Norm
•What is the appropriate and differentiable norm when given data points with outliers? (median is not differentiable)
•How do you define outliers? What is the probabilistic meaning of outliers?
첫 번째 질문의 답이 p-norm with high p였던 거 같아서 p-norm, 2-norm, frobenius norm을 찾아보다가 svd, eigenvalue decomposition을 찾아보다 왜 p-norm with high p인 지 아직도 이해를 못함.
일단 induced norm 인가 schatten norm인 지 모르겠음.
https://chrischoy.github.io/research/matrix-norms/#:~:text=In%20another%20word%2C%20matrix%20p,for%20a%20unit%20vector%20e.&text=Largest%20singular%20value%20of%20a,not%20necessarily%20the%20largest%20norm.
Interesting Properties of Matrix Norms and Singular Values
Matrix norms
chrischoy.github.io
What is the difference between the Frobenius norm and the 2-norm of a matrix?
Given a matrix, is the Frobenius norm of that matrix always equal to the 2-norm of it, or are there certain matrices where these two norm methods would produce different results? If they are ident...
math.stackexchange.com
일단 svd를 철저히 이해하면 어떻게든 되려나
https://math.stackexchange.com/questions/320220/intuitively-what-is-the-difference-between-eigendecomposition-and-singular-valu
Intuitively, what is the difference between Eigendecomposition and Singular Value Decomposition?
I'm trying to intuitively understand the difference between SVD and eigendecomposition. From my understanding, eigendecomposition seeks to describe a linear transformation as a sequence of three ba...
math.stackexchange.com

SVD in Machine Learning: Underdetermined Least Squares
https://towardsdatascience.com/underdetermined-least-squares-feea1ac16a9
Steve Brunton
https://www.youtube.com/watch?v=PjeOmOz9jSY
PCA and rigid transformation
https://towardsdatascience.com/principal-component-analysis-pca-8133b02f11bd
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