Cross-validation is a model validation technique used to assess how well a statistical analysis will generalize to an independent data set. It involves partitioning a sample of data into complementary subsets, performing the analysis on one subset and validating it on the other, then combining the results over multiple rounds to give an estimate of the model's predictive performance.
Princeton University
Spring 2019
This introductory course focuses on machine learning, probabilistic reasoning, and decision-making in uncertain environments. A blend of theory and practice, the course aims to answer how systems can learn from experience and manage real-world uncertainties.
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+ 21 more conceptsStanford University
Autumn 2022-2023
Stanford's CS 221 course teaches foundational principles and practical implementation of AI systems. It covers machine learning, game playing, constraint satisfaction, graphical models, and logic. A rigorous course requiring solid foundational skills in programming, math, and probability.
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