BOOK-CHAPTER

Multiple Random Variables—Linear Regression Maximum Likelihood Estimation

Frédéric Cohen Tenoudji

Year: 2016 Modern acoustics and signal processing Pages: 445-465   Publisher: Springer Nature
Keywords:
Mathematics Tikhonov regularization Central limit theorem Applied mathematics Linear regression Simple (philosophy) Design matrix Limit (mathematics) Degrees of freedom (physics and chemistry) Statistics Random variable Regression analysis Mathematical analysis

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Topics

Advanced Statistical Methods and Models
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical and numerical algorithms
Physical Sciences →  Mathematics →  Applied Mathematics

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