Roots.jl
Root finding functions for Julia
Install / Use
/learn @JuliaMath/Roots.jlREADME
Root finding functions for Julia
This package contains simple routines for finding roots, or zeros, of
scalar functions of a single real variable using floating-point math. The find_zero function
provides the primary interface. The basic call is
find_zero(f, x0, [M], [p]; kws...) where, typically, f is a function, x0 a starting point or
bracketing interval, M is used to adjust the default algorithms used, and p can be used to pass in parameters.
The various algorithms include:
-
Bisection-like algorithms. For functions where a bracketing interval is known (one where
f(a)andf(b)have alternate signs), a bracketing method, likeBisection, can be specified. The default isBisection, for most floating point number types, employed in a manner exploiting floating point storage conventions. For other number types (e.g.BigFloat), an algorithm of Alefeld, Potra, and Shi is used by default. These default methods are guaranteed to converge. Other bracketing methods are available. -
Several derivative-free algorithms. These are specified through the methods
Order0,Order1(the secant method),Order2(the Steffensen method),Order5,Order8, andOrder16. The number indicates, roughly, the order of convergence. TheOrder0method is the default, and the most robust, but may take more function calls to converge, as it employs a bracketing method when possible. The higher order methods promise faster convergence, though don't always yield results with fewer function calls thanOrder1orOrder2. The methodsRoots.Order1BandRoots.Order2Bare superlinear and quadratically converging methods independent of the multiplicity of the zero. -
There are historic algorithms that require a derivative or two to be specified:
Roots.NewtonandRoots.Halley.Roots.Schroderprovides a quadratic method, like Newton's method, which is independent of the multiplicity of the zero. This is generalized byRoots.ThukralXB(withXbeing 2,3,4, or 5). -
There are several non-exported algorithms, such as,
Roots.Brent(),Roots.LithBoonkkampIJzermanBracket, andRoots.LithBoonkkampIJzerman.
Each method's documentation has additional detail.
Some examples:
julia> using Roots
julia> f(x) = exp(x) - x^4;
julia> α₀, α₁, α₂ = -0.8155534188089607, 1.4296118247255556, 8.6131694564414;
julia> find_zero(f, (8,9), Bisection()) ≈ α₂ # a bisection method has the bracket specified
true
julia> find_zero(f, (-10, 0)) ≈ α₀ # Bisection is default if x in `find_zero(f, x)` is not scalar
true
julia> find_zero(f, (-10, 0), Roots.A42()) ≈ α₀ # fewer function evaluations than Bisection
true
For non-bracketing methods, the initial position is passed in as a
scalar, or, possibly, for secant-like methods an iterable like (x_0, x_1):
julia> find_zero(f, 3) ≈ α₁ # find_zero(f, x0::Number) will use Order0()
true
julia> find_zero(f, 3, Order1()) ≈ α₁ # same answer, different method (secant)
true
julia> find_zero(f, (3, 2), Order1()) ≈ α₁ # start secant method with (3, f(3), (2, f(2))
true
julia> find_zero(sin, BigFloat(3.0), Order16()) ≈ π # 2 iterations to 6 using Order1()
true
The find_zero function can be used with callable objects:
julia> using Polynomials;
julia> x = variable();
julia> find_zero(x^5 - x - 1, 1.0) ≈ 1.1673039782614187
true
The function should respect the units of the Unitful package:
julia> using Unitful
julia> s, m = u"s", u"m";
julia> g, v₀, y₀ = 9.8*m/s^2, 10m/s, 16m;
julia> y(t) = -g*t^2 + v₀*t + y₀
y (generic function with 1 method)
julia> find_zero(y, 1s) ≈ 1.886053370668014s
true
Newton's method can be used without taking derivatives by hand. The
following examples use the ForwardDiff package:
julia> using ForwardDiff
julia> D(f) = x -> ForwardDiff.derivative(f,float(x))
D (generic function with 1 method)
Now we have:
julia> f(x) = x^3 - 2x - 5
f (generic function with 1 method)
julia> x0 = 2
2
julia> find_zero((f, D(f)), x0, Roots.Newton()) ≈ 2.0945514815423265
true
Automatic derivatives allow for easy solutions to finding critical points of a function.
julia> using Statistics: mean, median
julia> as = rand(5);
julia> M(x) = sum((x-a)^2 for a in as)
M (generic function with 1 method)
julia> find_zero(D(M), .5) ≈ mean(as)
true
julia> med(x) = sum(abs(x-a) for a in as)
med (generic function with 1 method)
julia> find_zero(D(med), (0, 1)) ≈ median(as)
true
The CommonSolve interface
The
DifferentialEquations
interface of setting up a problem; initializing the problem; then
solving the problem is also implemented using the types
ZeroProblem and the methods init, solve!, and solve (from CommonSolve).
For example, we can solve a problem with many different methods, as follows:
julia> f(x) = exp(-x) - x^3
f (generic function with 1 method)
julia> x0 = 2.0
2.0
julia> fx = ZeroProblem(f, x0)
ZeroProblem{typeof(f), Float64}(f, 2.0)
julia> solve(fx) ≈ 0.7728829591492101
true
With no default, and a single initial point specified, the default
Order1 method is used. The solve method allows other root-solving
methods to be passed, along with other options. For example, to use
the Order2 method using a convergence criteria (see below) that
|xₙ - xₙ₋₁| ≤ δ, we could make this call:
julia> solve(fx, Order2(); atol=0.0, rtol=0.0) ≈ 0.7728829591492101
true
Unlike find_zero, which errors on non-convergence, solve returns
NaN on non-convergence.
This next example has a zero at 0.0, but
for most initial values will escape towards ±∞, sometimes causing a
relative tolerance to return a misleading value. Here we can see the
differences:
julia> f(x) = cbrt(x) * exp(-x^2)
f (generic function with 1 method)
julia> x0 = 0.1147
0.1147
julia> find_zero(f, x0, Roots.Order5()) ≈ 5.936596662527689 # stopped as |f(xₙ)| ≤ |xₙ|ϵ
true
julia> find_zero(f, x0, Roots.Order1(), atol=0.0, rtol=0.0) # error as no check on `|f(xn)|`
ERROR: Roots.ConvergenceFailed("Algorithm failed to converge")
[...]
julia> fx = ZeroProblem(f, x0);
julia> solve(fx, Roots.Order1(), atol=0.0, rtol=0.0) # NaN, not an error
NaN
julia> fx = ZeroProblem((f, D(f)), x0); # higher order methods can identify zero of this function
julia> solve(fx, Roots.LithBoonkkampIJzerman(2,1), atol=0.0, rtol=0.0)
0.0
Functions may be parameterized, as illustrated:
julia> f(x, p=2) = cos(x) - x/p
f (generic function with 2 methods)
julia> Z = ZeroProblem(f, pi/4)
ZeroProblem{typeof(f), Float64}(f, 0.7853981633974483)
julia> solve(Z, Order1()) ≈ 1.0298665293222586 # use p=2 default
true
julia> solve(Z, Order1(), p=3) ≈ 1.170120950002626 # use p=3
true
julia> solve(Z, Order1(), 4) ≈ 1.2523532340025887 # by position, uses p=4
true
Multiple zeros
The find_zeros function can be used to search for all zeros in a
specified interval. The basic algorithm essentially splits the interval into many
subintervals. For each, if there is a bracket, a bracketing algorithm
is used to identify a zero, otherwise a derivative free method is used
to search for zeros. This heuristic algorithm can miss zeros for various reasons, so the
results should be confirmed by other means.
julia> f(x) = exp(x) - x^4
f (generic function with 2 methods)
julia> find_zeros(f, -10,10) ≈ [α₀, α₁, α₂] # from above
true
The interval can also be specified using a structure with extrema
defined, where extrema returns two different values:
julia> using IntervalSets
julia> find_zeros(f, -10..10) ≈ [α₀, α₁, α₂]
true
(For tougher problems, the
IntervalRootFinding
package gives guaranteed results, rather than the heuristically
identified values returned by find_zeros.)
Convergence
For most algorithms, convergence is decided when
-
The value
|f(x_n)| <= tolwithtol = max(atol, abs(x_n)*rtol), or -
the values
x_n ≈ x_{n-1}with tolerancesxatolandxrtolandf(x_n) ≈ 0with a relaxed tolerance based onatolandrtol.
The find_zero algorithm stops if
-
it encounters an
NaNor anInf, or -
the number of iterations exceed
maxevals
If the algorithm stops and the relaxed convergence criteria is met,
the suspected zero is returned. Otherwise an error is thrown
indicating no convergence. To adjust the tolerances, find_zero
accepts keyword arguments atol, rtol, xatol, and xrtol, as
seen in some examples above.
The Bisection and Roots.A42 methods are guaranteed to converge
even if the tolerances are set to zero, so these are the
defaults. Non-zero values for xatol and xrtol can be specified to
reduce the number of function calls when lower precision is required.
julia> fx = ZeroProblem(sin, (3,4));
julia> solve(fx, Bisection(); xatol=1/16)
3.125
An alternate interface
This functionality is provided by the fzero function, familiar to
MATLAB users. Roots also provides this alternative interface:
-
fzero(f, x0::Real; order=0)calls a derivative-free method. with the order specifying one ofOrder0,Order1, etc. -
fzero(f, a::Real, b::Real)calls thefind_zeroalgorithm with theBisectionmethod. -
fzeros(f, a::Real, b::Real)will call `find_zero
Related Skills
node-connect
344.4kDiagnose OpenClaw node connection and pairing failures for Android, iOS, and macOS companion apps
frontend-design
99.2kCreate distinctive, production-grade frontend interfaces with high design quality. Use this skill when the user asks to build web components, pages, or applications. Generates creative, polished code that avoids generic AI aesthetics.
openai-whisper-api
344.4kTranscribe audio via OpenAI Audio Transcriptions API (Whisper).
qqbot-media
344.4kQQBot 富媒体收发能力。使用 <qqmedia> 标签,系统根据文件扩展名自动识别类型(图片/语音/视频/文件)。
