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I am doing what I thought would be a simple regression on my data however something is wrong. I use csv2rec to read my data but then I print the regression parameters m and b I get nan nan.

In case you want to preview the csv file here is some of it:

"Oxide","ooh","oh",
"MoO",3.06,0.01,
"IrO",2.79,-0.23,

What I want is a regression on the two rows. x = a.oh and y = a.ooh

Here is the script I am using

import matplotlib
import matplotlib.mlab as mlab
import matplotlib.pyplot as plt
from pylab import polyfit

a = mlab.csv2rec('rutilecsv.csv')

fig = plt.figure()
ax = fig.add_subplot(111)

ax.set_xlabel('E_OH / eV', fontsize=12)
ax.set_ylabel('E_OOH / eV', fontsize=12)

(m, b) = polyfit(a.oh, a.ooh, 1)

print m, b

ax.plot(a.oh, a.ooh, 'go')

plt.axis([-2, 3, 1, 6])
plt.show()
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Is it possible that csv2rec is not interpreting your first row as column names and hence not converting the other numerical values? –  Edmon Aug 2 '12 at 14:01
    
FWIW I can't reproduce this. With your example data file I get (m,b) = 1.125, 3.04875, and a plot with two green circles. [mpl 1.1.1rc.] Are you sure that all the parts of the data you didn't list are okay, esp. at the end? What do any(numpy.isnan(a.ooh)) and any(numpy.isnan(a.oh)) return? –  DSM Aug 2 '12 at 14:02
    
If I had only runned the script after modifying the csv file for I would have caught. It did not matter in plot if you had empty elements but does in polyfit. Thank you. –  user1488097 Aug 2 '12 at 14:14
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2 Answers

up vote 1 down vote accepted

Okay, just to put this to bed, this is exactly the symptom you'd get if there were missing data:

"Oxide","ooh","oh",
"MoO",3.06,0.01,
"IrO",2.79,-0.23,
"ZZ",2.79,,

results in

In [7]: a.ooh
Out[7]: array([ 3.06,  2.79,  2.79])

In [8]: a.oh
Out[8]: array([ 0.01, -0.23,   nan])

In [9]: polyfit(a.oh, a.ooh, 1)
Out[9]: array([ nan,  nan])

If you want to simply ignore the missing data, then you can simply pass polyfit only the points where both exist:

In [15]: good_data = ~(numpy.isnan(a.oh) | numpy.isnan(a.ooh))

In [16]: good_data
Out[16]: array([ True,  True, False], dtype=bool)

In [17]: a.oh[good_data]
Out[17]: array([ 0.01, -0.23])

In [18]: a.ooh[good_data]
Out[18]: array([ 3.06,  2.79])

In [19]: polyfit(a.oh[good_data], a.ooh[good_data], 1)
Out[19]: array([ 1.125  ,  3.04875])
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Two things to check:

  1. Are values converted propery

  2. Try a['oh'] and a['ooh'] to access vectors

and maybe use option names to specify column names when reading file in.

share|improve this answer
    
DSM got it right. But thank you very much for trying to help. –  user1488097 Aug 2 '12 at 14:14
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