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Deep Active Learning

Python implementations of the following active learning algorithms:

  • Random Sampling
  • Least Confidence [1]
  • Margin Sampling [1]
  • Entropy Sampling [1]
  • Uncertainty Sampling with Dropout Estimation [2]
  • Bayesian Active Learning Disagreement [2]
  • K-Means Sampling [3]
  • K-Centers Greedy [3]
  • Core-Set [3]
  • Adversarial - Basic Iterative Method
  • Adversarial - DeepFool [4]

Prerequisites

  • numpy 1.14.3
  • scipy 1.1.0
  • pytorch 0.4.0
  • torchvision 0.2.1
  • scikit-learn 0.19.1
  • ipdb 0.11

Usage

$ python run.py

Reference

[1] A New Active Labeling Method for Deep Learning, IJCNN, 2014

[2] Deep Bayesian Active Learning with Image Data, ICML, 2017

[3] Active Learning for Convolutional Neural Networks: A Core-Set Approach, ICLR, 2018

[4] Adversarial Active Learning for Deep Networks: a Margin Based Approach, arXiv, 2018

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