000 1.077935e-21 5.389677e-22 [44,] 1.0000000 2.713663e-22 1.356832e-22 [45,] 1.0000000 5.242407e-23 2.621204e-23 [46,] 1.0000000 1.248693e-22 6.243464e-23 [47,] 1.0000000 2.619931e-22 1.309966e-22 [48,] 1.0000000 7.777455e-22 3.888728e-22 [49,] 1.0000000 2.664172e-21 1.332086e-21 [50,] 1.0000000 2.922080e-21 1.461040e-21 [51,] 1.0000000 5.818442e-21 2.909221e-21 [52,] 1.0000000 7.457907e-21 3.728953e-21 [53,] 1.0000000 2.427779e-20 1.213890e-20 [54,] 1.0000000 3.333023e-20 1.666512e-20 [55,] 1.0000000 8.880256e-20 4.440128e-20 [56,] 1.0000000 2.375101e-19 1.187550e-19 [57,] 1.0000000 7.545136e-19 3.772568e-19 [58,] 1.0000000 2.053773e-18 1.026886e-18 [59,] 1.0000000 6.093965e-19 3.046982e-19 [60,] 1.0000000 4.071706e-20 2.035853e-20 [61,] 1.0000000 6.435410e-20 3.217705e-20 [62,] 1.0000000 1.753500e-19 8.767498e-20 [63,] 1.0000000 4.485211e-19 2.242606e-19 [64,] 1.0000000 1.465227e-18 7.326133e-19 [65,] 1.0000000 4.617607e-18 2.308804e-18 [66,] 1.0000000 1.159101e-17 5.795505e-18 [67,] 1.0000000 3.669311e-17 1.834656e-17 [68,] 1.0000000 1.148243e-16 5.741216e-17 [69,] 1.0000000 3.152033e-16 1.576017e-16 [70,] 1.0000000 9.541406e-16 4.770703e-16 [71,] 1.0000000 2.830065e-15 1.415032e-15 [72,] 1.0000000 8.272919e-15 4.136460e-15 [73,] 1.0000000 2.329525e-14 1.164763e-14 [74,] 1.0000000 5.807645e-14 2.903822e-14 [75,] 1.0000000 1.382765e-13 6.913826e-14 [76,] 1.0000000 3.439257e-13 1.719628e-13 [77,] 1.0000000 9.034201e-13 4.517101e-13 [78,] 1.0000000 1.949452e-12 9.747258e-13 [79,] 1.0000000 5.209442e-12 2.604721e-12 [80,] 1.0000000 1.312740e-11 6.563698e-12 [81,] 1.0000000 3.422481e-11 1.711240e-11 [82,] 1.0000000 8.245183e-11 4.122592e-11 [83,] 1.0000000 7.697459e-11 3.848729e-11 [84,] 1.0000000 1.900463e-10 9.502313e-11 [85,] 1.0000000 2.574058e-10 1.287029e-10 [86,] 1.0000000 5.183346e-10 2.591673e-10 [87,] 1.0000000 1.211892e-09 6.059461e-10 [88,] 1.0000000 9.492430e-10 4.746215e-10 [89,] 1.0000000 2.027366e-09 1.013683e-09 [90,] 1.0000000 4.978562e-09 2.489281e-09 [91,] 1.0000000 1.202254e-08 6.011269e-09 [92,] 1.0000000 1.956977e-08 9.784885e-09 [93,] 1.0000000 3.119598e-08 1.559799e-08 [94,] 1.0000000 4.696594e-08 2.348297e-08 [95,] 0.9999999 1.101320e-07 5.506601e-08 [96,] 0.9999999 2.545936e-07 1.272968e-07 [97,] 0.9999997 5.332462e-07 2.666231e-07 [98,] 0.9999995 1.011667e-06 5.058334e-07 [99,] 0.9999991 1.725309e-06 8.626545e-07 [100,] 0.9999985 3.017929e-06 1.508964e-06 [101,] 0.9999998 3.593747e-07 1.796873e-07 [102,] 0.9999996 8.772038e-07 4.386019e-07 [103,] 0.9999990 1.907631e-06 9.538153e-07 [104,] 0.9999980 4.026762e-06 2.013381e-06 [105,] 0.9999954 9.272044e-06 4.636022e-06 [106,] 0.9999930 1.400653e-05 7.003266e-06 [107,] 0.9999846 3.076912e-05 1.538456e-05 [108,] 0.9999693 6.145977e-05 3.072989e-05 [109,] 0.9999352 1.296034e-04 6.480171e-05 [110,] 0.9998684 2.632062e-04 1.316031e-04 [111,] 1.0000000 3.580095e-13 1.790047e-13 [112,] 1.0000000 2.070848e-12 1.035424e-12 [113,] 1.0000000 5.063087e-12 2.531543e-12 [114,] 1.0000000 2.961654e-11 1.480827e-11 [115,] 1.0000000 1.681458e-10 8.407288e-11 [116,] 1.0000000 8.892424e-10 4.446212e-10 [117,] 1.0000000 4.522445e-09 2.261222e-09 [118,] 1.0000000 2.272005e-08 1.136002e-08 [119,] 0.9999999 1.061390e-07 5.306949e-08 [120,] 0.9999997 5.108889e-07 2.554445e-07 [121,] 0.9999993 1.302933e-06 6.514663e-07 [122,] 0.9999983 3.494212e-06 1.747106e-06 [123,] 0.9999928 1.444992e-05 7.224959e-06 [124,] 0.9999765 4.695330e-05 2.347665e-05 [125,] 0.9998935 2.130871e-04 1.065435e-04 [126,] 0.9995591 8.817315e-04 4.408657e-04 [127,] 0.9985598 2.880376e-03 1.440188e-03 [128,] 0.9999598 8.038175e-05 4.019088e-05 [129,] 0.9996309 7.381691e-04 3.690845e-04 [130,] 0.9974515 5.096924e-03 2.548462e-03 > postscript(file="/var/www/html/rcomp/tmp/1i3b81290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > plot(x[,1], type='l', main='Actuals and Interpolation', ylab='value of Actuals and Interpolation (dots)', xlab='time or index') > points(x[,1]-mysum$resid) > grid() > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/2susb1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > plot(mysum$resid, type='b', pch=19, main='Residuals', ylab='value of Residuals', xlab='time or index') > grid() > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/3susb1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > hist(mysum$resid, main='Residual Histogram', xlab='values of Residuals') > grid() > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/4susb1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > densityplot(~mysum$resid,col='black',main='Residual Density Plot', xlab='values of Residuals') > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/534ae1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > qqnorm(mysum$resid, main='Residual Normal Q-Q Plot') > qqline(mysum$resid) > grid() > dev.off() null device 1 > (myerror <- as.ts(mysum$resid)) Time Series: Start = 1 End = 159 Frequency = 1 1 2 3 4 5 6 1.188260947 2.767364719 -0.071290098 -3.378303587 -2.808881253 -2.998599136 7 8 9 10 11 12 -2.838887936 -6.499387394 -4.574607343 -3.082942853 2.098868835 7.712784721 13 14 15 16 17 18 6.534642675 -4.603162001 -7.721739003 -5.532837270 -0.344530830 -4.757924793 19 20 21 22 23 24 2.508506521 6.996878715 2.139202412 11.859255660 3.315465216 8.891887695 25 26 27 28 29 30 -0.158515299 -1.514718815 -0.601008964 3.192286827 2.521791501 -3.225265024 31 32 33 34 35 36 2.111935138 -0.634473569 3.263949033 0.829620589 -3.269230381 3.370384861 37 38 39 40 41 42 6.589936458 -9.950845659 9.672356468 -0.810279076 8.806085861 1.224623293 43 44 45 46 47 48 0.305443722 -3.734414635 -1.188862235 -5.801302007 0.197009286 3.408722841 49 50 51 52 53 54 8.578310027 -0.729314252 2.310739407 -1.400010691 3.828271035 -6.382653263 55 56 57 58 59 60 0.406924721 2.344999249 1.997059039 -0.370519052 -3.953050125 -2.902285834 61 62 63 64 65 66 -0.267338959 0.296667266 2.516066727 -0.449790667 -0.826567572 3.995278113 67 68 69 70 71 72 -1.776916691 2.794244907 0.137458886 0.272046691 -2.289860104 -0.942023371 73 74 75 76 77 78 1.994768231 7.115187468 0.779816931 -0.012855067 1.582367986 0.375834339 79 80 81 82 83 84 1.315187020 -0.156252801 2.072254769 -2.172930250 1.444069329 0.218733130 85 86 87 88 89 90 0.169530140 0.592400622 0.225502084 1.769736529 0.234352472 -2.456933043 91 92 93 94 95 96 -0.001900119 -3.100171843 -1.413548061 -0.903727532 -0.672357820 3.849454852 97 98 99 100 101 102 5.804958149 0.101259035 -2.063564617 -2.916878773 -0.816354492 -3.391849055 103 104 105 106 107 108 0.907068163 -1.465785372 1.207150589 -3.536024089 -4.937042812 -4.789231529 109 110 111 112 113 114 -0.198256222 -1.396064547 -4.112335075 -1.523437135 0.575814207 -0.143696779 115 116 117 118 119 120 0.946756976 -0.552718559 -3.215301409 -2.953205787 1.140702160 -6.478310417 121 122 123 124 125 126 -1.510984431 -3.700420540 -0.509801142 -2.434479456 8.403184492 0.812228848 127 128 129 130 131 132 -2.096195060 0.427398068 0.377522745 0.901794693 -2.263074644 -2.993000845 133 134 135 136 137 138 0.186816511 -2.340642084 -2.165341576 6.739198501 -1.320130624 -3.815720148 139 140 141 142 143 144 -1.491189953 -3.675683489 -3.936070136 6.736229571 -2.798400828 -0.410928799 145 146 147 148 149 150 0.783513762 1.802699599 -1.158642051 -2.495401674 -4.050621873 -1.289511675 151 152 153 154 155 156 -1.945332555 2.474072101 5.114628712 -0.032496316 0.500358450 -1.573795093 157 158 159 0.356681013 0.290154214 6.466221414 > postscript(file="/var/www/html/rcomp/tmp/634ae1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > dum <- cbind(lag(myerror,k=1),myerror) > dum Time Series: Start = 0 End = 159 Frequency = 1 lag(myerror, k = 1) myerror 0 1.188260947 NA 1 2.767364719 1.188260947 2 -0.071290098 2.767364719 3 -3.378303587 -0.071290098 4 -2.808881253 -3.378303587 5 -2.998599136 -2.808881253 6 -2.838887936 -2.998599136 7 -6.499387394 -2.838887936 8 -4.574607343 -6.499387394 9 -3.082942853 -4.574607343 10 2.098868835 -3.082942853 11 7.712784721 2.098868835 12 6.534642675 7.712784721 13 -4.603162001 6.534642675 14 -7.721739003 -4.603162001 15 -5.532837270 -7.721739003 16 -0.344530830 -5.532837270 17 -4.757924793 -0.344530830 18 2.508506521 -4.757924793 19 6.996878715 2.508506521 20 2.139202412 6.996878715 21 11.859255660 2.139202412 22 3.315465216 11.859255660 23 8.891887695 3.315465216 24 -0.158515299 8.891887695 25 -1.514718815 -0.158515299 26 -0.601008964 -1.514718815 27 3.192286827 -0.601008964 28 2.521791501 3.192286827 29 -3.225265024 2.521791501 30 2.111935138 -3.225265024 31 -0.634473569 2.111935138 32 3.263949033 -0.634473569 33 0.829620589 3.263949033 34 -3.269230381 0.829620589 35 3.370384861 -3.269230381 36 6.589936458 3.370384861 37 -9.950845659 6.589936458 38 9.672356468 -9.950845659 39 -0.810279076 9.672356468 40 8.806085861 -0.810279076 41 1.224623293 8.806085861 42 0.305443722 1.224623293 43 -3.734414635 0.305443722 44 -1.188862235 -3.734414635 45 -5.801302007 -1.188862235 46 0.197009286 -5.801302007 47 3.408722841 0.197009286 48 8.578310027 3.408722841 49 -0.729314252 8.578310027 50 2.310739407 -0.729314252 51 -1.400010691 2.310739407 52 3.828271035 -1.400010691 53 -6.382653263 3.828271035 54 0.406924721 -6.382653263 55 2.344999249 0.406924721 56 1.997059039 2.344999249 57 -0.370519052 1.997059039 58 -3.953050125 -0.370519052 59 -2.902285834 -3.953050125 60 -0.267338959 -2.902285834 61 0.296667266 -0.267338959 62 2.516066727 0.296667266 63 -0.449790667 2.516066727 64 -0.826567572 -0.449790667 65 3.995278113 -0.826567572 66 -1.776916691 3.995278113 67 2.794244907 -1.776916691 68 0.137458886 2.794244907 69 0.272046691 0.137458886 70 -2.289860104 0.272046691 71 -0.942023371 -2.289860104 72 1.994768231 -0.942023371 73 7.115187468 1.994768231 74 0.779816931 7.115187468 75 -0.012855067 0.779816931 76 1.582367986 -0.012855067 77 0.375834339 1.582367986 78 1.315187020 0.375834339 79 -0.156252801 1.315187020 80 2.072254769 -0.156252801 81 -2.172930250 2.072254769 82 1.444069329 -2.172930250 83 0.218733130 1.444069329 84 0.169530140 0.218733130 85 0.592400622 0.169530140 86 0.225502084 0.592400622 87 1.769736529 0.225502084 88 0.234352472 1.769736529 89 -2.456933043 0.234352472 90 -0.001900119 -2.456933043 91 -3.100171843 -0.001900119 92 -1.413548061 -3.100171843 93 -0.903727532 -1.413548061 94 -0.672357820 -0.903727532 95 3.849454852 -0.672357820 96 5.804958149 3.849454852 97 0.101259035 5.804958149 98 -2.063564617 0.101259035 99 -2.916878773 -2.063564617 100 -0.816354492 -2.916878773 101 -3.391849055 -0.816354492 102 0.907068163 -3.391849055 103 -1.465785372 0.907068163 104 1.207150589 -1.465785372 105 -3.536024089 1.207150589 106 -4.937042812 -3.536024089 107 -4.789231529 -4.937042812 108 -0.198256222 -4.789231529 109 -1.396064547 -0.198256222 110 -4.112335075 -1.396064547 111 -1.523437135 -4.112335075 112 0.575814207 -1.523437135 113 -0.143696779 0.575814207 114 0.946756976 -0.143696779 115 -0.552718559 0.946756976 116 -3.215301409 -0.552718559 117 -2.953205787 -3.215301409 118 1.140702160 -2.953205787 119 -6.478310417 1.140702160 120 -1.510984431 -6.478310417 121 -3.700420540 -1.510984431 122 -0.509801142 -3.700420540 123 -2.434479456 -0.509801142 124 8.403184492 -2.434479456 125 0.812228848 8.403184492 126 -2.096195060 0.812228848 127 0.427398068 -2.096195060 128 0.377522745 0.427398068 129 0.901794693 0.377522745 130 -2.263074644 0.901794693 131 -2.993000845 -2.263074644 132 0.186816511 -2.993000845 133 -2.340642084 0.186816511 134 -2.165341576 -2.340642084 135 6.739198501 -2.165341576 136 -1.320130624 6.739198501 137 -3.815720148 -1.320130624 138 -1.491189953 -3.815720148 139 -3.675683489 -1.491189953 140 -3.936070136 -3.675683489 141 6.736229571 -3.936070136 142 -2.798400828 6.736229571 143 -0.410928799 -2.798400828 144 0.783513762 -0.410928799 145 1.802699599 0.783513762 146 -1.158642051 1.802699599 147 -2.495401674 -1.158642051 148 -4.050621873 -2.495401674 149 -1.289511675 -4.050621873 150 -1.945332555 -1.289511675 151 2.474072101 -1.945332555 152 5.114628712 2.474072101 153 -0.032496316 5.114628712 154 0.500358450 -0.032496316 155 -1.573795093 0.500358450 156 0.356681013 -1.573795093 157 0.290154214 0.356681013 158 6.466221414 0.290154214 159 NA 6.466221414 > dum1 <- dum[2:length(myerror),] > dum1 lag(myerror, k = 1) myerror [1,] 2.767364719 1.188260947 [2,] -0.071290098 2.767364719 [3,] -3.378303587 -0.071290098 [4,] -2.808881253 -3.378303587 [5,] -2.998599136 -2.808881253 [6,] -2.838887936 -2.998599136 [7,] -6.499387394 -2.838887936 [8,] -4.574607343 -6.499387394 [9,] -3.082942853 -4.574607343 [10,] 2.098868835 -3.082942853 [11,] 7.712784721 2.098868835 [12,] 6.534642675 7.712784721 [13,] -4.603162001 6.534642675 [14,] -7.721739003 -4.603162001 [15,] -5.532837270 -7.721739003 [16,] -0.344530830 -5.532837270 [17,] -4.757924793 -0.344530830 [18,] 2.508506521 -4.757924793 [19,] 6.996878715 2.508506521 [20,] 2.139202412 6.996878715 [21,] 11.859255660 2.139202412 [22,] 3.315465216 11.859255660 [23,] 8.891887695 3.315465216 [24,] -0.158515299 8.891887695 [25,] -1.514718815 -0.158515299 [26,] -0.601008964 -1.514718815 [27,] 3.192286827 -0.601008964 [28,] 2.521791501 3.192286827 [29,] -3.225265024 2.521791501 [30,] 2.111935138 -3.225265024 [31,] -0.634473569 2.111935138 [32,] 3.263949033 -0.634473569 [33,] 0.829620589 3.263949033 [34,] -3.269230381 0.829620589 [35,] 3.370384861 -3.269230381 [36,] 6.589936458 3.370384861 [37,] -9.950845659 6.589936458 [38,] 9.672356468 -9.950845659 [39,] -0.810279076 9.672356468 [40,] 8.806085861 -0.810279076 [41,] 1.224623293 8.806085861 [42,] 0.305443722 1.224623293 [43,] -3.734414635 0.305443722 [44,] -1.188862235 -3.734414635 [45,] -5.801302007 -1.188862235 [46,] 0.197009286 -5.801302007 [47,] 3.408722841 0.197009286 [48,] 8.578310027 3.408722841 [49,] -0.729314252 8.578310027 [50,] 2.310739407 -0.729314252 [51,] -1.400010691 2.310739407 [52,] 3.828271035 -1.400010691 [53,] -6.382653263 3.828271035 [54,] 0.406924721 -6.382653263 [55,] 2.344999249 0.406924721 [56,] 1.997059039 2.344999249 [57,] -0.370519052 1.997059039 [58,] -3.953050125 -0.370519052 [59,] -2.902285834 -3.953050125 [60,] -0.267338959 -2.902285834 [61,] 0.296667266 -0.267338959 [62,] 2.516066727 0.296667266 [63,] -0.449790667 2.516066727 [64,] -0.826567572 -0.449790667 [65,] 3.995278113 -0.826567572 [66,] -1.776916691 3.995278113 [67,] 2.794244907 -1.776916691 [68,] 0.137458886 2.794244907 [69,] 0.272046691 0.137458886 [70,] -2.289860104 0.272046691 [71,] -0.942023371 -2.289860104 [72,] 1.994768231 -0.942023371 [73,] 7.115187468 1.994768231 [74,] 0.779816931 7.115187468 [75,] -0.012855067 0.779816931 [76,] 1.582367986 -0.012855067 [77,] 0.375834339 1.582367986 [78,] 1.315187020 0.375834339 [79,] -0.156252801 1.315187020 [80,] 2.072254769 -0.156252801 [81,] -2.172930250 2.072254769 [82,] 1.444069329 -2.172930250 [83,] 0.218733130 1.444069329 [84,] 0.169530140 0.218733130 [85,] 0.592400622 0.169530140 [86,] 0.225502084 0.592400622 [87,] 1.769736529 0.225502084 [88,] 0.234352472 1.769736529 [89,] -2.456933043 0.234352472 [90,] -0.001900119 -2.456933043 [91,] -3.100171843 -0.001900119 [92,] -1.413548061 -3.100171843 [93,] -0.903727532 -1.413548061 [94,] -0.672357820 -0.903727532 [95,] 3.849454852 -0.672357820 [96,] 5.804958149 3.849454852 [97,] 0.101259035 5.804958149 [98,] -2.063564617 0.101259035 [99,] -2.916878773 -2.063564617 [100,] -0.816354492 -2.916878773 [101,] -3.391849055 -0.816354492 [102,] 0.907068163 -3.391849055 [103,] -1.465785372 0.907068163 [104,] 1.207150589 -1.465785372 [105,] -3.536024089 1.207150589 [106,] -4.937042812 -3.536024089 [107,] -4.789231529 -4.937042812 [108,] -0.198256222 -4.789231529 [109,] -1.396064547 -0.198256222 [110,] -4.112335075 -1.396064547 [111,] -1.523437135 -4.112335075 [112,] 0.575814207 -1.523437135 [113,] -0.143696779 0.575814207 [114,] 0.946756976 -0.143696779 [115,] -0.552718559 0.946756976 [116,] -3.215301409 -0.552718559 [117,] -2.953205787 -3.215301409 [118,] 1.140702160 -2.953205787 [119,] -6.478310417 1.140702160 [120,] -1.510984431 -6.478310417 [121,] -3.700420540 -1.510984431 [122,] -0.509801142 -3.700420540 [123,] -2.434479456 -0.509801142 [124,] 8.403184492 -2.434479456 [125,] 0.812228848 8.403184492 [126,] -2.096195060 0.812228848 [127,] 0.427398068 -2.096195060 [128,] 0.377522745 0.427398068 [129,] 0.901794693 0.377522745 [130,] -2.263074644 0.901794693 [131,] -2.993000845 -2.263074644 [132,] 0.186816511 -2.993000845 [133,] -2.340642084 0.186816511 [134,] -2.165341576 -2.340642084 [135,] 6.739198501 -2.165341576 [136,] -1.320130624 6.739198501 [137,] -3.815720148 -1.320130624 [138,] -1.491189953 -3.815720148 [139,] -3.675683489 -1.491189953 [140,] -3.936070136 -3.675683489 [141,] 6.736229571 -3.936070136 [142,] -2.798400828 6.736229571 [143,] -0.410928799 -2.798400828 [144,] 0.783513762 -0.410928799 [145,] 1.802699599 0.783513762 [146,] -1.158642051 1.802699599 [147,] -2.495401674 -1.158642051 [148,] -4.050621873 -2.495401674 [149,] -1.289511675 -4.050621873 [150,] -1.945332555 -1.289511675 [151,] 2.474072101 -1.945332555 [152,] 5.114628712 2.474072101 [153,] -0.032496316 5.114628712 [154,] 0.500358450 -0.032496316 [155,] -1.573795093 0.500358450 [156,] 0.356681013 -1.573795093 [157,] 0.290154214 0.356681013 [158,] 6.466221414 0.290154214 > z <- as.data.frame(dum1) > z lag(myerror, k = 1) myerror 1 2.767364719 1.188260947 2 -0.071290098 2.767364719 3 -3.378303587 -0.071290098 4 -2.808881253 -3.378303587 5 -2.998599136 -2.808881253 6 -2.838887936 -2.998599136 7 -6.499387394 -2.838887936 8 -4.574607343 -6.499387394 9 -3.082942853 -4.574607343 10 2.098868835 -3.082942853 11 7.712784721 2.098868835 12 6.534642675 7.712784721 13 -4.603162001 6.534642675 14 -7.721739003 -4.603162001 15 -5.532837270 -7.721739003 16 -0.344530830 -5.532837270 17 -4.757924793 -0.344530830 18 2.508506521 -4.757924793 19 6.996878715 2.508506521 20 2.139202412 6.996878715 21 11.859255660 2.139202412 22 3.315465216 11.859255660 23 8.891887695 3.315465216 24 -0.158515299 8.891887695 25 -1.514718815 -0.158515299 26 -0.601008964 -1.514718815 27 3.192286827 -0.601008964 28 2.521791501 3.192286827 29 -3.225265024 2.521791501 30 2.111935138 -3.225265024 31 -0.634473569 2.111935138 32 3.263949033 -0.634473569 33 0.829620589 3.263949033 34 -3.269230381 0.829620589 35 3.370384861 -3.269230381 36 6.589936458 3.370384861 37 -9.950845659 6.589936458 38 9.672356468 -9.950845659 39 -0.810279076 9.672356468 40 8.806085861 -0.810279076 41 1.224623293 8.806085861 42 0.305443722 1.224623293 43 -3.734414635 0.305443722 44 -1.188862235 -3.734414635 45 -5.801302007 -1.188862235 46 0.197009286 -5.801302007 47 3.408722841 0.197009286 48 8.578310027 3.408722841 49 -0.729314252 8.578310027 50 2.310739407 -0.729314252 51 -1.400010691 2.310739407 52 3.828271035 -1.400010691 53 -6.382653263 3.828271035 54 0.406924721 -6.382653263 55 2.344999249 0.406924721 56 1.997059039 2.344999249 57 -0.370519052 1.997059039 58 -3.953050125 -0.370519052 59 -2.902285834 -3.953050125 60 -0.267338959 -2.902285834 61 0.296667266 -0.267338959 62 2.516066727 0.296667266 63 -0.449790667 2.516066727 64 -0.826567572 -0.449790667 65 3.995278113 -0.826567572 66 -1.776916691 3.995278113 67 2.794244907 -1.776916691 68 0.137458886 2.794244907 69 0.272046691 0.137458886 70 -2.289860104 0.272046691 71 -0.942023371 -2.289860104 72 1.994768231 -0.942023371 73 7.115187468 1.994768231 74 0.779816931 7.115187468 75 -0.012855067 0.779816931 76 1.582367986 -0.012855067 77 0.375834339 1.582367986 78 1.315187020 0.375834339 79 -0.156252801 1.315187020 80 2.072254769 -0.156252801 81 -2.172930250 2.072254769 82 1.444069329 -2.172930250 83 0.218733130 1.444069329 84 0.169530140 0.218733130 85 0.592400622 0.169530140 86 0.225502084 0.592400622 87 1.769736529 0.225502084 88 0.234352472 1.769736529 89 -2.456933043 0.234352472 90 -0.001900119 -2.456933043 91 -3.100171843 -0.001900119 92 -1.413548061 -3.100171843 93 -0.903727532 -1.413548061 94 -0.672357820 -0.903727532 95 3.849454852 -0.672357820 96 5.804958149 3.849454852 97 0.101259035 5.804958149 98 -2.063564617 0.101259035 99 -2.916878773 -2.063564617 100 -0.816354492 -2.916878773 101 -3.391849055 -0.816354492 102 0.907068163 -3.391849055 103 -1.465785372 0.907068163 104 1.207150589 -1.465785372 105 -3.536024089 1.207150589 106 -4.937042812 -3.536024089 107 -4.789231529 -4.937042812 108 -0.198256222 -4.789231529 109 -1.396064547 -0.198256222 110 -4.112335075 -1.396064547 111 -1.523437135 -4.112335075 112 0.575814207 -1.523437135 113 -0.143696779 0.575814207 114 0.946756976 -0.143696779 115 -0.552718559 0.946756976 116 -3.215301409 -0.552718559 117 -2.953205787 -3.215301409 118 1.140702160 -2.953205787 119 -6.478310417 1.140702160 120 -1.510984431 -6.478310417 121 -3.700420540 -1.510984431 122 -0.509801142 -3.700420540 123 -2.434479456 -0.509801142 124 8.403184492 -2.434479456 125 0.812228848 8.403184492 126 -2.096195060 0.812228848 127 0.427398068 -2.096195060 128 0.377522745 0.427398068 129 0.901794693 0.377522745 130 -2.263074644 0.901794693 131 -2.993000845 -2.263074644 132 0.186816511 -2.993000845 133 -2.340642084 0.186816511 134 -2.165341576 -2.340642084 135 6.739198501 -2.165341576 136 -1.320130624 6.739198501 137 -3.815720148 -1.320130624 138 -1.491189953 -3.815720148 139 -3.675683489 -1.491189953 140 -3.936070136 -3.675683489 141 6.736229571 -3.936070136 142 -2.798400828 6.736229571 143 -0.410928799 -2.798400828 144 0.783513762 -0.410928799 145 1.802699599 0.783513762 146 -1.158642051 1.802699599 147 -2.495401674 -1.158642051 148 -4.050621873 -2.495401674 149 -1.289511675 -4.050621873 150 -1.945332555 -1.289511675 151 2.474072101 -1.945332555 152 5.114628712 2.474072101 153 -0.032496316 5.114628712 154 0.500358450 -0.032496316 155 -1.573795093 0.500358450 156 0.356681013 -1.573795093 157 0.290154214 0.356681013 158 6.466221414 0.290154214 > plot(z,main=paste('Residual Lag plot, lowess, and regression line'), ylab='values of Residuals', xlab='lagged values of Residuals') > lines(lowess(z)) > abline(lm(z)) > grid() > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/7wd9h1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > acf(mysum$resid, lag.max=length(mysum$resid)/2, main='Residual Autocorrelation Function') > grid() > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/8wd9h1290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > pacf(mysum$resid, lag.max=length(mysum$resid)/2, main='Residual Partial Autocorrelation Function') > grid() > dev.off() null device 1 > postscript(file="/var/www/html/rcomp/tmp/975821290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) > opar <- par(mfrow = c(2,2), oma = c(0, 0, 1.1, 0)) > plot(mylm, las = 1, sub='Residual Diagnostics') > par(opar) > dev.off() null device 1 > if (n > n25) { + postscript(file="/var/www/html/rcomp/tmp/1075821290688791.ps",horizontal=F,pagecentre=F,paper="special",width=8.3333333333333,height=5.5555555555556) + plot(kp3:nmkm3,gqarr[,2], main='Goldfeld-Quandt test',ylab='2-sided p-value',xlab='breakpoint') + grid() + dev.off() + } null device 1 > > #Note: the /var/www/html/rcomp/createtable file can be downloaded at http://www.wessa.net/cretab > load(file="/var/www/html/rcomp/createtable") > > a<-table.start() > a<-table.row.start(a) > a<-table.element(a, 'Multiple Linear Regression - Estimated Regression Equation', 1, TRUE) > a<-table.row.end(a) > myeq <- colnames(x)[1] > myeq <- paste(myeq, '[t] = ', sep='') > for (i in 1:k){ + if (mysum$coefficients[i,1] > 0) myeq <- paste(myeq, '+', '') + myeq <- paste(myeq, mysum$coefficients[i,1], sep=' ') + if (rownames(mysum$coefficients)[i] != '(Intercept)') { + myeq <- paste(myeq, rownames(mysum$coefficients)[i], sep='') + if (rownames(mysum$coefficients)[i] != 't') myeq <- paste(myeq, '[t]', sep='') + } + } > myeq <- paste(myeq, ' + e[t]') > a<-table.row.start(a) > a<-table.element(a, myeq) > a<-table.row.end(a) > a<-table.end(a) > table.save(a,file="/var/www/html/rcomp/tmp/11snp81290688791.tab") > a<-table.start() > a<-table.row.start(a) > a<-table.element(a,hyperlink('http://www.xycoon.com/ols1.htm','Multiple Linear Regression - Ordinary Least Squares',''), 6, TRUE) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a,'Variable',header=TRUE) > a<-table.element(a,'Parameter',header=TRUE) > a<-table.element(a,'S.D.',header=TRUE) > a<-table.element(a,'T-STAT
H0: parameter = 0',header=TRUE) > a<-table.element(a,'2-tail p-value',header=TRUE) > a<-table.element(a,'1-tail p-value',header=TRUE) > a<-table.row.end(a) > for (i in 1:k){ + a<-table.row.start(a) + a<-table.element(a,rownames(mysum$coefficients)[i],header=TRUE) + a<-table.element(a,mysum$coefficients[i,1]) + a<-table.element(a, round(mysum$coefficients[i,2],6)) + a<-table.element(a, round(mysum$coefficients[i,3],4)) + a<-table.element(a, round(mysum$coefficients[i,4],6)) + a<-table.element(a, round(mysum$coefficients[i,4]/2,6)) + a<-table.row.end(a) + } > a<-table.end(a) > table.save(a,file="/var/www/html/rcomp/tmp/12vnne1290688791.tab") > a<-table.start() > a<-table.row.start(a) > a<-table.element(a, 'Multiple Linear Regression - Regression Statistics', 2, TRUE) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'Multiple R',1,TRUE) > a<-table.element(a, sqrt(mysum$r.squared)) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'R-squared',1,TRUE) > a<-table.element(a, mysum$r.squared) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'Adjusted R-squared',1,TRUE) > a<-table.element(a, mysum$adj.r.squared) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'F-TEST (value)',1,TRUE) > a<-table.element(a, mysum$fstatistic[1]) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'F-TEST (DF numerator)',1,TRUE) > a<-table.element(a, mysum$fstatistic[2]) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'F-TEST (DF denominator)',1,TRUE) > a<-table.element(a, mysum$fstatistic[3]) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'p-value',1,TRUE) > a<-table.element(a, 1-pf(mysum$fstatistic[1],mysum$fstatistic[2],mysum$fstatistic[3])) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'Multiple Linear Regression - Residual Statistics', 2, TRUE) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'Residual Standard Deviation',1,TRUE) > a<-table.element(a, mysum$sigma) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'Sum Squared Residuals',1,TRUE) > a<-table.element(a, sum(myerror*myerror)) > a<-table.row.end(a) > a<-table.end(a) > table.save(a,file="/var/www/html/rcomp/tmp/13k6271290688791.tab") > a<-table.start() > a<-table.row.start(a) > a<-table.element(a, 'Multiple Linear Regression - Actuals, Interpolation, and Residuals', 4, TRUE) > a<-table.row.end(a) > a<-table.row.start(a) > a<-table.element(a, 'Time or Index', 1, TRUE) > a<-table.element(a, 'Actuals', 1, TRUE) > a<-table.element(a, 'Interpolation
Forecast', 1, TRUE) > a<-table.element(a, 'Residuals
Prediction Error', 1, TRUE) > a<-table.row.end(a) > for (i in 1:n) { + a<-table.row.start(a) + a<-table.element(a,i, 1, TRUE) + a<-table.element(a,x[i]) + a<-table.element(a,x[i]-mysum$resid[i]) + a<-table.element(a,mysum$resid[i]) + a<-table.row.end(a) + } > a<-table.end(a) > table.save(a,file="/var/www/html/rcomp/tmp/14vgka1290688791.tab") > if (n > n25) { + a<-table.start() + a<-table.row.start(a) + a<-table.element(a,'Goldfeld-Quandt test for Heteroskedasticity',4,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'p-values',header=TRUE) + a<-table.element(a,'Alternative Hypothesis',3,header=TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'breakpoint index',header=TRUE) + a<-table.element(a,'greater',header=TRUE) + a<-table.element(a,'2-sided',header=TRUE) + a<-table.element(a,'less',header=TRUE) + a<-table.row.end(a) + for (mypoint in kp3:nmkm3) { + a<-table.row.start(a) + a<-table.element(a,mypoint,header=TRUE) + a<-table.element(a,gqarr[mypoint-kp3+1,1]) + a<-table.element(a,gqarr[mypoint-kp3+1,2]) + a<-table.element(a,gqarr[mypoint-kp3+1,3]) + a<-table.row.end(a) + } + a<-table.end(a) + table.save(a,file="/var/www/html/rcomp/tmp/15yg0g1290688791.tab") + a<-table.start() + a<-table.row.start(a) + a<-table.element(a,'Meta Analysis of Goldfeld-Quandt test for Heteroskedasticity',4,TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'Description',header=TRUE) + a<-table.element(a,'# significant tests',header=TRUE) + a<-table.element(a,'% significant tests',header=TRUE) + a<-table.element(a,'OK/NOK',header=TRUE) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'1% type I error level',header=TRUE) + a<-table.element(a,numsignificant1) + a<-table.element(a,numsignificant1/numgqtests) + if (numsignificant1/numgqtests < 0.01) dum <- 'OK' else dum <- 'NOK' + a<-table.element(a,dum) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'5% type I error level',header=TRUE) + a<-table.element(a,numsignificant5) + a<-table.element(a,numsignificant5/numgqtests) + if (numsignificant5/numgqtests < 0.05) dum <- 'OK' else dum <- 'NOK' + a<-table.element(a,dum) + a<-table.row.end(a) + a<-table.row.start(a) + a<-table.element(a,'10% type I error level',header=TRUE) + a<-table.element(a,numsignificant10) + a<-table.element(a,numsignificant10/numgqtests) + if (numsignificant10/numgqtests < 0.1) dum <- 'OK' else dum <- 'NOK' + a<-table.element(a,dum) + a<-table.row.end(a) + a<-table.end(a) + table.save(a,file="/var/www/html/rcomp/tmp/16uqg71290688791.tab") + } > > try(system("convert tmp/1i3b81290688791.ps tmp/1i3b81290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/2susb1290688791.ps tmp/2susb1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/3susb1290688791.ps tmp/3susb1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/4susb1290688791.ps tmp/4susb1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/534ae1290688791.ps tmp/534ae1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/634ae1290688791.ps tmp/634ae1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/7wd9h1290688791.ps tmp/7wd9h1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/8wd9h1290688791.ps tmp/8wd9h1290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/975821290688791.ps tmp/975821290688791.png",intern=TRUE)) character(0) > try(system("convert tmp/1075821290688791.ps tmp/1075821290688791.png",intern=TRUE)) character(0) > > > proc.time() user system elapsed 4.650 1.761 10.653