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Automatic Differentiation

Synopsis

#include <boost/math/differentiation/autodiff.hpp>

namespace boost {
namespace math {
namespace differentiation {

// Function returning a single variable of differentiation. Recommended: Use auto for type.
template <typename RealType, size_t Order, size_t... Orders>
autodiff_fvar<RealType, Order, Orders...> make_fvar(RealType const& ca);

// Function returning multiple independent variables of differentiation in a std::tuple.
template<typename RealType, size_t... Orders, typename... RealTypes>
auto make_ftuple(RealTypes const&... ca);

// Type of combined autodiff types. Recommended: Use auto for return type (C++14).
template <typename RealType, typename... RealTypes>
using promote = typename detail::promote_args_n<RealType, RealTypes...>::type;

namespace detail {

// Single autodiff variable. Use make_fvar() or make_ftuple() to instantiate.
template <typename RealType, size_t Order>
class fvar {
 public:
  // Query return value of function to get the derivatives.
  template <typename... Orders>
  get_type_at<RealType, sizeof...(Orders) - 1> derivative(Orders... orders) const;

  // All of the arithmetic and comparison operators are overloaded.
  template <typename RealType2, size_t Order2>
  fvar& operator+=(fvar<RealType2, Order2> const&);

  fvar& operator+=(root_type const&);

  // ...
};

// Standard math functions are overloaded and called via argument-dependent lookup (ADL).
template <typename RealType, size_t Order>
fvar<RealType, Order> floor(fvar<RealType, Order> const&);

template <typename RealType, size_t Order>
fvar<RealType, Order> exp(fvar<RealType, Order> const&);

// ...

}  // namespace detail

}  // namespace differentiation
}  // namespace math
}  // namespace boost

Description

Autodiff is a header-only C++ library that facilitates the automatic differentiation (forward mode) of mathematical functions of single and multiple variables.

This implementation is based upon the Taylor series expansion of an analytic function f at the point x0:

The essential idea of autodiff is the substitution of numbers with polynomials in the evaluation of f(x0). By substituting the number x0 with the first-order polynomial x0, and using the same algorithm to compute f(x0+ε), the resulting polynomial in ε contains the function's derivatives f'(x0), f''(x0), f'''(x0), ... within the coefficients. Each coefficient is equal to the derivative of its respective order, divided by the factorial of the order.

In greater detail, assume one is interested in calculating the first N derivatives of f at x0. Without loss of precision to the calculation of the derivatives, all terms O(εN+1) that include powers of ε greater than N can be discarded. (This is due to the fact that each term in a polynomial depends only upon equal and lower-order terms under arithmetic operations.) Under these truncation rules, f provides a polynomial-to-polynomial transformation:

C++'s ability to overload operators and functions allows for the creation of a class fvar (forward-mode autodiff variable) that represents polynomials in ε. Thus the same algorithm f that calculates the numeric value of y0=f(x0), when written to accept and return variables of a generic (template) type, is also used to calculate the polynomial Σnynεn=f(x0+ε). The derivatives f(n)(x0) are then found from the product of the respective factorial n! and coefficient yn:

Examples

Example 1: Single-variable derivatives

Calculate derivatives of f(x)=x4 at x=2.

In this example, make_fvar<double, Order>(2.0) instantiates the polynomial 2+ε. The Order=5 means that enough space is allocated (on the stack) to hold a polynomial of up to degree 5 during the proceeding computation.

Internally, this is modeled by a std::array<double,6> whose elements {2, 1, 0, 0, 0, 0} correspond to the 6 coefficients of the polynomial upon initialization. Its fourth power, at the end of the computation, is a polynomial with coefficients y = {16, 32, 24, 8, 1, 0}. The derivatives are obtained using the formula f(n)(2)=n!*y[n].

#include <boost/math/differentiation/autodiff.hpp>
#include <iostream>

template <typename T>
T fourth_power(T const& x) {
  T x4 = x * x;  // retval in operator*() uses x4's memory via NRVO.
  x4 *= x4;      // No copies of x4 are made within operator*=() even when squaring.
  return x4;     // x4 uses y's memory in main() via NRVO.
}

int main() {
  using namespace boost::math::differentiation;

  constexpr unsigned Order = 5;                  // Highest order derivative to be calculated.
  auto const x = make_fvar<double, Order>(2.0);  // Find derivatives at x=2.
  auto const y = fourth_power(x);
  for (unsigned i = 0; i <= Order; ++i)
    std::cout << "y.derivative(" << i << ") = " << y.derivative(i) << std::endl;
  return 0;
}
/*
Output:
y.derivative(0) = 16
y.derivative(1) = 32
y.derivative(2) = 48
y.derivative(3) = 48
y.derivative(4) = 24
y.derivative(5) = 0
*/

The above calculates

Example 2: Multi-variable mixed partial derivatives with multi-precision data type

Calculate with a precision of about 50 decimal digits, where .

In this example, make_ftuple<float50, Nw, Nx, Ny, Nz>(11, 12, 13, 14) returns a std::tuple of 4 independent fvar variables, with values of 11, 12, 13, and 14, for which the maximum order derivative to be calculated for each are 3, 2, 4, 3, respectively. The order of the variables is important, as it is the same order used when calling v.derivative(Nw, Nx, Ny, Nz) in the example below.

#include <boost/math/differentiation/autodiff.hpp>
#include <boost/multiprecision/cpp_bin_float.hpp>
#include <iostream>

using namespace boost::math::differentiation;

template <typename W, typename X, typename Y, typename Z>
promote<W, X, Y, Z> f(const W& w, const X& x, const Y& y, const Z& z) {
  using namespace std;
  return exp(w * sin(x * log(y) / z) + sqrt(w * z / (x * y))) + w * w / tan(z);
}

int main() {
  using float50 = boost::multiprecision::cpp_bin_float_50;

  constexpr unsigned Nw = 3;  // Max order of derivative to calculate for w
  constexpr unsigned Nx = 2;  // Max order of derivative to calculate for x
  constexpr unsigned Ny = 4;  // Max order of derivative to calculate for y
  constexpr unsigned Nz = 3;  // Max order of derivative to calculate for z
  // Declare 4 independent variables together into a std::tuple.
  auto const variables = make_ftuple<float50, Nw, Nx, Ny, Nz>(11, 12, 13, 14);
  auto const& w = std::get<0>(variables);  // Up to Nw derivatives at w=11
  auto const& x = std::get<1>(variables);  // Up to Nx derivatives at x=12
  auto const& y = std::get<2>(variables);  // Up to Ny derivatives at y=13
  auto const& z = std::get<3>(variables);  // Up to Nz derivatives at z=14
  auto const v = f(w, x, y, z);
  // Calculated from Mathematica symbolic differentiation.
  float50 const answer("1976.319600747797717779881875290418720908121189218755");
  std::cout << std::setprecision(std::numeric_limits<float50>::digits10)
            << "mathematica   : " << answer << '\n'
            << "autodiff      : " << v.derivative(Nw, Nx, Ny, Nz) << '\n'
            << std::setprecision(3)
            << "relative error: " << (v.derivative(Nw, Nx, Ny, Nz) / answer - 1) << '\n';
  return 0;
}
/*
Output:
mathematica   : 1976.3196007477977177798818752904187209081211892188
autodiff      : 1976.3196007477977177798818752904187209081211892188
relative error: 2.67e-50
*/

Example 3: Black-Scholes Option Pricing with Greeks Automatically Calculated

Calculate greeks directly from the Black-Scholes pricing function.

Below is the standard Black-Scholes pricing function written as a function template, where the price, volatility (sigma), time to expiration (tau) and interest rate are template parameters. This means that any greek based on these 4 variables can be calculated using autodiff. The below example calculates delta and gamma where the variable of differentiation is only the price. For examples of more exotic greeks, see example/black_scholes.cpp.

#include <boost/math/differentiation/autodiff.hpp>
#include <iostream>

using namespace boost::math::constants;
using namespace boost::math::differentiation;

// Equations and function/variable names are from
// https://en.wikipedia.org/wiki/Greeks_(finance)#Formulas_for_European_option_Greeks

// Standard normal cumulative distribution function
template <typename X>
X Phi(X const& x) {
  return 0.5 * erfc(-one_div_root_two<X>() * x);
}

enum class CP { call, put };

// Assume zero annual dividend yield (q=0).
template <typename Price, typename Sigma, typename Tau, typename Rate>
promote<Price, Sigma, Tau, Rate> black_scholes_option_price(CP cp,
                                                            double K,
                                                            Price const& S,
                                                            Sigma const& sigma,
                                                            Tau const& tau,
                                                            Rate const& r) {
  using namespace std;
  auto const d1 = (log(S / K) + (r + sigma * sigma / 2) * tau) / (sigma * sqrt(tau));
  auto const d2 = (log(S / K) + (r - sigma * sigma / 2) * tau) / (sigma * sqrt(tau));
  switch (cp) {
    case CP::call:
      return S * Phi(d1) - exp(-r * tau) * K * Phi(d2);
    case CP::put:
      return exp(-r * tau) * K * Phi(-d2) - S * Phi(-d1);
  }
}

int main() {
  double const K = 100.0;                    // Strike price.
  auto const S = make_fvar<double, 2>(105);  // Stock price.
  double const sigma = 5;                    // Volatility.
  double const tau = 30.0 / 365;             // Time to expiration in years. (30 days).
  double const r = 1.25 / 100;               // Interest rate.
  auto const call_price = black_scholes_option_price(CP::call, K, S, sigma, tau, r);
  auto const put_price = black_scholes_option_price(CP::put, K, S, sigma, tau, r);

  std::cout << "black-scholes call price = " << call_price.derivative(0) << '\n'
            << "black-scholes put  price = " << put_price.derivative(0) << '\n'
            << "call delta = " << call_price.derivative(1) << '\n'
            << "put  delta = " << put_price.derivative(1) << '\n'
            << "call gamma = " << call_price.derivative(2) << '\n'
            << "put  gamma = " << put_price.derivative(2) << '\n';
  return 0;
}
/*
Output:
black-scholes call price = 56.5136
black-scholes put  price = 51.4109
call delta = 0.773818
put  delta = -0.226182
call gamma = 0.00199852
put  gamma = 0.00199852
*/

Advantages of Automatic Differentiation

The above examples illustrate some of the advantages of using autodiff:

Manual

Additional details are in the autodiff manual.


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