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Main Authors: Mim, Sazia Tabasum, Morris, Jack, Dhakal, Manish, Xiu, Yanming, Gorlatova, Maria, Ding, Yi
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.06424
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author Mim, Sazia Tabasum
Morris, Jack
Dhakal, Manish
Xiu, Yanming
Gorlatova, Maria
Ding, Yi
author_facet Mim, Sazia Tabasum
Morris, Jack
Dhakal, Manish
Xiu, Yanming
Gorlatova, Maria
Ding, Yi
contents To explore a more scalable path for adding multimodal capabilities to existing LLMs, this paper addresses a fundamental question: Can a unimodal LLM, relying solely on text, reason about its own informational needs and provide effective feedback to optimize a multimodal model? To answer this, we propose a method that enables a language agent to give feedback to a vision-language model (VLM) to adapt text generation to the agent's preferences. Our results from different experiments affirm this hypothesis, showing that LLM preference feedback significantly enhances VLM descriptions. Using our proposed method, we find that the VLM can generate multimodal scene descriptions to help the LLM better understand multimodal context, leading to improvements of maximum 13% in absolute accuracy compared to the baseline multimodal approach. Furthermore, a human study validated our AI-driven feedback, showing a 64.6% preference alignment rate between the LLM's choices and human judgments. Extensive experiments provide insights on how and why the method works and its limitations.
format Preprint
id arxiv_https___arxiv_org_abs_2601_06424
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Can a Unimodal Language Agent Provide Preferences to Tune a Multimodal Vision-Language Model?
Mim, Sazia Tabasum
Morris, Jack
Dhakal, Manish
Xiu, Yanming
Gorlatova, Maria
Ding, Yi
Computation and Language
To explore a more scalable path for adding multimodal capabilities to existing LLMs, this paper addresses a fundamental question: Can a unimodal LLM, relying solely on text, reason about its own informational needs and provide effective feedback to optimize a multimodal model? To answer this, we propose a method that enables a language agent to give feedback to a vision-language model (VLM) to adapt text generation to the agent's preferences. Our results from different experiments affirm this hypothesis, showing that LLM preference feedback significantly enhances VLM descriptions. Using our proposed method, we find that the VLM can generate multimodal scene descriptions to help the LLM better understand multimodal context, leading to improvements of maximum 13% in absolute accuracy compared to the baseline multimodal approach. Furthermore, a human study validated our AI-driven feedback, showing a 64.6% preference alignment rate between the LLM's choices and human judgments. Extensive experiments provide insights on how and why the method works and its limitations.
title Can a Unimodal Language Agent Provide Preferences to Tune a Multimodal Vision-Language Model?
topic Computation and Language
url https://arxiv.org/abs/2601.06424