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Machine learning / Artificial intelligence / Computational neuroscience / Learning / Applied mathematics / Artificial neural networks / Cybernetics / Formal sciences / Deep learning / Convolutional neural network / Multi-task learning / Training /  test /  and validation sets
Date: 2018-05-23 20:17:13
Machine learning
Artificial intelligence
Computational neuroscience
Learning
Applied mathematics
Artificial neural networks
Cybernetics
Formal sciences
Deep learning
Convolutional neural network
Multi-task learning
Training
test
and validation sets

Universal Language Model Fine-tuning for Text Classification Jeremy Howard∗ fast.ai University of San Francisco

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