175 lines
4.1 KiB
JavaScript
175 lines
4.1 KiB
JavaScript
import { clone } from '../../utils/object.js';
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import { format } from '../../utils/string.js';
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import { factory } from '../../utils/factory.js';
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var name = 'transpose';
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var dependencies = ['typed', 'matrix'];
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export var createTranspose = /* #__PURE__ */factory(name, dependencies, _ref => {
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var {
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typed,
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matrix
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} = _ref;
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/**
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* Transpose a matrix. All values of the matrix are reflected over its
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* main diagonal. Only applicable to two dimensional matrices containing
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* a vector (i.e. having size `[1,n]` or `[n,1]`). One dimensional
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* vectors and scalars return the input unchanged.
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*
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* Syntax:
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*
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* math.transpose(x)
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*
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* Examples:
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*
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* const A = [[1, 2, 3], [4, 5, 6]]
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* math.transpose(A) // returns [[1, 4], [2, 5], [3, 6]]
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*
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* See also:
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*
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* diag, inv, subset, squeeze
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*
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* @param {Array | Matrix} x Matrix to be transposed
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* @return {Array | Matrix} The transposed matrix
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*/
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return typed('transpose', {
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Array: function Array(x) {
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// use dense matrix implementation
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return this(matrix(x)).valueOf();
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},
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Matrix: function Matrix(x) {
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// matrix size
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var size = x.size(); // result
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var c; // process dimensions
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switch (size.length) {
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case 1:
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// vector
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c = x.clone();
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break;
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case 2:
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{
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// rows and columns
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var rows = size[0];
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var columns = size[1]; // check columns
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if (columns === 0) {
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// throw exception
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throw new RangeError('Cannot transpose a 2D matrix with no columns (size: ' + format(size) + ')');
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} // process storage format
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switch (x.storage()) {
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case 'dense':
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c = _denseTranspose(x, rows, columns);
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break;
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case 'sparse':
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c = _sparseTranspose(x, rows, columns);
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break;
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}
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}
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break;
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default:
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// multi dimensional
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throw new RangeError('Matrix must be a vector or two dimensional (size: ' + format(this._size) + ')');
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}
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return c;
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},
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// scalars
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any: function any(x) {
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return clone(x);
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}
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});
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function _denseTranspose(m, rows, columns) {
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// matrix array
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var data = m._data; // transposed matrix data
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var transposed = [];
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var transposedRow; // loop columns
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for (var j = 0; j < columns; j++) {
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// initialize row
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transposedRow = transposed[j] = []; // loop rows
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for (var i = 0; i < rows; i++) {
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// set data
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transposedRow[i] = clone(data[i][j]);
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}
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} // return matrix
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return m.createDenseMatrix({
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data: transposed,
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size: [columns, rows],
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datatype: m._datatype
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});
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}
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function _sparseTranspose(m, rows, columns) {
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// matrix arrays
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var values = m._values;
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var index = m._index;
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var ptr = m._ptr; // result matrices
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var cvalues = values ? [] : undefined;
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var cindex = [];
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var cptr = []; // row counts
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var w = [];
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for (var x = 0; x < rows; x++) {
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w[x] = 0;
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} // vars
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var p, l, j; // loop values in matrix
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for (p = 0, l = index.length; p < l; p++) {
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// number of values in row
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w[index[p]]++;
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} // cumulative sum
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var sum = 0; // initialize cptr with the cummulative sum of row counts
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for (var i = 0; i < rows; i++) {
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// update cptr
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cptr.push(sum); // update sum
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sum += w[i]; // update w
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w[i] = cptr[i];
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} // update cptr
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cptr.push(sum); // loop columns
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for (j = 0; j < columns; j++) {
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// values & index in column
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for (var k0 = ptr[j], k1 = ptr[j + 1], k = k0; k < k1; k++) {
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// C values & index
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var q = w[index[k]]++; // C[j, i] = A[i, j]
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cindex[q] = j; // check we need to process values (pattern matrix)
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if (values) {
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cvalues[q] = clone(values[k]);
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}
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}
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} // return matrix
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return m.createSparseMatrix({
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values: cvalues,
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index: cindex,
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ptr: cptr,
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size: [columns, rows],
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datatype: m._datatype
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});
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}
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}); |