| .. default-domain:: cpp |
| |
| .. cpp:namespace:: ceres |
| |
| .. _chapter-analytical_derivatives: |
| |
| ==================== |
| Analytic Derivatives |
| ==================== |
| |
| Consider the problem of fitting the following curve (`Rat43 |
| <http://www.itl.nist.gov/div898/strd/nls/data/ratkowsky3.shtml>`_) to |
| data: |
| |
| .. math:: |
| y = \frac{b_1}{(1+e^{b_2-b_3x})^{1/b_4}} |
| |
| That is, given some data :math:`\{x_i, y_i\},\ \forall i=1,... ,n`, |
| determine parameters :math:`b_1, b_2, b_3` and :math:`b_4` that best |
| fit this data. |
| |
| Which can be stated as the problem of finding the |
| values of :math:`b_1, b_2, b_3` and :math:`b_4` are the ones that |
| minimize the following objective function [#f1]_: |
| |
| .. math:: |
| \begin{align} |
| E(b_1, b_2, b_3, b_4) |
| &= \sum_i f^2(b_1, b_2, b_3, b_4 ; x_i, y_i)\\ |
| &= \sum_i \left(\frac{b_1}{(1+e^{b_2-b_3x_i})^{1/b_4}} - y_i\right)^2\\ |
| \end{align} |
| |
| To solve this problem using Ceres Solver, we need to define a |
| :class:`CostFunction` that computes the residual :math:`f` for a given |
| :math:`x` and :math:`y` and its derivatives with respect to |
| :math:`b_1, b_2, b_3` and :math:`b_4`. |
| |
| Using elementary differential calculus, we can see that: |
| |
| .. math:: |
| \begin{align} |
| D_1 f(b_1, b_2, b_3, b_4; x,y) &= \frac{1}{(1+e^{b_2-b_3x})^{1/b_4}}\\ |
| D_2 f(b_1, b_2, b_3, b_4; x,y) &= |
| \frac{-b_1e^{b_2-b_3x}}{b_4(1+e^{b_2-b_3x})^{1/b_4 + 1}} \\ |
| D_3 f(b_1, b_2, b_3, b_4; x,y) &= |
| \frac{b_1xe^{b_2-b_3x}}{b_4(1+e^{b_2-b_3x})^{1/b_4 + 1}} \\ |
| D_4 f(b_1, b_2, b_3, b_4; x,y) & = \frac{b_1 \log\left(1+e^{b_2-b_3x}\right) }{b_4^2(1+e^{b_2-b_3x})^{1/b_4}} |
| \end{align} |
| |
| With these derivatives in hand, we can now implement the |
| :class:`CostFunction` as: |
| |
| .. code-block:: c++ |
| |
| class Rat43Analytic : public SizedCostFunction<1,4> { |
| public: |
| Rat43Analytic(const double x, const double y) : x_(x), y_(y) {} |
| virtual ~Rat43Analytic() {} |
| virtual bool Evaluate(double const* const* parameters, |
| double* residuals, |
| double** jacobians) const { |
| const double b1 = parameters[0][0]; |
| const double b2 = parameters[0][1]; |
| const double b3 = parameters[0][2]; |
| const double b4 = parameters[0][3]; |
| |
| residuals[0] = b1 * pow(1 + exp(b2 - b3 * x_), -1.0 / b4) - y_; |
| |
| if (!jacobians) return true; |
| double* jacobian = jacobians[0]; |
| if (!jacobian) return true; |
| |
| jacobian[0] = pow(1 + exp(b2 - b3 * x_), -1.0 / b4); |
| jacobian[1] = -b1 * exp(b2 - b3 * x_) * |
| pow(1 + exp(b2 - b3 * x_), -1.0 / b4 - 1) / b4; |
| jacobian[2] = x_ * b1 * exp(b2 - b3 * x_) * |
| pow(1 + exp(b2 - b3 * x_), -1.0 / b4 - 1) / b4; |
| jacobian[3] = b1 * log(1 + exp(b2 - b3 * x_)) * |
| pow(1 + exp(b2 - b3 * x_), -1.0 / b4) / (b4 * b4); |
| return true; |
| } |
| |
| private: |
| const double x_; |
| const double y_; |
| }; |
| |
| This is tedious code, hard to read and with a lot of |
| redundancy. So in practice we will cache some sub-expressions to |
| improve its efficiency, which would give us something like: |
| |
| .. code-block:: c++ |
| |
| class Rat43AnalyticOptimized : public SizedCostFunction<1,4> { |
| public: |
| Rat43AnalyticOptimized(const double x, const double y) : x_(x), y_(y) {} |
| virtual ~Rat43AnalyticOptimized() {} |
| virtual bool Evaluate(double const* const* parameters, |
| double* residuals, |
| double** jacobians) const { |
| const double b1 = parameters[0][0]; |
| const double b2 = parameters[0][1]; |
| const double b3 = parameters[0][2]; |
| const double b4 = parameters[0][3]; |
| |
| const double t1 = exp(b2 - b3 * x_); |
| const double t2 = 1 + t1; |
| const double t3 = pow(t2, -1.0 / b4); |
| residuals[0] = b1 * t3 - y_; |
| |
| if (!jacobians) return true; |
| double* jacobian = jacobians[0]; |
| if (!jacobian) return true; |
| |
| const double t4 = pow(t2, -1.0 / b4 - 1); |
| jacobian[0] = t3; |
| jacobian[1] = -b1 * t1 * t4 / b4; |
| jacobian[2] = -x_ * jacobian[1]; |
| jacobian[3] = b1 * log(t2) * t3 / (b4 * b4); |
| return true; |
| } |
| |
| private: |
| const double x_; |
| const double y_; |
| }; |
| |
| What is the difference in performance of these two implementations? |
| |
| ========================== ========= |
| CostFunction Time (ns) |
| ========================== ========= |
| Rat43Analytic 255 |
| Rat43AnalyticOptimized 92 |
| ========================== ========= |
| |
| ``Rat43AnalyticOptimized`` is :math:`2.8` times faster than |
| ``Rat43Analytic``. This difference in run-time is not uncommon. To |
| get the best performance out of analytically computed derivatives, one |
| usually needs to optimize the code to account for common |
| sub-expressions. |
| |
| |
| When should you use analytical derivatives? |
| =========================================== |
| |
| #. The expressions are simple, e.g. mostly linear. |
| |
| #. A computer algebra system like `Maple |
| <https://www.maplesoft.com/products/maple/>`_ , `Mathematica |
| <https://www.wolfram.com/mathematica/>`_, or `SymPy |
| <http://www.sympy.org/en/index.html>`_ can be used to symbolically |
| differentiate the objective function and generate the C++ to |
| evaluate them. |
| |
| #. Performance is of utmost concern and there is algebraic structure |
| in the terms that you can exploit to get better performance than |
| automatic differentiation. |
| |
| That said, getting the best performance out of analytical |
| derivatives requires a non-trivial amount of work. Before going |
| down this path, it is useful to measure the amount of time being |
| spent evaluating the Jacobian as a fraction of the total solve time |
| and remember `Amdahl's Law |
| <https://en.wikipedia.org/wiki/Amdahl's_law>`_ is your friend. |
| |
| #. There is no other way to compute the derivatives, e.g. you |
| wish to compute the derivative of the root of a polynomial: |
| |
| .. math:: |
| a_3(x,y)z^3 + a_2(x,y)z^2 + a_1(x,y)z + a_0(x,y) = 0 |
| |
| |
| with respect to :math:`x` and :math:`y`. This requires the use of |
| the `Inverse Function Theorem |
| <https://en.wikipedia.org/wiki/Inverse_function_theorem>`_ |
| |
| #. You love the chain rule and actually enjoy doing all the algebra by |
| hand. |
| |
| |
| .. rubric:: Footnotes |
| |
| .. [#f1] The notion of best fit depends on the choice of the objective |
| function used to measure the quality of fit, which in turn |
| depends on the underlying noise process which generated the |
| observations. Minimizing the sum of squared differences is |
| the right thing to do when the noise is `Gaussian |
| <https://en.wikipedia.org/wiki/Normal_distribution>`_. In |
| that case the optimal value of the parameters is the `Maximum |
| Likelihood Estimate |
| <https://en.wikipedia.org/wiki/Maximum_likelihood_estimation>`_. |