I am using Pandas 0.8.1, and at the moment I can't change the version. If a newer version will help the problem below, please note it in a comment rather than an answer. Also, this is for a research replication project, so even though re-running a regression after appending only one new data point might be silly (if the data set is large), I still have to do it. Thanks!

In Pandas, there is a `rolling`

option for the `window_type`

argument to `pandas.ols`

but it seems implicit that this requires some choice of a window size or use of the whole data sample as default. I'm looking to instead use all the data in a cumulative fashion.

I am trying to run a regression on a `pandas.DataFrame`

that is sorted by date. For each index `i`

, I want to run a regression using the data available from the minimum date up through the date at index `i`

. So the window effectively grows by one on every iteration, all data is cumulatively used from the earliest observation, and no data is ever dropped out of the window.

I have written a function (below) that works with `apply`

to perform this, but it is unacceptably slow. Instead, is there a way to use `pandas.ols`

to directly perform this sort of cumulative regression?

Here are some more specifics about my data. I have a `pandas.DataFrame`

containing a column of identifier, a column of dates, a column of left-hand-side values, and a column of right-hand-side values. I want to use `groupby`

to group based on the identifier, and then perform a cumulative regression for every time period consisting of the left-hand and right-hand-side variables.

Here is the function I am able to use with `apply`

on the identifier-grouped object:

```
def cumulative_ols(
data_frame,
lhs_column,
rhs_column,
date_column,
min_obs=60
):
beta_dict = {}
for dt in data_frame[date_column].unique():
cur_df = data_frame[data_frame[date_column] <= dt]
obs_count = cur_df[lhs_column].notnull().sum()
if min_obs <= obs_count:
beta = pandas.ols(
y=cur_df[lhs_column],
x=cur_df[rhs_column],
).beta.ix['x']
###
else:
beta = np.NaN
###
beta_dict[dt] = beta
###
beta_df = pandas.DataFrame(pandas.Series(beta_dict, name="FactorBeta"))
beta_df.index.name = date_column
return beta_df
```

`pd.expanding_apply()`

? – Zelazny7 Feb 26 '13 at 19:03