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GNU Octave Beginner's Guide

You're reading from   GNU Octave Beginner's Guide Become a proficient Octave user by learning this high-level scientific numerical tool from the ground up

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Product type Paperback
Published in Jun 2011
Publisher Packt
ISBN-13 9781849513326
Length 280 pages
Edition 1st Edition
Languages
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Author (1):
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Jesper Schmidt Hansen Jesper Schmidt Hansen
Author Profile Icon Jesper Schmidt Hansen
Jesper Schmidt Hansen
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Toc

Table of Contents (15) Chapters Close

GNU Octave
Credits
About the Author
About the Reviewers
1. www.PacktPub.com
2. Preface
1. Introducing GNU Octave FREE CHAPTER 2. Interacting with Octave: Variables and Operators 3. Working with Octave: Functions and Plotting 4. Rationalizing: Octave Scripts 5. Extensions: Write Your Own Octave Functions 6. Making Your Own Package: A Poisson Equation Solver 7. More Examples: Data Analysis 8. Need for Speed: Optimization and Dynamically Linked Functions Pop quiz - Answers

Time for action - using leasqr


  1. 1. Let us generate data with normally distributed random noise:

octave:23> x=linspace(0, 5); y = 1./(1 + 1.2*x.^1.8) + \ > randn(1,100)*0.03;
  1. 2. Then we specify the model using the following function definition:

octave:24> function y = ffun(x, p)
> y = 1./(1+p(1)*x.^p(2));
> endfunction
  1. 3. Give an initial guess of the parameters α and β:

octave:25> p = [0.5 0.0];
  1. 4. We can now fit the model to data:

octave:26> [yfit pfit cvg iter] = leasqr(x, y, p, "ffun");
  • Easy!

  1. 5. We can check whether the fitting algorithm converged or not, and how many iterations it used:

octave:27> cvg, iter
cvg = 1
iter = 6
  1. 6. The values of the fitted parameters are of course important:

octave:28> pfit
p =
1.1962
1.7955
  • This is very close to the values that we would expect from Command 24. The fit is plotted together with the data in the figure below.

What just happened?

In Command 23, we instantiated the free variable x, and set it to be a vector with element values...

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