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Autori principali: Roh, Taeyun, Jo, Eun-yeong, Jang, Wonjune, Kang, Jaewoo
Natura: Preprint
Pubblicazione: 2026
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Accesso online:https://arxiv.org/abs/2603.28026
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author Roh, Taeyun
Jo, Eun-yeong
Jang, Wonjune
Kang, Jaewoo
author_facet Roh, Taeyun
Jo, Eun-yeong
Jang, Wonjune
Kang, Jaewoo
contents Scientific figure multiple-choice question answering (MCQA) requires models to reason over diverse visual evidence, ranging from charts and multipanel figures to microscopy and biomedical images. However, this setting suffers from a distinctive bias: answer choices themselves can act as priors, steering multimodal models toward scientifically plausible options even when the figure supports a different answer. We investigate this failure mode through a simple question: what if decoding explicitly discounts what the model would prefer from text alone, so as to favor figure-grounded evidence? To this end, we propose SCICON, a training-free decoding method that scores each candidate by subtracting a text-only option score from its image-conditioned counterpart. Unlike prior contrastive decoding approaches that mitigate hallucinations by contrasting original inputs with distorted images or perturbed instructions, SCICON directly targets the choice-induced prior encoded in candidate text. Across three scientific figure QA benchmarks and three model backbones, SCICON consistently improves accuracy over standard decoding baselines. These results show that decoding against choice-induced priors is an effective and simple way to improve figure-grounded reasoning in scientific MCQA.
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publishDate 2026
record_format arxiv
spellingShingle When Choices Become Priors: Contrastive Decoding for Scientific Figure Multiple-Choice QA
Roh, Taeyun
Jo, Eun-yeong
Jang, Wonjune
Kang, Jaewoo
Artificial Intelligence
Scientific figure multiple-choice question answering (MCQA) requires models to reason over diverse visual evidence, ranging from charts and multipanel figures to microscopy and biomedical images. However, this setting suffers from a distinctive bias: answer choices themselves can act as priors, steering multimodal models toward scientifically plausible options even when the figure supports a different answer. We investigate this failure mode through a simple question: what if decoding explicitly discounts what the model would prefer from text alone, so as to favor figure-grounded evidence? To this end, we propose SCICON, a training-free decoding method that scores each candidate by subtracting a text-only option score from its image-conditioned counterpart. Unlike prior contrastive decoding approaches that mitigate hallucinations by contrasting original inputs with distorted images or perturbed instructions, SCICON directly targets the choice-induced prior encoded in candidate text. Across three scientific figure QA benchmarks and three model backbones, SCICON consistently improves accuracy over standard decoding baselines. These results show that decoding against choice-induced priors is an effective and simple way to improve figure-grounded reasoning in scientific MCQA.
title When Choices Become Priors: Contrastive Decoding for Scientific Figure Multiple-Choice QA
topic Artificial Intelligence
url https://arxiv.org/abs/2603.28026