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digit-classification

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This project uses autoencoders to denoise MNIST images, aiming to improve handwritten digit recognition by refining classifier training data

  • Updated Jun 6, 2024
  • Jupyter Notebook

The MNIST dataset was used to train a neural network having a single linear layer with SoftMax employed in the criterion function (Cross Entropy Loss) to classify handwritten digits in classes 0 to 9. The model yielded a 92% accuracy on the MNIST test dataset in 10 training epochs.

  • Updated Jul 14, 2024
  • Jupyter Notebook

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