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Sharpness & residual ratio range #13

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gitfabianmeyer opened this issue Jan 24, 2023 · 1 comment
Open

Sharpness & residual ratio range #13

gitfabianmeyer opened this issue Jan 24, 2023 · 1 comment

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@gitfabianmeyer
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Hi,
I can't find any information on how you set the alpha and beta hyperparam ranges for each dataset. Why don't you use the same ranges for all sets, and how did you determine these ranges?

@ZrrSkywalker
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Hi Thanks for your interest. The alpha and beta are both set to 1 as the tuning baseline. The alpha weighs the importance between CLIP-pre-trained and few-shot knowledge. If the few-shot domain has a large gap to pre-trained data (general images, just like ImageNet), alpha is better to be larger than 1.

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