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I am extracting causal sentences from the accident reports on water. I am using NLTK as a tool here. I manually created my regExp grammar by taking 20 causal sentence structures [see examples below]. The constructed grammar is of the type

grammar = r'''Cause: {<DT|IN|JJ>?<NN.*|PRP|EX><VBD><NN.*|PRP|VBD>?<.*>+<VBD|VBN>?<.*>+}'''

Now the grammar has 100% recall on the test set ( I built my own toy dataset with 50 causal and 50 non causal sentences) but a low precision. I would like to ask about:

  1. How to train NLTK to build the regexp grammar automatically for extracting particular type of sentences.
  2. Has any one ever tried to extract causal sentences. Example causal sentences are:

    • There was poor sanitation in the village, as a consequence, she had health problems.

    • The water was impure in her village, For this reason, she suffered from parasites.

    • She had health problems because of poor sanitation in the village. I would want to extract only the above type of sentences from a large text.

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1 Answer 1

Had a brief discussion with the author of the book: "Python Text Processing with NLTK 2.0 Cookbook", Mr.Jacob Perkins. He said, "a generalized grammar for sentences is pretty hard. I would instead see if you can find common tag patterns, and use those. But then you're essentially do classification by regexp matching. Parsing is usually used to extract phrases within a sentence, or to produce deep parse trees of a sentence, but you're just trying to identify/extract sentences, which is why I think classification is a much better approach. Consider including tagged words as features when you try this, since the grammar could be significant." taking his suggestions I looked at the causal sentences I had and I found out that these sentences have words like

as a result
as a consequence
For this reason
For all these reasons
because of
on account of
due to
for the reason
so, that

These words are the connecting cause and effect in a sentence. And now using these connectors it is easy to extract causal sentences.

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