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The ml-matrix npm package provides a comprehensive set of tools for matrix operations and linear algebra. It is designed to be used in machine learning and data science applications, offering a variety of functionalities such as matrix creation, manipulation, decomposition, and solving linear systems.
Matrix Creation
This feature allows you to create matrices from arrays. The code sample demonstrates how to create a 2x2 matrix and print it.
const { Matrix } = require('ml-matrix');
const A = new Matrix([[1, 2], [3, 4]]);
console.log(A.toString());
Matrix Operations
This feature supports various matrix operations such as addition, subtraction, multiplication, etc. The code sample shows how to add two matrices.
const { Matrix } = require('ml-matrix');
const A = new Matrix([[1, 2], [3, 4]]);
const B = new Matrix([[5, 6], [7, 8]]);
const C = A.add(B);
console.log(C.toString());
Matrix Decomposition
This feature provides methods for matrix decomposition like Singular Value Decomposition (SVD), LU decomposition, etc. The code sample demonstrates how to perform SVD on a matrix.
const { Matrix, SingularValueDecomposition } = require('ml-matrix');
const A = new Matrix([[1, 2], [3, 4]]);
const svd = new SingularValueDecomposition(A);
console.log(svd.diagonalMatrix.toString());
Solving Linear Systems
This feature allows solving linear systems of equations. The code sample shows how to solve the system Ax = b.
const { Matrix } = require('ml-matrix');
const A = new Matrix([[1, 2], [3, 4]]);
const b = [5, 6];
const x = A.solve(b);
console.log(x.toString());
Math.js is an extensive math library for JavaScript and Node.js. It provides a wide range of mathematical functions and supports complex numbers, matrices, units, and more. Compared to ml-matrix, math.js offers a broader range of mathematical functionalities but may not be as specialized in matrix operations and linear algebra.
Numeric.js is a library for numerical computations in JavaScript. It provides functions for matrix operations, solving linear systems, and performing numerical integration. While it offers similar functionalities to ml-matrix, it is more focused on numerical methods and less on machine learning applications.
Ndarray is a JavaScript library for multidimensional arrays. It provides efficient storage and manipulation of large datasets. While it can be used for matrix operations, it is more general-purpose and not specifically tailored for linear algebra like ml-matrix.
Matrix manipulation and computation library.
Maintained by Zakodium
$ npm install ml-matrix
import { Matrix } from 'ml-matrix';
const matrix = Matrix.ones(5, 5);
const { Matrix } = require('ml-matrix');
const matrix = Matrix.ones(5, 5);
const { Matrix } = require('ml-matrix');
var A = new Matrix([
[1, 1],
[2, 2],
]);
var B = new Matrix([
[3, 3],
[1, 1],
]);
var C = new Matrix([
[3, 3],
[1, 1],
]);
const addition = Matrix.add(A, B); // addition = Matrix [[4, 4], [3, 3], rows: 2, columns: 2]
const subtraction = Matrix.sub(A, B); // subtraction = Matrix [[-2, -2], [1, 1], rows: 2, columns: 2]
const multiplication = A.mmul(B); // multiplication = Matrix [[4, 4], [8, 8], rows: 2, columns: 2]
const mulByNumber = Matrix.mul(A, 10); // mulByNumber = Matrix [[10, 10], [20, 20], rows: 2, columns: 2]
const divByNumber = Matrix.div(A, 10); // divByNumber = Matrix [[0.1, 0.1], [0.2, 0.2], rows: 2, columns: 2]
const modulo = Matrix.mod(B, 2); // modulo = Matrix [[1, 1], [1, 1], rows: 2, columns: 2]
const maxMatrix = Matrix.max(A, B); // max = Matrix [[3, 3], [2, 2], rows: 2, columns: 2]
const minMatrix = Matrix.min(A, B); // max = Matrix [[1, 1], [1, 1], rows: 2, columns: 2]
C.add(A); // => C = C + A
C.sub(A); // => C = C - A
C.mul(10); // => C = 10 * C
C.div(10); // => C = C / 10
C.mod(2); // => C = C % 2
// Standard Math operations: (abs, cos, round, etc.)
var A = new Matrix([
[ 1, 1],
[-1, -1],
]);
var exponential = Matrix.exp(A); // exponential = Matrix [[Math.exp(1), Math.exp(1)], [Math.exp(-1), Math.exp(-1)], rows: 2, columns: 2].
var cosinus = Matrix.cos(A); // cosinus = Matrix [[Math.cos(1), Math.cos(1)], [Math.cos(-1), Math.cos(-1)], rows: 2, columns: 2].
var absolute = Matrix.abs(A); // absolute = Matrix [[1, 1], [1, 1], rows: 2, columns: 2].
// Note: you can do it inplace too as A.abs()
Available Methods:
abs, acos, acosh, asin, asinh, atan, atanh, cbrt, ceil, clz32, cos, cosh, exp, expm1, floor, fround, log, log1p, log10, log2, round, sign, sin, sinh, sqrt, tan, tanh, trunc
// remember: A = Matrix [[1, 1], [-1, -1], rows: 2, columns: 2]
var numberRows = A.rows; // A has 2 rows
var numberCols = A.columns; // A has 2 columns
var firstValue = A.get(0, 0); // get(rows, columns)
var numberElements = A.size; // 2 * 2 = 4 elements
var isRow = A.isRowVector(); // false because A has more than 1 row
var isColumn = A.isColumnVector(); // false because A has more than 1 column
var isSquare = A.isSquare(); // true, because A is 2 * 2 matrix
var isSym = A.isSymmetric(); // false, because A is not symmetric
A.set(1, 0, 10); // A = Matrix [[1, 1], [10, -1], rows: 2, columns: 2]. We have changed the second row and the first column
var diag = A.diag(); // diag = [1, -1] (values in the diagonal)
var m = A.mean(); // m = 2.75
var product = A.prod(); // product = -10 (product of all values of the matrix)
var norm = A.norm(); // norm = 10.14889156509222 (Frobenius norm of the matrix)
var transpose = A.transpose(); // transpose = Matrix [[1, 10], [1, -1], rows: 2, columns: 2]
var z = Matrix.zeros(3, 2); // z = Matrix [[0, 0], [0, 0], [0, 0], rows: 3, columns: 2]
var z = Matrix.ones(2, 3); // z = Matrix [[1, 1, 1], [1, 1, 1], rows: 2, columns: 3]
var z = Matrix.eye(3, 4); // z = Matrix [[1, 0, 0, 0], [0, 1, 0, 0], [0, 0, 1, 0], rows: 3, columns: 4]. there are 1 only in the diagonal
const {
Matrix,
inverse,
solve,
linearDependencies,
QrDecomposition,
LuDecomposition,
CholeskyDecomposition,
EigenvalueDecomposition,
} = require('ml-matrix');
var A = new Matrix([
[2, 3, 5],
[4, 1, 6],
[1, 3, 0],
]);
var inverseA = inverse(A);
var B = A.mmul(inverseA); // B = A * inverse(A), so B ~= Identity
// if A is singular, you can use SVD :
var A = new Matrix([
[1, 2, 3],
[4, 5, 6],
[7, 8, 9],
]);
// A is singular, so the standard computation of inverse won't work (you can test if you don't trust me^^)
var inverseA = inverse(A, (useSVD = true)); // inverseA is only an approximation of the inverse, by using the Singular Values Decomposition
var B = A.mmul(inverseA); // B = A * inverse(A), but inverse(A) is only an approximation, so B doesn't really be identity.
// if you want the pseudo-inverse of a matrix :
var A = new Matrix([
[1, 2],
[3, 4],
[5, 6],
]);
var pseudoInverseA = A.pseudoInverse();
var B = A.mmul(pseudoInverseA).mmul(A); // with pseudo inverse, A*pseudo-inverse(A)*A ~= A. It's the case here
Least square is the following problem: We search for x
, such that A.x = B
(A
, x
and B
are matrix or vectors).
Below, how to solve least square with our function
// If A is non singular :
var A = new Matrix([
[3, 1],
[4.25, 1],
[5.5, 1],
[8, 1],
]);
var B = Matrix.columnVector([4.5, 4.25, 5.5, 5.5]);
var x = solve(A, B);
var error = Matrix.sub(B, A.mmul(x)); // The error enables to evaluate the solution x found.
// If A is non singular :
var A = new Matrix([
[1, 2, 3],
[4, 5, 6],
[7, 8, 9],
]);
var B = Matrix.columnVector([8, 20, 32]);
var x = solve(A, B, (useSVD = true)); // there are many solutions. x can be [1, 2, 1].transpose(), or [1.33, 1.33, 1.33].transpose(), etc.
var error = Matrix.sub(B, A.mmul(x)); // The error enables to evaluate the solution x found.
var A = new Matrix([
[2, 3, 5],
[4, 1, 6],
[1, 3, 0],
]);
var QR = new QrDecomposition(A);
var Q = QR.orthogonalMatrix;
var R = QR.upperTriangularMatrix;
// So you have the QR decomposition. If you multiply Q by R, you'll see that A = Q.R, with Q orthogonal and R upper triangular
var A = new Matrix([
[2, 3, 5],
[4, 1, 6],
[1, 3, 0],
]);
var LU = new LuDecomposition(A);
var L = LU.lowerTriangularMatrix;
var U = LU.upperTriangularMatrix;
var P = LU.pivotPermutationVector;
// So you have the LU decomposition. P includes the permutation of the matrix. Here P = [1, 2, 0], i.e the first row of LU is the second row of A, the second row of LU is the third row of A and the third row of LU is the first row of A.
var A = new Matrix([
[2, 3, 5],
[4, 1, 6],
[1, 3, 0],
]);
var cholesky = new CholeskyDecomposition(A);
var L = cholesky.lowerTriangularMatrix;
var A = new Matrix([
[2, 3, 5],
[4, 1, 6],
[1, 3, 0],
]);
var e = new EigenvalueDecomposition(A);
var real = e.realEigenvalues;
var imaginary = e.imaginaryEigenvalues;
var vectors = e.eigenvectorMatrix;
var A = new Matrix([
[2, 0, 0, 1],
[0, 1, 6, 0],
[0, 3, 0, 1],
[0, 0, 1, 0],
[0, 1, 2, 0],
]);
var dependencies = linearDependencies(A);
// dependencies is a matrix with the dependencies of the rows. When we look row by row, we see that the first row is [0, 0, 0, 0, 0], so it means that the first row is independent, and the second row is [ 0, 0, 0, 4, 1 ], i.e the second row = 4 times the 4th row + the 5th row.
FAQs
Matrix manipulation and computation library
The npm package ml-matrix receives a total of 0 weekly downloads. As such, ml-matrix popularity was classified as not popular.
We found that ml-matrix demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago. It has 7 open source maintainers collaborating on the project.
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