Saved in:
Bibliographic Details
Main Authors: Zhang, Xiao, Lyu, Juntao, Hu, Tianyu, Zhao, Qianchuan, Ma, Huimin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.00533
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866915905144881152
author Zhang, Xiao
Lyu, Juntao
Hu, Tianyu
Zhao, Qianchuan
Ma, Huimin
author_facet Zhang, Xiao
Lyu, Juntao
Hu, Tianyu
Zhao, Qianchuan
Ma, Huimin
contents Large Language Models (LLMs) generalize across tasks via reusable representations and flexible reasoning, yet remain brittle in real deployment under evolving tasks and continual distribution shift. A common approach is Test-Time Adaptation (TTA), existing ones of which updates models with hand-designed unsupervised objectives over the full parameter space and mostly overlook preserving shared source knowledge and the reliability of adaptation signals. Drawing on molecular signaling cascades of memory updating in Drosophila, we propose Synapse Consolidation (SyCo), a parameter-efficient LLM adaptation method that updates low-rank adapters through Rac1 and MAPK pathways under the guidance of a structured TTA objective driven by problem understanding, process understanding, and source-domain guardrail. Rac1 confines plasticity to a tail-gradient subspace that is less critical for source knowledge, enabling rapid specialization while preserving source representations. MAPK uses a tiered controller to suppress noisy updates and consolidate useful adaptations under non-stationary streams. To model real deployments with multiple sources and continually emerging tasks, we introduce Multi-source Open-set Adaptation (MOA) setting, where a model is trained on multiple labeled source tasks and then adapts on open, non-stationary unlabeled test streams that mix seen and unseen tasks with partial overlap in label and intent space. Across 18 NLP datasets and the MOA setting, SyCo consistently outperforms strong baselines, achieving 78.31\% on unseen-task adaptation and 85.37\% on unseen-data shifts.
format Preprint
id arxiv_https___arxiv_org_abs_2604_00533
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Learning from Many and Adapting to the Unknown in Open-set Test Streams
Zhang, Xiao
Lyu, Juntao
Hu, Tianyu
Zhao, Qianchuan
Ma, Huimin
Machine Learning
Information Theory
Large Language Models (LLMs) generalize across tasks via reusable representations and flexible reasoning, yet remain brittle in real deployment under evolving tasks and continual distribution shift. A common approach is Test-Time Adaptation (TTA), existing ones of which updates models with hand-designed unsupervised objectives over the full parameter space and mostly overlook preserving shared source knowledge and the reliability of adaptation signals. Drawing on molecular signaling cascades of memory updating in Drosophila, we propose Synapse Consolidation (SyCo), a parameter-efficient LLM adaptation method that updates low-rank adapters through Rac1 and MAPK pathways under the guidance of a structured TTA objective driven by problem understanding, process understanding, and source-domain guardrail. Rac1 confines plasticity to a tail-gradient subspace that is less critical for source knowledge, enabling rapid specialization while preserving source representations. MAPK uses a tiered controller to suppress noisy updates and consolidate useful adaptations under non-stationary streams. To model real deployments with multiple sources and continually emerging tasks, we introduce Multi-source Open-set Adaptation (MOA) setting, where a model is trained on multiple labeled source tasks and then adapts on open, non-stationary unlabeled test streams that mix seen and unseen tasks with partial overlap in label and intent space. Across 18 NLP datasets and the MOA setting, SyCo consistently outperforms strong baselines, achieving 78.31\% on unseen-task adaptation and 85.37\% on unseen-data shifts.
title Learning from Many and Adapting to the Unknown in Open-set Test Streams
topic Machine Learning
Information Theory
url https://arxiv.org/abs/2604.00533