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I want to use the "subset" parameter of R's lm() function via rpy to filter rows similar to this R-syntax:

model = lm(Trt ~ Ctl, subset=(Name=="A"))

I have trouble translating the above to python:

from rpy2.robjects.vectors import DataFrame
from rpy2.robjects.packages import importr
stats = importr('stats')
base = importr('base')

data = DataFrame.from_csvfile("test_table.csv")

model1 = stats.lm("Trt ~ Ctl", data = data) # WORKS FINE
model2 = stats.lm("Trt ~ Ctl", data = data, subset = '(Name == "A")') # FAILS

test_table.csv :



    Ctl  Trt Name
1  4.17 4.81    A
2  5.58 4.17    B
3  5.18 4.41    C
4  6.11 3.59    A
5  4.50 5.87    B
6  4.61 3.83    C
7  5.17 6.03    A
8  4.53 4.89    B
9  5.33 4.32    C
10 5.14 4.69    A

Error in, y, offset = offset, singular.ok = singular.ok, ...) : 
  0 (non-NA) cases
Traceback (most recent call last):
  File "", line 754, in <module>
    lm_D9 = stats.lm("Trt ~ Ctl", data = data, subset = 'Name=="A"')
  File "/usr/local/lib64/python2.7/site-packages/rpy2/robjects/", line 82, in __call__
    return super(SignatureTranslatedFunction, self).__call__(*args, **kwargs)
  File "/usr/local/lib64/python2.7/site-packages/rpy2/robjects/", line 34, in __call__
    res = super(Function, self).__call__(*new_args, **new_kwargs)
rpy2.rinterface.RRuntimeError: Error in, y, offset = offset, singular.ok = singular.ok, ...) : 
  0 (non-NA) cases

Looks like it finds no matches. Any idea how to pass the filter expression correctly? Or is there a simple workaround to achive the same effect from rpy2?

share|improve this question
Okay I found it myself: lm("Trt ~ Ctl", data = data, subset = (data.rx2('Name').ro == 'A')) Is there a better, more efficient way for large data frames? – TimK Jul 2 '13 at 15:30
That syntax will be roughly as efficient as R doing it itself (and R is moving it down to C). If doing for many different rules to subset, you might need an indexed approach (filtering in R is O(n), looping through all rows in the data frame). Pandas might be worth a look at. – lgautier Jul 2 '13 at 15:42

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