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Interpretable Generative Models through Post-hoc Concept Bottlenecks

About

Concept bottleneck models (CBM) aim to produce inherently interpretable models that rely on human-understandable concepts for their predictions. However, existing approaches to design interpretable generative models based on CBMs are not yet efficient and scalable, as they require expensive generative model training from scratch as well as real images with labor-intensive concept supervision. To address these challenges, we present two novel and low-cost methods to build interpretable generative models through post-hoc techniques and we name our approaches: concept-bottleneck autoencoder (CB-AE) and concept controller (CC). Our proposed approaches enable efficient and scalable training without the need of real data and require only minimal to no concept supervision. Additionally, our methods generalize across modern generative model families including generative adversarial networks and diffusion models. We demonstrate the superior interpretability and steerability of our methods on numerous standard datasets like CelebA, CelebA-HQ, and CUB with large improvements (average ~25%) over the prior work, while being 4-15x faster to train. Finally, a large-scale user study is performed to validate the interpretability and steerability of our methods.

Akshay Kulkarni, Ge Yan, Chung-En Sun, Tuomas Oikarinen, Tsui-Wei Weng• 2025

Related benchmarks

TaskDatasetResultRank
Image GenerationCelebA-HQ
FID7.65
92
Concept SteerabilityCUB 10 concepts 1k samples (test)
Steerability49.3
12
Concept SteerabilityCelebA 8 concepts 1k samples (test)
Steerability59.9
12
Concept SteerabilityCelebA 40 concepts 1k samples (test)
Steerability (%)58.3
12
Steerability evaluationCelebA 64x64
Steerability61.14
11
Steerability evaluationCUB 64x64
Steerability48.91
11
Steerability evaluationCelebA-HQ 256x256
Steerability67.95
6
Steerability evaluationCUB 256x256
Steerability65.11
4
Interpretable Image GenerationCelebA
Steerability51.14
3
Concept-based image generationCUB 13 (test)
FID8.37
3
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