Statistical parsers are e ective but are typically limited to producing projective dependencies or constituents. On the other hand, linguisti- cally rich parsers recognize non-local relations and analyze both form and function phenomena but rely on extensive manual grammar development. We combine advantages of the two by building a statistical parser that produces richer analyses. We investigate new techniques to implement treebank-based parsers that allow for discontinuous constituents. We present two systems. One system is based on a string-rewriting Linear Context-Free Rewriting System (LCFRS), while using a Probabilistic Discontinuous Tree Substitution Grammar (PDTSG) to improve disambiguation performance. Another system encodes the dis...
Syntactic parsing consists in assigning syntactic trees to sentences in natural language. Syntactic ...
International audienceThe combined use of neural scoring systems and BERT fine-tuning has led to ver...
Many extensions to text-based, data-intensive knowledge management approaches, such as Information R...
Statistical parsers are effective but are typically limited to producing projective dependencies or ...
Statistical parsers are e ective but are typically limited to producing projective dependencies or c...
Recent advances in parsing technology have made treebank parsing with discontinuous constituents p...
Lexicalized parsing models are based on the assumptions that (i) constituents are organized around a...
International audienceThe article introduces novel instanciations of three French constituent treeba...
This paper discusses the consequences of allowing discontinuous constituents in syntactic representi...
The development of frameworks that allow to state grammars for natural languages in a mathematically...
Statistical techniques have revolutionized all areas of natural language processing, and syntactic p...
The notion of latent-variable probabilistic context-free derivation of syntactic structures is enhan...
We present a novel approach to Data-Oriented Parsing (DOP). Like other DOP models, our parser utiliz...
We present a novel approach to Data-Oriented Parsing (DOP). Like other DOP models, our parser utiliz...
We present a novel approach to Data-Oriented Parsing (DOP). Like other DOP models, our parser utiliz...
Syntactic parsing consists in assigning syntactic trees to sentences in natural language. Syntactic ...
International audienceThe combined use of neural scoring systems and BERT fine-tuning has led to ver...
Many extensions to text-based, data-intensive knowledge management approaches, such as Information R...
Statistical parsers are effective but are typically limited to producing projective dependencies or ...
Statistical parsers are e ective but are typically limited to producing projective dependencies or c...
Recent advances in parsing technology have made treebank parsing with discontinuous constituents p...
Lexicalized parsing models are based on the assumptions that (i) constituents are organized around a...
International audienceThe article introduces novel instanciations of three French constituent treeba...
This paper discusses the consequences of allowing discontinuous constituents in syntactic representi...
The development of frameworks that allow to state grammars for natural languages in a mathematically...
Statistical techniques have revolutionized all areas of natural language processing, and syntactic p...
The notion of latent-variable probabilistic context-free derivation of syntactic structures is enhan...
We present a novel approach to Data-Oriented Parsing (DOP). Like other DOP models, our parser utiliz...
We present a novel approach to Data-Oriented Parsing (DOP). Like other DOP models, our parser utiliz...
We present a novel approach to Data-Oriented Parsing (DOP). Like other DOP models, our parser utiliz...
Syntactic parsing consists in assigning syntactic trees to sentences in natural language. Syntactic ...
International audienceThe combined use of neural scoring systems and BERT fine-tuning has led to ver...
Many extensions to text-based, data-intensive knowledge management approaches, such as Information R...