cs.AI updates on arXiv.org 08月14日
Hierarchical Adaptive networks with Task vectors for Test-Time Adaptation
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本文提出一种名为Hi-Vec的动态层次网络,通过分解编码器表示空间为分层组织层,实现预训练模型对数据流适应,解决源域与目标域间的分布偏移问题。Hi-Vec具有动态层选择、权重融合机制和线性层协议等功能,显著提升模型鲁棒性和不确定性处理能力。

arXiv:2508.09223v1 Announce Type: cross Abstract: Test-time adaptation allows pretrained models to adjust to incoming data streams, addressing distribution shifts between source and target domains. However, standard methods rely on single-dimensional linear classification layers, which often fail to handle diverse and complex shifts. We propose Hierarchical Adaptive Networks with Task Vectors (Hi-Vec), which leverages multiple layers of increasing size for dynamic test-time adaptation. By decomposing the encoder's representation space into such hierarchically organized layers, Hi-Vec, in a plug-and-play manner, allows existing methods to adapt to shifts of varying complexity. Our contributions are threefold: First, we propose dynamic layer selection for automatic identification of the optimal layer for adaptation to each test batch. Second, we propose a mechanism that merges weights from the dynamic layer to other layers, ensuring all layers receive target information. Third, we propose linear layer agreement that acts as a gating function, preventing erroneous fine-tuning by adaptation on noisy batches. We rigorously evaluate the performance of Hi-Vec in challenging scenarios and on multiple target datasets, proving its strong capability to advance state-of-the-art methods. Our results show that Hi-Vec improves robustness, addresses uncertainty, and handles limited batch sizes and increased outlier rates.

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Hi-Vec 动态层次网络 测试时适应性 预训练模型 分布偏移
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