1) If you do not need it do not plot it. However, also consider how others will 
use your content. Might it be a trivial piece of information for you, but a 
critical piece of information for someone trying to use your content. A meta 
analysis, or just wanting to try to relate your outcomes to the results from 
their experiment.

2) There would be no need of melt() if the data is already in the proper 
format. The long format is not always the right format, though more often than 
not it is the right format (at least in my field of study).

3) google search something like "x-axis line weight ggplot" or something like 
that. There are excellent online resources to answer focused questions like 
that.

4) This might help: 
https://www.datanovia.com/en/blog/ggplot-colors-best-tricks-you-will-love/



Tim

-----Original Message-----
From: R-help <r-help-boun...@r-project.org> On Behalf Of Bruce Miller
Sent: Sunday, April 23, 2023 1:19 PM
To: r-help@r-project.org
Subject: [R] Circular plot - polar plot code questions

[External Email]

Hi all...
I assume there are a host of GGplot2 users out there.
I have circular plot - polar plot code questions I needed to create circular - 
polar plots of reproductive status for bats.  I found a great sample of how to 
do this here:
https://stackoverflow.com/questions/41081376/how-to-create-a-circular-plot-showing-monthly-presence-or-absence-using-radial-p

I modified the sample code to meet the 3 data elements I am using the "raw 
data" table below with T=testes enlarge, P= Pregnant and L= Lactating.

library(data.table)


m <- fread("id    T    month    P    L
1    0    1    0    0
2    0    2    0    0
3    0    3    0    0
4    1    4    0    0
5    1    5    1    0
6    1    6    1    1
7    0    7    1    1
8    0    8    1    1
9    0    9    0    1
10    0    10    0    0
11    0    11    0    0
12    0    12    0    0")
# reshape from wide to long (as preferred by ggplot) ml <- melt(m, measure.vars 
= c("T", "P", "L"))

# create factors to ensure desired order ml[, variable := factor(variable, 
levels = c("T", "P","L"))]

ml[, fct_month := factor(month, levels = 1:12, labels = month.abb)]
library(ggplot2)
ggplot(ml[value != 0], aes(x = fct_month, y = variable,
                            group = variable, colour = variable)) +
   geom_line(size = 3) +
   scale_y_discrete(expand = c(0, 1), breaks = NULL) +
   xlim(month.abb) +
   coord_polar() +
   theme_bw() + xlab(NULL) + ylab(NULL)

This is creating a plot more or less as needed.  4 questions:
1 Do I even need the ID field? Seems not useful.
2 I assume the melt step can be avoided if my data is "Tidy" and long format at 
the start, correct?
3  How can I increase the weight of the month lines and labels
4  Where can I add color choices for the 3 variables in the plot? Simply adding 
an HTML color number to the "colour=variable" then plots the data and labeling 
one value as that color.

Tnx all. The list is always educational on a daily basis.
Cheers,
Bat Dude
        [[alternative HTML version deleted]]

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