PARCEL for Efficient Vision-Language Understanding

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PARCEL for Efficient Vision-Language Understanding
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AFBytes Brief

This arXiv paper proposes PARCEL for pool-anchored resampling to improve efficiency in vision-language understanding.

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No specific implications for American households, investors, or policy are presented in the paper.

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