Lexicalized parsing models are based on the assumptions that (i) constituents are organized around a lexical head and (ii) bilexical statistics are crucial to solve ambiguities. In this paper, we introduce an unlexicalized transition-based parser for discontinuous constituency structures, based on a structure-label transition system and a bi-LSTM scoring system. We compare it with lexicalized parsing models in order to address the question of lexicalization in the context of discontinuous constituency parsing. Our experiments show that unlexicalized models systematically achieve higher results than lexicalized models, and provide additional empirical evidence that lexicalization is not necessary to achieve strong parsing results. Our best u...
International audienceWe present an efficient model selection method using boosting for transition-b...
In this paper, we present an unlexicalized parser for German which employs smoothing and suffix an...
I Unlabeled data helped alleviate lexical sparsity I But not as much in overall as replacing rare wo...
International audienceWe introduce a novel transition system for discontinuous constituency parsing....
International audienceThe combined use of neural scoring systems and BERT fine-tuning has led to ver...
Syntactic parsing consists in assigning syntactic trees to sentences in natural language. Syntactic ...
International audienceThis article introduces a novel transition system for discontinuous lexicalize...
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...
Statistical parsers are e ective but are typically limited to producing projective dependencies or c...
International audienceWe introduce a constituency parser based on a bi-LSTM encoder adapted from re-...
Statistical parsing research can be described as being anglo-centric: new models are first proposed ...
Recent advances in parsing technology have made treebank parsing with discontinuous constituents p...
Cross-lingual transfer is an important technique for low-resource language processing. Temporarily, ...
One of the most pressing issues in dis- continuous constituency transition-based parsing is that the...
International audienceWe present an efficient model selection method using boosting for transition-b...
In this paper, we present an unlexicalized parser for German which employs smoothing and suffix an...
I Unlabeled data helped alleviate lexical sparsity I But not as much in overall as replacing rare wo...
International audienceWe introduce a novel transition system for discontinuous constituency parsing....
International audienceThe combined use of neural scoring systems and BERT fine-tuning has led to ver...
Syntactic parsing consists in assigning syntactic trees to sentences in natural language. Syntactic ...
International audienceThis article introduces a novel transition system for discontinuous lexicalize...
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...
Statistical parsers are e ective but are typically limited to producing projective dependencies or c...
International audienceWe introduce a constituency parser based on a bi-LSTM encoder adapted from re-...
Statistical parsing research can be described as being anglo-centric: new models are first proposed ...
Recent advances in parsing technology have made treebank parsing with discontinuous constituents p...
Cross-lingual transfer is an important technique for low-resource language processing. Temporarily, ...
One of the most pressing issues in dis- continuous constituency transition-based parsing is that the...
International audienceWe present an efficient model selection method using boosting for transition-b...
In this paper, we present an unlexicalized parser for German which employs smoothing and suffix an...
I Unlabeled data helped alleviate lexical sparsity I But not as much in overall as replacing rare wo...