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arxiv:2407.19795

VolDoGer: LLM-assisted Datasets for Domain Generalization in Vision-Language Tasks

Published on Jul 29
· Submitted by c-juhwan on Jul 30
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Abstract

Domain generalizability is a crucial aspect of a deep learning model since it determines the capability of the model to perform well on data from unseen domains. However, research on the domain generalizability of deep learning models for vision-language tasks remains limited, primarily because of the lack of required datasets. To address these challenges, we propose VolDoGer: Vision-Language Dataset for Domain Generalization, a dedicated dataset designed for domain generalization that addresses three vision-language tasks: image captioning, visual question answering, and visual entailment. We constructed VolDoGer by extending LLM-based data annotation techniques to vision-language tasks, thereby alleviating the burden of recruiting human annotators. We evaluated the domain generalizability of various models, ranging from fine-tuned models to a recent multimodal large language model, through VolDoGer.

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A paper about LLM-based data annotation, especially in multimodal setup.

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Hi @c-juhwan congrats on your work!

Are you planning on sharing the VolDoGer dataset on the hub? See here for a guide: https://huggingface.co/docs/datasets/loading.

It can then also be linked to this paper so that people are able to discover it: https://huggingface.co/docs/hub/en/paper-pages#linking-a-paper-to-a-model-dataset-or-space

Let me know if you need any help!

Cheers,
Niels
Open-source @ HF

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