Vector-Quantized Generative Models (VQGMs) have emerged as powerful tools for image generation. However, the key component of VQGMs -- the codebook of discrete tokens -- is still not well understood, e.g., which tokens are critical to generate an image of a certain concept? This paper introduces Concept-Oriented Token Explanation (CORTEX), a novel approach for interpreting VQGMs by identifying concept-specific token combinations. Our framework employs two methods: (1) a sample-level explanation method that analyzes token importance scores in individual images, and (2) a codebook-level explanation method that explores the entire codebook to find globally relevant tokens. Experimental results demonstrate CORTEX's efficacy in providing clear explanations of token usage in the generative process, outperforming baselines across multiple pretrained VQGMs. Besides enhancing VQGMs transparency, CORTEX is useful in applications such as targeted image editing and shortcut feature detection. Our code is available atthis https URL.
View on arXiv@article{yang2025_2506.00698, title={ Concept-Centric Token Interpretation for Vector-Quantized Generative Models }, author={ Tianze Yang and Yucheng Shi and Mengnan Du and Xuansheng Wu and Qiaoyu Tan and Jin Sun and Ninghao Liu }, journal={arXiv preprint arXiv:2506.00698}, year={ 2025 } }