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 j j |	 | k ƒ d  S(   Niÿÿÿÿ(   t   TestOLS(   t   Templates       Summary of Regression Results
=======================================
| Dependent Variable:                y|
| Model:                           OLS|
| Method:                Least Squares|
| Date:               $XXcurrentXdateXX|
| Time:                       $XXtimeXXX|
| # obs:                          16.0|
| Df residuals:                    9.0|
| Df model:                        6.0|
==============================================================================
|                   coefficient     std. error    t-statistic          prob. |
------------------------------------------------------------------------------
| x1                      15.06          84.91         0.1774         0.8631 |
| x2                   -0.03582        0.03349        -1.0695         0.3127 |
| x3                     -2.020         0.4884        -4.1364         0.0025 |
| x4                     -1.033         0.2143        -4.8220         0.0009 |
| x5                   -0.05110         0.2261        -0.2261         0.8262 |
| x6                      1829.          455.5         4.0159         0.0030 |
| const              -3.482e+06      8.904e+05        -3.9108         0.0036 |
==============================================================================
|                          Models stats                      Residual stats  |
------------------------------------------------------------------------------
| R-squared:                     0.9955   Durbin-Watson:              2.559  |
| Adjusted R-squared:            0.9925   Omnibus:                   0.7486  |
| F-statistic:                    330.3   Prob(Omnibus):             0.6878  |
| Prob (F-statistic):         4.984e-10   JB:                        0.6841  |
| Log likelihood:                -109.6   Prob(JB):                  0.7103  |
| AIC criterion:                  233.2   Skew:                      0.4200  |
| BIC criterion:                  238.6   Kurtosis:                   2.434  |
------------------------------------------------------------------------------t   XXcurrentXdateXXs   %a, %d %b %Yt	   XXtimeXXXs   %H:%M:%St   ignores   
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   substitutet   strt   strftimet   setup_classt   res1t   warningst   filterst   simplefiltert   summary_oldt   numpyt   joint   splitt   testingt   assert_(   R    R	   R   t   tt   desiredt   aregressiont   resultst   original_filterst	   r_summaryt   actualt   np(    (    sG   lib/python2.7/site-packages/statsmodels/iolib/tests/test_summary_old.pyt   _est_regression_summary   s*    	
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