Domain Adaptation of Multilingual Semantic Search -- Literature Review
Bringmann, Anna, Zhukova, Anastasia
–arXiv.org Artificial Intelligence
This literature review gives an overview of current approaches to perform domain adaptation in a low-resource and approaches to perform multilingual semantic search in a low-resource setting. We developed a new typology to cluster domain adaptation approaches based on the part of dense textual information retrieval systems, which they adapt, focusing on how to combine them efficiently. We also explore the possibilities of combining multilingual semantic search with domain adaptation approaches for dense retrievers in a low-resource setting.
arXiv.org Artificial Intelligence
Feb-5-2024
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