
Total Least Squares Method 1.0 File ID: 81616 


 Total Least Squares Method 1.0 License: Shareware File Size: 10.0 KB Downloads: 26
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Total Least Squares Method 1.0 Description 

Description: We present a Matlab toolbox which can solve basic problems related to the Total Least Squares (TLS) method in the modeling. By illustrative examples we show how to use the TLS method for solution of:  linear regression model  nonlinear regression model  fitting data in 3D space  identification of dynamical system
This toolbox requires another two functions, which are already published in Matlab Central File Exchange. Those functions will be installed to computer via supporting install package 'requireFEXpackage' included in TLS package. For more details see ReadMe.txt file.
Authors: Ivo Petras, Dagmar Bednarova, Tomas Skovranek, and Igor Podlubny (Technical University of Kosice, Slovakia)
Detailed description of the functions, examples and demos can be found at the link:
Ivo Petras and Dagmar Bednarova: Total Least Squares Approach to Modeling: A Matlab Toolbox, Acta Montanistica Slovaca, vol. 15, no. 2, 2010, pp. 158170. (http://actamont.tuke.sk/pdf/2010/n2/8petras.pdf)
License: Shareware Related: authors, readmetxt, petras, dagmar, Tomas, bednarova, Details, included, Computer, installed O/S:BSD, Linux, Solaris, Mac OS X File Size: 10.0 KB Downloads: 26


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