Maintainer: | H.W. Borchers, R. Hankin, S. Sokol |

Contact: | hwb at mailbox.org |

Version: | 2022-12-22 |

URL: | https://CRAN.R-project.org/view=NumericalMathematics |

Source: | https://github.com/cran-task-views/NumericalMathematics/ |

Contributions: | Suggestions and improvements for this task view are very welcome and can be made through issues or pull requests on GitHub or via e-mail to the maintainer address. For further details see the Contributing guide. |

Citation: | H.W. Borchers, R. Hankin, S. Sokol (2022). CRAN Task View: Numerical Mathematics. Version 2022-12-22. URL https://CRAN.R-project.org/view=NumericalMathematics. |

Installation: | The packages from this task view can be installed automatically using the ctv package. For example, `ctv::install.views("NumericalMathematics", coreOnly = TRUE)` installs all the core packages or `ctv::update.views("NumericalMathematics")` installs all packages that are not yet installed and up-to-date. See the CRAN Task View Initiative for more details. |

This task view on numerical mathematics lists R packages and functions that are useful for solving numerical problems in linear algebra and analysis. It shows that R is a viable computing environment for implementing and applying numerical methods, also outside the realm of statistics.

The task view will *not* cover differential equations, optimization problems and solvers, or packages and functions operating on times series, because all these topics are treated extensively in the corresponding task views DifferentialEquations, Optimization, and TimeSeries. All these task views together will provide a good selection of what is available in R for the area of numerical mathematics. The HighPerformanceComputing task view with its many links for parallel computing may also be of interest.

The task view has been created to provide an overview of the topic. If some packages are missing or certain topics in numerical math should be treated in more detail, please contact the maintainer, either via e-mail or by submitting an issue or pull request in the GitHub repository linked above.

As statistics is based to a large extent on linear algebra, many numerical linear algebra routines are present in R, and some only implicitly. Examples of explicitly available functions are vector and matrix operations, matrix (QR) decompositions, solving linear equations, eigenvalues/-vectors, singular value decomposition, or least-squares approximation.

- The recommended package Matrix provides classes and methods for dense and sparse matrices and operations on them, for example Cholesky and Schur decomposition, matrix exponential, or norms and conditional numbers for sparse matrices.
- Recommended package MASS adds generalized (Penrose) inverses and null spaces of matrices.
- expm computes the exponential, logarithm, and square root of square matrices, but also powers of matrices or the Frechet derivative.
`expm()`

is to be preferred to the function with the same name in Matrix. - SparseM provides classes and methods for sparse matrices and for solving linear and least-squares problems in sparse linear algebra
- Package rmumps provides a wrapper for the MUMPS library, solving large linear systems of equations applying a sparse direct solver.
- sanic supports routines for solving (dense and sparse) large systems of linear equations; direct and iterative solvers from the Eigen C++ library are made available, including Cholesky, LU, QR, and Krylov subspace methods.
- Rlinsolve is a collection of iterative solvers for sparse linear system of equations; stationary iterative solvers such as Jacobi or Gauss-Seidel, as well as nonstationary (Krylov subspace) methods are provided.
- svd provides R bindings to state-of-the-art implementations of singular value decomposition (SVD) and eigenvalue/eigenvector computations. Package irlba will compute approximate singular values/vectors of large matrices.
- Package PRIMME interfaces PRIMME, a C library for computing eigenvalues and eigenvectors of real symmetric or complex Hermitian matrices. It will find largest, smallest, or interior eigen-/singular values and will apply preconditioning to accelerate convergence.
- The geigen package computes generalized eigenvalues and -vectors for pairs of matrices and QZ (generalized Schur) decompositions.
- Package rARPACK, a wrapper for the ARPACK library, is typically used to compute only a few eigenvalues/vectors, e.g., a small number of largest eigenvalues.
- Package RSpectra interfaces the ‘Spectra’ library for large-scale eigenvalue decomposition and SVD problems.
- optR uses elementary methods of linear algebra (Gauss, LU, CGM, Cholesky) to solve linear systems.
- Package mbend for bending non-positive-definite (symmetric) matrices to positive-definiteness, using weighted and unweighted methods.
- matrixcalc contains a collection of functions for matrix calculations, special matrices, and tests for matrix properties, e.g., (semi-)positive definiteness; mainly used for teaching and research purposes
- matlib contains a collection of matrix functions for teaching and learning matrix linear algebra as used in multivariate statistical methods; mainly for tutorial purposes in learning matrix algebra ideas using R.
- Package onion contains routines for manipulating quaternions and octonians (normed division algebras over the real numbers); quaternions can be useful for handling rotations in three-dimensional space.
- clifford provides a suite of routines for arbitrary dimensional Clifford algebras and discusses special cases such as Lorentz transforms or quaternion multiplication.
- Packages RcppArmadillo and RcppEigen enable the integration of the C++ template libraries ‘Armadillo’ resp. ‘Eigen’ for linear algebra applications written in C++ and integrated in R using Rcpp for performance and ease of use.

Many special mathematical functions are present in R, especially logarithms and exponentials, trigonometric and hyperbolic functions, or Bessel and Gamma functions. Many more special functions are available in contributed packages.

- Package gsl provides an interface to the ‘GNU Scientific Library’ that contains implementations of many special functions, for example the Airy and Bessel functions, elliptic and exponential integrals, the hypergeometric function, Lambert’s W function, and many more. RcppGSL provides an easy-to-use interface between ‘GSL’ data structures and R, using concepts from ‘Rcpp’.
- Airy and Bessel functions, for real and complex numbers, are also computed in package Bessel, with approximations for large arguments.
- Package pracma includes special functions, such as error functions and inverses, incomplete and complex gamma function, exponential and logarithmic integrals, Fresnel integrals, the polygamma and the Dirichlet and Riemann zeta functions.
- The hypergeometric (and generalized hypergeometric) function, is computed in hypergeo, including transformation formulas and special values of the parameters.
- HypergeoMat evaluates the hypergeometric functions of a matrix argument through a C++ implementation of Koev and Edelman’s algorithm.
- Elliptic and modular functions are available in package elliptic, e.g., the Weierstrass P function and Jacobi’s theta functions. There are tools for visualizing complex functions.
- jacobi evaluates Jacobi theta and related functions: Weierstrass elliptic functions, Weierstrass sigma and zeta function, Klein j-function, Dedekind eta function, lambda modular function, Jacobi elliptic functions, Neville theta functions, Eisenstein series. Complex values of the variable are supported.
- Carlson evaluates Carlson elliptic and incomplete elliptic integrals (with compex arguments).
- Package expint wraps C-functions from the GNU Scientific Library to calculate exponential integrals and the incomplete Gamma function, including negative values for its first argument.
- fourierin computes Fourier integrals of functions of one and two variables using the Fast Fourier Transform.
- logOfGamma uses approximations to compute the natural logarithms of the Gamma function for large values.
- Package lamW implements both real-valued branches of the Lambert W function (using Rcpp).

Function polyroot() in base R determines all zeros of a polynomial, based on the Jenkins-Traub algorithm. Linear regression function lm() can perform polynomial fitting when using `poly()`

in the model formula (with option `raw = TRUE`

).

- Packages PolynomF (recommended) and polynom provide similar functionality for manipulating univariate polynomials, like evaluating polynomials (Horner scheme), or finding their roots. ‘PolynomF’ generates orthogonal polynomials and provides graphical display features.
- polyMatrix (based on ‘polynom’) implements basic matrix operations and provides thus an infrastructure for the manipulation of polynomial matrices.
- Package MonoPoly fits univariate polynomials to given data, applying different algorithms.
- For multivariate polynomials, package multipol provides various tools to manipulate and combine these polynomials of several variables.
- Package mpoly facilitates symbolic manipulations on multivariate polynomials, including basic differential calculus operations on polynomials, plus some Groebner basis calculations.
- mvp enables fast manipulation of symbolic multivariate polynomials, using print and coercion methods from the ‘mpoly’ package, but offers speed improvements.
- Package orthopolynom consists of a collection of functions to construct orthogonal polynomials and their recurrence relations, among them Chebyshev, Hermite, and Legendre polynomials, as well as spherical and ultraspherical polynomials. There are functions to operate on these polynomials.
- Symbolic calculation and evaluation of the Jack polynomials, zonal polynomials (appear in random matrix theory), and Schur polynomials (appear in combinatorics) is available in package jack.
- The Free Algebra in R package freealg handles multivariate polynomials with non-commuting indeterminates.

`D()`

and `deriv()`

in base R compute derivatives of simple expressions symbolically. Function `integrate()`

implements an approach for numerically integrating univariate functions in R. It applies adaptive Gauss-Kronrod quadrature and can handle singularities and unbounded domains to a certain extent.

- Package Deriv provides an extended solution for symbolic differentiation in R; the user can add custom derivative rules, and the output for a function will be an executable function again.
- numDeriv sets the standard for numerical differentiation in R, providing numerical gradients, Jacobians, and Hessians, computed by simple finite differences, Richardson extrapolation, or the highly accurate complex step approach.
- Package dual achieves automatic differentiation (for univariate functions) by employing dual numbers; for a mathematical function its value and its exact first derivative are returned.
- Package autodiffr (on Github) provides an R wrapper for the Julia packages ForwardDiff.jl and ReverseDiff.jl to do automatic differentiation for native R functions.
- pracma contains functions for computing numerical derivatives, including Richardson extrapolation or complex step.
`fderiv()`

computes numerical derivatives of higher orders. pracma also has several routines for numerical integration: adaptive Lobatto quadrature, Romberg integration, Newton-Cotes formulas, Clenshaw-Curtis quadrature rules.`integral2()`

integrates functions in two dimensions, also for polar coordinates or domains with variable interval limits. - cubature is a package for adaptive multivariate integration over hypercubes in n-dimensional space, based on the C-library ‘cubature’, resp. for deterministic and Monte-Carlo integration based on library ‘Cuba’. Function ‘cubintegrate()’ wraps all the integration methods provided.
- Package gaussquad contains a collection of functions to perform Gaussian quadrature, among them Chebyshev, Hermite, Laguerre, and Legendre quadrature rules, explicitly returning nodes and weights in each case. Function
`gaussquad()`

in package statmod does a similar job. - GramQuad allows for numerical integration based on Gram polynomials.
- Package fastGHQuad provides a fast Rcpp-based implementation of (adaptive) Gauss-Hermite quadrature.
- mvQuad provides methods for generating multivariate grids that can be used for multivariate integration. These grids will be based on different quadrature rules such as Newton-Cotes or Gauss quadrature formulas.
- Package SparseGrid provides another approach to multivariate integration in high-dimensional spaces. It creates sparse n-dimensional grids that can be used as with quadrature rules.
- Package SphericalCubature employs cubature to integrate functions over unit spheres and balls in n-dimensional space; SimplicialCubature provides methods to integrate functions over m-dimensional simplices in n-dimensional space. Both packages comprise exact methods for polynomials.
- Package polyCub holds some routines for numerical integration over polygonal domains in two dimensions.
- Package Pade calculates the numerator and denominator coefficients of the Pade approximation, given the Taylor series coefficients of sufficient length.
- calculus provides efficient functions for high-dimensional numerical and symbolic calculus, including accurate higher-order derivatives, Taylor series expansion, differential operators, and Monte-Carlo integration in orthogonal coordinate systems.
- features extracts features from functional data, such as first and second derivatives, or curvature at critical points, while RootsExtremaInflections finds roots, extrema and inflection points of curves defined by discrete points.

Base R provides functions `approx()`

for constant and linear interpolation, and `spline()`

for cubic (Hermite) spline interpolation, while `smooth.spline()`

performs cubic spline approximation. Base package splines creates periodic interpolation splines in function `periodicSpline()`

.

- Interpolation of irregularly spaced data is possible with the akima package:
`aspline()`

for univariate data,`bicubic()`

or`interp()`

for data on a 2D rectangular domain. (This package is distributed under ACM license and not available for commercial use.) - Package signal contains several
*filters*to smooth discrete data, notably`interp1()`

for linear, spline, and cubic interpolation,`pchip()`

for piecewise cubic Hermite interpolation, and`sgolay()`

for Savitzky-Golay smoothing. - Package pracma provides barycentric Lagrange interpolation (in 1 and 2 dimensions) in
`barylag()`

resp.`barylag2d()`

, 1-dim. akima in`akimaInterp()`

, and interpolation and approximation of data with rational functions, i.e. in the presence of singularities, in`ratinterp()`

and`rationalfit()`

. - The interp package provides bivariate data interpolation on regular and irregular grids, either linear or using splines. Currently the piecewise linear interpolation part is implemented. (It is intended to provide a free replacement for the ACM licensed
`akima::interp`

and`tripack::tri.mesh`

functions.) - Package splines2 provides basis matrices of B-splines, M-splines, I-splines, convex splines (C-splines), periodic splines, natural cubic splines, generalized Bernstein polynomials, and their integrals (except C-splines) and derivatives by closed-form recursive formulas.
- bspline uses B-splines for creating functions interpolating and smooting 1D data.
`fitsmbsp()`

can optimize knot positions and impose monotonicity and positivity constraints. Produced functions can be differentiated with`dbsp()`

or integrated with`ibsp()`

. - tripack for triangulation of irregularly spaced data is a constrained two-dimensional Delaunay triangulation package providing both triangulation and generation of Voronoi mosaics of irregular spaced data.
`sinterp()`

in package stinepack realizes interpolation based on piecewise rational functions by applying Stineman’s algorithm. The interpolating function will be monotone in regions where the specified points change monotonically.`Schumaker()`

in package schumaker implements shape-preserving splines, guaranteed to be monotonic resp. concave or convex if the data is monotonic, concave, or convex.- ADPF uses least-squares polynomial regression and statistical testing to improve Savitzky-Golay smoothing.
- Package conicfit provides several (geometric and algebraic) algorithms for fitting circles, ellipses, and conics in general.

`uniroot()`

, implementing the Brent-Decker algorithm, is the basic routine in R to find roots of univariate functions. There are implementations of the bisection algorithm in several contributed packages. For root finding with higher precision there is function `unirootR()`

in the multi-precision package Rmpfr. For finding roots of univariate and multivariate functions see the following packages:

- Package itp implements the Interpolate, Truncate, Project (ITP) root-finding algorithm. The user provides a univariate (1-dim.) function and the endpoints of an interval where the function values have different signs.
- Package rootSolve includes function
`multiroot()`

for finding roots of systems of nonlinear (and linear) equations; it also contains an extension`uniroot.all()`

that attempts to find all zeros of a univariate function in an intervall (excepting quadratic zeros). - For solving nonlinear systems of equations the BB package provides Barzilai-Borwein spectral methods in
`sane()`

, including a derivative-free variant in`dfsane()`

, and multi-start features with sensitivity analysis. - Package nleqslv solves nonlinear systems of equations using alternatively the Broyden or Newton method, supported by strategies such as line searches or trust regions.
- ktsolve defines a common interface for solving a set of equations with
`BB`

or`nleqslv`

. - FixedPoint provides algorithms for finding fixed point vectors of functions, including Anderson acceleration, epsilon extrapolation methods, or minimal polynomial methods .
- Package daarem implements the DAAREM method for accelerating the convergence of any smooth, monotone, slow fixed point iteration.
- Algorithms for accelerating the convergence of slow, monotone sequences from smooth contraction mappings such as the expectation-maximization (EM) algorithm are provided in packages SQUAREM resp. turboEM.

Not so many functions are available for computational number theory. Note that integers in double precision can be represented exactly up to `2^53 - 1`

, above that limit a multi-precision package such as gmp is needed, see below.

- Package numbers provides functions for factorization, prime numbers, twin primes, primitive roots, modular inverses, extended GCD, etc. Included are some number-theoretic functions like divisor functions or Euler’s Phi function.
- contfrac contains various utilities for evaluating continued fractions and partial convergents.
- magic creates and investigates magical squares and hypercubes, including functions for the manipulation and analysis of arbitrarily dimensioned arrays.
- Package freegroup provides functionality for manipulating elements of a free group including juxtaposition, inversion, multiplication by a scalar, power operations, and Tietze forms.
- The partitions package enumerates additive partitions of integers, including restricted and unequal partitions.
- permutations treats permutations as invertible functions of finite sets and includes several mathematical operations on them.
- Package combinat generates all permutations or all combinations of a certain length of a set of elements (i.e. a vector); it also computes binomial coefficients.
- Package arrangements provides generators and iterators for permutations, combinations and partitions. The iterators allow users to generate arrangements in a fast and memory efficient manner. Permutations and combinations can be drawn with/without replacement and support multisets.
- Package set6 (on Github) implements (as R6 classes) many forms of mathematical sets (sets, tuples, intervals) and allows for standard operations on them (unions, products, differences, etc.).
- RcppAlgos provides flexible functions for generating combinations or permutations of a vector with or without constraints; the extension package RcppBigIntAlgos features a quadratic sieve algorithm for completely factoring large integers.
- Package Zseq generates well-known integer sequences; the ‘gmp’ package is adopted for computing with arbitrarily large numbers. Every function has on its help page a hyperlink to the corresponding entry in the On-Line Encyclopedia of Integer Sequences ( OEIS ).
- Package primes provides quite fast (Rcpp) functions for identifying and generating prime numbers. And primefactr uses prime factorization for computations such as reducing ratios of large factorials.

- Multiple precision arithmetic is available in R through package gmp that interfaces to the GMP C library. Examples are factorization of integers, a probabilistic prime number test, or operations on big rationals -- for which linear systems of equations can be solved.
- Multiple precision floating point operations and functions are provided through package Rmpfr using the MPFR and GMP libraries. Special numbers and some special functions are included, as well as routines for root finding, integration, and optimization in arbitrary precision.
- Brobdingnag handles very large numbers by holding their logarithm plus a flag indicating their sign. (An excellent vignette explains how this is done using S4 methods.)
- VeryLargeIntegers implements a multi-precision library that allows to store and manage arbitrarily big integers; it includes probabilistic primality tests and factorization algorithms.
- bignum is a package for arbitrary-precision integer and floating-point numbers of 50 decimal digits of precision. The package utilizes the ‘Boost.Multiprecision’ C++ library and is specifically designed to work with the ‘tidyverse’ collection of R packages.
- Package Ryacas interfaces the computer algebra system ‘Yacas’; it supports symbolic and arbitrary precision computations in calculus and linear algebra.
- Package caracas (based on ‘reticulate’) accesses the symbolic algebra system ‘SymPy’; supported are symbolic operations in linear algebra and calculus, such as eigenvalues, derivatives, integrals, limits, etc., computing special functions, or solving systems of equations.
- Package symengine provides an interface to ‘SymEngine’, a C++ library for fast symbolic calculations, such as manipulating mathematical expressions, finding exact derivatives, performing symbolic matrix computations, or solving ordinary differential equations (numerically).
- Package rim provides an interface to the free and powerful computer algebra system Maxima. Results can be output in LaTeX or MathML, and 2D and 3D plots will be displayed directly. Maxima code chunks can be included in ‘RMarkdown’ documents.
- Package m2r provides a persistent interface to Macauley2, an extended software program supporting research in algebraic geometry and commutative algebra. Macauley2 has to be installed independently, otherwise a Macauley2 process in the cloud will be instantiated.

Python, through its modules ‘NumPy’, ‘SciPy’, ‘Matplotlib’, ‘SymPy’, and ‘pandas’, has elaborate and efficient numerical and graphical tools available.

- reticulate is an R interface to Python modules, classes, and functions. When calling Python in R data types are automatically converted to their equivalent Python types; when values are returned from Python to R they are converted back to R types. This package from the RStudio team is a kind of standard for calling Python from R.
- feather provides bindings to read and write feather files, a lightweight binary data store designed for maximum speed. This storage format can also be accessed in Python, Julia, or Scala.
- ‘pyRserve’ is a Python module for connecting Python to an R process running Rserve as an RPC gateway. This R process can run on a remote machine, variable access and function calls will be delegated through the network.
- XRPython (and ‘XRJulia’) are based on John Chambers’ XR package and his “Extending R” book and allow for a structured integration of R with Python resp. Julia.

SageMath is an open source mathematics system based on Python, allowing to run R functions, but also providing access to systems like Maxima, GAP, FLINT, and many more math programs. SageMath can be freely used through a Web interface at CoCalc .

Interfaces to numerical computation software such as MATLAB (commercial) or Octave (free) will be important when solving difficult numerical problems. Unfortunately, at the moment there is no package allowing to call Octave functions from within R.

- The matlab emulation package contains about 30 simple functions, replicating MATLAB functions, using the respective MATLAB names and being implemented in pure R.
- Packages rmatio and R.matlab provides tools to read and write MAT files (the MATLAB data format) for versions 4 and 5. ‘R.matlab’ also enables a one-directional interface with a MATLAB v6 process, sending and retrieving objects through a TCP connection.

Julia is “a high-level, high-performance dynamic programming language for numerical computing”, which makes it interesting for optimization problems and other demanding scientific computations in R.

- JuliaCall provides seamless integration between R and Julia; the user can call Julia functions just like any R function, and R functions can be called in the Julia environment, both with reasonable automatic type conversion. Notes on Julia Call provides an introduction of how to apply Julia functions with ‘JuliaCall’.
- JuliaConnectoR provides a functionally oriented interface for integrating Julia with R; imported Julia functions can be called as R functions; data structures are converted automatically.
- Package XRJulia provides an interface from R to computations in the Julia language, based on the interface structure described in the book “Extending R” by John M. Chambers.

Java Math functions can be employed through the ‘rjava’ or ‘rscala’ interfaces. Then package commonsMath allows calling Java JAR files of the Apache Commons Mathematics Library, a specialized library for all aspects of numerics, optimization, and differential equations.

Please note that commercial programs such as MATLAB, Maple, or Mathematica have facilities to call R functions.

- Textbook: Hands-On Matrix Algebra Using R
- Textbook: Introduction to Scientific Programming and Simulation Using R
- Textbook: Numerical Methods in Science and Engineering Using R
- Textbook: Computational Methods for Numerical Analysis with R
- MATLAB / R Reference (D. Hiebeler)
- Abramowitz and Stegun. Handbook of Mathematical Functions
- Numerical Recipes: The Art of Numerical Computing
- E. Weisstein’s Wolfram MathWorld

- CRAN Task View: DifferentialEquations
- CRAN Task View: HighPerformanceComputing
- CRAN Task View: Optimization
- CRAN Task View: TimeSeries
- GitHub Project: autodiffr
- GitHub Project: set6