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Neural networks for NLP tasks

Project description

nlpnet is a Python library for Natural Language Processing tasks based on neural networks. Currently, it performs part-of-speech tagging and semantic role labeling. Most of the architecture is language independent, but some functions were specially tailored for working with Portuguese.

This system was inspired by SENNA, but has some conceptual and practical differences. If you use nlpnet, please cite one or both of the articles below, according to your needs (POS or SRL):

  • Fonseca, E. R. and Rosa, J.L.G. A Two-Step Convolutional Neural Network Approach for Semantic Role Labeling. Proceedings of the 2013 International Joint Conference on Neural Networks, 2013. p. 2955-2961 [PDF]

  • Fonseca, E. R. and Rosa, J.L.G. Mac-Morpho Revisited: Towards Robust Part-of-Speech Tagging. Proceedings of the 9th Brazilian Symposium in Information and Human Language Technology, 2013. p. 98-107 [PDF]

Important: in order to use the trained models for Portuguese NLP, you will need to download the data from http://nilc.icmc.usp.br/nlpnet/models.html.

Dependencies

nlpnet requires NLTK and numpy. Additionally, it needs to download some data from NLTK. After installing it, call

>>> nltk.download()

go to the Models tab and select the Punkt tokenizer. It is used in order to split the text into sentences.

Cython is used to generate C extensions and run faster. You probably won’t need it, since the generated .c file is already provided with nlpnet, but you will need a C compiler. On Linux and Mac systems this shouldn’t be a problem, but may be on Windows, because setuptools requires the Microsoft C Compiler by default. If you don’t have it already, it is usually easier to install MinGW instead and follow the instructions here.

Basic usage

nlpnet can be used both as a Python library or by its standalone scripts. Both usages are explained below.

Library usage

You can use nlpnet as a library in Python code as follows:

>>> import nlpnet
>>> nlpnet.set_data_dir('/path/to/nlpnet-data/')
>>> tagger = nlpnet.POSTagger()
>>> tagger.tag('O rato roeu a roupa do rei de Roma.')
[[(u'O', u'ART'), (u'rato', u'N'), (u'roeu', u'V'), (u'a', u'ART'), (u'roupa', u'N'), (u'do', u'PREP+ART'), (u'rei', u'N'), (u'de', u'PREP'), (u'Roma', u'NPROP'), (u'.', 'PU')]]

In the example above, the call to set_data_dir indicates where the data directory is located. This location must be given whenever nlpnet is imported.

Calling a tagger is pretty straightforward. The two provided taggers are POSTagger and SRLTagger, both having a method tag which receives strings with text to be tagged. The tagger splits the text into sentences and then tokenizes each one (hence the return of the POSTagger is a list of lists).

The output of the SRLTagger is slightly more complicated:

>>> tagger = nlpnet.SRLTagger()
>>> tagger.tag(u'O rato roeu a roupa do rei de Roma.')
[<nlpnet.taggers.SRLAnnotatedSentence at 0x84020f0>]

Instead of a list of tuples, sentences are represented by instances of SRLAnnotatedSentence. This class serves basically as a data holder, and has two attributes:

>>> sent = tagger.tag(u'O rato roeu a roupa do rei de Roma.')[0]
>>> sent.tokens
[u'O', u'rato', u'roeu', u'a', u'roupa', u'do', u'rei', u'de', u'Roma', u'.']
>>> sent.arg_structures
[(u'roeu',
  {u'A0': [u'O', u'rato'],
   u'A1': [u'a', u'roupa', u'do', u'rei', u'de', u'Roma'],
   u'V': [u'roeu']})]

The arg_structures is a list containing all predicate-argument structures in the sentence. The only one in this example is for the verb roeu. It is represented by a tuple with the predicate and a dictionary mapping semantic role labels to the tokens that constitute the argument.

Note that the verb appears as the first member of the tuple and also as the content of label ‘V’ (which stands for verb). This is because some predicates are multiwords. In these cases, the “main” predicate word (usually the verb itself) appears in arg_structures[0], and all the words appear under the key ‘V’.

Standalone scripts

nlpnet also provides scripts for tagging text, training new models and testing them. They are copied to the scripts subdirectory of your Python installation, which can be included in the system PATH variable. You can call them from command line and give some text input.

$ nlpnet-tag.py pos /path/to/nlpnet-data/
O rato roeu a roupa do rei de Roma.
O_ART rato_N roeu_V a_ART roupa_N do_PREP+ART rei_N de_PREP Roma_NPROP ._PU

Or with semantic role labeling:

$ nlpnet-tag.py srl /path/to/nlpnet-data/
O rato roeu a roupa do rei de Roma.
O rato roeu a roupa do rei de Roma .
roeu
    A1: a roupa do rei de Roma
    A0: O rato
    V: roeu

The first line was typed by the user, and the second one is the result of tokenization.

To learn more about training and testing new models, and other functionalities, refer to the documentation at http://nilc.icmc.usp.br/nlpnet

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