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548 lines
20 KiB
C++
548 lines
20 KiB
C++
// root_finding_example.cpp
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// Copyright Paul A. Bristow 2010, 2015
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// Use, modification and distribution are subject to the
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// Boost Software License, Version 1.0.
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// (See accompanying file LICENSE_1_0.txt
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// or copy at http://www.boost.org/LICENSE_1_0.txt)
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// Example of finding roots using Newton-Raphson, Halley.
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// Note that this file contains Quickbook mark-up as well as code
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// and comments, don't change any of the special comment mark-ups!
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//#define BOOST_MATH_INSTRUMENT
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/*
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This example demonstrates how to use the various tools for root finding
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taking the simple cube root function (`cbrt`) as an example.
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It shows how use of derivatives can improve the speed.
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(But is only a demonstration and does not try to make the ultimate improvements of 'real-life'
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implementation of `boost::math::cbrt`, mainly by using a better computed initial 'guess'
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at `<boost/math/special_functions/cbrt.hpp>`).
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Then we show how a higher root (fifth) can be computed,
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and in `root_finding_n_example.cpp` a generic method
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for the ['n]th root that constructs the derivatives at compile-time,
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These methods should be applicable to other functions that can be differentiated easily.
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First some `#includes` that will be needed.
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[tip For clarity, `using` statements are provided to list what functions are being used in this example:
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you can of course partly or fully qualify the names in other ways.
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(For your application, you may wish to extract some parts into header files,
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but you should never use `using` statements globally in header files).]
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*/
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//[root_finding_include_1
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#include <boost/math/tools/roots.hpp>
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//using boost::math::policies::policy;
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//using boost::math::tools::newton_raphson_iterate;
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//using boost::math::tools::halley_iterate; //
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//using boost::math::tools::eps_tolerance; // Binary functor for specified number of bits.
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//using boost::math::tools::bracket_and_solve_root;
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//using boost::math::tools::toms748_solve;
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#include <boost/math/special_functions/next.hpp> // For float_distance.
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#include <tuple> // for std::tuple and std::make_tuple.
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#include <boost/math/special_functions/cbrt.hpp> // For boost::math::cbrt.
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//] [/root_finding_include_1]
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// using boost::math::tuple;
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// using boost::math::make_tuple;
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// using boost::math::tie;
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// which provide convenient aliases for various implementations,
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// including std::tr1, depending on what is available.
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#include <iostream>
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//using std::cout; using std::endl;
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#include <iomanip>
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//using std::setw; using std::setprecision;
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#include <limits>
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//using std::numeric_limits;
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/*
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Let's suppose we want to find the root of a number ['a], and to start, compute the cube root.
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So the equation we want to solve is:
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__spaces ['f](x) = x[cubed] - a
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We will first solve this without using any information
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about the slope or curvature of the cube root function.
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We then show how adding what we can know about this function, first just the slope,
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the 1st derivation /f'(x)/, will speed homing in on the solution.
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Lastly we show how adding the curvature /f''(x)/ too will speed convergence even more.
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*/
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//[root_finding_noderiv_1
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template <class T>
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struct cbrt_functor_noderiv
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{
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// cube root of x using only function - no derivatives.
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cbrt_functor_noderiv(T const& to_find_root_of) : a(to_find_root_of)
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{ /* Constructor just stores value a to find root of. */ }
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T operator()(T const& x)
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{
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T fx = x*x*x - a; // Difference (estimate x^3 - a).
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return fx;
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}
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private:
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T a; // to be 'cube_rooted'.
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};
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//] [/root_finding_noderiv_1
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/*
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Implementing the cube root function itself is fairly trivial now:
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the hardest part is finding a good approximation to begin with.
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In this case we'll just divide the exponent by three.
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(There are better but more complex guess algorithms used in 'real-life'.)
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Cube root function is 'Really Well Behaved' in that it is monotonic
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and has only one root (we leave negative values 'as an exercise for the student').
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*/
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//[root_finding_noderiv_2
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template <class T>
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T cbrt_noderiv(T x)
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{
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// return cube root of x using bracket_and_solve (no derivatives).
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using namespace std; // Help ADL of std functions.
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using namespace boost::math::tools; // For bracket_and_solve_root.
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int exponent;
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frexp(x, &exponent); // Get exponent of z (ignore mantissa).
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T guess = ldexp(1., exponent/3); // Rough guess is to divide the exponent by three.
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T factor = 2; // How big steps to take when searching.
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const boost::uintmax_t maxit = 20; // Limit to maximum iterations.
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boost::uintmax_t it = maxit; // Initally our chosen max iterations, but updated with actual.
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bool is_rising = true; // So if result if guess^3 is too low, then try increasing guess.
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int digits = std::numeric_limits<T>::digits; // Maximum possible binary digits accuracy for type T.
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// Some fraction of digits is used to control how accurate to try to make the result.
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int get_digits = digits - 3; // We have to have a non-zero interval at each step, so
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// maximum accuracy is digits - 1. But we also have to
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// allow for inaccuracy in f(x), otherwise the last few
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// iterations just thrash around.
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eps_tolerance<T> tol(get_digits); // Set the tolerance.
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std::pair<T, T> r = bracket_and_solve_root(cbrt_functor_noderiv<T>(x), guess, factor, is_rising, tol, it);
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return r.first + (r.second - r.first)/2; // Midway between brackets is our result, if necessary we could
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// return the result as an interval here.
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}
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/*`
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[note The final parameter specifying a maximum number of iterations is optional.
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However, it defaults to `boost::uintmax_t maxit = (std::numeric_limits<boost::uintmax_t>::max)();`
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which is `18446744073709551615` and is more than anyone would wish to wait for!
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So it may be wise to chose some reasonable estimate of how many iterations may be needed,
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In this case the function is so well behaved that we can chose a low value of 20.
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Internally when Boost.Math uses these functions, it sets the maximum iterations to
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`policies::get_max_root_iterations<Policy>();`.]
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Should we have wished we can show how many iterations were used in `bracket_and_solve_root`
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(this information is lost outside `cbrt_noderiv`), for example with:
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if (it >= maxit)
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{
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std::cout << "Unable to locate solution in " << maxit << " iterations:"
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" Current best guess is between " << r.first << " and " << r.second << std::endl;
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}
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else
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{
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std::cout << "Converged after " << it << " (from maximum of " << maxit << " iterations)." << std::endl;
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}
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for output like
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Converged after 11 (from maximum of 20 iterations).
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*/
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//] [/root_finding_noderiv_2]
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// Cube root with 1st derivative (slope)
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/*
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We now solve the same problem, but using more information about the function,
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to show how this can speed up finding the best estimate of the root.
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For the root function, the 1st differential (the slope of the tangent to a curve at any point) is known.
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If you need some reminders then
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[@http://en.wikipedia.org/wiki/Derivative#Derivatives_of_elementary_functions Derivatives of elementary functions]
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may help.
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Using the rule that the derivative of ['x[super n]] for positive n (actually all nonzero n) is ['n x[super n-1]],
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allows us to get the 1st differential as ['3x[super 2]].
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To see how this extra information is used to find a root, view
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[@http://en.wikipedia.org/wiki/Newton%27s_method Newton-Raphson iterations]
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and the [@http://en.wikipedia.org/wiki/Newton%27s_method#mediaviewer/File:NewtonIteration_Ani.gif animation].
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We need to define a different functor `cbrt_functor_deriv` that returns
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both the evaluation of the function to solve, along with its first derivative:
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To \'return\' two values, we use a `std::pair` of floating-point values
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(though we could equally have used a std::tuple):
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*/
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//[root_finding_1_deriv_1
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template <class T>
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struct cbrt_functor_deriv
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{ // Functor also returning 1st derivative.
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cbrt_functor_deriv(T const& to_find_root_of) : a(to_find_root_of)
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{ // Constructor stores value a to find root of,
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// for example: calling cbrt_functor_deriv<T>(a) to use to get cube root of a.
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}
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std::pair<T, T> operator()(T const& x)
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{
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// Return both f(x) and f'(x).
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T fx = x*x*x - a; // Difference (estimate x^3 - value).
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T dx = 3 * x*x; // 1st derivative = 3x^2.
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return std::make_pair(fx, dx); // 'return' both fx and dx.
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}
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private:
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T a; // Store value to be 'cube_rooted'.
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};
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/*`Our cube root function is now:*/
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template <class T>
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T cbrt_deriv(T x)
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{
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// return cube root of x using 1st derivative and Newton_Raphson.
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using namespace boost::math::tools;
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int exponent;
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frexp(x, &exponent); // Get exponent of z (ignore mantissa).
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T guess = ldexp(1., exponent/3); // Rough guess is to divide the exponent by three.
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T min = ldexp(0.5, exponent/3); // Minimum possible value is half our guess.
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T max = ldexp(2., exponent/3); // Maximum possible value is twice our guess.
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const int digits = std::numeric_limits<T>::digits; // Maximum possible binary digits accuracy for type T.
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int get_digits = static_cast<int>(digits * 0.6); // Accuracy doubles with each step, so stop when we have
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// just over half the digits correct.
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const boost::uintmax_t maxit = 20;
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boost::uintmax_t it = maxit;
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T result = newton_raphson_iterate(cbrt_functor_deriv<T>(x), guess, min, max, get_digits, it);
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return result;
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}
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//] [/root_finding_1_deriv_1]
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/*
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[h3:cbrt_2_derivatives Cube root with 1st & 2nd derivative (slope & curvature)]
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Finally we define yet another functor `cbrt_functor_2deriv` that returns
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both the evaluation of the function to solve,
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along with its first *and second* derivatives:
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__spaces[''f](x) = 6x
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To \'return\' three values, we use a `tuple` of three floating-point values:
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*/
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//[root_finding_2deriv_1
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template <class T>
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struct cbrt_functor_2deriv
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{
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// Functor returning both 1st and 2nd derivatives.
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cbrt_functor_2deriv(T const& to_find_root_of) : a(to_find_root_of)
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{ // Constructor stores value a to find root of, for example:
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// calling cbrt_functor_2deriv<T>(x) to get cube root of x,
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}
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std::tuple<T, T, T> operator()(T const& x)
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{
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// Return both f(x) and f'(x) and f''(x).
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T fx = x*x*x - a; // Difference (estimate x^3 - value).
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T dx = 3 * x*x; // 1st derivative = 3x^2.
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T d2x = 6 * x; // 2nd derivative = 6x.
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return std::make_tuple(fx, dx, d2x); // 'return' fx, dx and d2x.
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}
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private:
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T a; // to be 'cube_rooted'.
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};
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/*`Our cube root function is now:*/
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template <class T>
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T cbrt_2deriv(T x)
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{
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// return cube root of x using 1st and 2nd derivatives and Halley.
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//using namespace std; // Help ADL of std functions.
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using namespace boost::math::tools;
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int exponent;
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frexp(x, &exponent); // Get exponent of z (ignore mantissa).
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T guess = ldexp(1., exponent/3); // Rough guess is to divide the exponent by three.
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T min = ldexp(0.5, exponent/3); // Minimum possible value is half our guess.
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T max = ldexp(2., exponent/3); // Maximum possible value is twice our guess.
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const int digits = std::numeric_limits<T>::digits; // Maximum possible binary digits accuracy for type T.
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// digits used to control how accurate to try to make the result.
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int get_digits = static_cast<int>(digits * 0.4); // Accuracy triples with each step, so stop when just
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// over one third of the digits are correct.
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boost::uintmax_t maxit = 20;
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T result = halley_iterate(cbrt_functor_2deriv<T>(x), guess, min, max, get_digits, maxit);
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return result;
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}
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//] [/root_finding_2deriv_1]
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//[root_finding_2deriv_lambda
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template <class T>
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T cbrt_2deriv_lambda(T x)
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{
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// return cube root of x using 1st and 2nd derivatives and Halley.
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//using namespace std; // Help ADL of std functions.
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using namespace boost::math::tools;
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int exponent;
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frexp(x, &exponent); // Get exponent of z (ignore mantissa).
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T guess = ldexp(1., exponent / 3); // Rough guess is to divide the exponent by three.
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T min = ldexp(0.5, exponent / 3); // Minimum possible value is half our guess.
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T max = ldexp(2., exponent / 3); // Maximum possible value is twice our guess.
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const int digits = std::numeric_limits<T>::digits; // Maximum possible binary digits accuracy for type T.
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// digits used to control how accurate to try to make the result.
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int get_digits = static_cast<int>(digits * 0.4); // Accuracy triples with each step, so stop when just
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// over one third of the digits are correct.
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boost::uintmax_t maxit = 20;
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T result = halley_iterate(
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// lambda function:
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[x](const T& g){ return std::make_tuple(g * g * g - x, 3 * g * g, 6 * g); },
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guess, min, max, get_digits, maxit);
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return result;
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}
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//] [/root_finding_2deriv_lambda]
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/*
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[h3 Fifth-root function]
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Let's now suppose we want to find the [*fifth root] of a number ['a].
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The equation we want to solve is :
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__spaces['f](x) = x[super 5] - a
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If your differentiation is a little rusty
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(or you are faced with an equation whose complexity is daunting),
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then you can get help, for example from the invaluable
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[@http://www.wolframalpha.com/ WolframAlpha site.]
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For example, entering the commmand: `differentiate x ^ 5`
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or the Wolfram Language command: ` D[x ^ 5, x]`
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gives the output: `d/dx(x ^ 5) = 5 x ^ 4`
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and to get the second differential, enter: `second differentiate x ^ 5`
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or the Wolfram Language command: `D[x ^ 5, { x, 2 }]`
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to get the output: `d ^ 2 / dx ^ 2(x ^ 5) = 20 x ^ 3`
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To get a reference value, we can enter: [^fifth root 3126]
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or: `N[3126 ^ (1 / 5), 50]`
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to get a result with a precision of 50 decimal digits:
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5.0003199590478625588206333405631053401128722314376
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(We could also get a reference value using Boost.Multiprecision - see below).
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The 1st and 2nd derivatives of x[super 5] are:
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__spaces['f]\'(x) = 5x[super 4]
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__spaces['f]\'\'(x) = 20x[super 3]
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*/
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//[root_finding_fifth_1
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//] [/root_finding_fifth_1]
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//[root_finding_fifth_functor_2deriv
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/*`Using these expressions for the derivatives, the functor is:
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*/
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template <class T>
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struct fifth_functor_2deriv
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{
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// Functor returning both 1st and 2nd derivatives.
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fifth_functor_2deriv(T const& to_find_root_of) : a(to_find_root_of)
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{ /* Constructor stores value a to find root of, for example: */ }
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std::tuple<T, T, T> operator()(T const& x)
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{
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// Return both f(x) and f'(x) and f''(x).
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T fx = boost::math::pow<5>(x) - a; // Difference (estimate x^3 - value).
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T dx = 5 * boost::math::pow<4>(x); // 1st derivative = 5x^4.
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T d2x = 20 * boost::math::pow<3>(x); // 2nd derivative = 20 x^3
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return std::make_tuple(fx, dx, d2x); // 'return' fx, dx and d2x.
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}
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private:
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T a; // to be 'fifth_rooted'.
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}; // struct fifth_functor_2deriv
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//] [/root_finding_fifth_functor_2deriv]
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//[root_finding_fifth_2deriv
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/*`Our fifth-root function is now:
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*/
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template <class T>
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T fifth_2deriv(T x)
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{
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// return fifth root of x using 1st and 2nd derivatives and Halley.
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using namespace std; // Help ADL of std functions.
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using namespace boost::math::tools; // for halley_iterate.
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int exponent;
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frexp(x, &exponent); // Get exponent of z (ignore mantissa).
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T guess = ldexp(1., exponent / 5); // Rough guess is to divide the exponent by five.
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T min = ldexp(0.5, exponent / 5); // Minimum possible value is half our guess.
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T max = ldexp(2., exponent / 5); // Maximum possible value is twice our guess.
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// Stop when slightly more than one of the digits are correct:
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const int digits = static_cast<int>(std::numeric_limits<T>::digits * 0.4);
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const boost::uintmax_t maxit = 50;
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boost::uintmax_t it = maxit;
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T result = halley_iterate(fifth_functor_2deriv<T>(x), guess, min, max, digits, it);
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return result;
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}
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//] [/root_finding_fifth_2deriv]
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int main()
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{
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std::cout << "Root finding Examples." << std::endl;
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std::cout.precision(std::numeric_limits<double>::max_digits10);
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// Show all possibly significant decimal digits for double.
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// std::cout.precision(std::numeric_limits<double>::digits10);
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// Show all guaranteed significant decimal digits for double.
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//[root_finding_main_1
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try
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{
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double threecubed = 27.; // Value that has an *exactly representable* integer cube root.
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double threecubedp1 = 28.; // Value whose cube root is *not* exactly representable.
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std::cout << "cbrt(28) " << boost::math::cbrt(28.) << std::endl; // boost::math:: version of cbrt.
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std::cout << "std::cbrt(28) " << std::cbrt(28.) << std::endl; // std:: version of cbrt.
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std::cout <<" cast double " << static_cast<double>(3.0365889718756625194208095785056696355814539772481111) << std::endl;
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// Cube root using bracketing:
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double r = cbrt_noderiv(threecubed);
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std::cout << "cbrt_noderiv(" << threecubed << ") = " << r << std::endl;
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r = cbrt_noderiv(threecubedp1);
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std::cout << "cbrt_noderiv(" << threecubedp1 << ") = " << r << std::endl;
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//] [/root_finding_main_1]
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//[root_finding_main_2
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|
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// Cube root using 1st differential Newton-Raphson:
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r = cbrt_deriv(threecubed);
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std::cout << "cbrt_deriv(" << threecubed << ") = " << r << std::endl;
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r = cbrt_deriv(threecubedp1);
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std::cout << "cbrt_deriv(" << threecubedp1 << ") = " << r << std::endl;
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|
|
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// Cube root using Halley with 1st and 2nd differentials.
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r = cbrt_2deriv(threecubed);
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std::cout << "cbrt_2deriv(" << threecubed << ") = " << r << std::endl;
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r = cbrt_2deriv(threecubedp1);
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std::cout << "cbrt_2deriv(" << threecubedp1 << ") = " << r << std::endl;
|
|
|
|
// Cube root using lambda's:
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r = cbrt_2deriv_lambda(threecubed);
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std::cout << "cbrt_2deriv(" << threecubed << ") = " << r << std::endl;
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r = cbrt_2deriv_lambda(threecubedp1);
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std::cout << "cbrt_2deriv(" << threecubedp1 << ") = " << r << std::endl;
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|
|
|
// Fifth root.
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|
|
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double fivepowfive = 3125; // Example of a value that has an exact integer fifth root.
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// Exact value of fifth root is exactly 5.
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std::cout << "Fifth root of " << fivepowfive << " is " << 5 << std::endl;
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|
|
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double fivepowfivep1 = fivepowfive + 1; // Example of a value whose fifth root is *not* exactly representable.
|
|
// Value of fifth root is 5.0003199590478625588206333405631053401128722314376 (50 decimal digits precision)
|
|
// and to std::numeric_limits<double>::max_digits10 double precision (usually 17) is
|
|
|
|
double root5v2 = static_cast<double>(5.0003199590478625588206333405631053401128722314376);
|
|
std::cout << "Fifth root of " << fivepowfivep1 << " is " << root5v2 << std::endl;
|
|
|
|
// Using Halley with 1st and 2nd differentials.
|
|
r = fifth_2deriv(fivepowfive);
|
|
std::cout << "fifth_2deriv(" << fivepowfive << ") = " << r << std::endl;
|
|
r = fifth_2deriv(fivepowfivep1);
|
|
std::cout << "fifth_2deriv(" << fivepowfivep1 << ") = " << r << std::endl;
|
|
//] [/root_finding_main_?]
|
|
}
|
|
catch(const std::exception& e)
|
|
{ // Always useful to include try & catch blocks because default policies
|
|
// are to throw exceptions on arguments that cause errors like underflow, overflow.
|
|
// Lacking try & catch blocks, the program will abort without a message below,
|
|
// which may give some helpful clues as to the cause of the exception.
|
|
std::cout <<
|
|
"\n""Message from thrown exception was:\n " << e.what() << std::endl;
|
|
}
|
|
return 0;
|
|
} // int main()
|
|
|
|
//[root_finding_example_output
|
|
/*`
|
|
Normal output is:
|
|
|
|
[pre
|
|
root_finding_example.cpp
|
|
Generating code
|
|
Finished generating code
|
|
root_finding_example.vcxproj -> J:\Cpp\MathToolkit\test\Math_test\Release\root_finding_example.exe
|
|
Cube Root finding (cbrt) Example.
|
|
Iterations 10
|
|
cbrt_1(27) = 3
|
|
Iterations 10
|
|
Unable to locate solution in chosen iterations: Current best guess is between 3.0365889718756613 and 3.0365889718756627
|
|
cbrt_1(28) = 3.0365889718756618
|
|
cbrt_1(27) = 3
|
|
cbrt_2(28) = 3.0365889718756627
|
|
Iterations 4
|
|
cbrt_3(27) = 3
|
|
Iterations 5
|
|
cbrt_3(28) = 3.0365889718756627
|
|
|
|
] [/pre]
|
|
|
|
to get some (much!) diagnostic output we can add
|
|
|
|
#define BOOST_MATH_INSTRUMENT
|
|
|
|
[pre
|
|
|
|
]
|
|
*/
|
|
//] [/root_finding_example_output]
|
|
|
|
/*
|
|
|
|
cbrt(28) 3.0365889718756622
|
|
std::cbrt(28) 3.0365889718756627
|
|
|
|
*/
|