cs.AI updates on arXiv.org 11月03日 13:19
STAR:软任务感知路由策略提升表征学习
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本文提出了一种名为STAR的软任务感知路由策略,用于提升表征学习效率。STAR通过将投影头建模为专家,使专家专注于捕捉共享或任务特定信息,从而减少冗余特征学习。实验结果表明,STAR在多种迁移学习任务中均表现出色。

arXiv:2510.27222v1 Announce Type: cross Abstract: Equivariant representation learning aims to capture variations induced by input transformations in the representation space, whereas invariant representation learning encodes semantic information by disregarding such transformations. Recent studies have shown that jointly learning both types of representations is often beneficial for downstream tasks, typically by employing separate projection heads. However, this design overlooks information shared between invariant and equivariant learning, which leads to redundant feature learning and inefficient use of model capacity. To address this, we introduce Soft Task-Aware Routing (STAR), a routing strategy for projection heads that models them as experts. STAR induces the experts to specialize in capturing either shared or task-specific information, thereby reducing redundant feature learning. We validate this effect by observing lower canonical correlations between invariant and equivariant embeddings. Experimental results show consistent improvements across diverse transfer learning tasks. The code is available at https://github.com/YonseiML/star.

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表征学习 STAR 迁移学习 软任务感知路由 冗余特征学习
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