stat-methods/notebooks/python/fitting.ipynb

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Общий случай

Постановка задачи

Пусть есть параметрическая модель $M\left( \theta \right)$, где $\theta$ - параметры.

Функция правдоподобия $L\left( X | M\left( \theta \right) \right)$ определят достоверность получения набора данных $X$ при заданном наборе параметров и данной модели.

Задача: определить такой набор параметров $\theta$, для которого функция принимает наибольшее значение.

Классификация

По порядку производной:

  • Не использует производных $L$

  • Использует первую производную $\frac{\partial L}{\partial \theta_i}$ (градиент)

  • Использует вторые прозиводные $\frac{\partial^2 L}{\partial \theta_i \partial \theta_j}$ (гессиан)

Без производных

Прямой перебор

(brute force)

  • Строим сетку и ищем на ней максимум.
  • Возможен только для одномерных, максимум двумерных задач.
  • Точность ограничена размером ячкйки сетки.

Симплекс методы

  1. Строим многоугольник в пространстве параметров с $n+1$ вершинами, где $n$ - размерность пространства.
  2. Орпделеляем значения функции в каждой вершине.
  3. Находим вершину с наименьшим значением и двигаем ее к центру масс многоугольника.

Nelder-mead

In [1]:
import numpy as np
from scipy.optimize import minimize


def rosen(x):
    """The Rosenbrock function"""
    return sum(100.0*(x[1:]-x[:-1]**2.0)**2.0 + (1-x[:-1])**2.0)

x0 = np.array([1.3, 0.7, 0.8, 1.9, 1.2])
minimize(rosen, x0, method='nelder-mead', options={'xtol': 1e-8, 'disp': True})
Optimization terminated successfully.
         Current function value: 0.000000
         Iterations: 339
         Function evaluations: 571
Out[1]:
 final_simplex: (array([[1.        , 1.        , 1.        , 1.        , 1.        ],
       [1.        , 1.        , 1.        , 1.        , 1.        ],
       [1.        , 1.        , 1.        , 1.00000001, 1.00000001],
       [1.        , 1.        , 1.        , 1.        , 1.        ],
       [1.        , 1.        , 1.        , 1.        , 1.        ],
       [1.        , 1.        , 1.        , 1.        , 0.99999999]]), array([4.86115343e-17, 7.65182843e-17, 8.11395684e-17, 8.63263255e-17,
       8.64080682e-17, 2.17927418e-16]))
           fun: 4.861153433422115e-17
       message: 'Optimization terminated successfully.'
          nfev: 571
           nit: 339
        status: 0
       success: True
             x: array([1., 1., 1., 1., 1.])
In [2]:
help(minimize)
Help on function minimize in module scipy.optimize._minimize:

minimize(fun, x0, args=(), method=None, jac=None, hess=None, hessp=None, bounds=None, constraints=(), tol=None, callback=None, options=None)
    Minimization of scalar function of one or more variables.
    
    Parameters
    ----------
    fun : callable
        The objective function to be minimized.
    
            ``fun(x, *args) -> float``
    
        where x is an 1-D array with shape (n,) and `args`
        is a tuple of the fixed parameters needed to completely
        specify the function.
    x0 : ndarray, shape (n,)
        Initial guess. Array of real elements of size (n,),
        where 'n' is the number of independent variables.
    args : tuple, optional
        Extra arguments passed to the objective function and its
        derivatives (`fun`, `jac` and `hess` functions).
    method : str or callable, optional
        Type of solver.  Should be one of
    
            - 'Nelder-Mead' :ref:`(see here) <optimize.minimize-neldermead>`
            - 'Powell'      :ref:`(see here) <optimize.minimize-powell>`
            - 'CG'          :ref:`(see here) <optimize.minimize-cg>`
            - 'BFGS'        :ref:`(see here) <optimize.minimize-bfgs>`
            - 'Newton-CG'   :ref:`(see here) <optimize.minimize-newtoncg>`
            - 'L-BFGS-B'    :ref:`(see here) <optimize.minimize-lbfgsb>`
            - 'TNC'         :ref:`(see here) <optimize.minimize-tnc>`
            - 'COBYLA'      :ref:`(see here) <optimize.minimize-cobyla>`
            - 'SLSQP'       :ref:`(see here) <optimize.minimize-slsqp>`
            - 'trust-constr':ref:`(see here) <optimize.minimize-trustconstr>`
            - 'dogleg'      :ref:`(see here) <optimize.minimize-dogleg>`
            - 'trust-ncg'   :ref:`(see here) <optimize.minimize-trustncg>`
            - 'trust-exact' :ref:`(see here) <optimize.minimize-trustexact>`
            - 'trust-krylov' :ref:`(see here) <optimize.minimize-trustkrylov>`
            - custom - a callable object (added in version 0.14.0),
              see below for description.
    
        If not given, chosen to be one of ``BFGS``, ``L-BFGS-B``, ``SLSQP``,
        depending if the problem has constraints or bounds.
    jac : {callable,  '2-point', '3-point', 'cs', bool}, optional
        Method for computing the gradient vector. Only for CG, BFGS,
        Newton-CG, L-BFGS-B, TNC, SLSQP, dogleg, trust-ncg, trust-krylov,
        trust-exact and trust-constr. If it is a callable, it should be a
        function that returns the gradient vector:
    
            ``jac(x, *args) -> array_like, shape (n,)``
    
        where x is an array with shape (n,) and `args` is a tuple with
        the fixed parameters. Alternatively, the keywords
        {'2-point', '3-point', 'cs'} select a finite
        difference scheme for numerical estimation of the gradient. Options
        '3-point' and 'cs' are available only to 'trust-constr'.
        If `jac` is a Boolean and is True, `fun` is assumed to return the
        gradient along with the objective function. If False, the gradient
        will be estimated using '2-point' finite difference estimation.
    hess : {callable, '2-point', '3-point', 'cs', HessianUpdateStrategy},  optional
        Method for computing the Hessian matrix. Only for Newton-CG, dogleg,
        trust-ncg,  trust-krylov, trust-exact and trust-constr. If it is
        callable, it should return the  Hessian matrix:
    
            ``hess(x, *args) -> {LinearOperator, spmatrix, array}, (n, n)``
    
        where x is a (n,) ndarray and `args` is a tuple with the fixed
        parameters. LinearOperator and sparse matrix returns are
        allowed only for 'trust-constr' method. Alternatively, the keywords
        {'2-point', '3-point', 'cs'} select a finite difference scheme
        for numerical estimation. Or, objects implementing
        `HessianUpdateStrategy` interface can be used to approximate
        the Hessian. Available quasi-Newton methods implementing
        this interface are:
    
            - `BFGS`;
            - `SR1`.
    
        Whenever the gradient is estimated via finite-differences,
        the Hessian cannot be estimated with options
        {'2-point', '3-point', 'cs'} and needs to be
        estimated using one of the quasi-Newton strategies.
        Finite-difference options {'2-point', '3-point', 'cs'} and
        `HessianUpdateStrategy` are available only for 'trust-constr' method.
    hessp : callable, optional
        Hessian of objective function times an arbitrary vector p. Only for
        Newton-CG, trust-ncg, trust-krylov, trust-constr.
        Only one of `hessp` or `hess` needs to be given.  If `hess` is
        provided, then `hessp` will be ignored.  `hessp` must compute the
        Hessian times an arbitrary vector:
    
            ``hessp(x, p, *args) ->  ndarray shape (n,)``
    
        where x is a (n,) ndarray, p is an arbitrary vector with
        dimension (n,) and `args` is a tuple with the fixed
        parameters.
    bounds : sequence or `Bounds`, optional
        Bounds on variables for L-BFGS-B, TNC, SLSQP and
        trust-constr methods. There are two ways to specify the bounds:
    
            1. Instance of `Bounds` class.
            2. Sequence of ``(min, max)`` pairs for each element in `x`. None
               is used to specify no bound.
    
    constraints : {Constraint, dict} or List of {Constraint, dict}, optional
        Constraints definition (only for COBYLA, SLSQP and trust-constr).
        Constraints for 'trust-constr' are defined as a single object or a
        list of objects specifying constraints to the optimization problem.
        Available constraints are:
    
            - `LinearConstraint`
            - `NonlinearConstraint`
    
        Constraints for COBYLA, SLSQP are defined as a list of dictionaries.
        Each dictionary with fields:
    
            type : str
                Constraint type: 'eq' for equality, 'ineq' for inequality.
            fun : callable
                The function defining the constraint.
            jac : callable, optional
                The Jacobian of `fun` (only for SLSQP).
            args : sequence, optional
                Extra arguments to be passed to the function and Jacobian.
    
        Equality constraint means that the constraint function result is to
        be zero whereas inequality means that it is to be non-negative.
        Note that COBYLA only supports inequality constraints.
    tol : float, optional
        Tolerance for termination. For detailed control, use solver-specific
        options.
    options : dict, optional
        A dictionary of solver options. All methods accept the following
        generic options:
    
            maxiter : int
                Maximum number of iterations to perform.
            disp : bool
                Set to True to print convergence messages.
    
        For method-specific options, see :func:`show_options()`.
    callback : callable, optional
        Called after each iteration. For 'trust-constr' it is a callable with
        the signature:
    
            ``callback(xk, OptimizeResult state) -> bool``
    
        where ``xk`` is the current parameter vector. and ``state``
        is an `OptimizeResult` object, with the same fields
        as the ones from the return.  If callback returns True
        the algorithm execution is terminated.
        For all the other methods, the signature is:
    
            ``callback(xk)``
    
        where ``xk`` is the current parameter vector.
    
    Returns
    -------
    res : OptimizeResult
        The optimization result represented as a ``OptimizeResult`` object.
        Important attributes are: ``x`` the solution array, ``success`` a
        Boolean flag indicating if the optimizer exited successfully and
        ``message`` which describes the cause of the termination. See
        `OptimizeResult` for a description of other attributes.
    
    
    See also
    --------
    minimize_scalar : Interface to minimization algorithms for scalar
        univariate functions
    show_options : Additional options accepted by the solvers
    
    Notes
    -----
    This section describes the available solvers that can be selected by the
    'method' parameter. The default method is *BFGS*.
    
    **Unconstrained minimization**
    
    Method :ref:`Nelder-Mead <optimize.minimize-neldermead>` uses the
    Simplex algorithm [1]_, [2]_. This algorithm is robust in many
    applications. However, if numerical computation of derivative can be
    trusted, other algorithms using the first and/or second derivatives
    information might be preferred for their better performance in
    general.
    
    Method :ref:`Powell <optimize.minimize-powell>` is a modification
    of Powell's method [3]_, [4]_ which is a conjugate direction
    method. It performs sequential one-dimensional minimizations along
    each vector of the directions set (`direc` field in `options` and
    `info`), which is updated at each iteration of the main
    minimization loop. The function need not be differentiable, and no
    derivatives are taken.
    
    Method :ref:`CG <optimize.minimize-cg>` uses a nonlinear conjugate
    gradient algorithm by Polak and Ribiere, a variant of the
    Fletcher-Reeves method described in [5]_ pp.  120-122. Only the
    first derivatives are used.
    
    Method :ref:`BFGS <optimize.minimize-bfgs>` uses the quasi-Newton
    method of Broyden, Fletcher, Goldfarb, and Shanno (BFGS) [5]_
    pp. 136. It uses the first derivatives only. BFGS has proven good
    performance even for non-smooth optimizations. This method also
    returns an approximation of the Hessian inverse, stored as
    `hess_inv` in the OptimizeResult object.
    
    Method :ref:`Newton-CG <optimize.minimize-newtoncg>` uses a
    Newton-CG algorithm [5]_ pp. 168 (also known as the truncated
    Newton method). It uses a CG method to the compute the search
    direction. See also *TNC* method for a box-constrained
    minimization with a similar algorithm. Suitable for large-scale
    problems.
    
    Method :ref:`dogleg <optimize.minimize-dogleg>` uses the dog-leg
    trust-region algorithm [5]_ for unconstrained minimization. This
    algorithm requires the gradient and Hessian; furthermore the
    Hessian is required to be positive definite.
    
    Method :ref:`trust-ncg <optimize.minimize-trustncg>` uses the
    Newton conjugate gradient trust-region algorithm [5]_ for
    unconstrained minimization. This algorithm requires the gradient
    and either the Hessian or a function that computes the product of
    the Hessian with a given vector. Suitable for large-scale problems.
    
    Method :ref:`trust-krylov <optimize.minimize-trustkrylov>` uses
    the Newton GLTR trust-region algorithm [14]_, [15]_ for unconstrained
    minimization. This algorithm requires the gradient
    and either the Hessian or a function that computes the product of
    the Hessian with a given vector. Suitable for large-scale problems.
    On indefinite problems it requires usually less iterations than the
    `trust-ncg` method and is recommended for medium and large-scale problems.
    
    Method :ref:`trust-exact <optimize.minimize-trustexact>`
    is a trust-region method for unconstrained minimization in which
    quadratic subproblems are solved almost exactly [13]_. This
    algorithm requires the gradient and the Hessian (which is
    *not* required to be positive definite). It is, in many
    situations, the Newton method to converge in fewer iteraction
    and the most recommended for small and medium-size problems.
    
    **Bound-Constrained minimization**
    
    Method :ref:`L-BFGS-B <optimize.minimize-lbfgsb>` uses the L-BFGS-B
    algorithm [6]_, [7]_ for bound constrained minimization.
    
    Method :ref:`TNC <optimize.minimize-tnc>` uses a truncated Newton
    algorithm [5]_, [8]_ to minimize a function with variables subject
    to bounds. This algorithm uses gradient information; it is also
    called Newton Conjugate-Gradient. It differs from the *Newton-CG*
    method described above as it wraps a C implementation and allows
    each variable to be given upper and lower bounds.
    
    **Constrained Minimization**
    
    Method :ref:`COBYLA <optimize.minimize-cobyla>` uses the
    Constrained Optimization BY Linear Approximation (COBYLA) method
    [9]_, [10]_, [11]_. The algorithm is based on linear
    approximations to the objective function and each constraint. The
    method wraps a FORTRAN implementation of the algorithm. The
    constraints functions 'fun' may return either a single number
    or an array or list of numbers.
    
    Method :ref:`SLSQP <optimize.minimize-slsqp>` uses Sequential
    Least SQuares Programming to minimize a function of several
    variables with any combination of bounds, equality and inequality
    constraints. The method wraps the SLSQP Optimization subroutine
    originally implemented by Dieter Kraft [12]_. Note that the
    wrapper handles infinite values in bounds by converting them into
    large floating values.
    
    Method :ref:`trust-constr <optimize.minimize-trustconstr>` is a
    trust-region algorithm for constrained optimization. It swiches
    between two implementations depending on the problem definition.
    It is the most versatile constrained minimization algorithm
    implemented in SciPy and the most appropriate for large-scale problems.
    For equality constrained problems it is an implementation of Byrd-Omojokun
    Trust-Region SQP method described in [17]_ and in [5]_, p. 549. When
    inequality constraints  are imposed as well, it swiches to the trust-region
    interior point  method described in [16]_. This interior point algorithm,
    in turn, solves inequality constraints by introducing slack variables
    and solving a sequence of equality-constrained barrier problems
    for progressively smaller values of the barrier parameter.
    The previously described equality constrained SQP method is
    used to solve the subproblems with increasing levels of accuracy
    as the iterate gets closer to a solution.
    
    **Finite-Difference Options**
    
    For Method :ref:`trust-constr <optimize.minimize-trustconstr>`
    the gradient and the Hessian may be approximated using
    three finite-difference schemes: {'2-point', '3-point', 'cs'}.
    The scheme 'cs' is, potentially, the most accurate but it
    requires the function to correctly handles complex inputs and to
    be differentiable in the complex plane. The scheme '3-point' is more
    accurate than '2-point' but requires twice as much operations.
    
    **Custom minimizers**
    
    It may be useful to pass a custom minimization method, for example
    when using a frontend to this method such as `scipy.optimize.basinhopping`
    or a different library.  You can simply pass a callable as the ``method``
    parameter.
    
    The callable is called as ``method(fun, x0, args, **kwargs, **options)``
    where ``kwargs`` corresponds to any other parameters passed to `minimize`
    (such as `callback`, `hess`, etc.), except the `options` dict, which has
    its contents also passed as `method` parameters pair by pair.  Also, if
    `jac` has been passed as a bool type, `jac` and `fun` are mangled so that
    `fun` returns just the function values and `jac` is converted to a function
    returning the Jacobian.  The method shall return an ``OptimizeResult``
    object.
    
    The provided `method` callable must be able to accept (and possibly ignore)
    arbitrary parameters; the set of parameters accepted by `minimize` may
    expand in future versions and then these parameters will be passed to
    the method.  You can find an example in the scipy.optimize tutorial.
    
    .. versionadded:: 0.11.0
    
    References
    ----------
    .. [1] Nelder, J A, and R Mead. 1965. A Simplex Method for Function
        Minimization. The Computer Journal 7: 308-13.
    .. [2] Wright M H. 1996. Direct search methods: Once scorned, now
        respectable, in Numerical Analysis 1995: Proceedings of the 1995
        Dundee Biennial Conference in Numerical Analysis (Eds. D F
        Griffiths and G A Watson). Addison Wesley Longman, Harlow, UK.
        191-208.
    .. [3] Powell, M J D. 1964. An efficient method for finding the minimum of
       a function of several variables without calculating derivatives. The
       Computer Journal 7: 155-162.
    .. [4] Press W, S A Teukolsky, W T Vetterling and B P Flannery.
       Numerical Recipes (any edition), Cambridge University Press.
    .. [5] Nocedal, J, and S J Wright. 2006. Numerical Optimization.
       Springer New York.
    .. [6] Byrd, R H and P Lu and J. Nocedal. 1995. A Limited Memory
       Algorithm for Bound Constrained Optimization. SIAM Journal on
       Scientific and Statistical Computing 16 (5): 1190-1208.
    .. [7] Zhu, C and R H Byrd and J Nocedal. 1997. L-BFGS-B: Algorithm
       778: L-BFGS-B, FORTRAN routines for large scale bound constrained
       optimization. ACM Transactions on Mathematical Software 23 (4):
       550-560.
    .. [8] Nash, S G. Newton-Type Minimization Via the Lanczos Method.
       1984. SIAM Journal of Numerical Analysis 21: 770-778.
    .. [9] Powell, M J D. A direct search optimization method that models
       the objective and constraint functions by linear interpolation.
       1994. Advances in Optimization and Numerical Analysis, eds. S. Gomez
       and J-P Hennart, Kluwer Academic (Dordrecht), 51-67.
    .. [10] Powell M J D. Direct search algorithms for optimization
       calculations. 1998. Acta Numerica 7: 287-336.
    .. [11] Powell M J D. A view of algorithms for optimization without
       derivatives. 2007.Cambridge University Technical Report DAMTP
       2007/NA03
    .. [12] Kraft, D. A software package for sequential quadratic
       programming. 1988. Tech. Rep. DFVLR-FB 88-28, DLR German Aerospace
       Center -- Institute for Flight Mechanics, Koln, Germany.
    .. [13] Conn, A. R., Gould, N. I., and Toint, P. L.
       Trust region methods. 2000. Siam. pp. 169-200.
    .. [14] F. Lenders, C. Kirches, A. Potschka: "trlib: A vector-free
       implementation of the GLTR method for iterative solution of
       the trust region problem", https://arxiv.org/abs/1611.04718
    .. [15] N. Gould, S. Lucidi, M. Roma, P. Toint: "Solving the
       Trust-Region Subproblem using the Lanczos Method",
       SIAM J. Optim., 9(2), 504--525, (1999).
    .. [16] Byrd, Richard H., Mary E. Hribar, and Jorge Nocedal. 1999.
        An interior point algorithm for large-scale nonlinear  programming.
        SIAM Journal on Optimization 9.4: 877-900.
    .. [17] Lalee, Marucha, Jorge Nocedal, and Todd Plantega. 1998. On the
        implementation of an algorithm for large-scale equality constrained
        optimization. SIAM Journal on Optimization 8.3: 682-706.
    
    Examples
    --------
    Let us consider the problem of minimizing the Rosenbrock function. This
    function (and its respective derivatives) is implemented in `rosen`
    (resp. `rosen_der`, `rosen_hess`) in the `scipy.optimize`.
    
    >>> from scipy.optimize import minimize, rosen, rosen_der
    
    A simple application of the *Nelder-Mead* method is:
    
    >>> x0 = [1.3, 0.7, 0.8, 1.9, 1.2]
    >>> res = minimize(rosen, x0, method='Nelder-Mead', tol=1e-6)
    >>> res.x
    array([ 1.,  1.,  1.,  1.,  1.])
    
    Now using the *BFGS* algorithm, using the first derivative and a few
    options:
    
    >>> res = minimize(rosen, x0, method='BFGS', jac=rosen_der,
    ...                options={'gtol': 1e-6, 'disp': True})
    Optimization terminated successfully.
             Current function value: 0.000000
             Iterations: 26
             Function evaluations: 31
             Gradient evaluations: 31
    >>> res.x
    array([ 1.,  1.,  1.,  1.,  1.])
    >>> print(res.message)
    Optimization terminated successfully.
    >>> res.hess_inv
    array([[ 0.00749589,  0.01255155,  0.02396251,  0.04750988,  0.09495377],  # may vary
           [ 0.01255155,  0.02510441,  0.04794055,  0.09502834,  0.18996269],
           [ 0.02396251,  0.04794055,  0.09631614,  0.19092151,  0.38165151],
           [ 0.04750988,  0.09502834,  0.19092151,  0.38341252,  0.7664427 ],
           [ 0.09495377,  0.18996269,  0.38165151,  0.7664427,   1.53713523]])
    
    
    Next, consider a minimization problem with several constraints (namely
    Example 16.4 from [5]_). The objective function is:
    
    >>> fun = lambda x: (x[0] - 1)**2 + (x[1] - 2.5)**2
    
    There are three constraints defined as:
    
    >>> cons = ({'type': 'ineq', 'fun': lambda x:  x[0] - 2 * x[1] + 2},
    ...         {'type': 'ineq', 'fun': lambda x: -x[0] - 2 * x[1] + 6},
    ...         {'type': 'ineq', 'fun': lambda x: -x[0] + 2 * x[1] + 2})
    
    And variables must be positive, hence the following bounds:
    
    >>> bnds = ((0, None), (0, None))
    
    The optimization problem is solved using the SLSQP method as:
    
    >>> res = minimize(fun, (2, 0), method='SLSQP', bounds=bnds,
    ...                constraints=cons)
    
    It should converge to the theoretical solution (1.4 ,1.7).

Первые производные

Наискорейший подъем (спуск)

Направление на максимум всегда в направлении градиента функции:

$$ \theta_{k+1} = \theta_k + \beta_k \nabla L $$
  • Не понятно, как определять $\beta$
  • Не понятно, когда останавливаться.

Модификация метода - метод сопряженных градиентов на самом деле требует второй производной.

Вторые производные

Главная формула:

$$ L(\theta) = L(\theta_0) + \nabla L( \theta - \theta_0) + \frac{1}{2} (\theta-\theta_0)^T H (\theta-\theta_0) + o(\theta-\theta_0)$$

Метод Ньютона

$$\nabla f(\theta_k) + H(\theta_k)(\theta_{k+1} - \theta_k) = 0$$$$ \theta_{k+1} = \theta_k - H^{-1}(\theta_k)\nabla L(\theta_k) $$

Можно добавить выбор шага:

$$ \theta_{k+1} = \theta_k - \lambda_i H^{-1}(\theta_k)\nabla L(\theta_k) $$
In [12]:
from scipy import optimize
optimize.newton(lambda x: x**3 - 1, 1.5)
Out[12]:
1.0000000000000016

Методы с переменной метрикой

  • Вычислять $\nabla L$ и $H$ очень дорого
  • Давайте вычислять их итеративно.

Примеры:

  • MINUIT
  • scipy minimize(method=L-BFGS-B)

Случай наименьших квадратов

В случае анализа спектров имеем:

$$ L(X | \theta) = \prod p_i (x_i | \theta)$$

Или:

$$\ln{ L(X | \theta)} = \sum \ln{ p_i (x_i | \theta)}$$

В случае нормальных распределений:

$$\ln{ L(X | \theta)} \sim \sum{ \left( \frac{y_i - \mu(x_i, \theta)}{\sigma_i} \right)^2 }$$

Метод Гаусса-Ньютона

Пусть: $$r_i = \frac{y_i - \mu(x_i, \theta)}{\sigma_i}$$ $$J_{ij} = \frac{\partial r_i}{\partial \theta_j} = - \frac{\partial \mu(x_i, \theta)}{\sigma_i \partial \theta_j}$$

Тогда:

$$ \theta_{(k+1)} = \theta_{(k)} - \left( J^TJ \right)^{-1}J^Tr(\theta)$$

Алгоритм Левенберга — Марквардта

$$ \theta_{(k+1)} = \theta_{(k)} + \delta$$$$ (J^TJ + \lambda I)\delta = J^Tr(\theta)$$

При этом $\lambda$ - фактор регуляризации, выбирается произвольным образом.

Метод квазиоптимальных весов

Идея: Есть некоторая статистика (функция данных) $f(x)$. Для оптимального решения среднее от этой функции по экспериментальным данным и по модели должны совпадать: $$ E_\theta(f(x)) = \sum_i{f(x_i)} $$

Можно показать, что оптимальная эффективность получается когда

$$ f = \frac{\partial \ln L}{\partial \theta} $$

В этом случае и если ошибки распределены по Гауссу или Пуассону, решение для оптмального $\theta$ можно получить как:

$$ \sum_{i}{\frac{\mu_{i}\left( \mathbf{\theta},E_{i} \right) - x_{i}}{\sigma_{i}^{2}}\left. \ \frac{\partial\mu_{i}\left( \mathbf{\theta},E_{i} \right)}{\partial\mathbf{\theta}} \right|_{\mathbf{\theta}_{\mathbf{0}}}} = 0. $$