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arghosh avatar arghosh commented on July 16, 2024
  1. "Tabular data": Do you mean mix of categorical features and real-valued features? This repo works with image data with real-valued features. However, you can use standard datasets, tabular datasets by changing the input (e.g., one-hot encoding, embedding layers) and the layers (fully connected instead of convolutional).
  2. These layers are specifically for image dataset. You can change the neural model that works with your data, and it should work.
  3. You can predict based on the weighting network score. Use validation set to get the score threshold (for clean vs noisy) and the best epoch (to be used for returning the IDs). You need to change some codes such as add weighting module in test step also.

from noisy_label_pretrain.

nazaretl avatar nazaretl commented on July 16, 2024

many thanks!

from noisy_label_pretrain.

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