LGAIMay 30, 2025

Object Centric Concept Bottlenecks

arXiv:2505.24492v47 citationsh-index: 6
Originality Incremental advance
AI Analysis

This addresses interpretability challenges in AI for complex vision tasks, though it appears incremental by combining existing methods.

The paper tackled the limited expressiveness of concept-based models in object-centric settings by introducing Object-Centric Concept Bottlenecks, which outperformed traditional CBMs on complex image datasets.

Developing high-performing, yet interpretable models remains a critical challenge in modern AI. Concept-based models (CBMs) attempt to address this by extracting human-understandable concepts from a global encoding (e.g., image encoding) and then applying a linear classifier on the resulting concept activations, enabling transparent decision-making. However, their reliance on holistic image encodings limits their expressiveness in object-centric real-world settings and thus hinders their ability to solve complex vision tasks beyond single-label classification. To tackle these challenges, we introduce Object-Centric Concept Bottlenecks (OCB), a framework that combines the strengths of CBMs and pre-trained object-centric foundation models, boosting performance and interpretability. We evaluate OCB on complex image datasets and conduct a comprehensive ablation study to analyze key components of the framework, such as strategies for aggregating object-concept encodings. The results show that OCB outperforms traditional CBMs and allows one to make interpretable decisions for complex visual tasks.

Foundations

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