Lecture26

Lecture 26 #

  1. Solving least-square linear regression problem
  2. General idea of basis vector in general linear regression problem
  3. Types of basis vector (polynomial, Fourier, etc.)
  4. Deriving $Ax = b$ problem from least square method for general linear regression curve-fitting
  5. Linear regression with multiple input variables
  6. Nonlinear regression introduction

Links #

  1. Lecture notes