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Function List:

C++ API

: accumarray (subs, vals, sz, func, fillval, issparse)
: accumarray (subs, vals, …)

Create an array by accumulating the elements of a vector into the positions defined by their subscripts.

The subscripts are defined by the rows of the matrix subs and the values by vals. Each row of subs corresponds to one of the values in vals. If vals is a scalar, it will be used for each of the row of subs. If subs is a cell array of vectors, all vectors must be of the same length, and the subscripts in the kth vector must correspond to the kth dimension of the result.

The size of the matrix will be determined by the subscripts themselves. However, if sz is defined it determines the matrix size. The length of sz must correspond to the number of columns in subs. An exception is if subs has only one column, in which case sz may be the dimensions of a vector and the subscripts of subs are taken as the indices into it.

The default action of accumarray is to sum the elements with the same subscripts. This behavior can be modified by defining the func function. This should be a function or function handle that accepts a column vector and returns a scalar. The result of the function should not depend on the order of the subscripts.

The elements of the returned array that have no subscripts associated with them are set to zero. Defining fillval to some other value allows these values to be defined. This behavior changes, however, for certain values of func. If func is min (respectively, max) then the result will be filled with the minimum (respectively, maximum) integer if vals is of integral type, logical false (respectively, logical true) if vals is of logical type, zero if fillval is zero and all values are non-positive (respectively, non-negative), and NaN otherwise.

By default accumarray returns a full matrix. If issparse is logically true, then a sparse matrix is returned instead.

The following accumarray example constructs a frequency table that in the first column counts how many occurrences each number in the second column has, taken from the vector x. Note the usage of unique for assigning to all repeated elements of x the same index (see ‘unique’).

x = [91, 92, 90, 92, 90, 89, 91, 89, 90, 100, 100, 100];
[u, ~, j] = unique (x);
[accumarray(j', 1), u']
  ⇒  2    89
      3    90
      2    91
      2    92
      3   100

Another example, where the result is a multi-dimensional 3-D array and the default value (zero) appears in the output:

accumarray ([1, 1, 1;
             2, 1, 2;
             2, 3, 2;
             2, 1, 2;
             2, 3, 2], 101:105)
⇒ ans(:,:,1) = [101, 0, 0; 0, 0, 0]
⇒ ans(:,:,2) = [0, 0, 0; 206, 0, 208]

The sparse option can be used as an alternative to the sparse constructor (see ‘sparse’). Thus

sparse (i, j, sv)

can be written with accumarray as

accumarray ([i, j], sv', [], [], 0, true)

For repeated indices, sparse adds the corresponding value. To take the minimum instead, use min as an accumulator function:

accumarray ([i, j], sv', [], @min, 0, true)

The complexity of accumarray in general for the non-sparse case is generally O(M+N), where N is the number of subscripts and M is the maximum subscript (linearized in multi-dimensional case). If func is one of @sum (default), @max, @min or @(x) {x}, an optimized code path is used. Note that for general reduction function the interpreter overhead can play a major part and it may be more efficient to do multiple accumarray calls and compute the results in a vectorized manner.

See also: accumdim, unique, sparse.

Package: octave