Sentence Embeddings
Sentence embeddings represent sentences as dense vectors, aiming to capture their semantic meaning for various natural language processing tasks. Current research focuses on improving embedding quality through techniques like contrastive learning, domain adaptation (especially for low-resource languages), and exploring the internal structure of embeddings to better understand how linguistic information is encoded. These advancements are significant because effective sentence embeddings are crucial for applications ranging from semantic search and text classification to machine translation and recommendation systems.
Papers
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Is a Prestigious Job the same as a Prestigious Country? A Case Study on Multilingual Sentence Embeddings and European Countries
Jindřich Libovický
TaDSE: Template-aware Dialogue Sentence Embeddings
Minsik Oh, Jiwei Li, Guoyin Wang
Linear Cross-Lingual Mapping of Sentence Embeddings
Oleg Vasilyev, Fumika Isono, John Bohannon
May 22, 2023
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