我正在使用ggtern以一种三级绘图的形式绘制大型数据集(见下面的示例)。

直到一个特定的数据大小,一切都是完美的,因为我使用的是geom_density_tern()。因为我想要可视化一个更复杂的数据集,加载所有的数据集,用ggg图进行渲染变得不可能了(内存方面的限制)。我想,也许可以通过分别计算kde2d矩阵的结果来解决这个问题。这就是我被困的地方。我想知道在ggtern中是否有可能做到这一点?
在任何情况下,我都添加了数据结构的最小情况,并绘制了当前所使用的数据结构。
require(ggplot2)
require(ggtern)
set.seed(1)
mydata <- data.frame(
x = runif(100, min = 0.25, max = 0.5),
y = runif(100, min = 0.1, max = 0.4),
z = runif(100, min = 0.5, max = 0.7))
plot <- ggtern() +
theme_bw() +
theme_hidetitles() +
geom_density_tern(data = mydata,
aes(x = x, y = y, z = z, alpha = ..level.. ),
size = 0.1, linetype = "solid", fill = "blue")+
geom_point(data = mydata,
aes(x = x, y = y, z = z), alpha = 0.8, size = 1)
plot这些额外的线在三元协调系统中再现密度图:
library(MASS)
dataTern = transform_tern_to_cart(mydata$x,mydata$y,mydata$z)
dataTernDensity <- kde2d(x=dataTern$x, y=dataTern$y, lims = c(range(0,1), range(0,1)), n = 400)
image(dataTernDensity$x, dataTernDensity$y, dataTernDensity$z)
points(dataTern$x, dataTern$y, pch = 20, cex = 0.1)
segments(x0 = 0, y0 = 0, x1 = 0.5, y1 = 1, col= "white")
segments(x0 = 0, y0 = 0, x1 = 1, y1 = 0, col= "white")
segments(x0 = 0.5, y0 = 1, x1 = 1, y1 = 0, col= "white")并获得这张图:

提前感谢您的帮助!
发布于 2016-01-18 06:21:59
我们可以使用通常在Stat幕后使用的代码来解决这个问题。刚刚发布了ggtern 2.0.1,几天前在CRAN上发布,完全重写了与ggplot2 2.0.0兼容的包,我熟悉一种可能适合您需要的方法。顺便提一句,对于您的兴趣,可以找到ggtern 2.0.X中新功能的摘要( 这里 )。
下面请为您的问题找到一个解决方案和工作代码,这是一个基于等距对数比空间计算的密度估计。

#Required Libraries
library(ggtern)
library(ggplot2)
library(compositions)
library(MASS)
library(scales)
set.seed(1) #For Reproduceability
mydata <- data.frame(
x = runif(100, min = 0.25, max = 0.5),
y = runif(100, min = 0.1, max = 0.4),
z = runif(100, min = 0.5, max = 0.7))
#VARIABLES
nlevels = 7
npoints = 200
expand = 0.5
#Prepare the data, put on isometric logratio basis
df = data.frame(acomp(mydata)); colnames(df) = colnames(mydata)
data = data.frame(ilr(df)); colnames(data) = c('x','y')
#Prepare the Density Estimate Data
h.est = c(MASS::bandwidth.nrd(data$x), MASS::bandwidth.nrd(data$y))
lims = c(expand_range(range(data$x),expand),expand_range(range(data$y),expand))
dens = MASS::kde2d(data$x,data$y,h=h.est,n=npoints,lims=lims)
#-------------------------------------------------------------
#<<<<< Presumably OP has data at this point,
# and so the following should achieve solution
#-------------------------------------------------------------
#Generate the contours via ggplot2's non-exported function
lines = ggplot2:::contour_lines(data.frame(expand.grid(x = dens$x, y = dens$y),
z=as.vector(dens$z),group=1),
breaks=pretty(dens$z,n=nlevels))
#Transform back to ternary space
lines[,names(mydata)] = data.frame(ilrInv(lines[,names(data)]))
#Render the plot
ggtern(data=lines,aes(x,y,z)) +
theme_dark() +
theme_legend_position('topleft') +
geom_polygon(aes(group=group,fill=level),colour='grey50') +
scale_fill_gradient(low='green',high='red') +
labs(fill = "Density",
title = "Example Manual Contours from Density Estimate Data")https://stackoverflow.com/questions/34810857
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