# Overfilled bins in R

I have a DF called "data" about 10 000 rows long (for the sake of illustration we'll say 10 000). I have a numerical column called "SimDelta" which I want to put in to 4 categories (0-0.25, 0.25-0.5,0.5-0.75, and >0.75) which I make using this piece of code:

data\$SimDeltaClass =
ifelse(data\$SimDelta>0.75, ">0.75",
ifelse(data\$SimDelta<0.75&data\$SimDelta>0.5, "0.5-0.75",
ifelse(data\$SimDelta<0.5&data\$SimDelta>0.25, "0.25-0.5",
ifelse(data\$SimDelta<0.25&data\$SimDelta>0, "0-0.25", "void"))))

this is then plotted in to a boxplot of the four categories and the number of samples in each category is written above the box using:

text(x=1,y=1.07,length(data\$rMF[data\$SimDeltaClass=="0-0.25"]),cex=0.8,col="black")
text(x=2,y=1.07,length(data\$rMF[data\$SimDeltaClass=="0.25-0.5"]),cex=0.8,col="black")
text(x=3,y=1.07,length(data\$rMF[data\$SimDeltaClass=="0.5-0.75"]),cex=0.8,col="black")
text(x=4,y=1.07,length(data\$rMF[data\$SimDeltaClass==">0.75"]),cex=0.8,col="black")

This section ( length(data\$rMF[data\$SimDeltaClass=="0-0.25"]) ) should give the number per group. When these 4 counts are summed I get a value in excess of 14 000, far more than the 10 000 I had expected.

Why is this not forming the categories correctly? I have based it on a previous piece that I wrote which works perfectly so I am not sure what R (or myself) is struggling with.

Obviously I need to edit the ifelse() section because they contain incorrectly assign values, but I don't know what to do

Note: there are no error messages or warnings & the str() is the same as the version that works

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## 1 Answer

Likely you have NA's that contribute to length.

> x = c(1, NA)
> x[x==1]
[1]  1 NA

Use cut rather than ifelse (the default without the labels= argument is better).

set.seed(123); x = c(runif(10, -1, 2), NA)
y = cut(x, c(-Inf, seq(0, .75, .25), Inf),
labels=c("void", "0-0.25", "0.25-0.5", "0.5-0.75", ">0.75"))

leading to

> y
[1] void     >0.75    0-0.25   >0.75    >0.75    void     0.5-0.75 >0.75
[9] 0.5-0.75 0.25-0.5 <NA>
Levels: void 0-0.25 0.25-0.5 0.5-0.75 >0.75

Use table to summarize the data.

> table(y)
y
void   0-0.25 0.25-0.5 0.5-0.75    >0.75
2        1        1        2        4
> table(y, useNA="ifany")
y
void   0-0.25 0.25-0.5 0.5-0.75    >0.75     <NA>
2        1        1        2        4        1

text is vectorized.

text(1:4, 1.07, table(y)[2:5])

Complete solution (tested by rg255)

data\$SimDeltaClass <- cut(data\$SimDelta, c(-Inf, seq(0, .75, .25), Inf),
labels=c("void", "0-0.25", "0.25-0.5", "0.5-0.75", ">0.75"))
text(x=1:4, y=1.07, table(data\$SimDeltaClass[fdr])[2:5], cex=0.8, col="black")
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