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Training Confidence-Calibrated Classifier for Detecting Out-of-Distribution Samples / ICLR 2018

License: MIT License

Shell 1.57% Python 98.43%

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confident_classifier's Issues

Cannot reproduce figures from paper

I tried to use the source code from this repository and variations, but could not reproduce the figures seen in the paper. Could you please help me with directions to reproduce Figure 3.b and Figure 3.d as shown below?

image

What is the command to be used with the given source code to generate the samples seen above?

Pytorch Version

Can you please state the version of Pytorch used in the code?

Thanks,
Supritam

Is this project based on Python 3.7?

It seems this project is based on Python 3.x
It's misleading on README -- “It is tested under Ubuntu Linux 16.04.1 and Python 2.7 environment”

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