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Yonsei University
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Initializing prompts in flatter regions of the loss landscape dramatically improves calibration and performance in test-time prompt tuning for vision-language models.
VLMs learn faster and better when you dynamically weight the prefixes based on input token importance, rather than treating all tokens equally.