DeSR is a statistical transition-based dependency parser that learns from a training corpus suitable actions to take in order to build a parse tree while scanning a sentence. DeSR can be configured to use different feature models and classifier types. We tuned the parser for the Evalita 2011 corpora by performing several experiments of feature selection and also by adding some new features. The submitted run used DeSR with two additional techniques: (1) reverse revision parsing, which addresses the problem of long distance dependencies, by extracting hints from the output of a first parser as input to a second parser running in the opposite direction; (2) parser combination, which consists in combining the outputs of different configuration...
Dependency Parsing domain adaptation involves adapting a dependency parser, trained on an annotated ...
We present a general framework for dependency parsing of Italian sentences based on a combination of...
We describe a parser used in the CoNLL 2006 Shared Task, “Multingual Depen-dency Parsing. ” The pars...
DeSR is a multilingual deterministic shift/reduce depen- dency parser, capable of handling non-proje...
We describe our experiments using the DeSR parser in the multilingual and do- main adaptation tracks...
DeSR is a statistical transition-based dependency parser which learns from annotated corpora which a...
DeSR is a Dependency Shift/Reduce parser for multiple languages. It generates dependency parse trees...
The aim of this thesis is to improve Natural Language Dependency Parsing. We employ a linear Shift R...
In the last decade, many accurate dependency parsers have been made publicly available. It can be di...
SUMMARY. Dependency parsing is an important component in information extraction, in particula...
Dependency parsing is an integral part of Natural Language Processing (NLP) research for many langua...
We present a simple and effective semisupervised method for training dependency parsers. We focus on...
The Parsing Task is among the “historical” tasks of Evalita, and in all editions its main objective ...
The EVALITA 2007 Parsing Task has been the first contest among parsing systems for Italian. It is th...
The Evalita ’07 Parsing Task has been the first contest among parsing systems for Italian. It is the...
Dependency Parsing domain adaptation involves adapting a dependency parser, trained on an annotated ...
We present a general framework for dependency parsing of Italian sentences based on a combination of...
We describe a parser used in the CoNLL 2006 Shared Task, “Multingual Depen-dency Parsing. ” The pars...
DeSR is a multilingual deterministic shift/reduce depen- dency parser, capable of handling non-proje...
We describe our experiments using the DeSR parser in the multilingual and do- main adaptation tracks...
DeSR is a statistical transition-based dependency parser which learns from annotated corpora which a...
DeSR is a Dependency Shift/Reduce parser for multiple languages. It generates dependency parse trees...
The aim of this thesis is to improve Natural Language Dependency Parsing. We employ a linear Shift R...
In the last decade, many accurate dependency parsers have been made publicly available. It can be di...
SUMMARY. Dependency parsing is an important component in information extraction, in particula...
Dependency parsing is an integral part of Natural Language Processing (NLP) research for many langua...
We present a simple and effective semisupervised method for training dependency parsers. We focus on...
The Parsing Task is among the “historical” tasks of Evalita, and in all editions its main objective ...
The EVALITA 2007 Parsing Task has been the first contest among parsing systems for Italian. It is th...
The Evalita ’07 Parsing Task has been the first contest among parsing systems for Italian. It is the...
Dependency Parsing domain adaptation involves adapting a dependency parser, trained on an annotated ...
We present a general framework for dependency parsing of Italian sentences based on a combination of...
We describe a parser used in the CoNLL 2006 Shared Task, “Multingual Depen-dency Parsing. ” The pars...