Challenge: Existing evaluation settings for large multimodal models focus on coarse-grained evaluation without considering skill composition required by specific instructions.
Approach: They propose an evaluation protocol that assesses large multimodal models across multiple fine-grained skills for alignment with human values.
Outcome: The proposed evaluation protocol decomposes coarse-level scoring to fine-grained skill set-level score tailored to each instruction.

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Challenge: Existing benchmarks for multimodal reasoning in large multimodal models are underperforming on multimodal tasks.
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Challenge: Large Language Models (LLMs) have greatly enhanced dialogue systems, but evaluation of their capabilities remains a challenge.
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