Non-linear least squares
Definition
Non-linear least squares (NLLS) is a generalized problem type related to the problem of linear least squares. It occurs frequently in the context of optimization problems.
Consider the following setup: we have a model function Failed to parse (syntax error): {\displaystyle y = f(x,\\vec{\beta})} (here, may be a scalar or vector variable, but must be scalar; for simplicity, we will notationally treat as a scalar). The vector is an unknown parameter vector with coordinates . We are given a set of data points with .
For , we define the residual as follows:
Our goal is to find a choice of the parameter vector for which the sum is minimized:
In other words, we want to minimize the sum:
How linear least squares is a special case
The case of linear least squares is the case where the function is linear as a function of the vector for each value of . It need not be linear in .