We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theory (DRT) where knowledge from annotated corpora in a resource-rich language is transferred via bitext to guide learning in other languages. We introduce Universal Discourse Representation Theory (UDRT), a variant of DRT that explicitly anchors semantic representations to tokens in the linguistic input. We develop a semantic parsing framework based on the Transformer architecture and utilize it to obtain semantic resources in multiple languages following two learning schemes. The many-to-one approach translates non-English text to English, and then runs a relatively accurate English parser on the translated text, while the one-to-many approach ...
Machine translation should be semanticalty-accurate, linguisticallyprincipled, user-interactive, and...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theor...
We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theor...
We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theor...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
A language-independent representation of meaning is one of the most coveted dreams in Natural Langua...
Natural Language is a way for humans to understand what is happening in the world. However, machines...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
Machine translation should be semanticalty-accurate, linguisticallyprincipled, user-interactive, and...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...
We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theor...
We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theor...
We consider the task of crosslingual semantic parsing in the style of Discourse Representation Theor...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
A language-independent representation of meaning is one of the most coveted dreams in Natural Langua...
Natural Language is a way for humans to understand what is happening in the world. However, machines...
Machine translation should be semanticalty-accurate, linguistically-principled, user-interactive, an...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Semantic parsing aims at mapping natural language text into meaning representations, which have the ...
Machine translation should be semanticalty-accurate, linguisticallyprincipled, user-interactive, and...
Even though many recent semantic parsers are based on deep learning methods, we should not forget th...
Recently, sequence-to-sequence models have achieved impressive performance on a number of semantic p...