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How can I judge the training of classifier have been diverged? #80

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blakery-star opened this issue Oct 27, 2022 · 2 comments
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@blakery-star
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I've tried to train a classifier for a new dataset,how can I judge when to stop the training?

@ptoyip
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ptoyip commented May 4, 2023

@blakery-star Have you figure out the solution? And I also would like to ask what's your classifier train and val accuracy. Thanks in advance!

@AlexofNTU
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@ptoyip Hi, have you tried to train the classifier? The classifier is trained on noisy images, so I assume that it would have quite low top-1 and top-5 accuracies.

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