Cross-Lingual Entity Linking
9 papers with code • 0 benchmarks • 1 datasets
Cross-lingual entity linking is the task of using data and models available for one language for which ample such resources are available (e.g., English) to solve entity linking tasks (i.e., assigning a unique identity to entities in a text) in another, commonly low-resource, language.
Image Source: Towards Zero-resource Cross-lingual Entity Linking
Benchmarks
These leaderboards are used to track progress in Cross-Lingual Entity Linking
Latest papers
Efficient Entity Candidate Generation for Low-Resource Languages
We also propose a light-weight and simple solution based on the construction of indexes whose design is motivated by more complex transfer learning based neural approaches.
Cross-Lingual Citations in English Papers: A Large-Scale Analysis of Prevalence, Usage, and Impact
Citation information in scholarly data is an important source of insight into the reception of publications and the scholarly discourse.
Prix-LM: Pretraining for Multilingual Knowledge Base Construction
To achieve this, it is crucial to represent multilingual knowledge in a shared/unified space.
Soft Gazetteers for Low-Resource Named Entity Recognition
However, designing such features for low-resource languages is challenging, because exhaustive entity gazetteers do not exist in these languages.
Design Challenges in Low-resource Cross-lingual Entity Linking
Cross-lingual Entity Linking (XEL), the problem of grounding mentions of entities in a foreign language text into an English knowledge base such as Wikipedia, has seen a lot of research in recent years, with a range of promising techniques.
Improving Candidate Generation for Low-resource Cross-lingual Entity Linking
Cross-lingual entity linking (XEL) is the task of finding referents in a target-language knowledge base (KB) for mentions extracted from source-language texts.
Towards Zero-resource Cross-lingual Entity Linking
Cross-lingual entity linking (XEL) grounds named entities in a source language to an English Knowledge Base (KB), such as Wikipedia.
Zero-shot Neural Transfer for Cross-lingual Entity Linking
To address this problem, we investigate zero-shot cross-lingual entity linking, in which we assume no bilingual lexical resources are available in the source low-resource language.
Joint Multilingual Supervision for Cross-lingual Entity Linking
This enables our approach to: (a) augment the limited supervision in the target language with additional supervision from a high-resource language (like English), and (b) train a single entity linking model for multiple languages, improving upon individually trained models for each language.