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I want to fit power law to my data. Also, I want to put +/- error bar on Y data. After that I want to calculate +/- error of index. My code is,

xdata=[ 2.5584532   3.42711901  5.34267459  3.60952681  4.25620071  4.74551479
4.74924626  3.7970895   3.91314611  4.78042443  2.93958035  3.2102798
3.78540076  4.79463055  3.26432293  2.53434658  4.1750218   3.88450729
2.54595273  2.93449694  2.80126747  4.03149023  4.59230662  3.05859059
6.69800933  4.23015139  4.24947013  6.25955209  6.04066595  4.71369938
3.88714628  3.54209919  3.26209216  2.54650574  2.21561145  2.11011954
2.27520552  2.82262271  1.80334547  1.7431336   3.58106715  2.70146456
2.34657055  2.63446779  2.97959497  2.77238001  2.36228643]
ydata=[  2.13   0.6    0.31   0.47   0.51   0.43   0.61   1.68   0.51   0.41
2.36   8.22   0.86   0.47   0.7    1.18   0.37   3.63   3.62   2.68
12.46   1.25   0.88  10.99   0.42   0.47   1.53   0.59   0.25   0.53
1.94   5.15   8.81   1.69  17.04   7.62  14.03   0.84  16.59  12.66
1.34   6.14   9.53  11.56  12.13   9.65  16.47]
yerr_low=[ 0.43  0.06  0.01  0.02  0.04  0.07  0.02  0.11  0.02  0.02  0.13  0.47
0.13  0.05  0.06  0.22  0.05  0.37  0.59  0.66  1.89  0.2   0.14  1.61
0.03  0.03  0.2   0.02  0.01  0.04  0.14  0.57  1.08  0.5   2.72  1.6
3.43  0.18  5.52  2.18  0.24  0.45  1.64  1.81  1.22  0.78  2.35]
yerr_high=[  7.10000000e-01   7.00000000e-02   1.00000000e-02   2.00000000e-02
4.00000000e-02   1.00000000e-01   2.00000000e-02   1.20000000e-01
2.00000000e-02   2.00000000e-02   1.40000000e-01   5.40000000e-01
1.80000000e-01   7.00000000e-02   7.00000000e-02   3.30000000e-01
8.00000000e-02   4.30000000e-01   8.40000000e-01   1.20000000e+00
2.49000000e+00   2.90000000e-01   2.00000000e-01   2.09000000e+00
4.00000000e-02   3.00000000e-02   2.70000000e-01   2.00000000e-02
1.00000000e-02   4.00000000e-02   1.60000000e-01   7.20000000e-01
1.41000000e+00   1.15000000e+00   3.64000000e+00   2.63000000e+00
5.95000000e+00   3.20000000e-01   1.31700000e+01   3.04000000e+00
3.70000000e-01   5.20000000e-01   2.37000000e+00   2.43000000e+00
1.44000000e+00   7.30000000e-01   3.10000000e+00]

xdata=array(xdata)
ydata=array(ydata)
powerlaw = lambda x, amp, index: amp * (x**index)
mean_err=(mean(yerr_high)+mean(yerr_low))/2.0
yerr = mean_err*ydata  # taking the mean error of yerr_low and yerr_high

logx = log10(xdata)
logy = log10(ydata)
logyerr = yerr / ydata
fitfunc = lambda p, x: p[0] + p[1] * x
errfunc = lambda p, x, y, err: (y - fitfunc(p, x)) / err
pinit = [1.0, -1.0]
out = optimize.leastsq(errfunc, pinit,
                   args=(logx, logy, logyerr), full_output=1)

pfinal = out[0]
covar = out[1]
index = pfinal[1]
amp = 10.0**pfinal[0]
indexErr = sqrt( covar[0][0] )
ampErr = sqrt( covar[1][1] ) * amp

loglog(xdata, powerlaw(xdata, amp, index),'-k',label='$combine$')
pl.errorbar(xdata,ydata,yerr=[yerr_low,yerr_high],linestyle='None',color='black')
pl.show()

This code works fine but i want to know whether this approach is right or not to calculate +/- error of index.

share|improve this question
    
What's your error message? What's errfunc? What's mean_err? –  Pierre GM Oct 1 '12 at 14:37
    
OK I changed the code. –  viral parekh Oct 1 '12 at 14:47
    
please post valid code! –  bmu Oct 1 '12 at 19:41

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