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MemLLM: Finetuning LLMs to Use Explicit Read-Write Memory

MCML Authors

Abstract

While current large language models (LLMs) perform well on many knowledge-related tasks, they are limited by relying on their parameters as an implicit storage mechanism. As a result, they struggle with memorizing rare events and with updating their memory as facts change over time. In addition, the uninterpretable nature of parametric memory makes it challenging to prevent hallucination. Model editing and augmenting LLMs with parameters specialized for memory are only partial solutions. In this paper, we introduce MemLLM, a novel method of enhancing LLMs by integrating a structured and explicit read-and-write memory module. MemLLM tackles the aforementioned challenges by enabling dynamic interaction with the memory and improving the LLM's capabilities in using stored knowledge. Our experiments indicate that MemLLM enhances the LLM's performance and interpretability, in language modeling in general and knowledge-intensive tasks in particular. We see MemLLM as an important step towards making LLMs more grounded and factual through memory augmentation.

article


Transactions on Machine Learning Research

Apr. 2025.

Authors

A. ModarressiA. KöksalA. Imani • M. Fayyaz • H. Schütze

Links

URL GitHub

Research Area

 B2 | Natural Language Processing

BibTeXKey: MKI+25a

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