MARK: Memory Augmented Refinement of Knowledge
Anish Ganguli, Prabal Deb, Debleena Banerjee

TL;DR
MARK enables large language models to continuously learn and adapt to evolving domain knowledge by using structured memory agents, improving accuracy, personalization, and reducing hallucinations without retraining.
Contribution
The paper introduces a novel framework with specialized memory agents that allow LLMs to refine and adapt knowledge dynamically, bridging the gap between deep domain understanding and model responses.
Findings
Enhanced response accuracy through structured memory retrieval
Reduced hallucinations by referencing a structured knowledge base
Improved personalization and domain adaptation capabilities
Abstract
Large Language Models (LLMs) assist in specialized tasks but struggle to align with evolving domain knowledge without costly fine-tuning. Domain knowledge consists of: Knowledge: Immutable facts (e.g., 'A stone is solid') and generally accepted principles (e.g., ethical standards); Refined Memory: Evolving insights shaped by business needs and real-world changes. However, a significant gap often exists between a domain expert's deep, nuanced understanding and the system's domain knowledge, which can hinder accurate information retrieval and application. Our Memory-Augmented Refinement of Knowledge (MARK) framework enables LLMs to continuously learn without retraining by leveraging structured refined memory, inspired by the Society of Mind. MARK operates through specialized agents, each serving a distinct role: Residual Refined Memory Agent: Stores and retrieves domain-specific insights…
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Taxonomy
TopicsArtificial Intelligence in Healthcare and Education · Multimodal Machine Learning Applications · Topic Modeling
MethodsALIGN
