# multivariate linear regression in python?

I can't seem to find any python libraries that do multivariate regression. The only things I find only do simple regression. I need to regress my dependent variable (y) against several independent variables (x1, x2, x3, etc.).

For example, with this data:

``````print 'y        x1      x2       x3       x4      x5     x6       x7'
for t in texts:
print "{:>7.1f}{:>10.2f}{:>9.2f}{:>9.2f}{:>10.2f}{:>7.2f}{:>7.2f}{:>9.2f}" /
.format(t.y,t.x1,t.x2,t.x3,t.x4,t.x5,t.x6,t.x7)
``````

(output for above:)

``````      y        x1       x2       x3        x4     x5     x6       x7
-6.0     -4.95    -5.87    -0.76     14.73   4.02   0.20     0.45
-5.0     -4.55    -4.52    -0.71     13.74   4.47   0.16     0.50
-10.0    -10.96   -11.64    -0.98     15.49   4.18   0.19     0.53
-5.0     -1.08    -3.36     0.75     24.72   4.96   0.16     0.60
-8.0     -6.52    -7.45    -0.86     16.59   4.29   0.10     0.48
-3.0     -0.81    -2.36    -0.50     22.44   4.81   0.15     0.53
-6.0     -7.01    -7.33    -0.33     13.93   4.32   0.21     0.50
-8.0     -4.46    -7.65    -0.94     11.40   4.43   0.16     0.49
-8.0    -11.54   -10.03    -1.03     18.18   4.28   0.21     0.55
``````

How would I regress these in python, to get the linear regression formula:

Y = a1x1 + a2x2 + a3x3 + a4x4 + a5x5 + a6x6 + +a7x7 + c

-
not an expert, but if the variables are independent, can't you just run simple regression against each and sum the result? –  Hugh Bothwell Jul 13 '12 at 22:22
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## 3 Answers

``````from sklearn import linear_model
clf = linear_model.LinearRegression()
clf.fit([[getattr(t, 'x%d' % i) for i in range(1, 8)] for t in texts],
[t.y for t in texts])
``````

Then `clf.coef_` will have the regression coefficients.

`sklearn.linear_model` also has similar interfaces to do various kinds of regularizations on the regression.

-
This returns an error with certain inputs. Any other solutions available? –  Zach Jul 19 '12 at 1:30
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Here is a little work around that I created. I checked it with R and it works correct.

``````import numpy as np
import statsmodels.api as sm

y = [1,2,3,4,3,4,5,4,5,5,4,5,4,5,4,5,6,5,4,5,4,3,4]

x = [
[4,2,3,4,5,4,5,6,7,4,8,9,8,8,6,6,5,5,5,5,5,5,5],
[4,1,2,3,4,5,6,7,5,8,7,8,7,8,7,8,7,7,7,7,7,6,5],
[4,1,2,5,6,7,8,9,7,8,7,8,7,7,7,7,7,7,6,6,4,4,4]
]

def reg_m(y, x):
ones = np.ones(len(x[0]))
X = sm.add_constant(np.column_stack((x[0], ones)))
for ele in x[1:]:
X = sm.add_constant(np.column_stack((ele, X)))
results = sm.OLS(y, X).fit()
return results
``````

Result:

``````reg_m(y, x).summary
``````

Output:

``````                            OLS Regression Results
==============================================================================
Dep. Variable:                      y   R-squared:                       0.535
Model:                            OLS   Adj. R-squared:                  0.461
Method:                 Least Squares   F-statistic:                     7.281
Date:                Tue, 19 Feb 2013   Prob (F-statistic):            0.00191
Time:                        21:51:28   Log-Likelihood:                -26.025
No. Observations:                  23   AIC:                             60.05
Df Residuals:                      19   BIC:                             64.59
Df Model:                           3
==============================================================================
coef    std err          t      P>|t|      [95.0% Conf. Int.]
------------------------------------------------------------------------------
x1             0.2424      0.139      1.739      0.098        -0.049     0.534
x2             0.2360      0.149      1.587      0.129        -0.075     0.547
x3            -0.0618      0.145     -0.427      0.674        -0.365     0.241
const          1.5704      0.633      2.481      0.023         0.245     2.895

==============================================================================
Omnibus:                        6.904   Durbin-Watson:                   1.905
Prob(Omnibus):                  0.032   Jarque-Bera (JB):                4.708
Skew:                          -0.849   Prob(JB):                       0.0950
Kurtosis:                       4.426   Cond. No.                         38.6
``````
-
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You can use numpy.linalg.lstsq

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How can you use this to get the coefficents of a multivariate regression? I only see how to do a simple regression... and don't see how to get the coefficents.. –  Zach Jul 19 '12 at 2:37
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