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How do you go about parsing an HTML page with free text, lists, tables, headings, etc., into sentences?

Take this wikipedia page for example. There is/are:

After messing around with the python NLTK, I want to test out all of these different corpus annotation methods (from http://nltk.googlecode.com/svn/trunk/doc/book/ch11.html#deciding-which-layers-of-annotation-to-include):

  • Word Tokenization: The orthographic form of text does not unambiguously identify its tokens. A tokenized and normalized version, in addition to the conventional orthographic version, may be a very convenient resource.
  • Sentence Segmentation: As we saw in Chapter 3, sentence segmentation can be more difficult than it seems. Some corpora therefore use explicit annotations to mark sentence segmentation.
  • Paragraph Segmentation: Paragraphs and other structural elements (headings, chapters, etc.) may be explicitly annotated.
  • Part of Speech: The syntactic category of each word in a document.
  • Syntactic Structure: A tree structure showing the constituent structure of a sentence.
  • Shallow Semantics: Named entity and coreference annotations, semantic role labels.
  • Dialogue and Discourse: dialogue act tags, rhetorical structure

Once you break a document into sentences it seems pretty straightforward. But how do you go about breaking down something like the HTML from that Wikipedia page? I am very familiar with using HTML/XML parsers and traversing the tree, and I have tried just stripping the HTML tags to get the plain text, but because punctuation is missing after HTML is removed, NLTK doesn't parse things like table cells, or even lists, correctly.

Is there some best-practice or strategy for parsing that stuff with NLP? Or do you just have to manually write a parser specific to that individual page?

Just looking for some pointers in the right direction, really want to try this NLTK out!

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Have you tried using Punkt (it's implemented in NLTK) on the stripped text to see if that gets you anywhere? –  dmh Jul 1 '12 at 13:32
My informal observation is that parsers generally are bad at handling and representing display text (as opposed to running prose). If you find or devise a good solution, please do follow up here! –  tripleee Jul 1 '12 at 17:14
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2 Answers

I had to write rules specific to the XML docs I was analyzing.

What I did was to have a mapping of html tags to segments. This mapping was based on studying several docs/pages and determining what the html tags represent. Ex. <h1> is a phrase segment; <li> are paragraphs; <td> are tokens

If you want to work with XML, you can represent the new mappings as tags. Ex. <h1> to <phrase>; <li> to <paragraph>; <td> to <token>

If you want to work on plain text, you can represent the mappings as a set of chars (ex. [PHRASESTART][PHRASEEND]), just like POS or EOS labeling.

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Sounds like you're stripping all HTML and generating a flat document, which confuses the parser since the loose pieces are stuck together. Since you are experienced with XML, I suggest mapping your inputs to a simple XML structure that keeps the pieces separate. You can make it as simple as you want, but perhaps you'll want to retain some information. E.g., it may be useful to flag titles, section headings etc. as such. When you've got a workable XML tree that keeps the chunks separate, use XMLCorpusReader to import it into the NLTK universe.

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