Edited
Note that is answer is no longer working because of the updated version of the MaltParser API in NLTK since August 2015. This answer is kept for legacy sake.
Please see this answers to get MaltParser working with NLTK:
Disclaimer: This is not an eternal solutions. The answer in the above link (posted on Feb 2016) will work for now. But when MaltParser or NLTK API changes, it might also change the syntax to using MaltParser in NLTK.
A couple problems with your setup:
- The input to
train_from_file
must be a file in CoNLL format, not a pre-trained model. For an mco
file, you pass it to the MaltParser
constructor using the mco
and working_directory
parameters.
- The default java heap allocation is not large enough to load that particular
mco
file, so you'll have to tell java to use more heap space with the -Xmx
parameter. Unfortunately this wasn't possible with the existing code so I just checked in a change to allow an additional constructor parameters for java args. See here.
So here's what you need to do:
First, get the latest NLTK revision:
git clone https://github.com/nltk/nltk.git
(NOTE: If you can't use the git version of NLTK, then you'll have to update the file malt.py
manually or copy it from here to have your own version.)
Second, rename the jar file to malt.jar
, which is what NLTK expects:
cd /usr/lib/
ln -s maltparser-1.7.2.jar malt.jar
Then add an environment variable pointing to malt parser:
export MALTPARSERHOME="/Users/dhg/Downloads/maltparser-1.7.2"
Finally, load and use malt parser in python:
>>> import nltk
>>> parser = nltk.parse.malt.MaltParser(working_dir="/home/rohith/malt-1.7.2",
... mco="engmalt.linear-1.7",
... additional_java_args=['-Xmx512m'])
>>> txt = "This is a test sentence"
>>> graph = parser.raw_parse(txt)
>>> graph.tree().pprint()
'(This (sentence is a test))'
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