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Bayesian Methods for Machine Learing Course Project Skoltech 2018

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ConcreteDropout

Bayesian Methods for Machine Learing Course Project Skoltech 2018

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Description

We replicate the results of the recent paper Concrete Droput by Gal et al. and extend the results to new experiments.

Basic:

  • Understand and discuss model implementation
  • Reproduce experiments on: MNIST, Computer vision task and Reinforcement Learning

Extensions:

  • Try different RL environments
  • Evaluate the algorithm performance for NLP tasks
  • Implement the Concrete Droupout for Recurrent Layers

Authors

Results

Computer Vision - Segmentation Task


UCI - Regression Task


Wine dataset

Boston dataset

MNIST - Classification Task


Usage

git clone https://github.com/Alfo5123/ConcreteDropout.git

References

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License

MIT License

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Bayesian Methods for Machine Learing Course Project Skoltech 2018

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