To remove the
NaN values you can use the filter function. From the Julia docs:
Return a copy of collection, removing elements for which function is false.
x = filter(y->!isnan(y),y)
Thus, we create as our function the conditional
!isnan(y) and use it to filter the array
y (note, we could also have written
z or any other variable we chose, since the first argument of
filter is just defining an inline function). Note, we can either then save this as a new object or use the modify in place version, signaled by the
! in order to simply modify the existing object
Then, either before or after this, depending on whether we want to include the
NaNs in our count, we can use the
countmap() function from StatsBase. From the Julia docs:
Return a dictionary mapping each unique value in x to its number of
a = countmap(y)
you can then access specific elements of this dictionary, e.g.
a[-1] will tell you how many occurrences there are of
Or, if you wanted to then convert that dictionary to an Array, you could use:
b = hcat([[key, val] for (key, val) in a]...)'
Note: Thanks to @JeffBezanon for comments on correct method for filtering