Skill-CMIB: Multimodal Agent Skill for Consistent Action via Conditional Multimodal Information Bottleneck
Zihan Huang,Junda Wu,Tong Yu,Qianqi Yan,Rohan Surana,Uttaran Bhattacharya,Lina Yao,Xin Eric Wang,Julian McAuley

TL;DR
This paper introduces CMIB, a method to create stable, reusable multimodal skills for agents by separating interpretable verbal skills from perceptual information, improving consistency without costly inference.
Contribution
The paper proposes Conditional Multimodal Information Bottleneck (CMIB), a novel approach for disentangling and compressing multimodal skill representations in agents.
Findings
CMIB improves agent execution stability.
It enables independent control over textual and perceptual compression.
The method reduces cross-modal redundancy effectively.
Abstract
While LLM-based agents excel at planning and executing long action sequences, their execution often remains inconsistent across trials, limiting reliability. Consolidating agent consistency requires distilling trial-error trajectories into reusable skills that preserve task-relevant invariants while discarding trajectory-specific noise. However, in multimodal settings, the key challenge is not only that useful invariants are distributed across vision and language information, but that different modalities support different kinds of reusable skill content: while some skills are verbalizable and interpretable, others reside in perceptual evidence beyond text. Text-only skills may lose perceptual cues, whereas storing text and perception naively introduces redundancy and noise. Existing inference-time methods, such as self-consistency, improve reliability through costly multi-sample…
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