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Moving average in eviews and Python

I wanted to ask when doing moving average models in Time series trend analyze when we do moving average in eviews we do something like code below

moving average = @movavc(data, n)

However in python, we would do something like below:

data["mov_avc"] = data.rolling(window=n).mean()

When doing simple moving average in eviews we lose first but also LAST few observations, in python we would only lose first observations.

How is so?

If i got your question correctly, you want to understand why performing a moving average of window size n in python doesn't lose the last few points.

Looking at the pandas.rolling() docs you see the note below:

By default, the result is set to the right edge of the window. This can be changed to the center of the window by setting center=True.

This means that the rolling window, by default, isn't centred on the value it is calculating the average for.

Let's take a look at how this works with an example.

We have a simple DataFrame:

In [2]: ones_matrix = np.ones((5,1))
   ...: ones_matrix[:,0] = np.array([i+1 for i in range(ones_matrix.shape[0])])
   ...: index = [chr(ord('A')+i) for i in range(ones_matrix.shape[0])]
   ...: df = pd.DataFrame(data = ones_matrix,columns=['Value'],index=index)
   ...: df
Out[2]:
   Value
A    1.0
B    2.0
C    3.0
D    4.0
E    5.0

Now let's roll window with size 3 . (Notice that i explicitly wrote the argument center=False but that's the default value of calling df.rolling())

In [3]: rolled_df = df.rolling(window=3,center=False).mean()
   ...: rolled_df
Out[3]:
   Value
A    NaN
B    NaN
C    2.0
D    3.0
E    4.0

The first two rows are NaN while the last points remain there. If you notice for example at the row with index C it's value after rolling is 2 . But before it was 3 . This means that the new value for this index was the result of averaging the rows with indexes {A,B,C} whose values were respectively {1,2,3}.

Therefore you can see the window wasn't centred on the index C when calculating the average for that position, it was instead centred on the index B.

You can change that by setting centered=True , thus outputing the expected behaviour:

In [4]: centred_rolled_df = df.rolling(window=3,center=True).mean()
   ...: centred_rolled_df
Out[4]:
   Value
A    NaN
B    2.0
C    3.0
D    4.0
E    NaN

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