# Conditional graphing and fading colors

I am trying to create a graph where because there are so many points on the graph, at the edges of the green it starts to fade to black while the center stays green. The code I am currently using to create this graph is:

``````plot(snb\$px,snb\$pz,col=snb\$event_type,xlim=c(-2,2),ylim=c(1,6))
``````

I looked into contour plotting but that did not work for this. The coloring variable is a factor variable.

Thanks!

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So what do you want the result to look like if not what you already have? Also, could you provide some simulated example data? –  thelatemail Jul 18 '13 at 23:11
You should bin your points to get less points. looks at `hexbin` even it is not evident to aggregate the z dimensions ( the event_type). –  agstudy Jul 18 '13 at 23:41
You can sometimes improve the appearance by shrink the size of the "points" with cex=0.1. Other times is is necessary to use indexing into a vector of transparent colors. Answer @thelatemail's question, please. –  IShouldBuyABoat Jul 19 '13 at 0:11
Sorry for taking so long to get back to you guys. I left work right after posting this problem. These points are called strikes versus called balls in MLB games based on where they crossed the plate. My ideal is to have some sort of contour type plot link where the middle can be interpreted as 100% strike % and as it goes out it gets smaller and smaller percentage of pitches in that zone are called strikes. Does that make sense at all? @thelatemail –  BaseballR Jul 19 '13 at 15:12
give us the data! –  Andy Clifton Jul 19 '13 at 15:19

This is a great problem for `ggplot2`.

``````snb <- read.csv('MLB.csv')
``````

With your data frame you could try plotting points that are partly transparent, and setting them to be colored according to the factor `event_type`:

``````require(ggplot2)
p1 <- ggplot(data = snb, aes(x = px, y = py, color = event_type)) +
geom_point(alpha = 0.5)
print(p1)
``````

and then you get this:

Or, you might want to think about plotting this as a heatmap using `geom_bin2d()`, and plotting facets (subplots) for each different `event_type`, like this:

``````p2 <- ggplot(data = snb, aes(x = px, y = py)) +
geom_bin2d(binwidth = c(0.25, 0.25)) +
facet_wrap(~ event_type)
print(p2)
``````

which makes a plot for each level of the factor, where the color will be the number of data points in each bins that are 0.25 on each side. But, if you have more than about 5 or 6 levels, this might look pretty bad. From the small data sample you supplied, I got this

If the levels of the factors don't matter, there are some nice examples here of plots with too many points. You could also try looking at some of the examples on the ggplot website or the R cookbook.

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I love the fact that I got two upvotes with my initial incorrect code (now fixed)! –  Andy Clifton Jul 19 '13 at 3:53

Transparency could help, which is easily achieved, as @BenBolker points out, with `adjustcolor`:

``````colvect = adjustcolor(c("black", "green"), alpha = 0.2)
plot(snb\$px, snb\$pz,
col = colvec[snb\$event_type],
xlim = c(-2,2),
ylim = c(1,6))
``````

It's built in to `ggplot`:

``````require(ggplot2)
p <- ggplot(data = snb, aes(x = px, y = pz, color = event_type)) +
geom_point(alpha = 0.2)
print(p)
``````
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you don't even need the scales package; `colvec=adjustcolor(c("red","green","blue"),alpha=0.5); ... col=colvec[snb\$event_type] ...` –  Ben Bolker Jul 19 '13 at 2:35