Masked language models have quickly become the de facto standard when processing text. Recently, several approaches have been proposed to further enrich word representations with external knowledge sources such as knowledge graphs. However, these models are devised and evaluated in a monolingual setting only. In this work, we propose a language-independent entity prediction task as an intermediate training procedure to ground word representations on entity semantics and bridge the gap across different languages by means of a shared vocabulary of entities. We show that our approach effectively injects new lexical-semantic knowledge into neural models, improving their performance on different semantic tasks in the zero-shot crosslingual setti...
In most Knowledge Graphs (KGs), textual descriptions ofentities are provided in multiple natu...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Multilingual Wikipedia has been used exten-sively for a variety Natural Language Pro-cessing (NLP) t...
Masked language models have quickly become the de facto standard when processing text. Recently, sev...
Masked language models have quickly become the de facto standard when processing text. Recently, sev...
AbstractWe automatically create enormous, free and multilingual silver-standard training annotations...
Extracting and disambiguating entities and concepts is a crucial step toward understanding natural l...
A major challenge in Entity Linking (EL) is making effective use of contextual information to disamb...
A notable challenge in cross-lingual wikification is the problem of retrieving English Wikipedia tit...
Named entity recognition and classification (NERC) is fundamental for natural language processing ta...
In this paper we present an automatic multilingual annotation of the Wikipedia dumps in two language...
Building named entity recognition (NER) models for languages that do not have much training data is ...
We present a dataset of inter-language knowledge propagation in Wikipedia. Covering the entire 309 l...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
We propose a novel fully-automated approach towards inducing multilingual taxonomies from Wikipedia....
In most Knowledge Graphs (KGs), textual descriptions ofentities are provided in multiple natu...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Multilingual Wikipedia has been used exten-sively for a variety Natural Language Pro-cessing (NLP) t...
Masked language models have quickly become the de facto standard when processing text. Recently, sev...
Masked language models have quickly become the de facto standard when processing text. Recently, sev...
AbstractWe automatically create enormous, free and multilingual silver-standard training annotations...
Extracting and disambiguating entities and concepts is a crucial step toward understanding natural l...
A major challenge in Entity Linking (EL) is making effective use of contextual information to disamb...
A notable challenge in cross-lingual wikification is the problem of retrieving English Wikipedia tit...
Named entity recognition and classification (NERC) is fundamental for natural language processing ta...
In this paper we present an automatic multilingual annotation of the Wikipedia dumps in two language...
Building named entity recognition (NER) models for languages that do not have much training data is ...
We present a dataset of inter-language knowledge propagation in Wikipedia. Covering the entire 309 l...
For languages with no annotated resources, transferring knowledge from rich-resource languages is an...
We propose a novel fully-automated approach towards inducing multilingual taxonomies from Wikipedia....
In most Knowledge Graphs (KGs), textual descriptions ofentities are provided in multiple natu...
Traditional approaches to supervised learning require a generous amount of labeled data for good gen...
Multilingual Wikipedia has been used exten-sively for a variety Natural Language Pro-cessing (NLP) t...