Overview
Mathematical Matrix Methods lie at the root of most methods of machine learning and data analysis of tabular data.
Discover the Singular Value Decomposition with this Matrix Methods course offered by Coursera in partnership with University of Minnesota that plays a fundamental role in dimensionality reduction, Principal Component Analysis, and noise reduction.
Optional examples using Python are used to illustrate the concepts and allow the learner to experiment with the algorithms.
Skills you'll gain
- Mathematics
- Linear Algebra
- Problem Solving
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Programme Structure
Courses include:
- Matrices as Mathematical Objects
- Matrix Multiplication and other Operations
- Systems of Linear Equations
- Linear Least Squares
- Singular Value Decomposition
Key information
Duration
- Part-time
- 1 days
Start dates & application deadlines
Language
Delivered
Campus Location
- Mountain View, United States
Disciplines
Mathematics Machine Learning View 40 other Short Courses in Mathematics in United StatesWhat students do after studying
Academic requirements
We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.
English requirements
We are not aware of any English requirements for this programme.
Other requirements
General requirements
- Intermediate level
- Some related experience required
Tuition Fees
-
International Applies to you
Applies to youNon-residentsFree - Out-of-StateFree
-
Domestic
Applies to youIn-StateFree
Additional Details
- This short course is included with Coursera Plus subscription
Funding
Coursera provides financial aid to learners who cannot afford the fee. Apply for it by clicking on the Financial Aid link beneath the "Enroll" button on the left. You’ll be prompted to complete an application and will be notified if you are approved.