This thesis presents several studies in neural dependency parsing for typologically diverse languages, using treebanks from Universal Dependencies (UD). The focus is on informing models with linguistic knowledge. We first extend a parser to work well on typologically diverse languages, including morphologically complex languages and languages whose treebanks have a high ratio of non-projective sentences, a notorious difficulty in dependency parsing. We propose a general methodology where we sample a representative subset of UD treebanks for parser development and evaluation. Our parser uses recurrent neural networks which construct information sequentially, and we study the incorporation of a recursive neural network layer in our parser. Th...
Natural language processing problems (such as speech recognition, text-based data mining, and text o...
accepted to appear in the special issue on Cross-Language Algorithms and ApplicationsPeer reviewe
Thesis (Ph.D.)--University of Washington, 2021Multilingual modeling comes up in natural language pro...
This thesis presents several studies in neural dependency parsing for typologically diverse language...
This electronic version was submitted by the student author. The certified thesis is available in th...
© 2019 Association for Computational Linguistics This paper explores the task of leveraging typology...
Accurate dependency parsing requires large treebanks, which are only available for a few languages. ...
Even for the most advanced NLP tasks, data goes through basic preprocessing steps, and syntactic par...
Syntax — the study of the hierarchical structure of language — has long featured as a prominent rese...
International audienceThe existence of universal models to describe the syntax of languages has been...
We extend and improve upon recent work in struc-tured training for neural network transition-based d...
To accomplish the shared task on dependency parsing we explore the use of a linear transition-based ...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
Most existing graph-based parsing models rely on millions of hand-crafted features, which limits the...
This thesis studies the connections between parsing friendly representations and interlingua grammar...
Natural language processing problems (such as speech recognition, text-based data mining, and text o...
accepted to appear in the special issue on Cross-Language Algorithms and ApplicationsPeer reviewe
Thesis (Ph.D.)--University of Washington, 2021Multilingual modeling comes up in natural language pro...
This thesis presents several studies in neural dependency parsing for typologically diverse language...
This electronic version was submitted by the student author. The certified thesis is available in th...
© 2019 Association for Computational Linguistics This paper explores the task of leveraging typology...
Accurate dependency parsing requires large treebanks, which are only available for a few languages. ...
Even for the most advanced NLP tasks, data goes through basic preprocessing steps, and syntactic par...
Syntax — the study of the hierarchical structure of language — has long featured as a prominent rese...
International audienceThe existence of universal models to describe the syntax of languages has been...
We extend and improve upon recent work in struc-tured training for neural network transition-based d...
To accomplish the shared task on dependency parsing we explore the use of a linear transition-based ...
Recurrent neural networks (RNNs) are exceptionally good models of distributions over natural languag...
Most existing graph-based parsing models rely on millions of hand-crafted features, which limits the...
This thesis studies the connections between parsing friendly representations and interlingua grammar...
Natural language processing problems (such as speech recognition, text-based data mining, and text o...
accepted to appear in the special issue on Cross-Language Algorithms and ApplicationsPeer reviewe
Thesis (Ph.D.)--University of Washington, 2021Multilingual modeling comes up in natural language pro...