Beyond Plain Demos: A Demo-Centric Anchoring Paradigm for In-Context Learning in Alzheimer’s Disease Detection

Authors

  • Puzhen Su National University of Defense Technology
  • Haoran Yin National University of Defense Technology
  • Miao Yongzhu National University of Defense Technology
  • Jintao Tang National University of Defense Technology
  • Shasha Li National University of Defense Technology
  • Ting Wang National University of Defense Technology

DOI:

https://doi.org/10.1609/aaai.v40i39.40590

Abstract

Detecting Alzheimer’s disease (AD) from narrative transcripts challenges large language models (LLMs): pre-training rarely covers this out-of-distribution task, and all transcript demos describe the same scene, producing highly homogeneous contexts. These factors cripple both the model’s built-in task knowledge (task cognition) and its ability to surface subtle, class-discriminative cues (contextual perception). Because cognition is fixed after pre-training, improving in-context learning (ICL) for AD detection hinges on enriching perception through better demonstration (demo) sets. We demonstrate that standard ICL quickly saturates, its demos lack diversity (context width) and fail to convey fine-grained signals (context depth), and that recent task vector (TV) approaches improve broad task adaptation by injecting TV into the LLMs' hidden states (HSs), they are ill-suited for AD detection due to the mismatch of injection granularity, strength and position. To address these bottlenecks, we introduce DA4ICL, a demo-centric anchoring framework that jointly expands context width via Diverse and Contrastive Retrieval (DCR) and deepens each demo's signal via Projected Vector Anchoring (PVA) at every Transformer layer. Across three AD benchmarks, DA4ICL achieves large, stable gains over both ICL and TV baselines, charting a new paradigm for fine-grained, OOD and low-resource LLM adaptation.

Published

2026-03-14

How to Cite

Su, P., Yin, H., Yongzhu, M., Tang, J., Li, S., & Wang, T. (2026). Beyond Plain Demos: A Demo-Centric Anchoring Paradigm for In-Context Learning in Alzheimer’s Disease Detection. Proceedings of the AAAI Conference on Artificial Intelligence, 40(39), 33074–33082. https://doi.org/10.1609/aaai.v40i39.40590

Issue

Section

AAAI Technical Track on Natural Language Processing IV