Digging Deeper: Learning Multi-Level Concept Hierarchies
arXiv cs.AI / 3/12/2026
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Key Points
- MLCS discovers multi-level concept hierarchies from only top-level supervision, addressing the limitation of shallow hierarchies.
- Deep-HiCEMs architecture represents these discovered hierarchies and enables interventions at multiple levels of abstraction during testing.
- Experiments show MLCS can uncover human-interpretable concepts that were not present during training.
- Deep-HiCEMs maintain high task accuracy while enabling test-time concept interventions that can improve performance.
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