RAMIE: Retrieval-Augmented Multi-task Information Extraction with Large Language Models on Dietary Supplements
Zaifu Zhan, Shuang Zhou, Mingchen Li, Rui Zhang

TL;DR
This paper introduces RAMIE, a retrieval-augmented multi-task framework using large language models to improve extraction of dietary supplement information from clinical records, achieving significant performance gains across multiple tasks.
Contribution
The paper presents a novel RAMIE framework combining instruction fine-tuning, multi-task learning, and retrieval augmentation to enhance information extraction with large language models.
Findings
RAMIE improves F1 scores across tasks by up to 14.26%.
Retrieval augmentation significantly boosts overall accuracy.
Multi-task learning increases efficiency with minimal performance trade-offs.
Abstract
\textbf{Objective:} We aimed to develop an advanced multi-task large language model (LLM) framework to extract multiple types of information about dietary supplements (DS) from clinical records. \textbf{Methods:} We used four core DS information extraction tasks - namely, named entity recognition (NER: 2,949 clinical sentences), relation extraction (RE: 4,892 sentences), triple extraction (TE: 2,949 sentences), and usage classification (UC: 2,460 sentences) as our multitasks. We introduced a novel Retrieval-Augmented Multi-task Information Extraction (RAMIE) Framework, including: 1) employed instruction fine-tuning techniques with task-specific prompts, 2) trained LLMs for multiple tasks with improved storage efficiency and lower training costs, and 3) incorporated retrieval augmentation generation (RAG) techniques by retrieving similar examples from the training set. We compared…
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Taxonomy
TopicsAdvanced Text Analysis Techniques · Topic Modeling · Natural Language Processing Techniques
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Linear Layer · Linear Warmup With Linear Decay · Layer Normalization · Byte Pair Encoding · Adam · Residual Connection · Weight Decay · Softmax
