| from ..libmp.backend import xrange |
| from .calculus import defun |
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| |
| @defun |
| def polyval(ctx, coeffs, x, derivative=False): |
| r""" |
| Given coefficients `[c_n, \ldots, c_2, c_1, c_0]` and a number `x`, |
| :func:`~mpmath.polyval` evaluates the polynomial |
| |
| .. math :: |
| |
| P(x) = c_n x^n + \ldots + c_2 x^2 + c_1 x + c_0. |
| |
| If *derivative=True* is set, :func:`~mpmath.polyval` simultaneously |
| evaluates `P(x)` with the derivative, `P'(x)`, and returns the |
| tuple `(P(x), P'(x))`. |
| |
| >>> from mpmath import * |
| >>> mp.pretty = True |
| >>> polyval([3, 0, 2], 0.5) |
| 2.75 |
| >>> polyval([3, 0, 2], 0.5, derivative=True) |
| (2.75, 3.0) |
| |
| The coefficients and the evaluation point may be any combination |
| of real or complex numbers. |
| """ |
| if not coeffs: |
| return ctx.zero |
| p = ctx.convert(coeffs[0]) |
| q = ctx.zero |
| for c in coeffs[1:]: |
| if derivative: |
| q = p + x*q |
| p = c + x*p |
| if derivative: |
| return p, q |
| else: |
| return p |
|
|
| @defun |
| def polyroots(ctx, coeffs, maxsteps=50, cleanup=True, extraprec=10, |
| error=False, roots_init=None): |
| """ |
| Computes all roots (real or complex) of a given polynomial. |
| |
| The roots are returned as a sorted list, where real roots appear first |
| followed by complex conjugate roots as adjacent elements. The polynomial |
| should be given as a list of coefficients, in the format used by |
| :func:`~mpmath.polyval`. The leading coefficient must be nonzero. |
| |
| With *error=True*, :func:`~mpmath.polyroots` returns a tuple *(roots, err)* |
| where *err* is an estimate of the maximum error among the computed roots. |
| |
| **Examples** |
| |
| Finding the three real roots of `x^3 - x^2 - 14x + 24`:: |
| |
| >>> from mpmath import * |
| >>> mp.dps = 15; mp.pretty = True |
| >>> nprint(polyroots([1,-1,-14,24]), 4) |
| [-4.0, 2.0, 3.0] |
| |
| Finding the two complex conjugate roots of `4x^2 + 3x + 2`, with an |
| error estimate:: |
| |
| >>> roots, err = polyroots([4,3,2], error=True) |
| >>> for r in roots: |
| ... print(r) |
| ... |
| (-0.375 + 0.59947894041409j) |
| (-0.375 - 0.59947894041409j) |
| >>> |
| >>> err |
| 2.22044604925031e-16 |
| >>> |
| >>> polyval([4,3,2], roots[0]) |
| (2.22044604925031e-16 + 0.0j) |
| >>> polyval([4,3,2], roots[1]) |
| (2.22044604925031e-16 + 0.0j) |
| |
| The following example computes all the 5th roots of unity; that is, |
| the roots of `x^5 - 1`:: |
| |
| >>> mp.dps = 20 |
| >>> for r in polyroots([1, 0, 0, 0, 0, -1]): |
| ... print(r) |
| ... |
| 1.0 |
| (-0.8090169943749474241 + 0.58778525229247312917j) |
| (-0.8090169943749474241 - 0.58778525229247312917j) |
| (0.3090169943749474241 + 0.95105651629515357212j) |
| (0.3090169943749474241 - 0.95105651629515357212j) |
| |
| **Precision and conditioning** |
| |
| The roots are computed to the current working precision accuracy. If this |
| accuracy cannot be achieved in ``maxsteps`` steps, then a |
| ``NoConvergence`` exception is raised. The algorithm internally is using |
| the current working precision extended by ``extraprec``. If |
| ``NoConvergence`` was raised, that is caused either by not having enough |
| extra precision to achieve convergence (in which case increasing |
| ``extraprec`` should fix the problem) or too low ``maxsteps`` (in which |
| case increasing ``maxsteps`` should fix the problem), or a combination of |
| both. |
| |
| The user should always do a convergence study with regards to |
| ``extraprec`` to ensure accurate results. It is possible to get |
| convergence to a wrong answer with too low ``extraprec``. |
| |
| Provided there are no repeated roots, :func:`~mpmath.polyroots` can |
| typically compute all roots of an arbitrary polynomial to high precision:: |
| |
| >>> mp.dps = 60 |
| >>> for r in polyroots([1, 0, -10, 0, 1]): |
| ... print(r) |
| ... |
| -3.14626436994197234232913506571557044551247712918732870123249 |
| -0.317837245195782244725757617296174288373133378433432554879127 |
| 0.317837245195782244725757617296174288373133378433432554879127 |
| 3.14626436994197234232913506571557044551247712918732870123249 |
| >>> |
| >>> sqrt(3) + sqrt(2) |
| 3.14626436994197234232913506571557044551247712918732870123249 |
| >>> sqrt(3) - sqrt(2) |
| 0.317837245195782244725757617296174288373133378433432554879127 |
| |
| **Algorithm** |
| |
| :func:`~mpmath.polyroots` implements the Durand-Kerner method [1], which |
| uses complex arithmetic to locate all roots simultaneously. |
| The Durand-Kerner method can be viewed as approximately performing |
| simultaneous Newton iteration for all the roots. In particular, |
| the convergence to simple roots is quadratic, just like Newton's |
| method. |
| |
| Although all roots are internally calculated using complex arithmetic, any |
| root found to have an imaginary part smaller than the estimated numerical |
| error is truncated to a real number (small real parts are also chopped). |
| Real roots are placed first in the returned list, sorted by value. The |
| remaining complex roots are sorted by their real parts so that conjugate |
| roots end up next to each other. |
| |
| **References** |
| |
| 1. http://en.wikipedia.org/wiki/Durand-Kerner_method |
| |
| """ |
| if len(coeffs) <= 1: |
| if not coeffs or not coeffs[0]: |
| raise ValueError("Input to polyroots must not be the zero polynomial") |
| |
| return [] |
|
|
| orig = ctx.prec |
| tol = +ctx.eps |
| with ctx.extraprec(extraprec): |
| deg = len(coeffs) - 1 |
| |
| lead = ctx.convert(coeffs[0]) |
| if lead == 1: |
| coeffs = [ctx.convert(c) for c in coeffs] |
| else: |
| coeffs = [c/lead for c in coeffs] |
| f = lambda x: ctx.polyval(coeffs, x) |
| if roots_init is None: |
| roots = [ctx.mpc((0.4+0.9j)**n) for n in xrange(deg)] |
| else: |
| roots = [None]*deg; |
| deg_init = min(deg, len(roots_init)) |
| roots[:deg_init] = list(roots_init[:deg_init]) |
| roots[deg_init:] = [ctx.mpc((0.4+0.9j)**n) for n |
| in xrange(deg_init,deg)] |
| err = [ctx.one for n in xrange(deg)] |
| |
| for step in xrange(maxsteps): |
| if abs(max(err)) < tol: |
| break |
| for i in xrange(deg): |
| p = roots[i] |
| x = f(p) |
| for j in range(deg): |
| if i != j: |
| try: |
| x /= (p-roots[j]) |
| except ZeroDivisionError: |
| continue |
| roots[i] = p - x |
| err[i] = abs(x) |
| if abs(max(err)) >= tol: |
| raise ctx.NoConvergence("Didn't converge in maxsteps=%d steps." \ |
| % maxsteps) |
| |
| if cleanup: |
| for i in xrange(deg): |
| if abs(roots[i]) < tol: |
| roots[i] = ctx.zero |
| elif abs(ctx._im(roots[i])) < tol: |
| roots[i] = roots[i].real |
| elif abs(ctx._re(roots[i])) < tol: |
| roots[i] = roots[i].imag * 1j |
| roots.sort(key=lambda x: (abs(ctx._im(x)), ctx._re(x))) |
| if error: |
| err = max(err) |
| err = max(err, ctx.ldexp(1, -orig+1)) |
| return [+r for r in roots], +err |
| else: |
| return [+r for r in roots] |
|
|