BoSS: A Best-of-Strategies Selector as an Oracle for Deep Active Learning
arXiv cs.LG / 3/16/2026
📰 NewsModels & Research
Key Points
- BoSS is proposed as a scalable oracle strategy for deep active learning, constructing candidate batches from an ensemble of selection strategies and selecting the batch with the highest predicted performance gain.
- The approach targets robustness across models, annotation budgets, and datasets, addressing weaknesses of existing AL strategies that rely on ground-truth information unavailable in practice.
- Experimental results show BoSS outperforms existing oracle strategies and that current state-of-the-art AL methods still lag behind oracle performance, especially on large-scale datasets with many classes.
- BoSS is easily extensible: new selection strategies can be added to the ensemble, and the ensemble naturally mitigates inconsistent AL performance by leveraging multiple strategies.
Related Articles
The Instruction Hierarchy: Training LLMs to Prioritize Privileged Instructions
Dev.to
Dual-Criterion Curriculum Learning: Application to Temporal Data
arXiv cs.LG
Implicit Turn-Wise Policy Optimization for Proactive User-LLM Interaction
arXiv cs.LG
Safe Reinforcement Learning with Preference-based Constraint Inference
arXiv cs.LG
Residual Attention Physics-Informed Neural Networks for Robust Multiphysics Simulation of Steady-State Electrothermal Energy Systems
arXiv cs.LG