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Robust Embeddings Via Distributions

17 April 2021
Kira A. Selby
Yinong Wang
Ruizhe Wang
Peyman Passban
Ahmad Rashid
Mehdi Rezagholizadeh
Pascal Poupart
    OOD
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Abstract

Despite recent monumental advances in the field, many Natural Language Processing (NLP) models still struggle to perform adequately on noisy domains. We propose a novel probabilistic embedding-level method to improve the robustness of NLP models. Our method, Robust Embeddings via Distributions (RED), incorporates information from both noisy tokens and surrounding context to obtain distributions over embedding vectors that can express uncertainty in semantic space more fully than any deterministic method. We evaluate our method on a number of downstream tasks using existing state-of-the-art models in the presence of both natural and synthetic noise, and demonstrate a clear improvement over other embedding approaches to robustness from the literature.

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