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Language Models as Hierarchy Encoders

Hierarchy Transformer encoders (HiTs) improve language models by explicitly encoding hierarchical structures using hyperbolic space and outperform both pre-trained and fine-tuned models in tasks involving transitive inference, subsumption prediction, and knowledge transfer.

Year
2024
Venue
arXiv 2024
Authors
4
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arxiv.org/abs/2401.11374v4ARXIV-DEFAULT
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Abstract

Interpreting hierarchical structures latent in language is a key limitation of current language models (LMs). While previous research has implicitly leveraged these hierarchies to enhance LMs, approaches for their explicit encoding are yet to be explored. To address this, we introduce a novel approach to re-train transformer encoder-based LMs as Hierarchy Transformer encoders (HiTs), harnessing the expansive nature of hyperbolic space. Our method situates the output embedding space of pre-trained LMs within a Poincar'e ball with a curvature that adapts to the embedding dimension, followed by training on hyperbolic clustering and centripetal losses. These losses are designed to effectively cluster related entities (input as texts) and organise them hierarchically. We evaluate HiTs against pre-trained LMs, standard fine-tuned LMs, and several hyperbolic embedding baselines, focusing on their capabilities in simulating transitive inference, predicting subsumptions, and transferring knowledge across hierarchies. The results demonstrate that HiTs consistently outperform all baselines in these tasks, underscoring the effectiveness and transferability of our re-trained hierarchy encoders.

Authors

4