International audienceThis paper presents a new approach to the problem of cross-lingual dependency parsing, aiming at leveraging training data from different source languages to learn a parser in a target language. Specifically , this approach first constructs word vector representations that exploit structural (i.e., dependency-based) contexts but only considering the morpho-syntactic information associated with each word and its contexts. These delexicalized word em-beddings, which can be trained on any set of languages and capture features shared across languages, are then used in combination with standard language-specific features to train a lexicalized parser in the target language. We evaluate our approach through experiments on a s...
This paper describes our system about mul-tilingual syntactic and semantic dependency parsing for ou...
Recent advances in generating monolingual word embeddings based on word co-occurrence for universal ...
This thesis presents several studies in neural dependency parsing for typologically diverse language...
International audienceThis paper presents a new approach to the problem of cross-lingual dependency ...
This paper proposes to learn language-independent word representations to ad-dress cross-lingual dep...
We develop a novel cross-lingual word representation model which injects syntactic information throu...
Word embeddings - dense vector representations of a word’s distributional semantics - are an indespe...
International audienceThis paper studies cross-lingual transfer for dependency parsing, focusing on ...
International audienceThe existence of universal models to describe the syntax of languages has been...
We present a novel method for the cross-lingual transfer of dependency parsers. Our goal is to induc...
Recent advances in multilingual language modeling have brought the idea of a truly universal parser ...
The goal of this report is to summarize our experiments and present the final result of our particip...
We show how we can adapt parsing to low-resource domains by combining treebanks across languages for...
We present a method that consumes a large corpus of multilingual text and produces a single, unified...
This paper addresses cross-lingual dependency parsing using rich morphosyntactic tagsets. In our cas...
This paper describes our system about mul-tilingual syntactic and semantic dependency parsing for ou...
Recent advances in generating monolingual word embeddings based on word co-occurrence for universal ...
This thesis presents several studies in neural dependency parsing for typologically diverse language...
International audienceThis paper presents a new approach to the problem of cross-lingual dependency ...
This paper proposes to learn language-independent word representations to ad-dress cross-lingual dep...
We develop a novel cross-lingual word representation model which injects syntactic information throu...
Word embeddings - dense vector representations of a word’s distributional semantics - are an indespe...
International audienceThis paper studies cross-lingual transfer for dependency parsing, focusing on ...
International audienceThe existence of universal models to describe the syntax of languages has been...
We present a novel method for the cross-lingual transfer of dependency parsers. Our goal is to induc...
Recent advances in multilingual language modeling have brought the idea of a truly universal parser ...
The goal of this report is to summarize our experiments and present the final result of our particip...
We show how we can adapt parsing to low-resource domains by combining treebanks across languages for...
We present a method that consumes a large corpus of multilingual text and produces a single, unified...
This paper addresses cross-lingual dependency parsing using rich morphosyntactic tagsets. In our cas...
This paper describes our system about mul-tilingual syntactic and semantic dependency parsing for ou...
Recent advances in generating monolingual word embeddings based on word co-occurrence for universal ...
This thesis presents several studies in neural dependency parsing for typologically diverse language...