Reputation
707
Top tag
Next privilege 1,000 Rep.
See vote count; VIP usercard
Badges
7 16
Newest
 Constituent
Impact
~49k people reached

1d
awarded  Constituent
Apr
16
comment Using NLTK With Badly Formatted Input
Thank you for your thoughts. I want to derive a tool that requires minimal customization to tackle this type of problem. The tool's goal is to a return a data structure that describes the information available in the description string. I had hoped to use the PCFG to resolve the most likely/or strongest match of the possible interpretations.
Apr
15
comment Using NLTK With Badly Formatted Input
@tripleee Thanks, I had a feeling that might be the case. One thought, NLTK appears to have a way of dealing with ambiguity by using ngrams generated from a corpus to produce the most probable tag for a token. If that were extensible I could aggressively tokenize the string and reform concepts using the grammar. I.e. there would need to be a way to provide multiple tags per token.
Apr
15
asked Using NLTK With Badly Formatted Input
Apr
14
awarded  Caucus
Apr
2
accepted Values in Wrong Columns After Pandas DataFrame.to_csv()
Apr
2
asked Values in Wrong Columns After Pandas DataFrame.to_csv()
Mar
24
comment Plot Learning Curve in Rapidminer: Send Training Set Size to Log
Thanks! It has been said that you can do anything in RapidMiner once you know how it works.
Mar
24
accepted Plot Learning Curve in Rapidminer: Send Training Set Size to Log
Mar
23
asked Plot Learning Curve in Rapidminer: Send Training Set Size to Log
Mar
12
revised Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
formatting cleanup
Mar
11
comment Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Thank you! This solution nicely leverages the tools to cut out complexity.
Mar
11
accepted Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Mar
11
revised Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Clarified question with conversion to a dictionary structure containing bounds information.
Mar
11
comment Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Looks right. I have the 'permitted' dict but left it out for simplicity, but I'll add that back for clarity.
Mar
11
comment Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
The keys, we have. The problematic lines are 'row.A != 'foo' and 'row.B not in ['one', 'two']' as this encodes the column names A and B into the source code vs pulling them from an external source.
Mar
11
comment Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Looks great. The only problem is that f() inlines the column names. Is there way do this where the column names are not explicitly defined in the code?
Mar
11
comment Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Repeating back: first run ~df.columnName.isin(bounds) to get a dataframe with the T/F values together with an index column identical to the original dataframe. Then use the index column in the derived dataframe to reach the exception column in the original dataframe?
Mar
11
asked Pandas Spit DataFrame on Column-Specific Conditions and Create Column with Split Reason
Mar
7
revised Pandas Compute Unique Values per Column as Series
added and adapted example from correct answer