Mathematics for Machine Learning - Linear Algebra M4ML - Linear Algebra - 3.4 Determinants and inverses
M4ML - Linear Algebra - 3.4 Determinants and inverses Transcript and Lesson Notes
Welcome to the “Mathematics for Machine Learning: Linear Algebra” course, offered by Imperial College London. Week 3, Video 4 - Determinants and inverses This video is part of an online specialisation in Mathematics for
Quick Summary
Welcome to the “Mathematics for Machine Learning: Linear Algebra” course, offered by Imperial College London. Week 3, Video 4 - Determinants and inverses This video is part of an online specialisation in Mathematics for
Key Takeaways
- Review the core idea: Welcome to the “Mathematics for Machine Learning: Linear Algebra” course, offered by Imperial College London. Week 3, Video 4 - Determinants and inverses This video is part of an online specialisation in Mathematics for
- Understand how online master fits into M4ML - Linear Algebra - 3.4 Determinants and inverses.
- Understand how eigenvectors fits into M4ML - Linear Algebra - 3.4 Determinants and inverses.
- Understand how math for machine learning fits into M4ML - Linear Algebra - 3.4 Determinants and inverses.
- Understand how eigenmatrices fits into M4ML - Linear Algebra - 3.4 Determinants and inverses.
Key Concepts
Full Transcript
Welcome to the “Mathematics for Machine Learning: Linear Algebra” course, offered by Imperial College London. Week 3, Video 4 - Determinants and inverses This video is part of an online specialisation in Mathematics for Machine Learning (m4ml) hosted by Coursera. For more information on the course and to access the full experience, please visit: https://www.coursera.org/specializations/mathematics-machine-learning Full Playlist - https://www.youtube.com/playlist?list=PLiiljHvN6z1_o1ztXTKWPrShrMrBLo5P3 Your course instructors are - Dr David Dye (@DavidDye9, https://twitter.com/DavidDye9) - Dr Sam Cooper (@camsooper, https://twitter.com/camsooper) If you have any questions about the course, please contact the instructors via Twitter. This course offers an introduction to the linear algebra required for common machine learning techniques. We start by looking at some simultaneous equations problems and showing how these can be expressed using vectors and matrices. We then move on to exploring vector spaces and see how these can be reformulated by changing basis. Next, we explore some methods for manipulating matrices and see how this is done using code, before moving on to some special cases shown using interactive animations. In the final module, we bring all the concepts together to recreate Google’s famous PageRank algorithm, which uses eigenvectors to rank search result by their connectivity. This course was designed to help you quickly build an intuitive understanding of calculus, as well as the language necessary to look concepts up yourselves when you get stuck; it is not intended cover all the details. We hope you enjoy it and that it gives you the confidence to dive into one of the many other wonderful machine learning courses available online!
Lesson FAQs
What is M4ML - Linear Algebra - 3.4 Determinants and inverses about?
Welcome to the “Mathematics for Machine Learning: Linear Algebra” course, offered by Imperial College London. Week 3, Video 4 - Determinants and inverses This video is part of an online specialisation in Mathematics for
What key concepts are covered in this lesson?
The lesson covers online master, eigenvectors, math for machine learning, eigenmatrices, eigenbasis.
What should I learn before M4ML - Linear Algebra - 3.4 Determinants and inverses?
Review the previous lessons in Mathematics for Machine Learning - Linear Algebra, then use the transcript and key concepts on this page to fill any gaps.
How can I practice after this lesson?
Practice by applying the main concepts: online master, eigenvectors, math for machine learning, eigenmatrices.
Does this lesson include a transcript?
Yes. The full transcript is visible on this page in indexable HTML sections.
Is this lesson free?
Yes. CourseHive lessons and courses are available to learn online for free.
