# pandas - More efficient way to calculate two Series with circular dependencies

I have a DataFrame that represents stock returns. To split adjust the closing price, I have the following method:

``````def returns(ticker, start=None, end=None):
p = historical_prices(ticker, start, end, data='d', convert=True)
d = historical_prices(ticker, start, end, data='v', convert=True)

p['Dividends'] = d['Dividends']
p['Dividends'].fillna(value=0, inplace=True)
p['DivFactor'] = 1.
p['SAClose'] = p['Close']

records, fields = p.shape
for t in range(1, records):
p['SAClose'][t] = p['Adj Close'][t] / p['DivFactor'][t-1] + \
p['Dividends'][t-1]
p['DivFactor'][t] = p['DivFactor'][t-1] * \
(1 - p['Dividends'][t-1] / p['SAClose'][t])

p['Lagged SAClose'] = p['SAClose'].shift(periods=-1)
p['Cash Return'] = p['Dividends'] / p['Lagged SAClose']
p['Price Return'] = p['SAClose'] / p['Lagged SAClose'] - 1
return p.sort_index()
``````

Note how `SAClose` (i.e. Split Adjusted Close) depends upon lagged `DivFactor` values. In turn, `DivFactor` depends on both lagged `DivFactor` values as well as the current `SAClose` value.

The method above works, but it is incredibly slow in the loop section. Is there a more efficient way for me to do this in pandas? Given the "circular" dependency (not really circular given the lags), I'm not sure how I could do either regular series math or use normal shift operations (e.g as I do with `Cash Return`).

-

``````(p['Dividends'].fillna(1.) + 1.).cumprod()
You pushed me in the right direction ... DivFactor doesn't need to be circular with SAClose. That said, it seems to have a form (see edit) that isn't easily passed into `cumprod`. Any thoughts? – MikeRand Aug 3 '12 at 10:59