Graph-based semantic parsing aims to represent textual meaning through directed graphs. As one of the most promising general-purpose meaning representations, these structures and their parsing have gained a significant interest momentum during recent years, with several diverse formalisms being proposed. Yet, owing to this very heterogeneity, most of the research effort has focused mainly on solutions specific to a given formalism. In this work, instead, we reframe semantic parsing towards multiple formalisms as Multilingual Neural Machine Translation (MNMT), and propose SGL, a many-to-many seq2seq architecture trained with an MNMT objective. Backed by several experiments, we show that this framework is indeed effective once the learning pr...
Deep learning has been successfully applied to semantic graph parsing in recent years. However, to o...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
In this paper, we propose an architecture for machine translation (MT) capable of obtaining multilin...
Graph-based semantic parsing aims to represent textual meaning through directed graphs. As one of th...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
We evaluate the character-level translation method for neural semantic parsing on a large corpus of ...
Neural machine translation requires large amounts of parallel training text to learn a reasonable-qu...
Although great progress has been made for Machine Reading Comprehension (MRC) in English, scaling ou...
Abstract Meaning Representation (AMR) is a popular formalism of natural language that represents the...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
Directed graphs are an intuitive and versatile representation of natural language meaning because th...
We evaluate the character-level translation method for neural semantic parsing on a large corpus of ...
This is the author’s version of a work that was accepted for publication in Computer Speech and Lang...
Abstract Meaning Representation(AMR) parsing converts a natural language sentence into a specially d...
Semantic representations have long been argued as potentially useful for enforcing meaning preservat...
Deep learning has been successfully applied to semantic graph parsing in recent years. However, to o...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
In this paper, we propose an architecture for machine translation (MT) capable of obtaining multilin...
Graph-based semantic parsing aims to represent textual meaning through directed graphs. As one of th...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
We evaluate the character-level translation method for neural semantic parsing on a large corpus of ...
Neural machine translation requires large amounts of parallel training text to learn a reasonable-qu...
Although great progress has been made for Machine Reading Comprehension (MRC) in English, scaling ou...
Abstract Meaning Representation (AMR) is a popular formalism of natural language that represents the...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
Directed graphs are an intuitive and versatile representation of natural language meaning because th...
We evaluate the character-level translation method for neural semantic parsing on a large corpus of ...
This is the author’s version of a work that was accepted for publication in Computer Speech and Lang...
Abstract Meaning Representation(AMR) parsing converts a natural language sentence into a specially d...
Semantic representations have long been argued as potentially useful for enforcing meaning preservat...
Deep learning has been successfully applied to semantic graph parsing in recent years. However, to o...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
In this paper, we propose an architecture for machine translation (MT) capable of obtaining multilin...