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Extract collocations from VERT data

Project description

kollo: extract collocations from VERT formatted corpora

Author: Danny McDonald, UZH

Installation

pip install kollo
# or
git clone https://gitlab.uzh.ch/LiRI/projects/kollo
cd kollo
python setup.py install

CLI Usage

You can start the tool from your shell with:

python -m kollo input/file.vrt
# or
kollo input/file.vrt

Arguments are like this:

usage: kollo [-h] [-l LEFT] [-r RIGHT] [-s SPAN] [-m {ll,sll,lmi,mi,mi3,ld,t,z}] [-sw STOPWORDS] [-t TARGET] [-n NUMBER] [-o OUTPUT] [-c] [-p] [-csv [CSV]] input [query]

Extract collocations from VERT formatted corpora

positional arguments:
  input                 Input file path
  query                 Optional regex to search for (i.e. to appear in all collocation results)

optional arguments:
  -h, --help            show this help message and exit
  -l LEFT, --left LEFT  Window to the left in tokens
  -r RIGHT, --right RIGHT
                        Window to the right in tokens
  -s SPAN, --span SPAN  XML span to use as window (e.g. s or p)
  -m {lr,sll,lmi,mi,mi3,ld,t,z}, --metric {lr,sll,lmi,mi,mi3,ld,t,z}
                        Collocation metric
  -sw STOPWORDS, --stopwords STOPWORDS
                        Path to file containing stopwords (one per line)
  -t TARGET, --target TARGET
                        Index of VERT column to be searched as node
  -n NUMBER, --number NUMBER
                        Number of top results to return (-1 will return all)
  -o OUTPUT, --output OUTPUT
                        Comma-sep index/indices of VERT column to be calculated as collocations
  -c, --case-sensitive  Do case sensitive search
  -p, --preserve        Preserve original sequential order of tokens in bigram
  -csv [CSV], --csv [CSV]
                        Output comma-separated values

Python usage

from kollo import kollo

kollo(
    "path/to/file.vrt",
    query="^Reg(ex|ular expression)$",  # optional
    left=5,
    right=5,
    span=None,
    number=20,
    metric='lr',
    target=0,
    output=[0],
    stopwords=None,
    case_sensitive=False,
    preserve=False,
    csv=False
)

Metrics supported (and their short name):

  • Likelihood ratio (lr)
  • Simple Log likelihood (sll)
  • Mutual information (mi)
  • Local mutual information (lmi)
  • MI3 (mi3)
  • Log Dice (ld)
  • T-score (t)
  • Z-score (z)

Spans

If you enter a span (e.g. s) instead of a left/right window, collocation windows will expand from the matching node to the nearest s tags in both directions. Of course, this can lead to very large windows and potential memory/performance issues, especially for spans broader than one sentence.

If you specify a left and/or right as well as a span, matches will be cut off at matching XML elements if they are encountered. So you can specify (e.g.) left=2, right=2, span="s" to get a window of 2, while not allowing the window to cross sentence boundaries. If you do not enter a span, left/right windows can cross sentence boundaries.

Note that you cannot give regular expressions for spans, or provide multiple spans (yet).

Target and output

target denotes the index of the column of the VRT you want to match with your query, with the leftmost column, typically the original token, being number 0. So, if your VRT corpus is in the format of token<tab>POS<tab>lemma, you would set target to 2 in order to query on the lemma column.

For output, you are still providing column indices, but you can provide more than one. So, if you're using the CLI, you can do --output=1,2 to format results from a corpus in token<tab>POS<tab>lemma format as NNS/friend. If you're in Python, provide a list of integers, matching the column indices you want to use.

Example

from kollo import kollo
kollo("./sample.vrt",
    query="en$",
    target=0,
    output=[1,2],
    number=3,
    left=0,
    right=1,
    metric="lr",
    stopwords="stopwords.txt",
    case_sensitive=True,
    preserve=False,
    csv=False
)

Results in:

VAFIN/sein    ART/d           1202.0321
VAINF/werden  VMFIN/können    853.0279
VAFIN/haben   PPER/wir        758.4650

The exact equivalents on the command line would be:

kollo ./sample.vrt "en$" -t 0 -o 1,2 -n 3 -l 0 -r 1 -m lr -sw stopwords.txt -c

or

python -m kollo ./sample.vrt "en$" --target=0 --output=1,2 --number=3 --left=0 --right=1 --metric=lr --stopwords=stopwords.txt --case-sensitive

CSV creation

If you want to generate a CSV file containing your results, use the -csv argument with a filepath:

kollo example.vrt "test" -csv output.csv

Without a filename, the CSV results will print to stdout (so you can pipe them elsewhere if need be):

kollo example.vrt "test" -csv | grep ...

From the Python interface you can do kollo(csv="output.csv") to write results to a specific file. csv=True will output CSV-formatted results to stdout.

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