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@ -1,4 +1,4 @@ |
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# $Id: fitting.py,v 1.1 2010-01-22 18:44:59 wirawan Exp $ |
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# $Id: fitting.py,v 1.2 2010-05-28 18:43:39 wirawan Exp $ |
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# |
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# |
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# wpylib.math.fitting module |
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# wpylib.math.fitting module |
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# Created: 20100120 |
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# Created: 20100120 |
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@ -118,18 +118,27 @@ class Poly_order4(Poly_base): |
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def fit_func(Funct, Data=None, Guess=None, x=None, y=None): |
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def fit_func(Funct, Data=None, Guess=None, x=None, y=None, |
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''' |
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debug=10, |
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method='leastsq', opts={}): |
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""" |
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Performs a function fitting. |
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The domain of the function is a D-dimensional vector, and the function |
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yields a scalar. |
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Funct is a python function (or any callable object) with argument list of |
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Funct is a python function (or any callable object) with argument list of |
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(C, x), where: |
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(C, x), where: |
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* C is the cofficients (parameters) to be adjusted by the fitting process |
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* C is the cofficients (parameters) being adjusted by the fitting process |
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(it is a sequence or a 1-D array) |
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(it is a sequence or a 1-D array) |
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* x is a 2-D array (or sequence of like nature). The "row" size is the dimensionality |
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* x is a 2-D array (or sequence of like nature), say, |
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of the domain, while the "column" is the number of data points, whose count must be |
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of size "N rows times M columns". |
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equal to the size of y data below. |
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N is the dimensionality of the domain, while |
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M is the number of data points, whose count must be equal to the |
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size of y data below. |
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For a 2-D fitting, for example, x should be a column array. |
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Inspect Poly_base, Poly_order2, and other similar function classes in this module |
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Inspect Poly_base, Poly_order2, and other similar function classes in this |
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to see the example of the Funct function. |
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module to see the example of the Funct function. |
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The measurement (input) datasets, against which the function is to be fitted, |
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The measurement (input) datasets, against which the function is to be fitted, |
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can be specified in one of two ways: |
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can be specified in one of two ways: |
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@ -139,11 +148,10 @@ def fit_func(Funct, Data=None, Guess=None, x=None, y=None): |
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Or, |
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Or, |
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* via Data argument (which is a multi-column dataset |
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* via Data argument (which is a multi-column dataset |
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''' |
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""" |
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global last_fit_rslt, last_chi_sqr |
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global last_fit_rslt, last_chi_sqr |
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from scipy.optimize import leastsq |
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from scipy.optimize import leastsq, anneal |
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# We want to minimize this error: |
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# We want to minimize this error: |
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fun_err = lambda CC, xx, yy: abs(Funct(CC,xx) - yy) |
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if Data != None: # an alternative way to specifying x and y |
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if Data != None: # an alternative way to specifying x and y |
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y = Data[0] |
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y = Data[0] |
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x = Data[1:] # possibly multidimensional! |
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x = Data[1:] # possibly multidimensional! |
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@ -152,12 +160,36 @@ def fit_func(Funct, Data=None, Guess=None, x=None, y=None): |
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Guess = Funct.Guess(y) |
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Guess = Funct.Guess(y) |
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elif Guess == None: # VERY OLD, DO NOT USE ANYMORE! |
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elif Guess == None: # VERY OLD, DO NOT USE ANYMORE! |
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Guess = [ y.mean() ] + [0.0, 0.0] * len(x) |
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Guess = [ y.mean() ] + [0.0, 0.0] * len(x) |
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rslt = leastsq(fun_err, |
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x0=Guess, # initial coefficient guess |
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fun_err = lambda CC, xx, yy: abs(Funct(CC,xx) - yy) |
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args=(x,y), # data onto which the function is fitted |
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fun_err2 = lambda CC, xx, yy: numpy.sum(abs(Funct(CC,xx) - yy)**2) |
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full_output=1) |
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if debug >= 5: |
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print "Guess params:" |
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print Guess |
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if method == 'leastsq': |
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rslt = leastsq(fun_err, |
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x0=Guess, # initial coefficient guess |
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args=(x,y), # data onto which the function is fitted |
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full_output=1, |
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**opts |
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) |
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elif method == 'anneal': |
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rslt = anneal(fun_err2, |
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x0=Guess, # initial coefficient guess |
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args=(x,y), # data onto which the function is fitted |
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full_output=1, |
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**opts |
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) |
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else: |
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raise ValueError, "Unsupported minimization method: %s" % method |
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last_fit_rslt = rslt |
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last_fit_rslt = rslt |
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last_chi_sqr = sum( fun_err(rslt[0], x, y)**2 ) |
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last_chi_sqr = fun_err2(rslt[0], x, y) |
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if (debug >= 10): |
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#print "Fit-message: ", rslt[] |
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print "Fit-result:" |
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print "\n".join([ "%2d %s" % (ii, rslt[ii]) for ii in xrange(len(rslt)) ]) |
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print "params = ", rslt[0] |
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print "params = ", rslt[0] |
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print "chi square = ", last_chi_sqr / len(y) |
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print "chi square = ", last_chi_sqr / len(y) |
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return rslt[0] |
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return rslt[0] |
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