I am trying to build an NLTK corpus using information from Pubmed.
In my first attempt, I successfully built a small function to retrieve the data using the Entrez package, got the retrieved article titles (a list of strings, i.e. the titles) into a corpus of files (each title as a new file) and created a corpus using each 'fileid' (i.e. the filename) as the category of the document.
Now I have to step up the game: each document of the corpus needs to have a title, an abstract and the respective MeSH terms (these last need to define the categories of the corpus, instead of those being defined by the name of the document).
So now I have a few problems that I don't really see how to resolve. I will start backwards, as it may be easier to understand:
1) My corpus reader goes as follows:
corpus = CategorizedPlaintextCorpusReader(corpus_root, file_pattern,
cat_pattern=r'(\w+)_.*\.txt')
where 'cat_pattern' is a regular expression for extracting the category names from the fileids arguments, i.e. the names of the files. But now I need to get these categories from the MeSH terms within the file, which leads to the next problem:
2) the Pubmed query retrieves a batch of information, from where I first took only the titles (the ones that I would use to generate the corpus), but now I need to retrieve the titles, the abstract, and the MeSH terms.
The pseudo-code would be something as follows:
papers = []
'Papers' is a list containing all the articles retrieved, as well as all the information related to the articles. Let's say I then have:
out = []
for each in range(0, len(papers)):
out.append(papers[each]['TI'])
out.append(papers[each]['AB'])
out.append(papers[each]['MH'])
That last part of the list, the ['MH'] (the list of MeSH terms), is what I need to use to define the categories of the corpus.
3) After I build the corpus with these 3 pieces of information, to be able to use my classifier, I also need to somehow transform all this batch of information into this:
# X: a list or iterable of raw strings, each representing a document.
X = [corpus.raw(fileid) for fileid in corpus.fileids()]
Remembering that "fileid" is each of the documents of the corpus. This is the code from the first prototype, where each document was composed of a single string (the title), and that now each "document" must have the title (['TI']), the abstract (['AB']), and the MeSH terms (['MH'] - this one I'm not sure, because of the next code:)
# y: a list or iterable of labels, which will be label encoded.
y = [corpus.categories(fileid)[0] for fileid in corpus.fileids()]
Here, the y represents the labels, which were the filenames, and now I need the labels to be the MeSH terms.
I don't know how to make this happen, or even if this is possible as far as my knowledge goes, and yes I did search and read the NLTK book tutorials, many pages on how to build NLTK corpora, etc etc..., but nothing seems to fit what I intend to do.
This may be very confusing, but let me know if you need me to rephrase anything. Any help would be appreciated :)