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arXiv:2303.00721

Bootstrapping Parallel Anchors for Relative Representations

Published on Mar 1, 2023
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Abstract

An optimization-based method discovers new parallel anchors from a limited set to enable semantic correspondence and competitive performance across domains using relative representations.

AI-generated summary

The use of relative representations for latent embeddings has shown potential in enabling latent space communication and zero-shot model stitching across a wide range of applications. Nevertheless, relative representations rely on a certain amount of parallel anchors to be given as input, which can be impractical to obtain in certain scenarios. To overcome this limitation, we propose an optimization-based method to discover new parallel anchors from a limited known set (seed). Our approach can be used to find semantic correspondence between different domains, align their relative spaces, and achieve competitive results in several tasks.

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