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Implement for parameter finding  #241

@kunxianhuang

Description

@kunxianhuang

An application estimates the parameters of the defined functions on some numerical data. We use maximum likelihood method as an estimation, and finding maximum/minimum is an optimization problem.

First, we have to decide the architecture of this application.
c++ in the bottom
Python API

For the coding side, I have little experiences about programming architecture.

Some objects need to complete as below

  • Defined functions:
    • Gaussian function
    • Exponential function
    • Polynomial
    • Chebyshev polynomial
    • Poisson function
    • Crystal ball function: The Crystal ball function is a Gaussian with a tail on the low side (or both side).
    • User defined function: it should be the same with scipy's user defined function
    • Stack up of above functions (or Call "ADD")
  • First derivative vector of defined functions
  • Hessian matrix of defined functions
  • Constrains (parameters bound): for example $0<\mu<20.0$ and $0.5<\sigma<3.0$ for Gaussian function
  • Log-likelihood value
  • Minimization methods
    • Iterator
    • Stop
    • Linear programming for constrained minimization
  • Plots

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