1 video in "Markov Matrices / Fourier Series"
Markov Matrices, Steady State, Fourier Series, and Projections
Markov Matrices, Steady State, Fourier Series, and Projections
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Part of video series Linear Algebra Course acquired through MIT OpenCourseWare
Gilbert Strang, 18.06 Linear Algebra, Spring 2005. (Massachusetts Institute of Technology: MIT OpenCourseWare), http://ocw.mit.edu (Accessed November 23, 2008). License: Creative Commons BY-NC-SA.
More info at: http://ocw.mit.edu/terms
More info at: http://ocw.mit.edu/terms
Markov Matrices, Steady State, Fourier Series, and Projections -- Lecture 24a. A lesson all about applications of Eigenvalues and Eigenvectors.
- Fourier Series Java Applet - Java applet to play around to investigate the Fourier Series.
- Trig Series Java Applet - Java applet to play around to investigate trigonometric series, their sums, and how this relates to Fourier Series.
- Gibbs Phenomenon Java Applet - Java applet to play around with to investigate the Gibbs Phenomenon.
- Fourier Series Functions - Fourier Series of the function f(x), Remainder of Fourier series, Riemann's Theorem, Parseval's Theorem, Fourier Transforms, and other functions.
- Fourier Transforms - Laplace, Power Series, and Fourier Transforms
- Markov Chains - A list of several Markov Chain simulations.
- What are some applications of Eigenvalues?
- What is a Markov matrix?
- How do you use a Markov matrix?
- What are Fourier series?
In this video, we get to see some applications of Eigenvectors and Eigenvalues. They really contribute to some very interesting topics. Markov matrices and Fourier series are really useful in other disciplines that use probability and randomness. Also, they are used in random walk analysis.


