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Machine learning / Training /  test /  and validation sets / Validity / Probability distribution / Artificial intelligence / Cognition / Cognitive science / Computational neuroscience
Date: 2018-08-06 06:17:49
Machine learning
Training
test
and validation sets
Validity
Probability distribution
Artificial intelligence
Cognition
Cognitive science
Computational neuroscience

Synthetic Datasets for Neural Program Synthesis Richard Shin 1 Neel Kant 1 2 Kavi Gupta 1 Christopher Bender 1 2 Brandon Trabucco 1 2 Rishabh Singh 3 Dawn SongIntroduction

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