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I have a plot with three groups. I have used facets to get the graph as I want, and I managed to unite the colour and shape into a single legend (as shown below). The problem, however, is that the legend contains all the six variable names, whereas having only two suffice.

Here is my current output: enter image description here

Is it possible to obtain a legend with only two keys: "Divergence" and "% of Women" (instead of the current 6 keys) ?

Here is the code used to produce the plot:

years <- c('97','98','99','00','01','02','03','04','05','06','07','08','09','10','11')
years <- factor(years, levels=years, ordered=T)             
phy_ratio <- c(0.124516129032258, 0.11545988258317,  0.115190784737221, 0.120919881305638, 0.132198952879581, 0.147636363636364, 0.171033478893741, 0.155994550408719, 0.150121065375303, 0.182989690721649, 0.19466515323496,  0.194550408719346, 0.203811540497618, 0.214399152991001, 0.195157384987893)
phy_kldiv <- c(0.040955264723678, 0.001463273151143, 0.011790601776013, 0.00575319295143,  0.003434619043043, 0.001405575036774, 0.012395353183334, 0.002864433864471, 0.006622155735437, 0.074859543690491, 0.013087320475828, 0.023585193439178, 0.08866626868359,  0.07879809266254,  0.04536730602564)
mat_ratio <- c(0.236086175942549,  0.253846153846154, 0.256481481481481, 0.246901811248808, 0.273267326732673, 0.290076335877863, 0.265861027190332, 0.283457249070632, 0.27098919368246,  0.296156744536549, 0.289834174477289, 0.309506790564689, 0.311612903225806, 0.293710691823899, 0.286604361370716)
mat_kldiv <- c(0.024935971694693,  0.012778283551598, 0.019350970177576, 0.00988763992456,  0.008284622131022, 0.014700010603506, 0.015235482499119, 0.023914776035294, 0.018878559121565, 0.073688344207842, 0.042784809873074, 0.052110805729914, 0.072367460713338, 0.017494663842138, 0.019605349179071)
psc_ratio <- c(0, 0, 0, 0.370182555780933, 0.325227963525836, 0.416528925619835, 0.379727685325265, 0.333901192504259, 0.396440129449838, 0.357142857142857, 0.412265758091993, 0.415605095541401, 0, 0, 0)
psc_kldiv <- c(0, 0, 0, 0.156958669813655, 0.02319115435268,  0.019560312744745, 0.142939013816555, 0.050687092785045, 0.030903744617805, 0.021234599637716, 0.049901381314152, 0.176930275568253, 0, 0, 0)
df <- data.frame("Years"=years,
                 '% of Women (Physics)'=phy_ratio,
                 'Divergence (Physics)'=phy_kldiv,
                 '% of Women (Maths)'=mat_ratio,
                 'Divergence (Maths)'=mat_kldiv,
                 '% of Women (Polit. Sci.)'=psc_ratio,
                 'Divergence (Polit. Sci.)'=psc_kldiv,
                 check.names=F)
df.m <- melt(df, id="Years")
df.m <- transform(df.m, facet=ifelse(variable %in% c('% of Women (Physics)',
                                                      'Divergence (Physics)'), 'phy',
                                 ifelse(variable %in% c('% of Women (Maths)',
                                                             'Divergence (Maths)'),'mat',
                                        ifelse(variable %in% c('% of Women (Polit. Sci.)', 'Divergence (Polit. Sci.)'), 'psc', 'mat'))))
g <- ggplot(df.m, aes(group=1, x=Years, y=value, colour=variable, shape=variable))
g <- g + scale_colour_manual(name='',
                             labels=c('Phy: % of Women', 'Phy: Divergence',
                                      'Maths: % of Women', 'Maths: Divergence',
                                      'Polit. Sci: % of Women', 'Polit. Sci: Divergence'),
                             values=c('chartreuse4', 'deepskyblue3', 'chartreuse4', 'deepskyblue3', 'chartreuse4', 'deepskyblue3'))
g <- g + scale_shape_manual(name='',
                            labels=c('Phy: % of Women', 'Phy: Divergence',
                                     'Maths: % of Women', 'Maths: Divergence',
                                     'Polit. Sci: % of Women', 'Polit. Sci: Divergence'),
                            values=c(19, 17, 19, 17, 19, 17))
g <- g + geom_point(aes(colour=variable), size=3)
g <- g + facet_grid(.~facet)
g <- g + coord_cartesian(ylim=(c(0.0,0.45)))
g <- g + scale_x_discrete("", expand=c(0.01, 0.01))
g <- g + scale_y_continuous(name="")
g <- g + guides(colour=guide_legend(title='', ncol=2, keywidth=unit(2,'lines')))
g <- g + theme(legend.position=c(0.33,0.72),
               legend.justification=c(0,0),
               legend.key=element_blank(),
               legend.background=element_rect(colour='black', fill='transparent'),
               legend.text=element_text(size=12),
               panel.grid.minor = element_blank(),
               panel.margin=unit(1, 'lines'),
               axis.text=element_text(size=12,color="black"),
               axis.title=element_text(size=16),
               strip.text.y = element_text(size = 14))
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Yes, just map the color and shape to a variable that only contains those two values. Can you post your code? –  Peyton Oct 11 '13 at 19:35
    
Without seeing exactly how you made this, it is hard to help. However, I'm guessing that you have a single column which contains information about department (Phy, Maths, Polit. Sci) and the variable (% of Women, Divergence). You must have split the first part out to be able to facet by it. Now you just need to split the variable part out and use that as the mapping for shape/color. A more specific answer can be given with a reproducible example. –  Brian Diggs Oct 11 '13 at 19:37
    
As per both your comments, I have included the code used to produce this graph. –  Chthonic Project Oct 11 '13 at 20:45
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3 Answers

up vote 1 down vote accepted

Picking up after your definition of df

Make libraries used explicit:

library("ggplot2")
library("reshape2")
library("grid")

A different way to make df.m which also includes pulling out the two different measures ("% of Women" and "Divergence") into one column and the department ("Maths", "Physics", "Polit. Sci.") into another column.

df.m <- melt(df, id="Years")
df.m$measure <- gsub("(.*) \\(.*", "\\1", df.m$variable)
df.m$facet <- gsub(".*\\((.*)\\)", "\\1", df.m$variable)

Your plotting code, put into a single statement. colour and shape are now mapped to the measure, not variable. The manual shape and colour scales also only have two entries. I moved the legend to the top just because it was no longer the same size/shape and so didn't line up nicely as it had before; you can put it wherever you want.

ggplot(df.m, aes(group=1, x=Years, y=value, colour=measure, shape=measure)) +
    scale_colour_manual(name='', values=c('chartreuse4', 'deepskyblue3')) +
    scale_shape_manual(name='', values=c(19, 17)) +
    geom_point(size=3) +
    facet_grid(.~facet) +
    coord_cartesian(ylim=(c(0.0,0.45))) +
    scale_x_discrete("", expand=c(0.01, 0.01)) +
    scale_y_continuous(name="") +
    guides(colour=guide_legend(title='', ncol=2, keywidth=unit(2,'lines'))) +
    theme(legend.position="top",
          legend.key=element_blank(),
          legend.background=element_rect(colour='black', fill='transparent'),
          legend.text=element_text(size=12),
          panel.grid.minor = element_blank(),
          panel.margin=unit(1, 'lines'),
          axis.text=element_text(size=12,color="black"),
          axis.title=element_text(size=16),
          strip.text.y = element_text(size = 14))

enter image description here


To answer your exact question about only having certain values show up in the legend, you can use the breaks argument to the scale. Use these scale_colour_manual and scale_shape_manual lines instead:

g <- g + scale_colour_manual(name='',
                             breaks=c('% of Women (Physics)', 'Divergence (Physics)'),
                             labels=c('% of Women', 'Divergence'),
                             values=c('chartreuse4', 'deepskyblue3','chartreuse4', 
                                      'deepskyblue3', 'chartreuse4', 'deepskyblue3'))
g <- g + scale_shape_manual(name='',
                            breaks=c('% of Women (Physics)', 'Divergence (Physics)'),
                            labels=c('% of Women', 'Divergence'),
                            values=c(19, 17, 19, 17, 19, 17))

However, making your data accurately reflect the things you are trying to map to aesthetics is better in the long run.

share|improve this answer
    
Thank you for the beautiful explanation of your answer. The code is shorter, simpler, and does what I want it to do. –  Chthonic Project Oct 12 '13 at 12:44
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I would do this by simply making a grouping variable for "% of Women" and "Divergence". Your case is especially easy because those two terms are the exact same length. You can use substr to split out the terms you want from the whole string. Hopefully someone else will chime in with how to do this within ggplot2 itself.

Here I just make a new variable representing the two groups you want to color by.

df.m$groups = substr(df.m$variable, 1, 10)

Then just use this variable as your color and shape aesthetics instead of variable.

ggplot(df.m, aes(x=Years, y=value, colour=groups, shape=groups)) +
    geom_point(size=3) + 
    facet_grid(.~facet) +
    scale_colour_manual(values = c("chartreuse4", "deepskyblue3"))
share|improve this answer
    
+1 for the answer. I am going with Brian's answer, however. For a R-novice like me, the explanations really help a lot. –  Chthonic Project Oct 12 '13 at 12:50
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You should be able to selectively remove from the legend by using a call of scale_* with argument guide='none' or by appending e.g. + guides(color=FALSE)

http://docs.ggplot2.org/0.9.2.1/guides.html

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