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Main Authors: Liu, Yuqing, Wang, Yu, Sun, Lichao, Yu, Philip S.
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.08670
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author Liu, Yuqing
Wang, Yu
Sun, Lichao
Yu, Philip S.
author_facet Liu, Yuqing
Wang, Yu
Sun, Lichao
Yu, Philip S.
contents The development of large vision-language models (LVLMs) offers the potential to address challenges faced by traditional multimodal recommendations thanks to their proficient understanding of static images and textual dynamics. However, the application of LVLMs in this field is still limited due to the following complexities: First, LVLMs lack user preference knowledge as they are trained from vast general datasets. Second, LVLMs suffer setbacks in addressing multiple image dynamics in scenarios involving discrete, noisy, and redundant image sequences. To overcome these issues, we propose the novel reasoning scheme named Rec-GPT4V: Visual-Summary Thought (VST) of leveraging large vision-language models for multimodal recommendation. We utilize user history as in-context user preferences to address the first challenge. Next, we prompt LVLMs to generate item image summaries and utilize image comprehension in natural language space combined with item titles to query the user preferences over candidate items. We conduct comprehensive experiments across four datasets with three LVLMs: GPT4-V, LLaVa-7b, and LLaVa-13b. The numerical results indicate the efficacy of VST.
format Preprint
id arxiv_https___arxiv_org_abs_2402_08670
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Rec-GPT4V: Multimodal Recommendation with Large Vision-Language Models
Liu, Yuqing
Wang, Yu
Sun, Lichao
Yu, Philip S.
Artificial Intelligence
The development of large vision-language models (LVLMs) offers the potential to address challenges faced by traditional multimodal recommendations thanks to their proficient understanding of static images and textual dynamics. However, the application of LVLMs in this field is still limited due to the following complexities: First, LVLMs lack user preference knowledge as they are trained from vast general datasets. Second, LVLMs suffer setbacks in addressing multiple image dynamics in scenarios involving discrete, noisy, and redundant image sequences. To overcome these issues, we propose the novel reasoning scheme named Rec-GPT4V: Visual-Summary Thought (VST) of leveraging large vision-language models for multimodal recommendation. We utilize user history as in-context user preferences to address the first challenge. Next, we prompt LVLMs to generate item image summaries and utilize image comprehension in natural language space combined with item titles to query the user preferences over candidate items. We conduct comprehensive experiments across four datasets with three LVLMs: GPT4-V, LLaVa-7b, and LLaVa-13b. The numerical results indicate the efficacy of VST.
title Rec-GPT4V: Multimodal Recommendation with Large Vision-Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2402.08670