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Main Authors: Lin, Pengxiao, Chen, Zheng-An, Xu, Zhi-Qin John
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.24653
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author Lin, Pengxiao
Chen, Zheng-An
Xu, Zhi-Qin John
author_facet Lin, Pengxiao
Chen, Zheng-An
Xu, Zhi-Qin John
contents Despite remarkable advances, large language models often fail at compositional reasoning tasks, a phenomenon exemplified by the ``curse of two-hop reasoning''. This paper introduces the Identity Bridge, a simple yet powerful mechanism that resolves this compositionality gap by supervising the model on a zero-hop identity task. We demonstrate empirically that this addition enables models to successfully perform out-of-distribution two-hop reasoning, a task they otherwise completely fail. To explain this phenomenon, we provide a theoretical analysis using a simplified Emb-MLP model, proving that identity supervision reshapes the model's latent geometry. We show this alignment is induced by an implicit nuclear-norm regularization during optimization, which favors low-rank solutions that share structure across tasks. For complex tasks, we use small initialization or weight decay to enhance the regularization effect, which enhances the latent space alignment effect and slows down the generalization decay. Finally, we extend our investigation to large-scale models, observing that they still achieve two-hop reasoning through the latent memory, which provides crucial inspiration for enhancing their implicit reasoning abilities.
format Preprint
id arxiv_https___arxiv_org_abs_2509_24653
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Identity Bridge: Enabling Implicit Reasoning via Shared Latent Memory
Lin, Pengxiao
Chen, Zheng-An
Xu, Zhi-Qin John
Machine Learning
Artificial Intelligence
Despite remarkable advances, large language models often fail at compositional reasoning tasks, a phenomenon exemplified by the ``curse of two-hop reasoning''. This paper introduces the Identity Bridge, a simple yet powerful mechanism that resolves this compositionality gap by supervising the model on a zero-hop identity task. We demonstrate empirically that this addition enables models to successfully perform out-of-distribution two-hop reasoning, a task they otherwise completely fail. To explain this phenomenon, we provide a theoretical analysis using a simplified Emb-MLP model, proving that identity supervision reshapes the model's latent geometry. We show this alignment is induced by an implicit nuclear-norm regularization during optimization, which favors low-rank solutions that share structure across tasks. For complex tasks, we use small initialization or weight decay to enhance the regularization effect, which enhances the latent space alignment effect and slows down the generalization decay. Finally, we extend our investigation to large-scale models, observing that they still achieve two-hop reasoning through the latent memory, which provides crucial inspiration for enhancing their implicit reasoning abilities.
title Identity Bridge: Enabling Implicit Reasoning via Shared Latent Memory
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2509.24653