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Shen, L., Jiang, H., Liu, L., & Shi, S. Sen2Pro: A Probabilistic Perspective to Sentence Embedding from Pre-trained Language Model. 
Resource type: Journal Article
BibTeX citation key: anon.152
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Categories: General
Creators: Jiang, Liu, Shen, Shi
Attachments   URLs   https://www.semant ... 6f4d8cc9e4b011eb86
Abstract
An efficient framework on probabilistic sentence embedding (Sen2Pro) from PLMs is proposed, which represents a sentence as a probability density distribution in an embedding space to reflect both model uncertainty and data uncertainty in the sentence representation. Sentence embedding is one of the most fundamental tasks in Natural Language Processing and plays an important role in various tasks. The recent breakthrough in sentence embedding is achieved by pre-trained language models (PLMs). Despite its success, an embedded vector (Sen2Vec) representing a point estimate does not naturally express uncertainty in a taskagnostic way. This paper thereby proposes an efficient framework on probabilistic sentence embedding (Sen2Pro) from PLMs, and it represents a sentence as a probability density distribution in an embedding space to reflect both model uncertainty and data uncertainty (i.e., many-to-one nature) in the sentence representation. The proposed framework performs in a plug-and-play way without retraining PLMs anymore, and it is easy to implement and generally applied on top of any PLM. The superiority of Sen2Pro over Sen2Vec has been theoretically verified and practically illustrated on different NLP tasks.
  
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