MATH280

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Math for Data Science

Physics Mathematics Willamette College

Course Description

An introduction to the basic mathematical theory that underlies current data science methods. Students will gain an appreciation for the value of the mathematical theory as well as their limitations. Topics covered in the course will include: Linear modeling and matrix computation (e.g., matrix algebra and factorization, eigenvalues/eigenvectors, and projection/least-squares) Optimization (e.g., calculus concepts related to differentiation) Multivariate thinking (e.g., concepts and numerical computation of multivariate derivatives and integrals) Probabilistic thinking and modeling (e.g., counting principles, univariate and multivariate distributions, and independence)The connection between the mathematical theory and data science applications will be emphasized and the presentation of the theory will be driven by specific data science models and algorithms.

College/School

Willamette College

Locations

Salem

Offering Cycle, by Year

All Years

Offering Cycle, by Semester

Fall Semester

Credit Hours Min

4
No Requirements