Foundations of Data Science – Lecture 5 – Length Squared Sampling in Matrices
Modern data often consists of feature vectors with a large number of features. High-dimensional geometry and Linear Algebra (Singular Value Decomposition) are two of the crucial areas which form the mathematical foundations of Data Science. This min-course covers these areas, providing intuition and rigorous proofs. Connections between Geometry and Probability will be brought out. Text Book: Foundations of Data Science.
- Date:
- Speakers:
- Ravi Kannan
- Affiliation:
- Microsoft
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Ravi Kannan
Principal Researcher
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