IDN
Label noise toolset
Provides tools and data for studying instance-dependent label noise in deep neural networks, with a focus on combating noisy labels
AAAI 2021: Beyond Class-Conditional Assumption: A Primary Attempt to Combat Instance-Dependent Label Noise
35 stars
1 watching
8 forks
Language: Python
last commit: over 3 years ago deep-neural-networksinstance-dependent-noiselabel-noisenoisy-datanoisy-labelsrobust-learning
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