We present a method for detecting annotation errors in manually and automatically annotated dependency parse trees, based on ensemble parsing in combination with Bayesian inference, guided by active learning. We evaluate our method in different scenarios: (i) for error detection in dependency treebanks and (ii) for improving parsing accuracy on in- and out-of-domain data
Analyse probabiliste est l'un des domaines de recherche les plus attractives en langage naturel En t...
This paper describes the development of a hybrid tool for a semi-automated process for validation of...
This paper proposes a simple yet effective framework for semi-supervised dependency parsing at entir...
This paper describes a statistical approach to detect annotation errors in dependency treebanks. As ...
Abstract. Treebanks play an important role in the development of var-ious natural language processin...
In recent years, error mining approaches were developed to help identify the most likely sources of ...
This paper discusses an automatic, data-driven approach to treebank error detection. The approach ad...
We report on our ongoing work in developing the Irish Dependency Treebank, describe the results of t...
We introduce a method for error detection in automatically annotated text, aimed at supporting the c...
Detection and correction of errors and inconsistencies in “gold treebanks” are becoming more and mor...
We studied the treebanks included in HamleDT and partially unified their label sets. Afterwards, we ...
A treebank is an important resource for developing many NLP based tools. Errors in the treebank may ...
Dependency parsing has made many advancements in recent years, in particular for English. There are ...
This work describes how derivation tree fragments based on a variant of Tree Adjoining Grammar (TAG)...
This is the accompanying data for our paper "Annotation Error Detection: Analyzing the Past and Pres...
Analyse probabiliste est l'un des domaines de recherche les plus attractives en langage naturel En t...
This paper describes the development of a hybrid tool for a semi-automated process for validation of...
This paper proposes a simple yet effective framework for semi-supervised dependency parsing at entir...
This paper describes a statistical approach to detect annotation errors in dependency treebanks. As ...
Abstract. Treebanks play an important role in the development of var-ious natural language processin...
In recent years, error mining approaches were developed to help identify the most likely sources of ...
This paper discusses an automatic, data-driven approach to treebank error detection. The approach ad...
We report on our ongoing work in developing the Irish Dependency Treebank, describe the results of t...
We introduce a method for error detection in automatically annotated text, aimed at supporting the c...
Detection and correction of errors and inconsistencies in “gold treebanks” are becoming more and mor...
We studied the treebanks included in HamleDT and partially unified their label sets. Afterwards, we ...
A treebank is an important resource for developing many NLP based tools. Errors in the treebank may ...
Dependency parsing has made many advancements in recent years, in particular for English. There are ...
This work describes how derivation tree fragments based on a variant of Tree Adjoining Grammar (TAG)...
This is the accompanying data for our paper "Annotation Error Detection: Analyzing the Past and Pres...
Analyse probabiliste est l'un des domaines de recherche les plus attractives en langage naturel En t...
This paper describes the development of a hybrid tool for a semi-automated process for validation of...
This paper proposes a simple yet effective framework for semi-supervised dependency parsing at entir...