The Abstraction Gap in Vision-Language Causal Reasoning 文章

ArXiv CS.CV2026-05-28NEWSen作者: Chinh Hoang, Mohammad Rashedul Hasan

摘要

arXiv:2605.28779v1 Announce Type: cross Abstract: Vision-language models (VLMs) generate fluent causal explanations, but current evaluations cannot distinguish linguistic plausibility from faithful causal reasoning. We introduce a dual-probe methodology that isolates these properties. The Text-Only Probe measures linguistic quality. The Chain-Text Probe requires models to first generate explicit causal chains. The Abstraction Gap (AG) metric quantifies the normalized performance difference. Evaluating eight VLMs on CAGE (Causal Abstraction Gap Evaluation), a benchmark of 49,500 questions across 5,500 images spanning Pearl's causal hierarchy, we find seven models exhibit AG exceeding 0.50 with text scores of 6--8 but chain scores below 2.5. Fine-tuning on 45,000 chain-annotated examples fails to close the gap. However, one model achieves near-zero AG. The capability exists within current VLM architectures and depends on pretraining and architectural choices.

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The Abstraction Gap in Vision-Language Causal Reasoning
2026-05-28PRODUCT_LAUNCH影响: MEDIUM

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