The aim of this project is to parse discontinuous constituents in natural language using Data-Oriented Parsing (DOP), with a focus on global world domination. The grammar is extracted from a treebank of sentences annotated with (discontinuous) phrase-structure trees. Concretely, this project provides a statistical constituency parser with support for discontinuous constituents and Data-Oriented Parsing. Discontinuous constituents are supported through the grammar formalism Linear Context-Free Rewriting System (LCFRS), which is a generalization of Probabilistic Context-Free Grammar (PCFG). Data-Oriented Parsing allows re-use of arbitrary-sized fragments from previously seen sentences using Tree-Substitution Grammar (TSG).
Contents of this README:
General statistical parsing:
- grammar formalisms: PCFG, PLCFRS
- extract treebank grammar: trees decomposed into productions, relative frequencies as probabilities
- exact k-best list of derivations
- coarse-to-fine pruning: posterior threshold, k-best coarse-to-fine
DOP specific (parsing with tree fragments):
- implementations: Goodman's DOP reduction, Double-DOP, DOP1.
- estimators: relative frequency estimate (RFE), equal weights estimate (EWE).
- objective functions: most probable parse (MPP), most probable derivation (MPD), most probable shortest derivation (MPSD), most likely tree with shortest derivation (SL-DOP), most constituents correct (MCC).
Requirements:
- Python 3.3+ http://www.python.org (headers required, e.g. python3-dev package)
- Cython 0.21+ http://www.cython.org
- Numpy 1.6+ http://numpy.org/
The following instructions employ the --user
option which means that Python
packages will be installed to your home directory. Make sure that
~/.local/bin
is in your PATH, or add it as follows
(and restart terminal for it to take effect):
echo export PATH=$HOME/.local/bin:$PATH >> ~/.bashrc
To compile the latest development version of discodop, issue the following commands:
sudo apt-get install build-essential python3-dev python3-pip git git clone --recursive git://github.com/andreasvc/disco-dop.git cd disco-dop pip3 install --user -r requirements.txt make install
This assumes no root access, but assumes that gcc
is installed.
Set environment variables so that software can be installed to the home directory (replace with equivalent for your shell if you do not use bash):
mkdir -p ~/.local echo export PATH=$HOME/.local/bin:$PATH >> ~/.bashrc echo export LD_LIBRARY_PATH=$HOME/.local/lib:/usr/lib64:/usr/lib >> ~/.bashrc echo export PYTHONIOENCODING="utf-8" >> ~/.bashrc
After this, re-login or restart the shell to activate these settings.
Install Python 3 from source, if not installed already.
Python may require some libraries such as zlib
and readline
;
installation steps are similar to the ones below:
wget http://www.python.org/ftp/python/3.6.1/Python-3.6.1.tgz tar -xzf Python-*.tgz cd Python-* ./configure --prefix=$HOME/.local --enable-shared make install && cd .. ldconfig
Check by running python3
that version 3.6.1 was installed successfully and
is the default.
Install the latest development version of discodop:
wget https://github.com/andreasvc/disco-dop/archive/master.zip unzip disco-dop-master.zip cd disco-dop-master pip3 install --user -r requirements.txt make install
Install dependencies using Homebrew:
brew install gcc python3 git git clone --recursive git://github.com/andreasvc/disco-dop.git cd disco-dop sudo pip3 install -r requirements.txt env CC=gcc sudo python3 setup.py install
Install the Windows subsystem for Linux (you may need to install a Windows update first), install Ubuntu from the Windows Store, and proceed with the steps above for Ubuntu-based systems.
If you do not run Linux, it is possible to run the code inside a virtual machine. To do that, install Docker or Virtualbox and download a minimal Ubuntu image and follow the above installation instructions.
discodop can be used in three ways:
- through the command line; cf. the manual pages for the
discodop
command installed as part of the installation:man discodop
. - as a library, cf. the API reference and example notebooks
- Web interfaces
NB: avoid running discodop from within the source tree, to ensure that the installed versions of modules are imported.
The documentation can be found at http://discodop.readthedocs.io
A interactive demo of the parser is available at: https://lang.science.uva.nl/parser/
The pretrained grammars used in this demo are available at: https://lang.science.uva.nl/grammars/
The English, German, and Dutch grammars are described in
van Cranenburgh et al., (2016);
the French grammar appears in Sangati & van Cranenburgh (2015).
For comparison, there is also an English grammar without discontinuous
constituents (ptb-nodisc
).
The Tree data structures in tree.py
and the simple binarization algorithm
in treetransforms.py
were taken from NLTK.
The Zhang-Shasha tree-edit distance algorithm in treedist.py
was taken from
https://github.com/timtadh/zhang-shasha
Elements of the PLCFRS parser and punctuation re-attachment are based on code
from rparse. Various other bits inspired
by the Stanford parser, Berkeley parser, Bubs parser, &c.
Please cite the following paper if you use this code in the context of a publication:
@article{vancranenburgh2016disc, title={Data-Oriented Parsing with discontinuous constituents and function tags}, author={van Cranenburgh, Andreas and Remko Scha and Rens Bod}, journal={Journal of Language Modelling}, year={2016}, volume={4}, number={1}, pages={57--111}, url={http://dx.doi.org/10.15398/jlm.v4i1.100} }