Tell Me What To Learn: Generalizing Neural Memory to be Controllable in Natural Language
AI 摘要
提出一种可控的广义神经记忆系统,通过自然语言指令指导模型选择性学习和记忆。
主要贡献
- 提出了一种基于自然语言指令的可控神经记忆系统
- 实现了对异构信息源的选择性学习
- 适用于需要灵活更新记忆的非平稳环境
方法论
使用自然语言指令作为学习信号,指导神经记忆模型的更新,从而实现可控的记忆。
原文摘要
Modern machine learning models are deployed in diverse, non-stationary environments where they must continually adapt to new tasks and evolving knowledge. Continual fine-tuning and in-context learning are costly and brittle, whereas neural memory methods promise lightweight updates with minimal forgetting. However, existing neural memory models typically assume a single fixed objective and homogeneous information streams, leaving users with no control over what the model remembers or ignores over time. To address this challenge, we propose a generalized neural memory system that performs flexible updates based on learning instructions specified in natural language. Our approach enables adaptive agents to learn selectively from heterogeneous information sources, supporting settings, such as healthcare and customer service, where fixed-objective memory updates are insufficient.