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My question is regarding How do you adjust/control the scale in a treemap (using the 'portfolio' library) in R?.

I modified seq(-1,0 to seq(0,1 as recommended in one of the answers. I then copied and pasted the entire map.market function into R, but am unable to call the modified version that I just pasted. When I type map.market, the original definition of the function "portfolio" is printed within the R editor window. How can I run the version that I just pasted?

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save it in a file and use source("file_path.R"). –  agstudy Jan 2 '14 at 4:45

2 Answers 2

If you just copy and paste, the function is not really saved in your session. You need to assign it to an object in R. When you type the name of the function map.market, you get the code:

# all
# the code 
# of the function
<bytecode: 0x0000000007dd9aa0>
<environment: namespace:portfolio>

So, you have to copy everything before <bytecode> and <environment> lines, modify and save it to an object

map.market2 = function(...)
# all
# the code 
# of the function (with modifications)

Now, you can use the new modified function map.market2 as desired. You can name it map.market if you want, but check that doesn't break the rest of your code. For example, if you have used the original function before, because the new modified function will have precedence over the original one.

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This is somewhat related @Ricardo's answer...

You can use dput to save any object to readable/editable code, including functions. Take mean from the stats package, for example

dput(mean, "foo")

will write the function used to access the various methods to the file 'foo':

(inside 'foo')

function (x, ...)

Not so helpful, unless you want that; but, if you know the specific method/function you'd like to modify, e.g., dput(mean.default, "foo"):

(again, inside 'foo')

function (x, trim = 0, na.rm = FALSE, ...)
    if (!is.numeric(x) && !is.complex(x) && !is.logical(x)) {
        warning("argument is not numeric or logical: returning NA")
    if (na.rm)
        x <- x[!is.na(x)]
    if (!is.numeric(trim) || length(trim) != 1L)
        stop("'trim' must be numeric of length one")
    n <- length(x)
    if (trim > 0 && n) {
        if (is.complex(x))
            stop("trimmed means are not defined for complex data")
        if (any(is.na(x)))
        if (trim >= 0.5)
            return(stats::median(x, na.rm = FALSE))
        lo <- floor(n * trim) + 1
        hi <- n + 1 - lo
        x <- sort.int(x, partial = unique(c(lo, hi)))[lo:hi]

You can modify as you wish from there.

To use the modified code, you can use dget or eval+parse (or, even source as suggested by @agstudy).

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