3VL: Using Trees to Improve Vision-Language Models’ Interpretability

Nir Yellinek;Leonid Karlinsky;Raja Giryes
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Abstract

Vision-Language models (VLMs) have proven to be effective at aligning image and text representations, producing superior zero-shot results when transferred to many downstream tasks. However, these representations suffer from some key shortcomings in understanding Compositional Language Concepts (CLC), such as recognizing objects’ attributes, states, and relations between different objects. Moreover, VLMs typically have poor interpretability, making it challenging to debug and mitigate compositional-understanding failures. In this work, we introduce the architecture and training technique of Tree-augmented Vision-Language (3VL) model accompanied by our proposed Anchor inference method and Differential Relevance (DiRe) interpretability tool. By expanding the text of an arbitrary image-text pair into a hierarchical tree structure using language analysis tools, 3VL allows the induction of this structure into the visual representation learned by the model, enhancing its interpretability and compositional reasoning. Additionally, we show how Anchor, a simple technique for text unification, can be used to filter nuisance factors while increasing CLC understanding performance, e.g., on the fundamental VL-Checklist benchmark. We also show how DiRe, which performs a differential comparison between VLM relevancy maps, enables us to generate compelling visualizations of the reasons for a model’s success or failure.
3VL:使用树来提高视觉语言模型的可解释性
视觉语言模型(VLMs)已被证明在对齐图像和文本表示方面是有效的,在转移到许多下游任务时产生了优越的零射击结果。然而,这些表示在理解组合语言概念(CLC)方面存在一些关键缺陷,例如识别对象的属性、状态以及不同对象之间的关系。此外,vlm通常具有较差的可解释性,这使得调试和减轻组合理解失败变得具有挑战性。在这项工作中,我们介绍了树增强视觉语言(3VL)模型的架构和训练技术,以及我们提出的锚点推理方法和差分相关性(DiRe)可解释性工具。通过使用语言分析工具将任意图像-文本对的文本扩展为分层树结构,3VL允许将该结构归纳到模型学习的视觉表示中,从而增强其可解释性和组合推理。此外,我们还展示了如何使用Anchor(一种用于文本统一的简单技术)过滤讨厌的因素,同时提高CLC理解性能,例如在基本的VL-Checklist基准上。我们还展示了在VLM相关性图之间执行差异比较的DiRe如何使我们能够生成引人注目的模型成功或失败原因的可视化。
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