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Literary Language Processing (LLP): corpora, models, and tools for the digital humanities

Project description

llp

Literary Language Processing (LLP): corpora, models, and tools for the digital humanities.

Make a corpus

If you have a folder of plain text files, and an accompanying metadata file,

from llp.corpus.default import PlainTextCorpus

corpus = PlainTextCorpus(
	path_txt='texts',              # path to a folder of txt files
	path_metadata='metadata.xls',  # path to a metadata CSV, TSV, XLS, XLSX file
	col_fn='filename'              # column in metadata pointing to txt file (relative to `path_txt`)
)

Load a pre-existing corpus

Start working with corpora in a few lines:

# import the llp module
import llp

# load the ECCO-TCP corpus [distributed freely online]
corpus = llp.load('ECCO_TCP')

# don't have it yet?
corpus.download()

Do things with corpora

# get the metadata as a dataframe
df_meta = corpus.metadata

# loop over the texts...
for text in corpus.texts():
    # get a string of that text
    text_str = text.txt

    # get the metadata as a dictionary
    text_meta = text.meta

Do other things with texts

With any text object,

# Get a text
texts = corpus.texts()
text = texts[0]

# Get the plain text as a string
txt = text.txt

# Get the metadata as a dictionary
metadata = text.meta

# Get the word tokens as a list
tokens = text.tokens

# Get the word counts as a dictionary
counts = text.freqs()

# Get the n-gram counts as a dictionary
bigrams = text.freqs_ngram(n=2)

# Get a list of passages mentioning a phrase (Key Word In Context)
passages = text.get_passages(phrases=['labour'])

# Get a spacy (http://spacy.io) representation
text_spacy = text.spacy()

Do other things with corpora

Now that you have a corpus object,

# Get the texts as a list
texts = corpus.texts()

# Get the metadata as a list of dictionaries
metadata = corpus.meta

# Save a list of the most frequent words
corpus.gen_mfw()

# Save a term-document matrix for the top 10000 most frequent words
corpus.gen_freq_table(n=10000)

# Save a list of possible duplicate texts in corpus, by title similarity
corpus.rank_duplicates_bytitle()

# Save a list of possible duplicate texts in corpus, by the content of the text (MinHash)
corpus.rank_duplicates()

Do things with models

# Generate a word2vec model with gensim
w2v_model = corpus.word2vec()
w2v_model.model()

# Save model
w2v_model.save()

# Get the original gensim object
gensim_model = w2v_model.gensim

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