Multivariate Taylor approximation in sympy

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借酒劲吻你
借酒劲吻你 2021-01-05 08:18

I aim to write a multidimensional Taylor approximation using sympy, which

  • uses as many builtin code as possible,
  • computes the truncated T
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  • 2021-01-05 08:57

    Here is a multivariate Taylor series expansion to be used with Sympy:

    def Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree):
        """
        Mathematical formulation reference:
        https://math.libretexts.org/Bookshelves/Calculus/Supplemental_Modules_(Calculus)/Multivariable_Calculus/3%3A_Topics_in_Partial_Derivatives/Taylor__Polynomials_of_Functions_of_Two_Variables
        :param function_expression: Sympy expression of the function
        :param variable_list: list. All variables to be approximated (to be "Taylorized")
        :param evaluation_point: list. Coordinates, where the function will be expressed
        :param degree: int. Total degree of the Taylor polynomial
        :return: Returns a Sympy expression of the Taylor series up to a given degree, of a given multivariate expression, approximated as a multivariate polynomial evaluated at the evaluation_point
        """
        from sympy import factorial, Matrix, prod
        import itertools
    
        n_var = len(variable_list)
        point_coordinates = [(i, j) for i, j in (zip(variable_list, evaluation_point))]  # list of tuples with variables and their evaluation_point coordinates, to later perform substitution
    
        deriv_orders = list(itertools.product(range(degree + 1), repeat=n_var))  # list with exponentials of the partial derivatives
        deriv_orders = [deriv_orders[i] for i in range(len(deriv_orders)) if sum(deriv_orders[i]) <= degree]  # Discarding some higher-order terms
        n_terms = len(deriv_orders)
        deriv_orders_as_input = [list(sum(list(zip(variable_list, deriv_orders[i])), ())) for i in range(n_terms)]  # Individual degree of each partial derivative, of each term
    
        polynomial = 0
        for i in range(n_terms):
            partial_derivatives_at_point = function_expression.diff(*deriv_orders_as_input[i]).subs(point_coordinates)  # e.g. df/(dx*dy**2)
            denominator = prod([factorial(j) for j in deriv_orders[i]])  # e.g. (1! * 2!)
            distances_powered = prod([(Matrix(variable_list) - Matrix(evaluation_point))[j] ** deriv_orders[i][j] for j in range(n_var)])  # e.g. (x-x0)*(y-y0)**2
            polynomial += partial_derivatives_at_point / denominator * distances_powered
        return polynomial
    

    And here is the validation for a two-variate problem, following the exercises and answers in: https://math.libretexts.org/Bookshelves/Calculus/Supplemental_Modules_(Calculus)/Multivariable_Calculus/3%3A_Topics_in_Partial_Derivatives/Taylor__Polynomials_of_Functions_of_Two_Variables

    # Solving the exercises in section 13.7 of https://math.libretexts.org/Bookshelves/Calculus/Supplemental_Modules_(Calculus)/Multivariable_Calculus/3%3A_Topics_in_Partial_Derivatives/Taylor__Polynomials_of_Functions_of_Two_Variables
    from sympy import symbols, sqrt, atan, ln
    
    # Exercise 1
    x = symbols('x')
    y = symbols('y')
    function_expression = x*sqrt(y)
    variable_list = [x,y]
    evaluation_point = [1,4]
    degree=1
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    degree=2
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    
    # Exercise 3
    x = symbols('x')
    y = symbols('y')
    function_expression = atan(x+2*y)
    variable_list = [x,y]
    evaluation_point = [1,0]
    degree=1
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    degree=2
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    
    # Exercise 5
    x = symbols('x')
    y = symbols('y')
    function_expression = x**2*y + y**2
    variable_list = [x,y]
    evaluation_point = [1,3]
    degree=1
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    degree=2
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    
    # Exercise 7
    x = symbols('x')
    y = symbols('y')
    function_expression = ln(x**2+y**2+1)
    variable_list = [x,y]
    evaluation_point = [0,0]
    degree=1
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    degree=2
    print(Taylor_polynomial_sympy(function_expression, variable_list, evaluation_point, degree))
    

    It can be useful to perform simplify() on the result.

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  • 2021-01-05 09:02

    multivariate taylor expansion

    def mtaylor(funexpr,x,mu,order=1):
    
        nvars = len(x)
        hlist = ['__h' + str(i+1) for i in range(nvars)]
        command=''
        command="symbols('"+'  '.join(hlist) +"')"
        hvar = eval(command)
        #mtaylor is utaylor for specificly defined function
        t = symbols('t')
        #substitution
        loc_funexpr = funexpr
        for i in range(nvars):
            locvar = x[i]
            locsubs = mu[i]+t*hvar[i]
            loc_funexpr = loc_funexpr.subs(locvar,locsubs)
        #calculate taylorseries
        g = 0
        for i in range(order+1):
            g+=loc_funexpr.diff(t,i).subs(t,0)*t**i/math.factorial(i)
    
        #resubstitute
        for i in range(nvars):
            g = g.subs(hlist[i],x[i]-mu[i])
    
        g = g.subs(t,1)    
        return g
    

    test for some function

    x1,x2,x3,x4,x5 = symbols('x1 x2 x3 x4 x5')
    funexpr=1+x1+x2+x1*x2+x1**3
    funexpr=cos(funexpr)
    x=[x1,x2,x3,x4,x5]
    mu=[1,1,1,1,1]
    mygee = mtaylor(funexpr,x,mu,order=4)
    print(mygee)
    
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  • 2021-01-05 09:05

    You can use expr.removeO() to remove the big O from an expression.


    Oneliner: expr.series(x, 0, 3).removeO().series(y, 0, 3).removeO()

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