Independent component analysis (ICA) is a signal processing method used to separate a multivariate signal into its individual components. It assumes that the components are statistically independent and that only one of them is Gaussian. ICA is often applied to solve problems like isolating a person's speech in a noisy environment, known as the "cocktail party problem."
Stanford University
Winter 2023
This comprehensive course covers various machine learning principles from supervised, unsupervised to reinforcement learning. Topics also touch on neural networks, support vector machines, bias-variance tradeoffs, and many real-world applications. It requires a background in computer science, probability, multivariable calculus, and linear algebra.
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