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Main Authors: Wang, Xinyu, Ma, Linrui, Huang, Jerry, Lu, Peng, Parthasarathi, Prasanna, Chang, Xiao-Wen, Chen, Boxing, Cui, Yufei
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2503.22913
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author Wang, Xinyu
Ma, Linrui
Huang, Jerry
Lu, Peng
Parthasarathi, Prasanna
Chang, Xiao-Wen
Chen, Boxing
Cui, Yufei
author_facet Wang, Xinyu
Ma, Linrui
Huang, Jerry
Lu, Peng
Parthasarathi, Prasanna
Chang, Xiao-Wen
Chen, Boxing
Cui, Yufei
contents Recent shifts in the space of large language model (LLM) research have shown an increasing focus on novel architectures to compete with prototypical Transformer-based models that have long dominated this space. Linear recurrent models have proven to be a viable competitor due to their computational efficiency. However, such models still demonstrate a sizable gap compared to Transformers in terms of in-context learning among other tasks that require recalling information from a context. In this work, we introduce Resona, a simple and scalable framework for augmenting linear recurrent models with retrieval. Resona augments models with the ability to integrate retrieved information from the provided input context, enabling tailored behavior to diverse task requirements. Experiments on a variety of linear recurrent models demonstrate that Resona-augmented models observe significant performance gains on a variety of synthetic as well as real-world natural language tasks, highlighting its ability to act as a general purpose method to improve the in-context learning and language modeling abilities of linear recurrent LLMs.
format Preprint
id arxiv_https___arxiv_org_abs_2503_22913
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Resona: Improving Context Copying in Linear Recurrence Models with Retrieval
Wang, Xinyu
Ma, Linrui
Huang, Jerry
Lu, Peng
Parthasarathi, Prasanna
Chang, Xiao-Wen
Chen, Boxing
Cui, Yufei
Computation and Language
Recent shifts in the space of large language model (LLM) research have shown an increasing focus on novel architectures to compete with prototypical Transformer-based models that have long dominated this space. Linear recurrent models have proven to be a viable competitor due to their computational efficiency. However, such models still demonstrate a sizable gap compared to Transformers in terms of in-context learning among other tasks that require recalling information from a context. In this work, we introduce Resona, a simple and scalable framework for augmenting linear recurrent models with retrieval. Resona augments models with the ability to integrate retrieved information from the provided input context, enabling tailored behavior to diverse task requirements. Experiments on a variety of linear recurrent models demonstrate that Resona-augmented models observe significant performance gains on a variety of synthetic as well as real-world natural language tasks, highlighting its ability to act as a general purpose method to improve the in-context learning and language modeling abilities of linear recurrent LLMs.
title Resona: Improving Context Copying in Linear Recurrence Models with Retrieval
topic Computation and Language
url https://arxiv.org/abs/2503.22913