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Autori principali: Kim, Dong-Kyum, Kim, Minsung, Kwon, Jea, Yang, Nakyeong, Cha, Meeyoung
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2509.21993
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author Kim, Dong-Kyum
Kim, Minsung
Kwon, Jea
Yang, Nakyeong
Cha, Meeyoung
author_facet Kim, Dong-Kyum
Kim, Minsung
Kwon, Jea
Yang, Nakyeong
Cha, Meeyoung
contents The reversal curse--a language model's inability to infer an unseen fact "B is A" from a learned fact "A is B"--is widely considered a fundamental limitation. We show that this is not an inherent failure but an artifact of how models encode knowledge. Our results demonstrate that training from scratch on synthetic relational knowledge graphs leads to the emergence of a bilinear relational structure within the models' hidden representations. This structure alleviates the reversal curse and facilitates inference of unseen reverse facts. Crucially, this bilinear geometry is foundational for consistent model editing: updates to a single fact propagate correctly to its reverse and logically dependent relations. In contrast, models lacking this representation suffer from the reversal curse and fail to generalize model edits, leading to logical inconsistencies. Our results establish that training on a relational knowledge dataset induces the emergence of bilinear internal representations, which in turn support language models in behaving in a logically consistent manner after editing. This suggests that the efficacy of language model editing depends not only on the choice of algorithm but on the underlying representational geometry of the knowledge itself.
format Preprint
id arxiv_https___arxiv_org_abs_2509_21993
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Bilinear representation mitigates reversal curse and enables consistent model editing
Kim, Dong-Kyum
Kim, Minsung
Kwon, Jea
Yang, Nakyeong
Cha, Meeyoung
Artificial Intelligence
Machine Learning
The reversal curse--a language model's inability to infer an unseen fact "B is A" from a learned fact "A is B"--is widely considered a fundamental limitation. We show that this is not an inherent failure but an artifact of how models encode knowledge. Our results demonstrate that training from scratch on synthetic relational knowledge graphs leads to the emergence of a bilinear relational structure within the models' hidden representations. This structure alleviates the reversal curse and facilitates inference of unseen reverse facts. Crucially, this bilinear geometry is foundational for consistent model editing: updates to a single fact propagate correctly to its reverse and logically dependent relations. In contrast, models lacking this representation suffer from the reversal curse and fail to generalize model edits, leading to logical inconsistencies. Our results establish that training on a relational knowledge dataset induces the emergence of bilinear internal representations, which in turn support language models in behaving in a logically consistent manner after editing. This suggests that the efficacy of language model editing depends not only on the choice of algorithm but on the underlying representational geometry of the knowledge itself.
title Bilinear representation mitigates reversal curse and enables consistent model editing
topic Artificial Intelligence
Machine Learning
url https://arxiv.org/abs/2509.21993