I have a file formatted as below:
S1A23 0.01,0.01 0.02,0.02 0.03,0.03 S25A123 0.05,0.06 0.07,0.08 S3034A1 1000,0.04 2000,0.08 3000,0.1
I'd like to break it up by each "S_A_", and compute the correlation coefficient of the data below. So far, I have:
import re import pandas as pd test = pd.read_csv("predict.csv",sep=('S\d+A\d+')) print test
but that only gives me:
Unnamed: 0 , 0 0.01,0.01 None 1 0.02,0.02 None 2 0.03,0.03 None 3 NaN , 4 0.05,0.06 None 5 0.07,0.08 None 6 NaN , 7 1000,0.04 None 8 2000,0.08 None 9 3000,0.1 None [10 rows x 2 columns]
I'd, ideally, like to keep the regex delimiter, and have something like:
S1A23: 1.0 S2A123: 0.86 S303A1: 0.75
Is this possible?
When running large files (~250k lines), I receive the following error. It is not a problem with the data, as when I break the ~250k lines into smaller chunks, all pieces run fine.
Traceback (most recent call last): File "/Users/adamg/PycharmProjects/Subj_AnswerCorrCoef/GetCorrCoef.py", line 15, in <module> print(result) File "/Users/adamg/anaconda/lib/python2.7/site-packages/pandas/core/base.py", line 35, in __str__ return self.__bytes__() File "/Users/adamg/anaconda/lib/python2.7/site-packages/pandas/core/base.py", line 47, in __bytes__ return self.__unicode__().encode(encoding, 'replace') File "/Users/adamg/anaconda/lib/python2.7/site-packages/pandas/core/series.py", line 857, in __unicode__ result = self._tidy_repr(min(30, max_rows - 4)) TypeError: unsupported operand type(s) for -: 'NoneType' and 'int'
My exact code is:
import numpy as np import pandas as pd import csv pd.options.display.max_rows = None fileName = 'keyStrokeFourgram/TESTING1' df = pd.read_csv(fileName, names=['pause', 'probability']) mask = df['pause'].str.match('^S\d+_A\d+') df['S/A'] = (df['pause'] .where(mask, np.nan) .fillna(method='ffill')) df = df.loc[~mask] result = df.groupby(['S/A']).apply(lambda grp: grp['pause'].corr(grp['probability'])) print(result)