I am running a rolling for example of 100 window `OLS regression estimation`

of the dataset found in this link (https://drive.google.com/drive/folders/0B2Iv8dfU4fTUMVFyYTEtWXlzYkk) as in the following format.

```
time X Y
0.000543 0 10
0.000575 0 10
0.041324 1 10
0.041331 2 10
0.041336 3 10
0.04134 4 10
...
9.987735 55 239
9.987739 56 239
9.987744 57 239
9.987749 58 239
9.987938 59 239
```

The third column (Y) in my dataset is my true value - that's what I wanted to predict (estimate). I want to do a prediction of `Y`

(i.e. predict the current value of `Y`

according to the previous 3 rolling values of `X`

. For this, I have the following `python`

script work using `statsmodels`

.

```
# /usr/bin/python -tt
import pandas as pd
import numpy as np
import statsmodels.api as sm
df=pd.read_csv('estimated_pred.csv')
df=df.dropna() # to drop nans in case there are any
window = 100
#print(df.index) # to print index
df['a']=None #constant
df['b1']=None #beta1
df['b2']=None #beta2
for i in range(window,len(df)):
temp=df.iloc[i-window:i,:]
RollOLS=sm.OLS(temp.loc[:,'Y'],sm.add_constant(temp.loc[:,['time','X']], has_constant = 'add')).fit()
df.iloc[i,df.columns.get_loc('a')]=RollOLS.params[0]
df.iloc[i,df.columns.get_loc('b1')]=RollOLS.params[1]
df.iloc[i,df.columns.get_loc('b2')]=RollOLS.params[2]
# Predicted values in a row
df['predicted']=df['a'].shift(1)+df['b1'].shift(1)*df['time']+df['b2'].shift(1)*df['X']
#print(df['predicted'])
print(temp)
```

Which gives me a sample output of the following format.

```
time X Y a b1 b2 predicted
0 0.000543 0 10 None None None NaN
1 0.000575 0 10 None None None NaN
2 0.041324 1 10 None None None NaN
3 0.041331 2 10 None None None NaN
4 0.041336 3 10 None None None NaN
.. ... .. .. ... ... ... ...
50 0.041340 4 10 10 0 1.55431e-15 NaN
51 0.041345 5 10 10 1.7053e-13 7.77156e-16 10
52 0.041350 6 10 10 1.74623e-09 -7.99361e-15 10
53 0.041354 7 10 10 6.98492e-10 -6.21725e-15 10
.. ... .. .. ... ... ... ...
509 0.160835 38 20 20 4.88944e-09 -1.15463e-14 20
510 0.160839 39 20 20 1.86265e-09 5.32907e-15 20
.. ... .. .. ... ... ... ...
```

Finally, I want to include the mean squared error (`MSE`

) for all the prediction (a summary of the `OLS`

regression analysis) values. For example, if we look at row 5, the value of `X`

is 2 and the value of `Y`

is 10. Let's say the prediction value of `y`

at the current row is 6 and therefore the `mse`

will be `(10-6)^2`

. The `sm.OLS`

returns an instance of this class `<class 'statsmodels.regression.linear_model.OLS'>`

when we do `print (RollOLS.summary())`

.

```
OLS Regression Results
==============================================================================
Dep. Variable: Y R-squared: -inf
Model: OLS Adj. R-squared: -inf
Method: Least Squares F-statistic: -48.50
Date: Tue, 04 Jul 2017 Prob (F-statistic): 1.00
Time: 22:19:18 Log-Likelihood: 2359.7
No. Observations: 100 AIC: -4713.
Df Residuals: 97 BIC: -4706.
Df Model: 2
Covariance Type: nonrobust
==============================================================================
coef std err t P>|t| [95.0% Conf. Int.]
------------------------------------------------------------------------------
const 239.0000 2.58e-09 9.26e+10 0.000 239.000 239.000
time 4.547e-13 2.58e-10 0.002 0.999 -5.12e-10 5.13e-10
X -3.886e-16 1.1e-13 -0.004 0.997 -2.19e-13 2.19e-13
==============================================================================
Omnibus: 44.322 Durbin-Watson: 0.000
Prob(Omnibus): 0.000 Jarque-Bera (JB): 86.471
Skew: -1.886 Prob(JB): 1.67e-19
Kurtosis: 5.556 Cond. No. 9.72e+04
==============================================================================
```

But the value of `rsquared`

(`print (RollOLS.rsquared))`

, for example, should have been between `0`

and `1`

instead of `-inf`

and this seems to be the issue with `missing intercepts`

. If we want to print the `mse`

, we do `print (RollOLS.mse_model)`

... etc as per the documentation. How can we add the `intercepts`

and print the regression statistics with the correct values as we do for the predicted values? What am I doing wrong in here? Or is there another way of doing this using `scikit-learn`

libraries?

`Y`

on X? I actually have found out that if you set the`intercept`

to`False`

:`model = pd.stats.ols.MovingOLS(y=df.Y, x=df[['X']], window_type='rolling', window=3, intercept=False)`

- it gives better values (for example:`R-squared: 0.5999`

). Do you know how we can turn`intercept`

to`False`

in`statsmodels`

? – Desta Haileselassie Hagos Jul 6 '17 at 19:08`sm.OLS(temp.loc[:,'Y'],sm.add_constant(temp.loc[:,['time','X']], has_constant = 'add')).fit()`

just use`sm.OLS(temp.loc[:,'Y'],temp.loc[:,['time','X']).fit()`

to take differences you can say`df['Y']=df.diff()['Y'].values`

. also do not confuse getting a value for Rsq and inf as "better". I agree with @Flabs that OLS on levels is probably a poor model (depending on your use though). hence why i suggested differencing your dependent variable because to me it looks like there is an underlying growth rate + noise correlated to X (maybe even changes in X) – Vlox Jul 6 '17 at 19:23`RollOLS=sm.OLS(temp.loc[:,'Y'],temp.loc[:,['time','X']]).fit()`

, we will have the error`IndexError: index out of bounds`

. And when do`df['Y']=df.diff()['Y'].values`

, we have an error`TypeError: unsupported operand type(s) for -: 'NoneType' and 'NoneType'`

. – Desta Haileselassie Hagos Jul 6 '17 at 20:16`nan`

as there is nothing to difference, so you can do`df.dropna()`

or run only on`df.iloc[1:,:]`

– Vlox Jul 6 '17 at 20:38