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A Survey on Word Meta-Embedding Learning

2022-04-25 13:51:48
Danushka Bollegala, James O'Neill

Abstract

Meta-embedding (ME) learning is an emerging approach that attempts to learn more accurate word embeddings given existing (source) word embeddings as the sole input. Due to their ability to incorporate semantics from multiple source embeddings in a compact manner with superior performance, ME learning has gained popularity among practitioners in NLP. To the best of our knowledge, there exist no prior systematic survey on ME learning and this paper attempts to fill this need. We classify ME learning methods according to multiple factors such as whether they (a) operate on static or contextualised embeddings, (b) trained in an unsupervised manner or (c) fine-tuned for a particular task/domain. Moreover, we discuss the limitations of existing ME learning methods and highlight potential future research directions.

Abstract (translated)

URL

https://arxiv.org/abs/2204.11660

PDF

https://arxiv.org/pdf/2204.11660.pdf


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