We target the task of cross-lingual Machine Reading Comprehension (MRC) in the direct zero-shot setting, by incorporating syntactic features from Universal Dependencies (UD), and the key features we use are the syntactic relations within each sentence. While previous work has demonstrated effective syntax-guided MRC models, we propose to adopt the inter-sentence syntactic relations, in addition to the rudimentary intra-sentence relations, to further utilize the syntactic dependencies in the multi-sentence input of the MRC task. In our approach, we build the Inter-Sentence Dependency Graph (ISDG) connecting dependency trees to form global syntactic relations across sentences. We then propose the ISDG encoder that encodes the global dependenc...
We present a neural architecture for cross-lingual mate sentence retrieval which encodes sentences i...
Abstract syntax trees are an alternative representation to syntactic structures commonly found in NL...
Multilingual sentence embeddings capture rich semantic information not only for measuring similarity...
Although great progress has been made for Machine Reading Comprehension (MRC) in English, scaling ou...
This thesis studies the connections between parsing friendly representations and interlingua grammar...
This paper proposes to learn language-independent word representations to ad-dress cross-lingual dep...
As numerous modern NLP models demonstrate high-performance in various tasks when trained with resour...
International audienceThis paper studies cross-lingual transfer for dependency parsing, focusing on ...
We propose a multilingual data-driven method for generating reading comprehension questions using de...
Recent progress in cross-lingual relation and event extraction use graph convolutional networks (GCN...
This paper proposes a simple yet effective framework of soft cross-lingual syntax projection to tran...
Recent research has shown promise in multilingual modeling, demonstrating how a single model is capa...
International audienceThis paper presents a new approach to the problem of cross-lingual dependency ...
Multilingual sentence and document representations are becoming increasingly important. We build on ...
We investigate whether off-the-shelf deep bidirectional sentence representations (Devlin et al., 201...
We present a neural architecture for cross-lingual mate sentence retrieval which encodes sentences i...
Abstract syntax trees are an alternative representation to syntactic structures commonly found in NL...
Multilingual sentence embeddings capture rich semantic information not only for measuring similarity...
Although great progress has been made for Machine Reading Comprehension (MRC) in English, scaling ou...
This thesis studies the connections between parsing friendly representations and interlingua grammar...
This paper proposes to learn language-independent word representations to ad-dress cross-lingual dep...
As numerous modern NLP models demonstrate high-performance in various tasks when trained with resour...
International audienceThis paper studies cross-lingual transfer for dependency parsing, focusing on ...
We propose a multilingual data-driven method for generating reading comprehension questions using de...
Recent progress in cross-lingual relation and event extraction use graph convolutional networks (GCN...
This paper proposes a simple yet effective framework of soft cross-lingual syntax projection to tran...
Recent research has shown promise in multilingual modeling, demonstrating how a single model is capa...
International audienceThis paper presents a new approach to the problem of cross-lingual dependency ...
Multilingual sentence and document representations are becoming increasingly important. We build on ...
We investigate whether off-the-shelf deep bidirectional sentence representations (Devlin et al., 201...
We present a neural architecture for cross-lingual mate sentence retrieval which encodes sentences i...
Abstract syntax trees are an alternative representation to syntactic structures commonly found in NL...
Multilingual sentence embeddings capture rich semantic information not only for measuring similarity...