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A multilingual dependency parser based on linear programming relaxations.
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================================================================================ TurboParser -- Dependency Parser with Linear Programming Relaxations. Version 2.3.x Written and maintained by André Martins (afm [at] cs.cmu.edu). ================================================================================ This file is part of TurboParser, a project started at the computational linguistics research group, ARK (http://www.ark.cs.cmu.edu/), in Carnegie Mellon University. This package contains a C++ implementation of the dependency parsers described in: [1] André F. T. Martins, Noah A. Smith, and Eric P. Xing. 2009. Concise Integer Linear Programming Formulations for Dependency Parsing. In Annual Meeting of the Association for Computational Linguistics (ACL). [2] André F. T. Martins, Noah A. Smith, and Eric P. Xing. 2009. Polyhedral Outer Approximations with Application to Natural Language Parsing. In International Conference on Machine Learning (ICML). [3] André F. T. Martins, Noah A. Smith, Eric P. Xing, Pedro M. Q. Aguiar, and Mário A. T. Figueiredo. 2010. TurboParsers: Dependency Parsing by Approximate Variational Inference. In Empirical Methods in Natural Language Processing (EMNLP). [4] André F. T. Martins, Noah A. Smith, Mário A. T. Figueiredo, Pedro M. Q. Aguiar. 2011. Dual Decomposition With Many Overlapping Components. In Empirical Methods in Natural Language Processing (EMNLP). [5] André F. T. Martins, Miguel B. Almeida, Noah A. Smith. 2013. Turning on the Turbo: Fast Third-Order Non-Projective Turbo Parsers. In Annual Meeting of the Association for Computational Linguistics (ACL). [6] André F. T. Martins and Mariana S. C. Almeida. 2014. Priberam: A Turbo Semantic Parser with Second Order Features. In International Workshop on Semantic Evaluation (SemEval), task 8: Broad-Coverage Semantic Dependency Parsing. [7] Daniel F.-González and André F. T. Martins. 2015. Parsing As Reduction. In Annual Meeting of the Association for Computational Linguistics (ACL). This package allows: - learning the parser from a treebank, - run the parser on new data, - evaluate the results against a gold-standard. This software has the following external dependencies: AD3, a library for approximate MAP inference (http://www.ark.cs.cmu.edu/AD3/); Eigen, a template library for linear algebra; glog, a library for logging; gflags, a library for commandline flag processing. All these libraries are free software and are provided as tarballs in this package. This package has been tested in several Linux platforms. It has also successfully compiled in Mac OS X and MS Windows (using MSVC). Since version 2.2.x, the following is also provided: - a Python wrapper for the tagger and parser (requires Cython 0.19); - a semantic role labeler (TurboSemanticParser) implementing ref. [6] above. Since version 2.3.x, we also provide: - a named entity recognizer (TurboEntityRecognizer). - a coreference resolver (TurboCoreferenceResolver). - a constituent parser based on dependency-to-constituent reduction, implementing ref. [7] below. - a dependency labeler, TurboDependencyLabeler, that can optionally be applied after the dependency parser. - compatibility with MS Windows (using MSVC) and with C++0x. If there are any problems running the parser please email: afm [at] cs.cmu.edu I will only respond to questions not answered in this README. We would like to thank Ryan McDonald and Jason Baldridge by MSTParser (available at http://sourceforge.net/projects/mstparser), in which the code in this package was partly based. ================================================================================ TurboParser is free software; you can redistribute it and/or modify it under the terms of the GNU Lesser General Public License as published by the Free Software Foundation; either version 2 of the License, or (at your option) any later version. TurboParser is distributed in the hope that it will be useful, but WITHOUT ANY WARRANTY; without even the implied warranty of MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the GNU Lesser General Public License for more details. You should have received a copy of the GNU Lesser General Public License along with this program; if not, write to the Free Software Foundation, Inc., 59 Temple Place, Suite 330, Boston, MA 02111-1307 USA. ================================================================================ Contents ================================================================================ 1. Compiling 2. Example of usage a. TurboParser b. TurboTagger c. Scripts 3. Running the parser a. Input data format b. Training the parser c. Training the tagger d. Running the trained tagger/parser on new data e. Additional options 4. Installing the Python wrapper 5. Memory/Disk space and performance issues 6. Reproducing results in the ICML, ACL, and EMNLP papers 7. Reproducing results in the SemEval 2014 paper (TurboSemanticParser) ================================================================================ 1. Compiling ================================================================================ To compile the code, first unzip/tar the downloaded file: > tar -zxvf TurboParser-2.2.0.tar.gz > cd TurboParser-2.2.0 Next, run the following command > ./install_deps.sh This will install all the dependencies (libraries gflags, glog, Eigen, and AD3). Finally, type > ./configure && make && make install After these steps, a file named "TurboParser" and another named "TurboTagger" should have been created under the working folder. Before starting to use TurboParser and TurboTagger, we need to add our local dependencies to the library path. This can be done via: > export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:`pwd;`/deps/local/lib:" ================================================================================ 2. Example Usage ================================================================================ The directory data/sample contains small samples of training and testing data. The data format is the one used in the CoNLL-X shared task, which we describe in the next section. The following sample files are provided: sample_train.conll sample_test.conll ================================================================================ 2a. TurboParser ================================================================================ Before starting, we need to add our local dependencies to the library path: > export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:`pwd;`/deps/local/lib:" These steps will train a parser on the training data, run it on the testing data, and evaluate the output against the gold standard: > mkdir models > ./TurboParser --train \ --file_train=data/sample/sample_train.conll \ --file_model=models/sample_parser.model \ --logtostderr > ./TurboParser --test \ --evaluate \ --file_model=models/sample_parser.model \ --file_test=data/sample/sample_test.conll \ --file_prediction=data/sample/sample_test.conll.predicted \ --logtostderr The results from running the parser are in the file data/sample/sample_test.conll.predicted and the trained model in models/sample_parser.model. ================================================================================ 2b. TurboTagger ================================================================================ If you have not done this yet, add your local dependencies to the library path: > export LD_LIBRARY_PATH="$LD_LIBRARY_PATH:`pwd;`/deps/local/lib:" The input files in TurboTagger are not CoNLL files; they have the same tabular form, but should only have two columns, the first one for the words and the second one for the parts-of-speech. To test TurboTagger, run first the following script to convert the sample files to this format: > ./scripts/create_tagging_corpus.sh data/sample/sample_train.conll > ./scripts/create_tagging_corpus.sh data/sample/sample_test.conll This will create files sample_train.conll.tagging and sample_test.conll.tagging. Then, run: > mkdir models > ./TurboTagger --train \ --file_train=data/sample/sample_train.conll.tagging \ --file_model=models/sample_tagger.model \ --form_cutoff=1 \ --logtostderr > ./TurboTagger --test \ --evaluate \ --file_model=models/sample_tagger.model \ --file_test=data/sample/sample_test.conll.tagging \ --file_prediction=data/sample/sample_test.conll.tagging.predicted \ --logtostderr The results from running the tagger are in the file data/sample/sample_test.conll.tagging.predicted and the trained model in models/sample_tagger.model. ================================================================================ 2c. Scripts ================================================================================ Shell scripts are provided in the folder ./scripts that allow you to train, test, and evaluate the parser and the tagger with several options. If you type: > cd scripts > ./train_test_parser.sh sample > ./train_test_tagger.sh sample You will perform all the operations described above (the results are not necessarily the same, since some parameter settings in the scripts may be different). We suggest you to look at these scripts and to edit them at your own needs. ================================================================================ 3. Running the Parser ================================================================================ ================================================================================ 3a. Input data format ================================================================================ The data format is the same as the CONLL-X shared task. Here is a sample of two sentences from the Dutch dataset: 1 Cathy Cathy N N eigen|ev|neut 2 su _ _ 2 zag zie V V trans|ovt|1of2of3|ev 0 ROOT _ _ 3 hen hen Pron Pron per|3|mv|datofacc 2 obj1 _ _ 4 wild wild Adj Adj attr|stell|onverv 5 mod _ _ 5 zwaaien zwaai N N soort|mv|neut 2 vc _ _ 6 . . Punc Punc punt 5 punct _ _ 1 Ze ze Pron Pron per|3|evofmv|nom 2 su _ _ 2 had heb V V trans|ovt|1of2of3|ev 0 ROOT _ _ 3 met met Prep Prep voor 8 mod _ _ 4 haar haar Pron Pron bez|3|ev|neut|attr 5 det _ _ 5 moeder moeder N N soort|ev|neut 3 obj1 _ _ 6 kunnen kan V V hulp|ott|1of2of3|mv 2 vc _ _ 7 gaan ga V V hulp|inf 6 vc _ _ 8 winkelen winkel V V intrans|inf 11 cnj _ _ 9 , , Punc Punc komma 8 punct _ _ 10 zwemmen zwem V V intrans|inf 11 cnj _ _ 11 of of Conj Conj neven 7 vc _ _ 12 terrassen terras N N soort|mv|neut 11 cnj _ _ 13 . . Punc Punc punt 12 punct _ _ Please go to http://ilk.uvt.nl/conll/#dataformat for more information about the meaning of each column field. The parser should still learn/run if some of the fields (like the FEATS field) are filled with "_". Note: Some datasets are available at http://ilk.uvt.nl/conll/free_data.html. ================================================================================ 3b. Training the parser ================================================================================ If you have a set of labeled data, first place it in the format described above. For example, if your training data is in a file data/danish/danish.conll, and you want the model to be saved in a file called models/danish/danish_parser.model, then the parser can be trained by running the command: > ./TurboParser --train \ --file_train=data/danish/danish_train.conll \ --file_model=models/danish_parser.model \ --logtostderr This will train a second-order non-projective parser with features for arcs, consecutive siblings and grandparents, using the AD3 algorithm as a decoder. The default training algorithm is (cost-augmented) MIRA, but there are other options (see section 3e below). It will also train a probabilistic model for unlabeled arc-factored pruning, which is employed to reduce the number of candidate arcs and speed up parsing. If speed is more important than accuracy, you might want to use a simple arc-factored model, in which case a first order pruner is not necessary. You can set the flag --prune_basic=false to disable the first order pruner, and --model_type=basic to use a simple arc-factored model. The command line is: > ./TurboParser --train \ --file_train=data/danish/danish_train.conll \ --file_model=models/danish_parser.model \ --prune_basic=false \ --model_type=basic \ --logtostderr In general, the --model_type flag is a string formed by the one or several of the following pieces: af enables arc-factored parts (required), +cs enables consecutive sibling parts, +gp enables grandparent parts, +as enables arbitrary sibling parts, +np enables non-projectivity parts, +dp enables directed path parts, +hb enables head bigram parts, +gs enables grand-sibling (third-order) parts, +ts enables tri-sibling (third-order) parts. The following alias are predefined: "basic" is af, "standard" is af+cs+gp, "full" is af+cs+gp+as+hb+gs+ts. Default is "standard". In any case, after training ends, a model file "models/danish_parser.model" will be created. To run the parser on new data (e.g. a file "data/danish/danish_test.conll"), issue the following command: > ./TurboParser --test \ --evaluate \ --file_model=models/danish_parser.model \ --file_test=data/danish/danish_test.conll \ --file_prediction=data/danish/danish_test.conll.predicted \ --logtostderr This will create a file "data/danish/danish_test.conll.predicted" with the predictions made by the parser, and will output some accuracy and speed metrics. NOTE: the output is unlabeled accuracy (including all punctuation). To ignore punctuation, which is standard for English (Yamada and Matsumoto 03), as well as the metric used in references [1] and [2] above, we provide in this package the PERL script eval.pl, used for evaluation at CONLL-X. Just run: > scripts/eval.pl -b -q -g data/danish/danish_test.conll \ -s data/danish/danish_test.conll.predicted | tail -5 This script also allows performing significance tests (see http://ilk.uvt.nl/conll/software.html for details). ================================================================================ 3c. Training the tagger ================================================================================ To train the tagger, one first needs to have input files with two columns, one with words and the other with POS tags. Here is an example for the English Penn Treebank corpus: Ms. NNP Haag NNP plays VBZ Elianti NNP . . Rolls-Royce NNP Motor NNP Cars NNPS Inc. NNP said VBD it PRP expects VBZ its PRP$ U.S. NNP sales NNS to TO remain VB steady JJ at IN about IN 1,200 CD cars NNS in IN 1990 CD . . Note: we include a script in this package (create_tagging_corpus.sh) to extract this information from CoNLL files. See section 2b above. Let english_ptb_train.tagging and english_ptb_test.tagging be the training and test files in the format above. Run: > ./TurboTagger --train \ --file_train=data/english_ptb/english_ptb_train.tagging \ --file_model=models/english_ptb_tagger.model \ --form_cutoff=1 \ --logtostderr This will train a sequential trigram model for POS tagging. The default training algorithm is (cost-augmented) MIRA, but there are other options (see section 3e below). For the sections 02-21 of the Penn Treebank, training will take only about 5 minutes. Note the flag --form_cutoff=1, which defines a cut-off on word frequency. Without setting this flag, performance will be substantially lower. After training ends, a model file "models/english_ptb_tagger.model" will be created. To run the tagger on new data (e.g. a file "data/english_ptb/english_ptb_test.tagging"), issue the following command: > ./TurboTagger --test \ --evaluate \ --file_model=models/english_ptb_tagger.model \ --file_test=data/english_ptb/english_ptb_test.tagging \ --file_prediction=data/english_ptb/english_ptb_test.tagging.predicted \ --logtostderr This will create a file "data/english_ptb/english_ptb_test.conll.predicted" with the predictions made by the tagger, and will output some accuracy and speed metrics. When training on 02-21 of the Penn Treebank, TurboTagger achieves an accuracy of 96.9% in section 22 and 97.2% in section 23. Speed is about 40,000 tokens per second, on a desktop PC with Intel Core i7 CPU @3.4 GHz and 8GB RAM. NOTE: A script is included in this package for creating CoNLL files with the tags predicted by TurboTagger (rather than gold tags). This requires the original CoNLL file (assumed here to be called data/english_ptb/english_ptb_test.conll). To run this script, do the following: > cd scripts > ./create_conll_predicted_tags_corpus.sh \ ../data/english_ptb/english_ptb_test.conll \ ../data/english_ptb/english_ptb_test.tagging.predicted This will create the desired CoNLL file as "../data/english_ptb/english_ptb_test.conll.predpos". ================================================================================ 3d. Running the trained tagger/parser on new data ================================================================================ This section assumes you have trained a tagger/parser model and it is stored in a file named models/my_parser.model (or models/my_tagger.model). First, format your data properly (section 3a). It should be noted that the parser assumes words, lemmas, POS tags, etc. To generate POS tags for your data you can use TurboTagger, as described above, or another tagger of your choice. If no lemmatizer is available, just let the LEMMA columns filled with "_", and the same for the morpho-syntactic features. However, remember that the training and test data should be generated the same way. The parser also assumes that the arc label and parent index lines are in the input. However, these can just be artificially inserted (e.g. with lines of "LAB ... LAB" and "0 ... 0") since the parser will produce these lines as output. The same strategy can be used for the tagger. Hereafter, assume that the data is in a file called "data/my_language/my_corpus.tagging" (for the tagger) or "data/my_language/my_corpus.conll" (for the parser). Assume also that you want to store the tagged sentences in a file named "data/my_language/my_corpus.tagging.predicted" and the parsed sentences in a file named "data/my_language/my_corpus.conll.predicted". To tag, you need to run: ./TurboTagger --test \ --file_model=models/my_tagger.model \ --file_test=data/my_language/my_corpus.tagging \ --file_prediction=data/my_language/my_corpus.tagging.predicted \ --logtostderr To parse, you need to run: ./TurboParser --test \ --file_model=models/my_parser.model \ --file_test=data/my_language/my_corpus.conll \ --file_prediction=data/my_language/my_corpus.conll.predicted \ --logtostderr Pre-trained models for English (both taggers and parsers) can be downloaded at http://www.ark.cs.cmu.edu/TurboParser/. A script "parse.sh" is provided in this package that allows you to tag and parse free text (in English, one sentence per line) with these models: > ./scripts/parse.sh <filename> where filename is a text file with one sentence per line. If no filename is specified, it parses stdin, so e.g. > echo "I solved the problem with statistics." | ./scripts/parse.sh yields 1 I _ PRP PRP _ 2 SUB 2 solved _ VB VBD _ 0 ROOT 3 the _ DT DT _ 4 NMOD 4 problem _ NN NN _ 2 OBJ 5 with _ IN IN _ 2 VMOD 6 statistics _ NN NNS _ 5 PMOD 7 . _ . . _ 2 P ================================================================================ 3e. Additional Options ================================================================================ For additional options, type: > TurboParser --help and > TurboTagger --help ================================================================================ 4. Installing the Python wrapper ================================================================================ A Python wrapper for the tagger and parser is provided in the folder "python". For installation instructions, see the README file in that folder. ================================================================================ 5. Memory/Disk space and performance issues ================================================================================ This parser is memory and disk space intensive. MEMORY ISSUES To train a large dataset (like the Penn Treebank for English), a machine with at least 4Gb RAM is recommended. DISK ISSUES For English, using the Penn Treebank, model files are typically ~1GB in size. Some cutoff options are available that can reduce the vocabulary size (type "TurboParser --help"). PERFORMANCE ISSUES Once a model has been trained, running the model on new data is pretty quick. However, as with all discriminative trained parsers, it does take some time to train a parser (e.g. training on the Penn Treebank 02-21 with the default settings takes about 7-8 hours). This time is shortened to 1 hour using an arc-factored model. Here is a quick comparison of parser models and rough speeds. This is when trained on 02-21 of the Penn Treebank; accuracies are unlabeled attachment scores (without punctuation) in section 23. Speeds were measured in a desktop PC with Intel Core i7 CPU 3.4 GHz and 8GB RAM. - basic (arc-factored): 4,058 tokens per second, accuracy 91.05%. - standard (af+cs+gp): 1,414 tokens per second, accuracy 92.81%. - full (af+cs+gp+hb+as+gs+ts): 735 tokens per second, accuracy 93.07%. ================================================================================ 6. Reproducing results in the ICML, ACL, and EMNLP papers ================================================================================ TurboParser 2.2.0 should reproduce the results in reference [5] above. This software won't allow to reproduce exactly the results in the references [1,2,3,4] above, because a complete refactoring was made, and a different set of features is used. ================================================================================ 7. Reproducing results in the SemEval 2014 paper (TurboSemanticParser) ================================================================================ Instructions for reproducing the results in [6] are in the README file in folder semeval2014_data.
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