Matrix decompositions | Functional analysis | Dimension reduction

Modes of variation

In statistics, modes of variation are a continuously indexed set of vectors or functions that are centered at a mean and are used to depict the variation in a population or sample. Typically, variation patterns in the data can be decomposed in descending order of eigenvalues with the directions represented by the corresponding eigenvectors or eigenfunctions. Modes of variation provide a visualization of this decomposition and an efficient description of variation around the mean. Both in principal component analysis (PCA) and in functional principal component analysis (FPCA), modes of variation play an important role in visualizing and describing the variation in the data contributed by each eigencomponent. In real-world applications, the eigencomponents and associated modes of variation aid to interpret complex data, especially in exploratory data analysis (EDA). (Wikipedia).

Modes of variation
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Introduction to Direct Variation, Inverse Variation, and Joint Variation

Please Subscribe here, thank you!!! https://goo.gl/JQ8Nys Introduction to Direct Variation, Inverse Variation, and Joint Variation

From playlist 3.7 Modeling Using Variation

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C28 Variation of parameters Part 1

We have already seen variation of parameters in action, but here we expand the method for use in second-order linear DE's, even with non-constant coefficients.

From playlist Differential Equations

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C29 Variation of parameters Part 2

I continue with an explanation of the method of variation of parameters.

From playlist Differential Equations

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Direct Linear Variation (1 of 2: Introduction)

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From playlist Further Ratios and Rates

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C33 Example problem using variation of parameters

Another example problem using the method of variation of parameters on second-order, linear, ordinary DE's.

From playlist Differential Equations

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Measures of Variation

This video is about the Measures of Variation

From playlist Statistical Measures

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From playlist Data-driven Physical Simulations (DDPS) Seminar Series

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C34 Expanding this method to higher order linear differential equations

I this video I expand the method of the variation of parameters to higher-order (higher than two), linear ODE's.

From playlist Differential Equations

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Dynamic Eigen Decomposition I: Parameter Variation in System Dynamics

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From playlist Summer of Math Exposition Youtube Videos

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C32 Example problem using variation of parameters

Another example problem using the method of variation of parameters.

From playlist Differential Equations

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Enhancing Computational Fluid Dynamics with Machine Learning

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From playlist Research Abstracts from Brunton Lab

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Statistics - How to calculate the coefficient of variation

In this video I'll quickly show you how to find the coefficient of variation. There are two formulas for samples and populations, but these are basically the same and involve dividing the standard deviation by the mean and lastly converting to a percent. The coefficient of variation is u

From playlist Statistics

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From playlist Summer Course 2022: Introduction to Indian monsoon Variability, Predictability, and Teleconnections

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Large-scale air-sea Interactions and Climate variability (Lecture 12) by B N Goswami

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From playlist Summer Course 2022: Introduction to Indian monsoon Variability, Predictability, and Teleconnections

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From playlist Summer Course 2022: Introduction to Indian monsoon Variability, Predictability, and Teleconnections

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Pre-Calculus - Types of variation

In this video I'll introduce the basic types of variation like direct, inverse, and joint variation. Near the end I'll also talk about combined variation where we put these basic forms together. Remember to see how the variable are connected for a clue on the type of variation. For more

From playlist Pre-Calculus

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Functional principal component analysis | Interpolation | Square-integrable function | Eigenvalues and eigenvectors | Eigenfunction | Orthogonal matrix | Stochastic process | Hilbert–Schmidt operator | Exploratory data analysis | Eigendecomposition of a matrix | Failure rate | Orthonormality | Principal component analysis