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An Autocorrelation Term Method for Curve Fitting
Author(s) -
Louis M. Houston
Publication year - 2013
Publication title -
isrn applied mathematics
Language(s) - English
Resource type - Journals
eISSN - 2090-5572
pISSN - 2090-5564
DOI - 10.1155/2013/346230
Subject(s) - autocorrelation , mathematics , polynomial , term (time) , quadratic function , least squares function approximation , curve fitting , polynomial regression , function (biology) , polynomial and rational function modeling , autocorrelation technique , quadratic equation , autocorrelation matrix , statistics , mathematical analysis , linear regression , geometry , physics , quantum mechanics , estimator , evolutionary biology , biology
The least-squares method is the most popular method for fitting a polynomial curve to data. It is based on minimizing the total squared error between a polynomial model and the data. In this paper we develop a different approach that exploits the autocorrelation function. In particular, we use the nonzero lag autocorrelation terms to produce a system of quadratic equations that can be solved together with a linear equation derived from summing the data. There is a maximum of solutions when the polynomial is of degree . For the linear case, there are generally two solutions. Each solution is consistent with a total error of zero. Either visual examination or measurement of the total squared error is required to determine which solution fits the data. A comparison between the comparable autocorrelation term solution and linear least squares shows negligible difference.

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