The Impact of Positional Encodings on Multilingual Compression

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In order to preserve word-order information in a non-autoregressive setting, transformer architectures tend to include positional knowledge, by (for instance) adding positional encodings to token embeddings. Several modifications have been proposed over the sinusoidal positional encodings used in the original transformer architecture; these include, for instance, separating position encodings and token embeddings, or directly modifying attention weights based on the distance between word pairs. We first show that surprisingly, while these modifications tend to improve monolingual language models, none of them result in better multilingual language models. We then answer why that is: Sinusoidal encodings were explicitly designed to facilitate compositionality by allowing linear projections over arbitrary time steps. Higher variances in multilingual training distributions requires higher compression, in which case, compositionality becomes indispensable. Learned absolute positional encodings (e.g., in mBERT) tend to approximate sinusoidal embeddings in multilingual settings, but more complex positional encoding architectures lack the inductive bias to effectively learn compositionality and cross-lingual alignment. In other words, while sinusoidal positional encodings were originally designed for monolingual applications, they are particularly useful in multilingual language models.
OriginalsprogEngelsk
TitelProceedings of the 2021 Conference on Empirical Methods in Natural Language Processing
ForlagAssociation for Computational Linguistics
Publikationsdato2021
Sider763-777
DOI
StatusUdgivet - 2021
Begivenhed2021 Conference on Empirical Methods in Natural Language Processing -
Varighed: 7 nov. 202111 nov. 2021

Konference

Konference2021 Conference on Empirical Methods in Natural Language Processing
Periode07/11/202111/11/2021

ID: 299760921