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I want to perform hyperparameter evolution for my custom training data. Since it is a very time consuming process, can I use much smaller size images for hyperparameter evolution. And then use those evolved hyperparameters to train a network with much larger image sizes.
Additional context
I want to perform hyperparameter evolution mainly to solve the problem of very high class imbalance in the custom training data, as it has been suggested here - #1115 (comment)
The text was updated successfully, but these errors were encountered:
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@NazmulTakbir correlation between your base scenario and your hyperparameter evolution scenario is up to you. As the two diverge, the correlation in improvements between the two will also naturally diverge.
❔Question
I want to perform hyperparameter evolution for my custom training data. Since it is a very time consuming process, can I use much smaller size images for hyperparameter evolution. And then use those evolved hyperparameters to train a network with much larger image sizes.
Additional context
I want to perform hyperparameter evolution mainly to solve the problem of very high class imbalance in the custom training data, as it has been suggested here - #1115 (comment)
The text was updated successfully, but these errors were encountered: