The ability to correctly model distinct meanings of a word is crucial for the effectiveness of semantic representation techniques. However, most existing evaluation benchmarks for assessing this criterion are tied to sense inventories (usually WordNet), restricting their usage to a small subset of knowledge-based representation techniques. The Word-in-Context dataset (WiC) addresses the dependence on sense inventories by reformulating the standard disambiguation task as a binary classification problem; but, it is limited to the English language. We put forward a large multilingual benchmark, XL-WiC, featuring gold standards in 12 new languages from varied language families and with different degrees of resource availability, opening room fo...
Lexical ambiguity is one of the many challenging linguistic phenomena involved in translation, i.e.,...
We propose a multilingual unsupervised Word Sense Disambiguation (WSD) task for a sample of English ...
Identifying the correct sense of a word in context is crucial for many tasks in natural language pro...
The ability to correctly model distinct meanings of a word is crucial for the effectiveness of seman...
Transformer-based architectures brought a breeze of change to Word Sense Disambiguation (WSD), impro...
Transformer-based architectures brought a breeze of change to Word Sense Disambiguation (WSD), impro...
Given the recent trend to evaluate the performance of word sense disambiguation systems in a more ap...
Understanding human language computationally remains a challenge at different levels, phonologically...
We present a multilingual approach to Word Sense Disambiguation (WSD), which automatically assigns t...
Princeton WordNet is one of the most important resources for natural language processing, but is on...
Word Sense Disambiguation (WSD) is the task of identifying the meaning of a word in a given context....
Contextualized word embeddings have been employed effectively across several tasks in Natural Langua...
This paper explores the role played by a multilingual feature representation for the task of word se...
Word Sense Disambiguation (WSD) is an intermediate task that serves as a means to an end defined by ...
Contains fulltext : 112947.pdf (publisher's version ) (Open Access)We present our ...
Lexical ambiguity is one of the many challenging linguistic phenomena involved in translation, i.e.,...
We propose a multilingual unsupervised Word Sense Disambiguation (WSD) task for a sample of English ...
Identifying the correct sense of a word in context is crucial for many tasks in natural language pro...
The ability to correctly model distinct meanings of a word is crucial for the effectiveness of seman...
Transformer-based architectures brought a breeze of change to Word Sense Disambiguation (WSD), impro...
Transformer-based architectures brought a breeze of change to Word Sense Disambiguation (WSD), impro...
Given the recent trend to evaluate the performance of word sense disambiguation systems in a more ap...
Understanding human language computationally remains a challenge at different levels, phonologically...
We present a multilingual approach to Word Sense Disambiguation (WSD), which automatically assigns t...
Princeton WordNet is one of the most important resources for natural language processing, but is on...
Word Sense Disambiguation (WSD) is the task of identifying the meaning of a word in a given context....
Contextualized word embeddings have been employed effectively across several tasks in Natural Langua...
This paper explores the role played by a multilingual feature representation for the task of word se...
Word Sense Disambiguation (WSD) is an intermediate task that serves as a means to an end defined by ...
Contains fulltext : 112947.pdf (publisher's version ) (Open Access)We present our ...
Lexical ambiguity is one of the many challenging linguistic phenomena involved in translation, i.e.,...
We propose a multilingual unsupervised Word Sense Disambiguation (WSD) task for a sample of English ...
Identifying the correct sense of a word in context is crucial for many tasks in natural language pro...