# Calculating returns from a dataframe with financial data

I have a dataframe with monthly financial data:

``````In [89]: vfiax_monthly.head()
Out[89]:
year  month  day       d   open  close   high    low  volume  aclose
2003-01-31  2003      1   31  731246  64.95  64.95  64.95  64.95       0   64.95
2003-02-28  2003      2   28  731274  63.98  63.98  63.98  63.98       0   63.98
2003-03-31  2003      3   31  731305  64.59  64.59  64.59  64.59       0   64.59
2003-04-30  2003      4   30  731335  69.93  69.93  69.93  69.93       0   69.93
2003-05-30  2003      5   30  731365  73.61  73.61  73.61  73.61       0   73.61
``````

I'm trying to calculate the returns like that:

``````In [90]: returns = (vfiax_monthly.open[1:] - vfiax_monthly.open[:-1])/vfiax_monthly.open[1:]
``````

But I'm getting only zeroes:

``````In [91]: returns.head()
Out[91]:
2003-01-31   NaN
2003-02-28     0
2003-03-31     0
2003-04-30     0
2003-05-30     0
Freq: BM, Name: open
``````

I think that's because the arithmetic operations get aligned on the index and that makes the `[1:]` and `[:-1]` useless.

My workaround is:

``````In [103]: returns = (vfiax_monthly.open[1:].values - vfiax_monthly.open[:-1].values)/vfiax_monthly.open[1:].values

In [104]: returns = pd.Series(returns, index=vfiax_monthly.index[1:])

Out[105]:
2003-02-28   -0.015161
2003-03-31    0.009444
2003-04-30    0.076362
2003-05-30    0.049993
2003-06-30    0.012477
Freq: BM
``````

Is there a better way to calculate the returns? I don't like the conversion to array and then back to Series.

-

Instead of slicing, use `.shift` to move the index position of values in a DataFrame/Series. For example:

``````returns = (vfiax_monthly.open - vfiax_monthly.open.shift(1))/vfiax_monthly.open
``````

This is what `pct_change` is doing under the bonnet. You can also use it for other functions e.g.:

``````(3*vfiax_monthly.open + 2*vfiax_monthly.open.shift(1))/5
``````

You might also want to looking into the rolling and window functions for other types of analysis of financial data.

-
That's what I was looking for! –  Daniel Velkov Nov 15 '12 at 2:21

The easiest way to do this is to use the DataFrame.pct_change() method.

Here is a quick example

``````In[1]: aapl = get_data_yahoo('aapl', start='11/1/2012', end='11/13/2012')

In[2]: appl
Out[2]:
Open    High     Low   Close    Volume  Adj Close
Date
2012-11-01  598.22  603.00  594.17  596.54  12903500     593.83
2012-11-02  595.89  596.95  574.75  576.80  21406200     574.18
2012-11-05  583.52  587.77  577.60  584.62  18897700     581.96
2012-11-06  590.23  590.74  580.09  582.85  13389900     580.20
2012-11-07  573.84  574.54  555.75  558.00  28344600     558.00
2012-11-08  560.63  562.23  535.29  537.75  37719500     537.75
2012-11-09  540.42  554.88  533.72  547.06  33211200     547.06
2012-11-12  554.15  554.50  538.65  542.83  18421500     542.83
2012-11-13  538.91  550.48  536.36  542.90  19033900     542.90

In[3]: aapl.pct_change()
Out[3]:
Open      High       Low     Close    Volume  Adj Close
Date
2012-11-01       NaN       NaN       NaN       NaN       NaN        NaN
2012-11-02 -0.003895 -0.010033 -0.032684 -0.033091  0.658945  -0.033090
2012-11-05 -0.020759 -0.015378  0.004959  0.013558 -0.117186   0.013550
2012-11-06  0.011499  0.005053  0.004311 -0.003028 -0.291453  -0.003024
2012-11-07 -0.027769 -0.027423 -0.041959 -0.042635  1.116864  -0.038263
2012-11-08 -0.023020 -0.021426 -0.036815 -0.036290  0.330747  -0.036290
2012-11-09 -0.036049 -0.013073 -0.002933  0.017313 -0.119522   0.017313
2012-11-12  0.025406 -0.000685  0.009237 -0.007732 -0.445323  -0.007732
2012-11-13 -0.027502 -0.007250 -0.004251  0.000129  0.033244   0.000129
``````
-
I like this solution. But it's specific to my use case. What if I want to calculate the average between every pair of months (or something complicated which is has no built-in pandas function): `(vfiax_monthly.open[1:] - vfiax_monthly.open[:-1])/2` –  Daniel Velkov Nov 14 '12 at 21:08
Could you add an example of 'something complicated' to the original post? Assuming you had a `DateTimeIndex` with regular frequency you could always use `df.resample` to aggregate the data at another regular frequency (like every two months) and then use `df.pct_change()` to get the returns. Also there are various options for `pct_change()` [see `periods`, `freq`] that allow you to specify how many data points should be used to compute the returns (`periods` defaults to 1, which is why the solution gave the same answer as your function). –  spencerlyon2 Nov 14 '12 at 21:49
`(vfiax_monthly.open[1:] + vfiax_monthly.open[:-1])/2` was an example although maybe there's some kind of a window mean function. But let's say I need: `(3*vfiax_monthly.open[1:] + 2*vfiax_monthly.open[:-1])/5`. Now I'm realizing that the choice of the result index is arbitrary so maybe the magic function that i'm looking for does not exist. –  Daniel Velkov Nov 14 '12 at 23:28
(vfiax_monthly.open[1:] - vfiax_monthly.open[:-1])/vfiax_monthly.open[1:] is not the percentage change but the return on investment. Percentage change is the current row divided by the previous one, which would be the equivalent of vfiax_monthly.open[1:]/vfiax_monthly.open[:-1]-1 so in any case pct_change() would be wrong. –  Matti John Nov 15 '12 at 0:53