Scalable Evaluation and Neural Models for Compositional Generalization
–Neural Information Processing Systems
Compositional generalization--a key open challenge in modern machine learning-- requires models to predict unknown combinations of known concepts. However, assessing compositional generalization remains a fundamental challenge due to the lack of standardized evaluation protocols and the limitations of current benchmarks, which often favor efficiency over rigor. At the same time, general-purpose vision architectures lack the necessary inductive biases, and existing approaches to endow them compromise scalability. As a remedy, this paper introduces: 1) a rigorous evaluation framework that unifies and extends previous approaches while reducing computational requirements from combinatorial to constant; 2) an extensive and modern evaluation on the status of compositional generalization in supervised vision backbones, training more than 5000 models; 3) Attribute Invariant Networks, a class of models establishing a new Pareto frontier in compositional generalization, achieving a 23.43% accuracy improvement over baselines while reducing parameter overhead from 600% to 16% compared to fully disentangled counterparts.
Neural Information Processing Systems
Jun-14-2026, 14:36:23 GMT
- Genre:
- Research Report
- Experimental Study (1.00)
- New Finding (0.92)
- Research Report
- Technology:
- Information Technology
- Data Science (1.00)
- Artificial Intelligence
- Vision (1.00)
- Representation & Reasoning (1.00)
- Natural Language (0.93)
- Cognitive Science (0.92)
- Machine Learning > Neural Networks
- Deep Learning (0.92)
- Information Technology