Cross-lingual resources such as parallel corpora and bilingual dictionaries are cornerstones of multilingual natural language processing (NLP). They have been used to study the nature of translation, train automatic machine translation systems, as well as to transfer models across languages for an array of NLP tasks. However, the majority of work in cross-lingual and multilingual NLP assumes that translations recorded in these resources are semantically equivalent. This is often not the case---words and sentences that are considered to be translations of each other frequently divergein meaning, often in systematic ways. In this thesis, we focus on such mismatches in meaning in text that we expect to be aligned across languages. We term suc...
A neural language model trained on a text corpus can be used to induce distributed representations o...
International audienceThis study aims to examine the influence of multiple translations of a word on...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...
Most words in English are semantically ambiguous. Cross-language translation ambiguity occurs when a...
NLP systems typically require support for more than one language. As different languages have differ...
Do all languages convey semantic knowledge in the same way? If language simply mirrors the structure...
Although the notion of meaning has always been at the core of translation, the invariance of meaning...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
There are many cases in which the natural translation of one language into another esults in a very ...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Semantic divergence in related languages is a key concern of historical linguistics. In order to com...
http://www.corpus.bham.ac.uk/PCLC/Word sense disambiguation (WSD) is a thorny subject in natural lan...
A common way of describing the senses of ambiguous words in multilingual Word Sense Disambiguation (...
http://www.taln.be/Word Sense Disambiguation has a central role in NLP applications relevant to tran...
It has been well documented in the literature that translation equivalents have special status in bi...
A neural language model trained on a text corpus can be used to induce distributed representations o...
International audienceThis study aims to examine the influence of multiple translations of a word on...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...
Most words in English are semantically ambiguous. Cross-language translation ambiguity occurs when a...
NLP systems typically require support for more than one language. As different languages have differ...
Do all languages convey semantic knowledge in the same way? If language simply mirrors the structure...
Although the notion of meaning has always been at the core of translation, the invariance of meaning...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
There are many cases in which the natural translation of one language into another esults in a very ...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Semantic divergence in related languages is a key concern of historical linguistics. In order to com...
http://www.corpus.bham.ac.uk/PCLC/Word sense disambiguation (WSD) is a thorny subject in natural lan...
A common way of describing the senses of ambiguous words in multilingual Word Sense Disambiguation (...
http://www.taln.be/Word Sense Disambiguation has a central role in NLP applications relevant to tran...
It has been well documented in the literature that translation equivalents have special status in bi...
A neural language model trained on a text corpus can be used to induce distributed representations o...
International audienceThis study aims to examine the influence of multiple translations of a word on...
Despite the significant improvements yielded by aggregating supervised semantic analysis in various ...