A Conditional Generative Matching Model for Multi-lingual Reply Suggestion
We study the problem of multilingual automated reply suggestions (RS) model serving many languages simultaneously. Multilingual models are often challenged by model capacity and severe data distribution skew across languages. While prior works largely focus on monolingual models, we propose Conditio...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
14.09.2021
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Subjects | |
Online Access | Get full text |
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Summary: | We study the problem of multilingual automated reply suggestions (RS) model
serving many languages simultaneously. Multilingual models are often challenged
by model capacity and severe data distribution skew across languages. While
prior works largely focus on monolingual models, we propose Conditional
Generative Matching models (CGM), optimized within a Variational Autoencoder
framework to address challenges arising from multi-lingual RS. CGM does so with
expressive message conditional priors, mixture densities to enhance
multi-lingual data representation, latent alignment for language
discrimination, and effective variational optimization techniques for training
multi-lingual RS. The enhancements result in performance that exceed
competitive baselines in relevance (ROUGE score) by more than 10\% on average,
and 16\% for low resource languages. CGM also shows remarkable improvements in
diversity (80\%) illustrating its expressiveness in representation of
multi-lingual data. |
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DOI: | 10.48550/arxiv.2109.07046 |