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I'm using Paul Bleicher's Calendar Heatmap to visualize some events over time and I'm interested to add black-and-white fill patterns instead of (or on top of) the color coding to increase the readability of the Calendar Heatmap when printed in black and white.

Here is an example of the Calendar Heatmap look in color,

Calendar Heatmap color

and here is how it look in black and white,

Calendar Heatmap black and white

it gets very difficult to distinguish between the individual levels in black and white.

Is there an easy way to get R to add some kind of patten to the 6 levels instead of color?

Code to reproduce the Calendar Heatmap in color.

source("http://blog.revolution-computing.com/downloads/calendarHeat.R")

stock <- "MSFT"
start.date <- "2012-01-12"
end.date <- Sys.Date()

quote <- paste("http://ichart.finance.yahoo.com/table.csv?s=", stock, "&a=", substr(start.date,6,7), "&b=", substr(start.date, 9, 10), "&c=", substr(start.date, 1,4), "&d=", substr(end.date,6,7), "&e=", substr(end.date, 9, 10), "&f=", substr(end.date, 1,4), "&g=d&ignore=.csv", sep="")
stock.data <- read.csv(quote, as.is=TRUE)

# convert the continuous var to a categorical var 
stock.data$by <- cut(stock.data$Adj.Close, b = 6, labels = F)

calendarHeat(stock.data$Date, stock.data$by, varname="MSFT Adjusted Close")

update 02-13-2013 03:52:11Z, what do I mean by adding a pattern,

I envision adding a pattern to the individual day-boxes in the Calendar Heatmap as pattern is added to the individual slices in the pie chart to the right (B) in this plot,

new-features.html#patterns

found here something like the states in this plot.

share|improve this question
    
What do you mean by adding a pettern? You want to change the size of cells? do you want to add text in some cells? – agstudy Feb 22 '13 at 3:06
    
you could in theory overwrite the lattice panel function to use gridExtra::grid.pattern instead of grid.rect. But it's unlikely to work well as this function is buggy – baptiste Feb 22 '13 at 3:51
    
@agstudy, thank you for your question. I added an update to clarify, but I like your idea of adding a letter or something like it to the individual day-box. Regardless, I initially envisioned some sort of pattern like I have described in the update. – Eric Fail Feb 22 '13 at 3:55
    
@baptiste, I looked in the calendarHeat function, but couldn't see grid.rect used. Would you please explain how I can replace grid.rect by gridExtra::grid.pattern. Thanks. – Eric Fail Feb 22 '13 at 4:02
1  
adding a letter or a point symbol may be a much better idea; for this too you should write a custom panel function. BTW, why the ggplot2 tag? – baptiste Feb 22 '13 at 4:12
up vote 13 down vote accepted
+200

I answered this question before he becomes a bounty. It looks like the OP find my previous answer a little bit complicated. I organized the code in a single gist here. you need just to download the file and source it.

I create new function extra.calendarHeat which is an extension of the first one to draw hetmap of double time series.(dat,value1,value2). I addedthis new parameters:

   pch.symbol : vector of symbols , defualt 15:20
   cex.symbol : cex of the symbols , default = 2
   col.symbol : color of symbols , default #00000044
   pvalues    : value of symbols

Here some examples:

## I am using same data 
stock <- "MSFT"
start.date <- "2012-01-12"
end.date <- Sys.Date()
quote <- paste("http://ichart.finance.yahoo.com/table.csv?s=",
               stock,
               "&a=", substr(start.date,6,7),
               "&b=", substr(start.date, 9, 10),
               "&c=", substr(start.date, 1,4), 
               "&d=", substr(end.date,6,7),
               "&e=", substr(end.date, 9, 10),
               "&f=", substr(end.date, 1,4),
               "&g=d&ignore=.csv", sep="")             
stock.data <- read.csv(quote, as.is=TRUE)

p1 <- extra.calendarHeat(dates= stock.data$Date, values = stock.data$Adj.Close,
                         pvalues = stock.data$Volume,
                         varname="W&B MSFT Adjusted Close 
                                  \n Volume as no border symbol ")

enter image description here

## multiply symbols
p2 <- extra.calendarHeat(dates= stock.data$Date, values = stock.data$Adj.Close,
                         pvalues = stock.data$Volume,
                         varname="W&B MSFT Adjusted Close \n 
                                    black Volume as multiply symbol ",
                         pch.symbol = c(3,4,8,9),
                         col.symbol='black')

enter image description here

## circles symbols
p3 <- extra.calendarHeat(dates= stock.data$Date, values = stock.data$Adj.Close,
                         pvalues = stock.data$Volume,
                         varname="W&B  MSFT Adjusted Close \n blue Volume as circles",
                         pch.symbol = c(1,10,13,16,18),
                         col.symbol='blue')

enter image description here

## triangles  symbols
p4 <- extra.calendarHeat(dates= stock.data$Date, values = stock.data$Adj.Close,
                         pvalues = stock.data$Volume,
                         varname="W&B MSFT Adjusted Close \n red Volume as triangles",
                         pch.symbol = c(2,6,17,24,25),
                         col.symbol='red')

enter image description here

p5 <- extra.calendarHeat(dates= stock.data$Date, values = stock.data$Adj.Close,
                         varname="MSFT Adjusted Close",
                         pch.symbol = LETTERS,
                         col.symbol='black')

enter image description here

# symbols are LETTERS
p6 <- extra.calendarHeat(dates= stock.data$Date, values = stock.data$Adj.Close,
                         pvalues = stock.data$Volume,
                         varname="MSFT Adjusted Close  \n Volume as LETTERS symbols",
                         pch.symbol = letters,
                         color='r2b')

enter image description here

share|improve this answer
1  
this is really impressive. I'll keep the bounty going for a little longer and then award it. I really appreciate that you put all your code in one place. Thanks! – Eric Fail Feb 25 '13 at 1:28
    
@EricFail thakns for choosing this answer. just I am curious you will use it in which context? – agstudy Feb 28 '13 at 0:35
    
I am tracking client contacts in a clinic. We have a range of different contact types and tests that we need to keep an eye on and we only have access to a black and white laser printer–or a black and grey-tones printer. Again, I appreciate your help. – Eric Fail Feb 28 '13 at 6:00
1  
@EricFail thanks for the explanation client/patient. My confusing because the 2 terms exist in French. Whatever, glad that I this helps. – agstudy Feb 28 '13 at 6:16
1  
@user75782131 No the solution use lattice so we can't use ggplot2 geoms... – agstudy Feb 7 '14 at 22:54

You can panel.level.plot from latticeExtra to add pattern. I think the question as it is asked is a little bit specific. So I try to generalize it. The idea is to give the steps to transform a time series to a calendar heatmap: with 2 patterns (fill color and a shape). We can imagine multiple time series (Close/Open). For example, you can get something like this

enter image description here

or like this, using a ggplot2 theme:

enter image description here

The function calendarHeat , giving a single time series (dat,value) , transforms data like this :

   date.seq value dotw woty   yr month seq
1 2012-01-01    NA    0    2 2012     1   1
2 2012-01-02    NA    1    2 2012     1   2
3 2012-01-03    NA    2    2 2012     1   3
4 2012-01-04    NA    3    2 2012     1   4
5 2012-01-05    NA    4    2 2012     1   5
6 2012-01-06    NA    5    2 2012     1   6

So I assume that I have data formated like this, otherwise, I extracted from calendarHeat the part of data transformation in a function(see this gist)

 dat <- transformdata(stock.data$Date, stock.data$by)

Then the calendar is essentially a levelplot with custom sacles , custom theme and custom panel' function.

library(latticeExtra)
levelplot(value~woty*dotw | yr, data=dat, border = "black",
          layout = c(1, nyr%%7),
          col.regions = (calendar.pal(ncolors)),
          aspect='iso',
          between = list(x=0, y=c(1,1)),
          strip=TRUE,
          panel = function(...) {
            panel.levelplot(...)
            calendar.division(...)  
            panel.levelplot.points(...,na.rm=T,
                                   col='blue',alpha=0.5,
                                   ## you can play with cex and pch here to get the pattern you      
                                   ## like
                                   cex =dat$value/max(dat$value,na.rm=T)*3
                                   pch=ifelse(is.na(dat$value),NA,20),
                                   type = c("p"))

          },
          scales= scales,
          xlim =extendrange(dat$woty,f=0.01),
          ylim=extendrange(dat$dotw,f=0.1),
          cuts= ncolors - 1,
          colorkey= list(col = calendar.pal(ncolors), width = 0.6, height = 0.5),
          subscripts=TRUE,
          par.settings = calendar.theme)

Where the scales are:

 scales = list(
   x = list( at= c(seq(2.9, 52, by=4.42)),
             labels = month.abb,
             alternating = c(1, rep(0, (nyr-1))),
             tck=0,
             cex =1),
   y=list(
     at = c(0, 1, 2, 3, 4, 5, 6),
     labels = c("Sunday", "Monday", "Tuesday", "Wednesday", "Thursday",
                "Friday", "Saturday"),
     alternating = 1,
     cex =1,
     tck=0))

And the theme is setting as :

 calendar.theme <- list(
   xlab=NULL,ylab=NULL,
   strip.background = list(col = "transparent"),
   strip.border = list(col = "transparent"),
   axis.line = list(col="transparent"),
   par.strip.text=list(cex=2))

The panel function uses a function caelendar.division. In fact, the division of the grid(month black countour) is very long and is done using grid package in the hard way (panel focus...). I change it a little bit, and now I call it in the lattice panel function: caelendar.division.

share|improve this answer

We can use ggplot2's scale_shape_manual to get us shapes that appear close to shading, and we can plot these over the grey heatmap.
Note: This was adapted from @Jay's comments in the original blog posting for the calendar heatmap

# PACKAGES
library(ggplot2)
library(data.table)

# Transofrm data
stock.data <- transform(stock.data,
  week = as.POSIXlt(Date)$yday %/% 7 + 1,
  month = as.POSIXlt(Date)$mon + 1,
  wday = factor(as.POSIXlt(Date)$wday, levels=0:6, labels=levels(weekdays(1, abb=FALSE)), ordered=TRUE),
  year = as.POSIXlt(Date)$year + 1900)

# find when the months change
#   Not used, but could be 
stock.data$mchng <- as.logical(c(0, diff(stock.data$month)))

# we need dummy data for Sunday / Saturday to be included.
#  These added rows will not be plotted due to their NA values
dummy <- as.data.frame(stock.data[1:2, ])
dummy[, -which(names(dummy) %in% c("wday", "year"))] <- NA
dummy[, "wday"] <- weekdays(2:3, FALSE)
dummy[, "mchng"] <- TRUE
rbind(dummy, stock.data) -> stock.data

# convert the continuous var to a categorical var 
stock.data$Adj.Disc <- cut(stock.data$Adj.Close, b = 6, labels = F)

# vals is the greyscale tones used for the outer monthly borders
vals <- gray(c(.2, .5))

# PLOT
  # Expected warning due to dummy variable with NA's: 
  # Warning message:
  # Removed 2 rows containing missing values (geom_point). 
ggplot(stock.data) + 
  aes(week, wday, fill=as.factor(Adj.Disc), 
      shape=as.factor(Adj.Disc), color=as.factor(month %% 2)) + 
  geom_tile(linetype=1, size=1.8) + 
  geom_tile(linetype=6, size=0.4, color="white") + 
  scale_color_manual(values=vals) +
  geom_point(aes(alpha=0.2), color="black") + 
  scale_fill_grey(start=0, end=0.9) +  scale_shape_manual(values=c(2, 3, 4, 12, 14, 8)) + 
  theme(legend.position="none")  +  labs(y="Day of the Week") +  facet_wrap(~ year, ncol = 1)

enter image description here

share|improve this answer
    
Thanks! Very interesting, I like the ggplot2 solution. I can't reproduce your code though, some element called vals seem to be missing. – Eric Fail Feb 25 '13 at 1:33
1  
Thanks @EricFail. vals is just the grey scale values to use. Edited back in. – Ricardo Saporta Feb 25 '13 at 1:35
1  
solves the problem, but uuuuugly ... – Ben Bolker Feb 25 '13 at 1:43
    
@Ben, Youch!! Hahaha – Ricardo Saporta Feb 25 '13 at 1:46

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