Paper Detail

Same Evidence, Different Answer: Auditing Order Sensitivity in Multimodal Large Language Models

Akshay Paruchuri, Sanmi Koyejo, Ehsan Adeli

arxiv Score 21.2

Published 2026-06-24 · First seen 2026-06-25

General AI

Abstract

Standard benchmarks for multimodal large language models (MLLMs) score each item on one canonical ordering and miss whether order-irrelevant shuffling changes the answer, a baseline reliability property called for by emerging AI evaluation guidelines. We introduce Facet-Probe, a five-facet audit (option, evidence-chunk, document-rank, image-set, and mixed-modality ordering) of 18 frontier and open-weight MLLMs. A Bayesian item-response model separates ordering noise from per-facet bias, and a same-ordering control estimates the decoder-stochastic floor for observed flips. We find that none of the 18 MLLMs we audit are order-invariant: screened per-facet panel-mean flip rates span 24-50%. A Gemini same-ordering control at temperature 0 estimates a substantial ordering excess over a same-input decoder-noise floor in verified cells. Capability predicts but does not eliminate flips; the best model still flips on 13.4% of trials. In our Gemini mitigation tests, training-free prompt changes are modality-conditional and do not transfer from text to visual reasoning. These results suggest that prompt-level mitigation alone is unlikely to provide general order robustness, motivating future work on training-time and architectural approaches. We propose cross-ordering flip rate as a standard reporting axis for MLLMs.

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BibTeX

@article{paruchuri2026same,
  title = {Same Evidence, Different Answer: Auditing Order Sensitivity in Multimodal Large Language Models},
  author = {Akshay Paruchuri and Sanmi Koyejo and Ehsan Adeli},
  year = {2026},
  abstract = {Standard benchmarks for multimodal large language models (MLLMs) score each item on one canonical ordering and miss whether order-irrelevant shuffling changes the answer, a baseline reliability property called for by emerging AI evaluation guidelines. We introduce Facet-Probe, a five-facet audit (option, evidence-chunk, document-rank, image-set, and mixed-modality ordering) of 18 frontier and open-weight MLLMs. A Bayesian item-response model separates ordering noise from per-facet bias, and a sa},
  url = {https://arxiv.org/abs/2606.26079},
  keywords = {cs.CL, cs.CV, cs.LG},
  eprint = {2606.26079},
  archiveprefix = {arXiv},
}

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