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Data X:
1.521598 1.622162 1.744413 1.850535 1.697246 1.593564 1.505938 1.339532 1.203189 1.220117 1.707997 1.784983 1.786854 1.772442 1.358429 0.8545514 1.622758 1.866644 1.739241 1.914332 1.852447 1.157717 1.605354 1.76628 1.418148 1.353222 0.7704405 1.627441 1.736596 1.718579 1.096706 1.457167 1.686213 1.95055 1.703737 0.7482063 1.6484 1.213883 1.625203 1.011891 1.495327 1.637084 1.866793 1.691367 1.856243 1.222599 1.784113 1.76998 1.534918 1.782057 1.881359 1.79611 1.164624 0.9157829 0.7037075 1.782351 1.633034 0.9700896 1.606848 1.487108 1.220753 1.746966 0.7861121 1.037823 1.783042 1.104472 1.623422 1.971194 0.7223516 1.946255 1.716746 0.6179317 1.490858 1.742698 1.608604 1.833054 1.748405 1.893285 1.700534 1.145806 1.807314 1.941738 1.423599 1.671896 1.844158 1.173395 1.668926 1.110918 1.871859 0.9984525 1.048407 1.104416 1.477023 1.459065 1.552191 1.748306 1.735049 1.209987 0.8253959 1.741985 1.382481 0.9796857 1.532361 1.486438 1.619767 1.855212 1.881612 1.771107 1.014327 1.584212 1.77018 1.395139 1.718583 1.610741 1.766157 1.667247 1.127857 1.10331 1.411741 1.652578 1.657025 1.889318 0.8562462 1.937003 1.580067 1.848347 1.499906 1.784542 1.621787 1.780654 1.769394 1.718617 1.714682 1.677118 1.608161 1.835131 1.074947 1.893126 1.38857 1.787517 1.667973 1.72456 1.602434 0.7154602 1.268789 1.756691 1.938457 1.358961 1.573932 1.59152 1.325456 1.56463 1.592178 1.270401 1.95774 1.641014 0.9455173 1.25301 0.9360109 1.785686 1.509805 1.866432 1.629265 1.058759 1.271211 1.915511 1.539726 1.676814 1.547488 1.040037 1.748992 1.902829 1.628323 1.539713 1.419637 1.920897 1.89316 1.197819 1.682296 1.809455 1.057552 1.065234 0.8572553 1.753477 1.380044 1.422376 1.682185 1.686669 0.9225236 1.868244 1.474217 1.544458 1.828305 1.86306 1.527768 1.173433 1.071372 1.619403 1.626336 1.609178 1.307004 1.574356 0.6313693 1.60377 1.927389 1.555674 1.600745 1.216697 1.963955 1.93328 1.846866 1.68833 1.289721 1.8529 1.704458
Data Y:
1.5325 1.474016 1.806558 1.60849 1.903864 1.54747 1.506022 1.340609 1.370918 1.410063 1.678419 1.668292 1.878699 1.646835 1.538075 0.8614314 1.720627 1.838342 1.787953 1.91198 1.854368 1.083778 1.671429 1.702764 1.397672 1.25439 0.8245798 1.5646 1.784617 1.79871 1.220057 1.646651 1.767568 1.886528 1.714416 0.862009 1.261524 1.302555 1.665268 0.9106115 1.691406 1.665881 1.807487 1.758913 1.855976 1.399507 1.970563 1.804523 1.614523 1.81372 1.810098 1.803853 1.165388 0.903679 0.6981474 1.759175 1.689424 1.052268 1.759178 1.630377 1.315366 1.966697 0.7398105 1.011563 1.815251 1.083546 1.571959 1.971432 0.7520286 1.926288 1.785917 0.6662585 1.361226 1.715343 1.712537 1.839413 1.874816 1.976713 1.834752 1.270932 1.690587 1.964806 1.609819 1.251996 1.797496 1.17453 1.659692 1.127015 1.890291 0.9183308 1.176053 1.052609 1.687013 1.397863 1.678569 1.798457 1.776464 1.216976 0.7820162 1.692198 1.525426 0.9317524 1.603169 1.526758 1.492235 1.77945 1.943338 1.745786 0.9513769 1.622238 1.64703 1.365521 1.716021 1.754472 1.698469 1.59158 1.053097 1.004202 1.492258 1.528925 1.771584 1.899669 0.9548739 1.793164 1.517629 1.818159 1.342041 1.671217 1.540599 1.753491 1.810686 1.772648 1.85211 1.703175 1.476497 1.901576 0.9552746 1.949522 1.76554 1.743897 1.763084 1.720809 1.949149 0.7202944 1.404374 1.728422 1.710923 1.553344 1.470688 1.694341 1.383932 1.563116 1.59693 1.277783 1.849455 1.684787 0.8296555 1.725174 0.9363497 1.774923 1.775284 1.880142 1.722788 1.025003 1.33069 1.82717 1.636984 1.759737 1.607646 1.096169 1.68219 1.92603 1.754004 1.539233 1.555092 1.937775 1.695768 1.121378 1.631718 1.776124 1.011796 0.9844558 0.8527214 1.778697 1.765062 1.492108 1.862785 1.536131 0.9290305 1.818162 1.656497 1.819542 1.787575 1.855956 1.668079 1.229765 1.016027 1.721543 1.655528 1.666065 1.424051 1.677761 0.5858518 1.720881 1.73349 1.740437 1.640353 1.266493 1.950998 1.631781 1.582577 1.687095 1.306313 1.833576 1.830455
Sample Range:
(leave blank to include all observations)
From:
To:
xgridsize
ygridsize
xbandwidth
(zero to use default)
ybandwidth
(zero to use default)
correlation
(zero to use actual correlation)
display contours
(Y/N)
Y
Y
N
display data points
(Y/N)
Y
Y
N
colors
terrain.colors
terrain.colors
rainbow
heat.colors
topo.colors
cm.colors
Chart options
Title:
Label y-axis:
Label x-axis:
R Code
par8 <- 'terrain.colors' par7 <- 'Y' par6 <- 'Y' par5 <- '0' par4 <- '0' par3 <- '0' par2 <- '50' par1 <- '50' par1 <- as(par1,'numeric') par2 <- as(par2,'numeric') par3 <- as(par3,'numeric') par4 <- as(par4,'numeric') par5 <- as(par5,'numeric') library('GenKern') x <- x[!is.na(y)] y <- y[!is.na(y)] y <- y[!is.na(x)] x <- x[!is.na(x)] if (par3==0) par3 <- dpik(x) if (par4==0) par4 <- dpik(y) if (par5==0) par5 <- cor(x,y) if (par1 > 500) par1 <- 500 if (par2 > 500) par2 <- 500 if (par8 == 'terrain.colors') mycol <- terrain.colors(100) if (par8 == 'rainbow') mycol <- rainbow(100) if (par8 == 'heat.colors') mycol <- heat.colors(100) if (par8 == 'topo.colors') mycol <- topo.colors(100) if (par8 == 'cm.colors') mycol <- cm.colors(100) bitmap(file='bidensity.png') op <- KernSur(x,y, xgridsize=par1, ygridsize=par2, correlation=par5, xbandwidth=par3, ybandwidth=par4) image(op$xords, op$yords, op$zden, col=mycol, axes=TRUE,main=main,xlab=xlab,ylab=ylab) if (par6=='Y') contour(op$xords, op$yords, op$zden, add=TRUE) if (par7=='Y') points(x,y) (r<-lm(y ~ x)) abline(r) box() dev.off() load(file='createtable') a<-table.start() a<-table.row.start(a) a<-table.element(a,'Bandwidth',2,TRUE) a<-table.row.end(a) a<-table.row.start(a) a<-table.element(a,'x axis',header=TRUE) a<-table.element(a,par3) a<-table.row.end(a) a<-table.row.start(a) a<-table.element(a,'y axis',header=TRUE) a<-table.element(a,par4) a<-table.row.end(a) a<-table.row.start(a) a<-table.element(a,'Correlation',2,TRUE) a<-table.row.end(a) a<-table.row.start(a) a<-table.element(a,'correlation used in KDE',header=TRUE) a<-table.element(a,par5) a<-table.row.end(a) a<-table.row.start(a) a<-table.element(a,'correlation(x,y)',header=TRUE) a<-table.element(a,cor(x,y)) a<-table.row.end(a) a<-table.end(a) table.save(a,file='mytable.tab')
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Raw Input
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Raw Output
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Computing time
0 seconds
R Server
Big Analytics Cloud Computing Center
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