cs.AI updates on arXiv.org 10月15日 13:06
元AFA:跨任务特征获取策略学习
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本文提出元AFA问题,旨在学习跨任务的特征获取策略。通过引入L2M方法,实现可靠的不确定性量化与不确定性引导的贪婪特征获取,提高模型在测试实例上的性能。

arXiv:2510.12624v1 Announce Type: cross Abstract: Active feature acquisition (AFA) is a sequential decision-making problem where the goal is to improve model performance for test instances by adaptively selecting which features to acquire. In practice, AFA methods often learn from retrospective data with systematic missingness in the features and limited task-specific labels. Most prior work addresses acquisition for a single predetermined task, limiting scalability. To address this limitation, we formalize the meta-AFA problem, where the goal is to learn acquisition policies across various tasks. We introduce Learning-to-Measure (L2M), which consists of i) reliable uncertainty quantification over unseen tasks, and ii) an uncertainty-guided greedy feature acquisition agent that maximizes conditional mutual information. We demonstrate a sequence-modeling or autoregressive pre-training approach that underpins reliable uncertainty quantification for tasks with arbitrary missingness. L2M operates directly on datasets with retrospective missingness and performs the meta-AFA task in-context, eliminating per-task retraining. Across synthetic and real-world tabular benchmarks, L2M matches or surpasses task-specific baselines, particularly under scarce labels and high missingness.

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元AFA 特征获取 跨任务学习 不确定性量化 L2M
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