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Autori principali: Dongre, Vardhan, Gui, Chi, Garg, Shubham, Nayyeri, Hooshang, Tur, Gokhan, Hakkani-Tür, Dilek, Adve, Vikram S.
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2506.20100
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author Dongre, Vardhan
Gui, Chi
Garg, Shubham
Nayyeri, Hooshang
Tur, Gokhan
Hakkani-Tür, Dilek
Adve, Vikram S.
author_facet Dongre, Vardhan
Gui, Chi
Garg, Shubham
Nayyeri, Hooshang
Tur, Gokhan
Hakkani-Tür, Dilek
Adve, Vikram S.
contents We introduce MIRAGE, a new benchmark for multimodal expert-level reasoning and decision-making in consultative interaction settings. Designed for the agriculture domain, MIRAGE captures the full complexity of expert consultations by combining natural user queries, expert-authored responses, and image-based context, offering a high-fidelity benchmark for evaluating models on grounded reasoning, clarification strategies, and long-form generation in a real-world, knowledge-intensive domain. Grounded in over 35,000 real user-expert interactions and curated through a carefully designed multi-step pipeline, MIRAGE spans diverse crop health, pest diagnosis, and crop management scenarios. The benchmark includes more than 7,000 unique biological entities, covering plant species, pests, and diseases, making it one of the most taxonomically diverse benchmarks available for vision-language models, grounded in the real world. Unlike existing benchmarks that rely on well-specified user inputs and closed-set taxonomies, MIRAGE features underspecified, context-rich scenarios with open-world settings, requiring models to infer latent knowledge gaps, handle rare entities, and either proactively guide the interaction or respond. Project Page: https://mirage-benchmark.github.io
format Preprint
id arxiv_https___arxiv_org_abs_2506_20100
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle MIRAGE: A Benchmark for Multimodal Information-Seeking and Reasoning in Agricultural Expert-Guided Conversations
Dongre, Vardhan
Gui, Chi
Garg, Shubham
Nayyeri, Hooshang
Tur, Gokhan
Hakkani-Tür, Dilek
Adve, Vikram S.
Machine Learning
Artificial Intelligence
Computation and Language
Computer Vision and Pattern Recognition
We introduce MIRAGE, a new benchmark for multimodal expert-level reasoning and decision-making in consultative interaction settings. Designed for the agriculture domain, MIRAGE captures the full complexity of expert consultations by combining natural user queries, expert-authored responses, and image-based context, offering a high-fidelity benchmark for evaluating models on grounded reasoning, clarification strategies, and long-form generation in a real-world, knowledge-intensive domain. Grounded in over 35,000 real user-expert interactions and curated through a carefully designed multi-step pipeline, MIRAGE spans diverse crop health, pest diagnosis, and crop management scenarios. The benchmark includes more than 7,000 unique biological entities, covering plant species, pests, and diseases, making it one of the most taxonomically diverse benchmarks available for vision-language models, grounded in the real world. Unlike existing benchmarks that rely on well-specified user inputs and closed-set taxonomies, MIRAGE features underspecified, context-rich scenarios with open-world settings, requiring models to infer latent knowledge gaps, handle rare entities, and either proactively guide the interaction or respond. Project Page: https://mirage-benchmark.github.io
title MIRAGE: A Benchmark for Multimodal Information-Seeking and Reasoning in Agricultural Expert-Guided Conversations
topic Machine Learning
Artificial Intelligence
Computation and Language
Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2506.20100