Beyond Memorization: A Multi-modal Ordinal Regression Benchmark To Expose Popularity Bias In Vision-language Models | Awesome LLM Papers Add your paper to Awesome LLM Papers

Beyond Memorization: A Multi-modal Ordinal Regression Benchmark To Expose Popularity Bias In Vision-language Models

Li-Zhong Szu-Tu, Ting-Lin Wu, Chia-Jui Chang, He Syu, Yu-Lun Liu . No Venue 2025

[Other] [Paper]   Search on Google Scholar   Search on Semantic Scholar
Vision Language

We expose a significant popularity bias in state-of-the-art vision-language models (VLMs), which achieve up to 34% higher accuracy on famous buildings compared to ordinary ones, indicating a reliance on memorization over generalizable understanding. To systematically investigate this, we introduce the largest open benchmark for this task: the YearGuessr dataset, a collection of 55,546 building images with multi-modal attributes from 157 countries, annotated with continuous ordinal labels of their construction year (1001-2024), GPS data, and page-view counts as a proxy for popularity. Using this dataset, we frame the construction year prediction task as ordinal regression and introduce popularity-aware interval accuracy metrics to quantify this bias. Our resulting benchmark of 30+ models, including our YearCLIP model, confirms that VLMs excel on popular, memorized items but struggle significantly with unrecognized subjects, exposing a critical flaw in their reasoning capabilities. Project page: https://sytwu.github.io/BeyondMemo/

Similar Work