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Main Authors: Lopardo, Antonio, Harish, Avyukth, Arnett, Catherine, Gupta, Akshat
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.26663
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author Lopardo, Antonio
Harish, Avyukth
Arnett, Catherine
Gupta, Akshat
author_facet Lopardo, Antonio
Harish, Avyukth
Arnett, Catherine
Gupta, Akshat
contents Weight tying, i.e. sharing parameters between input and output embedding matrices, is common practice in language model design, yet its impact on the learned embedding space remains poorly understood. In this paper, we show that tied embedding matrices align more closely with output (unembedding) matrices than with input embeddings of comparable untied models, indicating that the shared matrix is shaped primarily for output prediction rather than input representation. This unembedding bias arises because output gradients dominate early in training. Using tuned lens analysis, we show this negatively affects early-layer computations, which contribute less effectively to the residual stream. Scaling input gradients during training reduces this bias, providing causal evidence for the role of gradient imbalance. This is mechanistic evidence that weight tying optimizes the embedding matrix for output prediction, compromising its role in input representation. These results help explain why weight tying can harm performance at scale and have implications for training smaller LLMs, where the embedding matrix contributes substantially to total parameter count.
format Preprint
id arxiv_https___arxiv_org_abs_2603_26663
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Weight Tying Biases Token Embeddings Towards the Output Space
Lopardo, Antonio
Harish, Avyukth
Arnett, Catherine
Gupta, Akshat
Computation and Language
Weight tying, i.e. sharing parameters between input and output embedding matrices, is common practice in language model design, yet its impact on the learned embedding space remains poorly understood. In this paper, we show that tied embedding matrices align more closely with output (unembedding) matrices than with input embeddings of comparable untied models, indicating that the shared matrix is shaped primarily for output prediction rather than input representation. This unembedding bias arises because output gradients dominate early in training. Using tuned lens analysis, we show this negatively affects early-layer computations, which contribute less effectively to the residual stream. Scaling input gradients during training reduces this bias, providing causal evidence for the role of gradient imbalance. This is mechanistic evidence that weight tying optimizes the embedding matrix for output prediction, compromising its role in input representation. These results help explain why weight tying can harm performance at scale and have implications for training smaller LLMs, where the embedding matrix contributes substantially to total parameter count.
title Weight Tying Biases Token Embeddings Towards the Output Space
topic Computation and Language
url https://arxiv.org/abs/2603.26663