ggplot2都有哪些使用不多但是却异常强大的图层函数

ggplot2都有哪些使用不多但是却异常强大的图层函数

要说ggplot2中那些使用不多但是却功能强大的图层函数,我首先想到的就是geom_rect、geom_linerange、geom_segment、geom_ploygon。
这四个函数分别定义了ggplot2中的矩形图、垂直线图(线范围图)、线段图、几何多边形图。
这四种图表类型独立使用的机会很少,一般都是作为图表的辅助信息,但是如果能恰到好处的使用,你会挖掘出很多新意。
geom_rect()
geom_rect()一般用于制作自定义矩形,仅需在美学映射中指定每一个矩形在坐标系统中的左边界、右边界、下边界、上边界即可。
分辨对应xmax,xmax,ymin,ymax等四个美学映射参数,当然单个矩形仍然可以执行分组颜色映射操作。
具体示意如下:

library("showtext")
library("ggplot2")
library("magrittr")
library("reshape2")
library("ggthemes")
library('dplyr')

mydata <- data.frame(
  Lebal  = c("Point1","Point2","Point3","Point4","Point5"),
  xstart = c(5.5,15.7,19.5,37.2,36.9),
  xend   = c(9.7,28.1,24.6,44.6,47.1), 
  ystart = c(9.6,23.1,2.3,33.2,9.2),
  yend   = c(16.1,36.2,11.7,38.5,15.3),
  size   = c(12,48,30,11.5,28),
  class  = c("A","A","A","C","C")
)
ggplot(mydata)+
  geom_rect(aes(xmin = xstart,xmax = xend , ymin = ystart , ymax = yend , fill = class)) +
  scale_fill_wsj()
按照x轴进行圆周化:
ggplot(mydata)+
  geom_rect(aes(xmin = xstart,xmax = xend , ymin = ystart , ymax = yend , fill = class)) +
  scale_fill_wsj() +
  ylim(-10,40) +
  scale_x_continuous(expand = c(0,0)) +
  coord_polar(theta = 'x')
#按照y轴进行圆周化
ggplot(mydata)+
  geom_rect(aes(xmin = xstart,xmax = xend , ymin = ystart , ymax = yend , fill = class)) +
  scale_fill_wsj() +
  scale_y_continuous(expand = c(0,0)) +
  coord_polar(theta = 'y')
分面操作:
ggplot(mydata)+
 geom_rect(aes(xmin = xstart,xmax = xend , ymin = ystart , ymax = yend , fill = class)) +
 scale_fill_wsj() +
 facet_grid(.~class) +
 scale_y_continuous(expand = c(0,0))





想想这几个图如何使用上述图层实现?




geom_segment()
geom_segment通常用于制作直线段图,路径图、放射线图等,思路也很简单,只需要指定每一条线段的起点坐标、终点坐标即可。
即分别制定x,y,xend,yend。
具体示意如下:

mydata <- data.frame(
  Lebal  = c("Segment1","Segment2","Segment3","Segment4","Segment5"),
  xstart = c(3.5,4.4,8.3,13.2,20),
  ystart = c(5,2.7,4.6,2.2,4.7),
  xend   = c(7.5,8.7,21,25,23), 
  yend   = c(7.9,4.2,7.2,3.8,4.4),
  class  = c("A","A","A","C","C")
)
ggplot(mydata) +
  geom_segment(
    aes(
      x = xstart, 
      y = ystart, 
      xend = xend,
      yend = yend, 
      colour = class
      ),
    arrow = arrow(length = unit(0.5,"cm")),
    size = 1.5
  ) +
  scale_colour_wsj()
#按照X轴圆周化

ggplot(mydata) +
  geom_segment(
    aes(
      x = xstart , 
      y = ystart , 
      xend = xend ,
      yend = yend  , 
      colour = class
    ),
    arrow = arrow(length = unit(0.5,"cm")),
    size = 1.5
  ) +
  scale_colour_wsj() +
  scale_y_continuous(expand = c(0,0)) +
  coord_polar(theta = 'x')
#按照y轴圆周化

ggplot(mydata) +
  geom_segment(
    aes(
      x = xstart , 
      y = ystart , 
      xend = xend ,
      yend = yend  , 
      colour = class
    ),
    arrow = arrow(length = unit(0.5,"cm")),
    size = 1.5
  ) +
  scale_colour_wsj() +
  scale_y_continuous(expand = c(0,0)) +
  coord_polar(theta = 'y')
#分面操作:

ggplot(mydata) +
  geom_segment(
    aes(
      x = xstart , 
      y = ystart , 
      xend = xend ,
      yend = yend  , 
      colour = class
    ),
    arrow = arrow(length = unit(0.5,"cm")),
    size = 1.5
  ) +
  facet_grid(.~class) +
  scale_colour_wsj() +
  scale_y_continuous(expand = c(0,0))






感觉没啥卵用?想想这几个图怎么实现?




geom_linerange()
这个图层函数乍看起来真的没啥用,貌似很多辅助图形都可以替代,比如那些误差线(geom_errorbar)、垂直线(geom_vline)、水平线(geom_hline)等。
但是其实不然,这个grom_linerange函数可以实现批量美学映射,包含线条颜色自定义、粗细自定义、线型自定义以及线条上下边界的自定义,通过coord_flip函数还可以将垂直线的所有应用转化为水平线应用,非常方便。
只需要指定x值,y轴的上下边界即可。
即x,ymin,ymax。

mydata <- data.frame(
  Lebal  = c("linerange1","linerange2","linerange3","linerange4","linerange5"),
  xstart = c(3.5,7,12,16,20),
  ymin   = c(2.5,6.5,3,4.5,3.8),
  ymax   = c(7.5,9.5,9,13.5,4.2),
  class  = c("A","A","A","C","C")
)
ggplot(mydata) +
  geom_linerange(aes(x = xstart, ymin = ymin , ymax = ymax , colour = class) , size = 1.5) +
  scale_colour_wsj()
# 横纵轴互换:

ggplot(mydata) +
  geom_linerange(aes(x = xstart, ymin = ymin , ymax = ymax , colour = class) , size = 1.5) +
  coord_flip() +
  scale_colour_wsj()
#按x轴圆周化:

ggplot(mydata) +
  geom_linerange(aes(x = xstart, ymin = ymin , ymax = ymax , colour = class) , size = 1.5) +
  scale_colour_wsj() +
  scale_x_continuous(limits = c(0,25),expand = c(0,0)) +
  coord_polar(theta = 'x')
#按y轴圆周化:

ggplot(mydata) +
  geom_linerange(aes(x = xstart, ymin = ymin , ymax = ymax , colour = class) , size = 1.5) +
  scale_colour_wsj() +
  scale_y_continuous(expand = c(0,0)) +
  coord_polar(theta = 'y')
#分面:

ggplot(mydata) +
  geom_linerange(aes(x = xstart, ymin = ymin , ymax = ymax , colour = class) , size = 1.5) +
  scale_colour_wsj() +
  facet_grid(.~class) +
  scale_x_continuous(limits = c(0,25),expand = c(0,0))
ggplot(mydata) +
  geom_linerange(aes(x = xstart, ymin = ymin , ymax = ymax , colour = class) , size = 1.5) +
  coord_flip() +
  scale_colour_wsj() +
  facet_grid(.~class) +
  scale_x_continuous(limits = c(0,25),expand = c(0,0))








这个图层函数结合地图数据,可以想象的空间也很大哒!



geom_polygon()
最后一个可以说是很厉害了,几乎是ggplot2里面最为复杂、强大、适应性广的图层函数了,因为它使用极限思维,什么东西都是用尽可能多的点来拟合。
想象一下我们常见的大部分图表都是由点线面集合元素来构成,所以理论上说,只要你能从这个图形对象中发现规律,从而得到尽可能多的图形边界点,那么使用geom_polygon对象来实现目标图形那都是分分钟的事儿。
它的思路是我们对象看成是若干个闭合多边形,每一个闭合多边形通过一组有序点坐标进行首尾连接,之后再按照事物真实的隶属关系对group(闭合多边形)进行二次分组,按照有意义的组别进行颜色映射。
具体示意如下:



mydata <- data.frame(
  long = c(15.4,17.2,19.7,15.9,7.4,8.9,8.5,10.4,11.3,9.7,4.8,3.7,22.4,25.6,27.8,25.1,16.7,15.9,29.9,38.7,43.2,40.2,35.6,29.4),
  lat  = c(38.1,36.2,33.1,24.6,29.0,33.6,12.1,11.7,8.9,6.1,5.7,9.1,8.4,7.6,5.7,3.9,4.3,5.9,32.6,31.8,27.6,22.3,24.5,29.6),
  group= c(1,1,1,1,1,1,2,2,2,2,2,2,3,3,3,3,3,3,4,4,4,4,4,4),
  order =c(1,2,3,4,5,6,1,2,3,4,5,6,1,2,3,4,5,6,1,2,3,4,5,6),
  class = rep(c("A","c"),each = 12)
)
#

ggplot(mydata) +
  geom_polygon(aes(x = long , y = lat , group  = group , fill = class),colour = "white") +
  scale_fill_wsj()
#按照X轴圆周化:

ggplot(mydata) +
  geom_polygon(aes(x = long , y = lat , group  = group , fill = class),colour = "white") +
  coord_polar(theta = 'x') +
  scale_x_continuous(expand = c(0,0)) +
  scale_fill_wsj()
#按照y轴圆周化:

ggplot(mydata) +
  geom_polygon(aes(x = long , y = lat , group  = group , fill = class),colour = "white") +
  coord_polar(theta = 'y') +
  scale_y_continuous(expand = c(0,0)) +
  scale_fill_wsj()
#分面:

ggplot(mydata) +
  geom_polygon(aes(x = long , y = lat , group  = group , fill = class),colour = "white") +
facet_grid(.~class) +
  scale_fill_wsj()






那么关于这个图层函数,到底有啥用呢,用处大了去了,不信请看:



这个几个图形应该算是平时使用几率不会很高的图形了,但是用的恰到好处的话,能够做出非常惊艳的效果,赶快试一试吧~
《R语言商务图表与数据可视化》的课程已经更新到空间地理信息数据可视化的章节了,感兴趣的童鞋,不了解一下嘛~
edu.hellobi.com/course/
阅读原文

编辑于 2018-05-20 15:38