I need to manually set colors for each group in a barplot. I currently have the fill = time and this is currently determining the colors. We have 5 brands and the values for 2 separate months per brand. I need to group by brand but also need a way to display which bar represents which month(time), I can currently do this however I want to color each bar group. eg. brand1 bars = red, brand2 bars = blue ect whilst still having fill = time
Here is my code:
colors <- c("#98999B", "#F4C400", "#CB003D", "#6BABE5", "#E65400", "#542C82")
time <- c("February 2017","March 2017","February 2017","March 2017","February 2017","March 2017","February 2017","March 2017","February 2017","March 2017")
value <- as.numeric(c("3.08","3.64","1.61","1.81","-1.02","-1.09","-5.23","-5.08","-1.51","-1.43"))
brand <- c("brand1","brand1","brand2","brand2","brand3","brand3","brand4","brand4","brand5","brand5")
Monthly_BMS_df <- as.data.table(cbind(time,value,brand))
bar <- ggplot(Monthly_BMS_df, aes(brand, value, fill = time)) +
geom_bar(stat="identity", position = "dodge") +
theme(legend.position='none') + scale_fill_manual(values=colors)
ggplotly(bar, width=1000,height=350)
One option would be to create an hcl
color palette with a different hue for each brand
and a sequential luminosity that is the same for each month across different brands. For example:
library(ggplot2)
library(data.table)
library(plotly)
Monthly_BMS_df <- data.table(time, value, brand)
Create color palette:
nb = length(unique(Monthly_BMS_df$brand))
nm = length(unique(Monthly_BMS_df$time))
colors = apply(expand.grid(seq(70,40,length=nm), 100, seq(15,375,length=nb+1)[1:nb]), 1,
function(x) hcl(x[3],x[2],x[1]))
In the code below, we use fill=interaction(time, brand)
to map a different color to each combination of brand and month. Then scale_fill_manual
assigns the color palette we created above. The luminosity decreases for each month so that March is darker than February.
bar <- ggplot(Monthly_BMS_df, aes(brand, value, fill=interaction(time, brand))) +
geom_hline(yintercept=0, colour="grey60") +
geom_bar(stat="identity", position = "dodge", show.legend=FALSE) +
scale_fill_manual(values=colors) +
theme_classic()
ggplotly(bar, width=1000, height=350)
As an alternative to the plot above, a line plot might make it easier to compare the trends in each brand.
library(dplyr)
ggplot(Monthly_BMS_df, aes(time, value, group=brand, colour=brand)) +
geom_hline(yintercept=0, colour="grey60") +
geom_text(data=Monthly_BMS_df %>% filter(time==min(time)),
aes(label=brand), position=position_nudge(-0.25)) +
geom_line(linetype="12", alpha=0.5, size=0.7) +
geom_text(aes(label=value)) +
guides(colour=FALSE) +
theme_classic()
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