While cross-lingual techniques are finding increasing success in a wide range of Natural Language Processing tasks, their application to Semantic Role Labeling (SRL) has been strongly limited by the fact that each language adopts its own linguistic formalism, from PropBank for English to AnCora for Spanish and PDT-Vallex for Czech, inter alia. In this work, we address this issue and present a unified model to perform cross-lingual SRL over heterogeneous linguistic resources. Our model implicitly learns a high-quality mapping for different formalisms across diverse languages without resorting to word alignment and/or translation techniques. We find that, not only is our cross-lingual system competitive with the current state of the art but t...
In the modern era of deep learning, developing natural language processing (NLP) systems require lar...
We investigate whether an alignment method based on cross-lingual semantic annotation projection imp...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
We propose a Cross-lingual Encoder-Decoder model that simultaneously translates and generates senten...
Understanding an event means being able to answer the question Who did what to whom? (and perhaps al...
Multilingual and cross-lingual Semantic Role Labeling (SRL) have recently garnered increasing attent...
In recent years, thanks to the relative maturity of neural network models, the task of automaticall...
Notwithstanding the growing interest in cross-lingual techniques for Natural Language Processing, th...
We describe an approach for training a semantic role labeler through cross-lingual projection betwee...
International audienceWe address the problem of transferring semantic annotations to new languages u...
This paper describes our contribution to the semantic role labeling task (SRL-only) of the CoNLL-200...
Semantic role labeling is an important step in natural language understanding, offering a formal rep...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...
This paper describes the multilingual semantic role labeling system of Computational Lin-guistics Gr...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
In the modern era of deep learning, developing natural language processing (NLP) systems require lar...
We investigate whether an alignment method based on cross-lingual semantic annotation projection imp...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
We propose a Cross-lingual Encoder-Decoder model that simultaneously translates and generates senten...
Understanding an event means being able to answer the question Who did what to whom? (and perhaps al...
Multilingual and cross-lingual Semantic Role Labeling (SRL) have recently garnered increasing attent...
In recent years, thanks to the relative maturity of neural network models, the task of automaticall...
Notwithstanding the growing interest in cross-lingual techniques for Natural Language Processing, th...
We describe an approach for training a semantic role labeler through cross-lingual projection betwee...
International audienceWe address the problem of transferring semantic annotations to new languages u...
This paper describes our contribution to the semantic role labeling task (SRL-only) of the CoNLL-200...
Semantic role labeling is an important step in natural language understanding, offering a formal rep...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...
This paper describes the multilingual semantic role labeling system of Computational Lin-guistics Gr...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
In the modern era of deep learning, developing natural language processing (NLP) systems require lar...
We investigate whether an alignment method based on cross-lingual semantic annotation projection imp...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...