Large multimodal models (LMMs) have exhibited proficiencies across many visual tasks. Although numerous well-known benchmarks exist to evaluate model performance, they increasingly have insufficient headroom. As such, there is a pressing need for a new generation of benchmarks challenging enough for the next generation of LMMs. One area that LMMs show potential is graph analysis, specifically, the tasks an analyst might typically perform when interpreting figures such as estimating the mean, intercepts or correlations of functions and data series. In this work, we introduce GRAB, a graph analysis benchmark, fit for current and future frontier LMMs. Our benchmark is predominantly synthetic, ensuring high-quality, noise-free questions. GRAB is comprised of 3284 questions, covering five tasks and 23 graph properties. We evaluate 20 LMMs on GRAB, finding it to be a challenging benchmark, with the highest performing model attaining a score of just 21.0%. Finally, we conduct various ablations to investigate where the models succeed and struggle. We release GRAB and a lightweight GRAB-Lite to encourage progress in this important, growing domain.
翻译:大型多模态模型(LMMs)已在众多视觉任务中展现出卓越能力。尽管目前存在许多评估模型性能的知名基准,但其性能提升空间日益受限。因此,亟需构建足以挑战下一代LMMs的新一代基准。图分析是LMMs具有发展潜力的领域之一,具体涉及分析人员在解读图表时通常执行的任务,例如估算函数与数据序列的均值、截距或相关性。本研究提出GRAB——一个适用于当前及未来前沿LMMs的图分析基准。该基准主要采用合成数据构建,确保问题具有高质量、无噪声的特性。GRAB包含3284个问题,涵盖五大任务类别与23种图表属性。我们在GRAB上评估了20个LMMs,发现其具有显著挑战性,性能最优模型的得分仅为21.0%。最后,我们通过多项消融实验探究了模型的优势与薄弱环节。我们开源GRAB及其轻量化版本GRAB-Lite,以推动这一重要且快速发展的领域持续进步。