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PAC: Probably Approximately Correct

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Planted: 2020-01-16 by L Ma;

References:
  1. Shalev-Shwartz, S., & Ben-David, S. (2013). Understanding machine learning: From theory to algorithms. Understanding Machine Learning: From Theory to Algorithms.
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L Ma (2020). 'PAC: Probably Approximately Correct', Datumorphism, 01 April. Available at: https://datumorphism.leima.is/cards/machine-learning/learning-theories/pac/.

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