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I would like to make a "ggplot version" of the basic functionality of charts.PerformanceSummary that is available in the PerformanceAnalytics package, as I think that ggplot is generally prettier and theoretically more powerful in term of editing the image. I've got reasonably close but have a few issues that I would like a bit of help on. Namely:

  1. reducing the amount of space that the legend takes up, it gets horrendous/ugly when having more than 10 lines on it...(just the line colour and name is sufficient)
  2. Increasing the size of the Daily_Returns facet to match that of charts.PerformanceSummary in PerformanceAnalytics
  3. Have an option that specifies which asset to show in the daily return series in the Daily_Returns facet, rather than always using the first column, which is than what happens in charts.PerformanceSummary

If there are better ways to do this potentially using gridExtra rather than facets...I'm not adverse to people showing me how that would look better...

The issue here is aesthetics, and potential easy of manipulation I guess, as PerformanceAnalytics already has a good working example, I just want to make it prettier/more professional...

In addition to this for bonus points, I would like to be able to show some performance stats associated with it somewhere on or below or to the side of the graph for each asset...not too sure where would be best to show or display this information.

Furthermore I am not adverse to people suggesting parts that clean up my code if they have suggestions for this.

Here is my reproducible example...

First generate return data:

require(xts)
X.stock.rtns <- xts(rnorm(1000,0.00001,0.0003), Sys.Date()-(1000:1))
Y.stock.rtns <- xts(rnorm(1000,0.00003,0.0004), Sys.Date()-(1000:1))
Z.stock.rtns <- xts(rnorm(1000,0.00005,0.0005), Sys.Date()-(1000:1))
rtn.obj <- merge(X.stock.rtns , Y.stock.rtns, Z.stock.rtns)
colnames(rtn.obj) <- c("x.stock.rtns","y.stock.rtns","z.stock.rtns")

I would like to replicate the image from the result of:

require(PerformanceAnalytics)
charts.PerformanceSummary(rtn.obj, geometric=TRUE)

aim

This is my attempt so far...

gg.charts.PerformanceSummary <- function(rtn.obj, geometric=TRUE, main="",plot=TRUE){

    # load libraries
suppressPackageStartupMessages(require(ggplot2))
suppressPackageStartupMessages(require(scales))
suppressPackageStartupMessages(require(reshape))
suppressPackageStartupMessages(require(PerformanceAnalytics))
    # create function to clean returns if having NAs in data
    clean.rtn.xts <- function(univ.rtn.xts.obj,na.replace=0){
    univ.rtn.xts.obj[is.na(univ.rtn.xts.obj)]<- na.replace
    univ.rtn.xts.obj
}
    # Create cumulative return function
cum.rtn <- function(clean.xts.obj, g=TRUE){
    x <- clean.xts.obj
    if(g==TRUE){y <- cumprod(x+1)-1} else {y <- cumsum(x)}
    y
}
    # Create function to calculate drawdowns
dd.xts <- function(clean.xts.obj, g=TRUE){
    x <- clean.xts.obj
    if(g==TRUE){y <- Drawdowns(x)} else {y <- Drawdowns(x,geometric=FALSE)}
    y
}
    # create a function to create a dataframe to be usable in ggplot to replicate charts.PerformanceSummary
cps.df <- function(xts.obj,geometric){
    x <- clean.rtn.xts(xts.obj)
    series.name <- colnames(xts.obj)[1]
    tmp <- cum.rtn(x,geometric)
    tmp$rtn <- x
    tmp$dd <- dd.xts(x,geometric)
    colnames(tmp) <- c("Cumulative_Return","Daily_Return","Drawdown")
    tmp.df <- as.data.frame(coredata(tmp))
    tmp.df$Date <- as.POSIXct(index(tmp))
    tmp.df.long <- melt(tmp.df,id.var="Date")
    tmp.df.long$asset <- rep(series.name,nrow(tmp.df.long))
    tmp.df.long
}
# A conditional statement altering the plot according to the number of assets
if(ncol(rtn.obj)==1){
            # using the cps.df function
    df <- cps.df(rtn.obj,geometric)
            # adding in a title string if need be
    if(main==""){
        title.string <- paste0(df$asset[1]," Performance")
    } else {
        title.string <- main
    }
            # generating the ggplot output with all the added extras....
    gg.xts <- ggplot(df, aes_string(x="Date",y="value",group="variable"))+
                facet_grid(variable ~ ., scales="free", space="free")+
                geom_line(data=subset(df,variable=="Cumulative_Return"))+
                geom_bar(data=subset(df,variable=="Daily_Return"),stat="identity")+
                geom_line(data=subset(df,variable=="Drawdown"))+
                ylab("")+
                geom_abline(intercept=0,slope=0,alpha=0.3)+
                ggtitle(title.string)+
                theme(axis.text.x = element_text(angle = 45, hjust = 1))+
                scale_x_datetime(breaks = date_breaks("6 months"), labels = date_format("%d/%m/%Y"))

} else {
            # a few extra bits to deal with the added rtn columns
    no.of.assets <- ncol(rtn.obj)
    asset.names <- colnames(rtn.obj)
    df <- do.call(rbind,lapply(1:no.of.assets, function(x){cps.df(rtn.obj[,x],geometric)}))
    df$asset <- ordered(df$asset, levels=asset.names)
    if(main==""){
        title.string <- paste0(df$asset[1]," Performance")
    } else {
        title.string <- main
    }
    if(no.of.assets>5){legend.rows <- 5} else {legend.rows <- no.of.assets}
    gg.xts <- ggplot(df, aes_string(x="Date", y="value",group="asset"))+
      facet_grid(variable~.,scales="free",space="free")+
      geom_line(data=subset(df,variable=="Cumulative_Return"),aes(colour=factor(asset)))+
      geom_bar(data=subset(df,variable=="Daily_Return"),stat="identity",aes(fill=factor(asset),colour=factor(asset)),position="dodge")+
      geom_line(data=subset(df,variable=="Drawdown"),aes(colour=factor(asset)))+
      ylab("")+
      geom_abline(intercept=0,slope=0,alpha=0.3)+
      ggtitle(title.string)+
      theme(legend.title=element_blank(), legend.position=c(0,1), legend.justification=c(0,1),
            axis.text.x = element_text(angle = 45, hjust = 1))+
      guides(col=guide_legend(nrow=legend.rows))+
      scale_x_datetime(breaks = date_breaks("6 months"), labels = date_format("%d/%m/%Y"))

}

assign("gg.xts", gg.xts,envir=.GlobalEnv)
if(plot==TRUE){
    plot(gg.xts)
} else {}

}
# seeing the ggplot equivalent....
gg.charts.PerformanceSummary(rtn.obj, geometric=TRUE)

result

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2 Answers 2

I was looking for just that. You got pretty close. Standing on your shoulders, I was able to fix some of the problems. But as I'm new to R, ggplot, and all that, my contribution is modest.

Edit (9 May 2015): The function Drawdown() may now be called via the triple-colon operator, PerformanceAnalytics:::Drawdown(). The code below was edited to reflect this change.

require(xts)

X.stock.rtns <- xts(rnorm(1000,0.00001,0.0003), Sys.Date()-(1000:1))
Y.stock.rtns <- xts(rnorm(1000,0.00003,0.0004), Sys.Date()-(1000:1))
Z.stock.rtns <- xts(rnorm(1000,0.00005,0.0005), Sys.Date()-(1000:1))
rtn.obj <- merge(X.stock.rtns , Y.stock.rtns, Z.stock.rtns)
colnames(rtn.obj) <- c("x","y","z")

# advanced charts.PerforanceSummary based on ggplot
gg.charts.PerformanceSummary <- function(rtn.obj, geometric = TRUE, main = "", plot = TRUE)
  {

    # load libraries
    suppressPackageStartupMessages(require(ggplot2))
    suppressPackageStartupMessages(require(scales))
    suppressPackageStartupMessages(require(reshape))
    suppressPackageStartupMessages(require(PerformanceAnalytics))

    # create function to clean returns if having NAs in data
    clean.rtn.xts <- function(univ.rtn.xts.obj,na.replace=0){
    univ.rtn.xts.obj[is.na(univ.rtn.xts.obj)]<- na.replace
    univ.rtn.xts.obj  
  }

    # Create cumulative return function
    cum.rtn <- function(clean.xts.obj, g = TRUE)
    {
      x <- clean.xts.obj
      if(g == TRUE){y <- cumprod(x+1)-1} else {y <- cumsum(x)}
      y
    }

    # Create function to calculate drawdowns
    dd.xts <- function(clean.xts.obj, g = TRUE)
    {
      x <- clean.xts.obj
      if(g == TRUE){y <- PerformanceAnalytics:::Drawdowns(x)} else {y <- PerformanceAnalytics:::Drawdowns(x,geometric = FALSE)}
      y
    }

    # create a function to create a dataframe to be usable in ggplot to replicate charts.PerformanceSummary
    cps.df <- function(xts.obj,geometric)
    {
      x <- clean.rtn.xts(xts.obj)
      series.name <- colnames(xts.obj)[1]
      tmp <- cum.rtn(x,geometric)
      tmp$rtn <- x
      tmp$dd <- dd.xts(x,geometric)
      colnames(tmp) <- c("Index","Return","Drawdown") # names with space
      tmp.df <- as.data.frame(coredata(tmp))
      tmp.df$Date <- as.POSIXct(index(tmp))
      tmp.df.long <- melt(tmp.df,id.var="Date")
      tmp.df.long$asset <- rep(series.name,nrow(tmp.df.long))
      tmp.df.long
    }

    # A conditional statement altering the plot according to the number of assets
    if(ncol(rtn.obj)==1)
    {
      # using the cps.df function
      df <- cps.df(rtn.obj,geometric)
      # adding in a title string if need be
      if(main == ""){
        title.string <- paste("Asset Performance")
      } else {
        title.string <- main
      }

    gg.xts <- ggplot(df, aes_string( x = "Date", y = "value", group = "variable" )) +
      facet_grid(variable ~ ., scales = "free_y", space = "fixed") +
      geom_line(data = subset(df, variable == "Index")) +
      geom_bar(data = subset(df, variable == "Return"), stat = "identity") +
      geom_line(data = subset(df, variable == "Drawdown")) +
      geom_hline(yintercept = 0, size = 0.5, colour = "black") +
      ggtitle(title.string) +
      theme(axis.text.x = element_text(angle = 0, hjust = 1)) +
      scale_x_datetime(breaks = date_breaks("6 months"), labels = date_format("%m/%Y")) +
      ylab("") +
      xlab("")

  } 
 else 
  {
    # a few extra bits to deal with the added rtn columns
    no.of.assets <- ncol(rtn.obj)
    asset.names <- colnames(rtn.obj)
    df <- do.call(rbind,lapply(1:no.of.assets, function(x){cps.df(rtn.obj[,x],geometric)}))
    df$asset <- ordered(df$asset, levels=asset.names)
    if(main == ""){
      title.string <- paste("Asset",asset.names[1],asset.names[2],asset.names[3],"Performance")
    } else {
      title.string <- main
    }

    if(no.of.assets>5){legend.rows <- 5} else {legend.rows <- no.of.assets}

      gg.xts <- ggplot(df, aes_string(x = "Date", y = "value" )) +

      # panel layout
      facet_grid(variable~., scales = "free_y", space = "fixed", shrink = TRUE, drop = TRUE, margin = 
                 , labeller = label_value) + # label_value is default

      # display points for Index and Drawdown, but not for Return
      geom_point(data = subset(df, variable == c("Index","Drawdown"))
                 , aes(colour = factor(asset), shape = factor(asset)), size = 1.2, show_guide = TRUE) + 

      # manually select shape of geom_point
      scale_shape_manual(values = c(1,2,3)) + 

      # line colours for the Index
      geom_line(data = subset(df, variable == "Index"), aes(colour = factor(asset)), show_guide = FALSE) +

      # bar colours for the Return
      geom_bar(data = subset(df,variable == "Return"), stat = "identity"
           , aes(fill = factor(asset), colour = factor(asset)), position = "dodge", show_guide = FALSE) +

      # line colours for the Drawdown
      geom_line(data = subset(df, variable == "Drawdown"), aes(colour = factor(asset)), show_guide = FALSE) +

      # horizontal line to indicate zero values
      geom_hline(yintercept = 0, size = 0.5, colour = "black") +

      # horizontal ticks
      scale_x_datetime(breaks = date_breaks("6 months"), labels = date_format("%m/%Y")) +

      # main y-axis title
      ylab("") +

      # main x-axis title
      xlab("") +

      # main chart title
      ggtitle(title.string)

      # legend 

      gglegend <- guide_legend(override.aes = list(size = 3))

      gg.xts <- gg.xts + guides(colour = gglegend, size = "none") +

      # gglegend <- guide_legend(override.aes = list(size = 3), direction = "horizontal") # direction overwritten by legend.box?
      # gg.xts <- gg.xts + guides(colour = gglegend, size = "none", shape = gglegend) + # Warning: "Duplicated override.aes is ignored"

      theme( legend.title = element_blank()
             , legend.position = c(0,1)
             , legend.justification = c(0,1)
             , legend.background = element_rect()
             , legend.box = "horizontal" # not working?
             , axis.text.x = element_text(angle = 0, hjust = 1)
            )

}

assign("gg.xts", gg.xts,envir=.GlobalEnv)
if(plot == TRUE){
    plot(gg.xts)
} else {}

}

# display chart
gg.charts.PerformanceSummary(rtn.obj, geometric = TRUE)

Control over the size of the panels is inside facet_grid: facet_grid(variable ~ ., scales = "free_y", space = "fixed"). What these options do is explained in the manual, quote:

scales: Are scales shared across all facets (the default, "fixed"), or do they vary across rows ("free_x"), columns ("free_y"), or both rows and columns ("free")

space: If "fixed", the default, all panels have the same size. If "free_y" their height will be proportional to the length of the y scale; if "free_x" their width will be proportional to the length of the x scale; or if "free" both height and width will vary. This setting has no effect unless the appropriate scales also vary.

I tweaked the second plot, the first one can be done in a similar way.

Update: labels

Customized labels can be obtained with the following function:

# create a function to store fancy axis labels 

    my_labeller <- function(var, value){ # from the R Cookbook
        value <- as.character(value)
        if (var=="variable") 
        {
              value[value=="Index"] <- "Cumulative Returns"
              value[value=="Return"] <- "Daily Returns"
              value[value=="Drawdown"] <- "Drawdown"
        }
        return(value)
    }

and setting the labeller option to "labeller = my_labeller"

Update: background

The appearance of the background, grid lines, colours, etc. may be controlled from within the theme() function. Here an example with a white background for the 3 plot axes, white background for the plot area, and grey grid lines. It may all be changed rather easily with the template below:

  theme( legend.title = element_blank()
         , legend.position = c(0,1)
         , legend.justification = c(0,1)
         , legend.background = element_rect()
         #, legend.key = element_rect(fill="white",colour="white")# added as afterthought
         , legend.box = "horizontal" # not working?
         , axis.text.x = element_text(angle = 0, hjust = 1)
         #, axis.title.y = element_text(size=2,colour="black")
         , strip.background = element_rect(fill = 'white')
         , panel.background = element_rect(fill = 'white', colour = 'white')
         , panel.grid.major = element_line(colour = "grey", size = 0.5) 
         , panel.grid.minor = element_line(colour = NA, size = 0.0)
        )

enter image description here

enter image description here

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I used this as an exercise to learn ggplot2. Controlling the legends was a nightmare, there have been many changes over time. A keyword is "show_guide = FALSE". Getting the legend to display both shape and color was tough. I did it in a way that is different from what the manual suggests. What the manual suggests produces a warning. (I commented the code out above, so you can experiment and see if you get warnings too). There is a way to get labels with several words and no underscore or dots, but I gave up trying before going mad. I removed the days from the time axis. Comments welcome!! –  PatrickT Mar 30 '13 at 7:29
    
I would probably like to have the "Drawdown", "Return", "Index" labels printed black on white, rather than grey. And I would probably like to have the background grey colour a tad lighter. I think. But I'll stop this little project now. Perhaps someone can take it a step further still. –  PatrickT Mar 30 '13 at 7:31
    
I have 2 updates that show how to customize the text labels and the background colors and grids. One thing I'm noticing is that the legend would probably prettier without the grey background color. I am going to guess that it can be fixed by adding colour="white" to the legend.background = element_rect() option inside theme. But that's just a guess... –  PatrickT Mar 30 '13 at 22:37
1  
Apparently now Drawdowns() function has been hidden and only accessible by using triple colon, i.e. calling it via PerformanceAnalytics:::Drawdowns(). Maybe you want to update it or modify for using the lastest PerformanceAnalytics function for drawdowns. Also is it possible to specify the colour of lines for a single asset perf summary plot? –  Frash May 8 at 15:05
1  
Thanks, colouring for single asset works now. –  Frash May 8 at 23:15

For the size of the legend, see ?theme. Most aspects of the legend can be adjusted through there... What you want to adjust is legend.key.size I guess, as well as legend.background to remove the box around each legend...

The size of each panel in faceting is a bit more complicated. I have a hack that lets you specify the relative size of each panel when calling facet_grid, but it requires installing from source etc... A better solution would be to convert your plot to a gtable object and modify that... assuming your plot is called p:

require(gtable)
require(grid)

pTable <- ggplot_gtable(ggplot_build(p))
pTable$heights[[4]] <- unit(2, 'null')

grid.newpage()
grid.draw(pTable)

This will make the height of the top panel double the size of each of the other panels... The reason it is pTable$heights[[4]] and not pTable$heights[[1]] is that the faceting panels are not the top grobs in the plot.

I will refrain from being more specific than this, as you will be best served by exploring the properties of gtable yourself (and because I don't have time)

best

Thomas

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