# MATLAB: Merging Function Handles

I'm currently coding a simulation in MATLAB and need some help in regards to an issue that I've been having.

I'm working on a problem where I have `n` separate anonymous function handles `f_i`, each of which is stored in cell array `functions` and accepts a 1x1 numeric array `x_i` and returns a 1x1 numeric array `y_i`.

I'm trying to combine each of these anonymous function handles into a single anonymous function handle that accepts a single `n`x`1` numeric array `X` and returns single `n`x`1`-numeric array `Y`. Here, `X(i) = x_i`, `Y(i) = y_i = f_i(x_i)`

As an example let `n = 2` and f_1 and f_2 be two function handles that input and output `1x1` arrays and are stored in a cell array named functions

``````f_1 = @(x_1) x_1^2
f_2 = @(x_2) x_2^3
functions = {f_1,f_2}
``````

I basically need code that would be able to use `n`, `f_1` and `f_2` to construct a function handle F that inputs and outputs a `2x1` numeric array.

``````F = @(x) [f_1(x(1,1));f_2(x(2,1))]
``````
-

It's difficult to define such a function using inline `@()`-anonymous syntax (because of limiting requirement on the function's body to be expression). Still it's possible to define an ordinary (non-anonymous) function that runs over the items of a given vector and applies functions from a given cell array to those items.

``````function y = apply_funcs(f, x)
assert(length(f) == length(x));
y = x;
for i = 1 : length(f)
y(i) = feval(f{i}, x(i));
end
end
``````

And every time it's needed to pass this function to some other one, just reference to its `@`-handle.

``````F = @apply_funcs
``````
-
Thanks for this! I need the code to be efficient as possible, so I will probably use your function and remove the length/assert arguments... Also, would you happen to know whether feval is faster than using the inline function handle evaluation? That is to say, would y(i) = f{i}(x(i)) be faster than y(i) = feval(f{i},x(i))> –  Berk U. Jan 25 '11 at 19:59
@squall14414: `feval` is definitely faster than usual parenthesis syntax call (due to overloaded meaning of `()` as both array subscript and function call, I think). –  ib. Jan 26 '11 at 6:57

This can be solved using a solution I provided to a similar previous question, although there will be some differences regarding how you format the input arguments. You can achieve what you want using the functions CELLFUN and FEVAL to evaluate your anonymous functions in one line, and the function NUM2CELL to convert your input vector to a cell array to be used by CELLFUN:

``````f_1 = @(x_1) x_1^2;     %# First anonymous function
f_2 = @(x_2) x_2^3;     %# Second anonymous function
fcnArray = {f_1; f_2};  %# Cell array of function handles
F = @(x) cellfun(@feval,fcnArray(:),num2cell(x(:)));
``````

Note that I used the name `fcnArray` for the cell array of function handles, since the name `functions` is already used for the built-in function FUNCTIONS. The colon operator `(:)` is used to turn `fcnArray` and the input argument `x` into column vectors if they aren't already. This ensures that the output is a column vector.

And here are a few test cases:

``````>> F([2;2])

ans =

4
8

>> F([1;3])

ans =

1
27
``````
-
Thank you for this again. Your approach is definitely more parsimonious, though I'm wondering whether it would perform faster than the for loop described by ib? –  Berk U. Jan 25 '11 at 19:47
@squall14414: I'm not sure which would be faster. For loops aren't as costly now as they used to be in MATLAB, so I wouldn't be that surprised if a for-loop-based implementation edged out CELLFUN-based one. –  gnovice Jan 25 '11 at 20:05
k I'll try both and see which is better - do you know of some kind of resource that illustrates best MATLAB practices? I'm always trying to make my code as efficient as possible, though since there are often 3-4 ways to do these things with the inbuilt functions on MATLAB, I'm having a hard time figuring out what is costly and what is not. –  Berk U. Jan 25 '11 at 20:08
@squall14414: I go by this simple benchmark: gist.github.com/796351 According to it `for` technique is about three times faster than `num2cell`-`cellfun` one (at least on my machine). –  ib. Jan 26 '11 at 7:07