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The prototype of fitting polynomials to equally-spaced data—in which the equalspacing is theoretically precise and the data is accurate to many decimal places—arises in the analysis of band spectra. A hard look at such examples forces us to reexamine our thinking on such diverse issues as: How to formulate such problems, the use of robust/resistant techniques in polynomial regression, which coordinates to use and why, the basic properties of linear least squares, choices in stopping a fit, and improved ways to describe our answers. Our results and attitudes apply rather directly to other situations where we are fitting a sum of functions of a single variable. When two or more different variables, subject to error, blunder, or omission, underlie the carriers to be considered, regression/fitting problems are likely to need not only the considerations presented here, but others as well. To a varying extent, the same will be true of nonlinear fitting/regression problems.
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Albert E. Beaton
Boston College
John W. Tukey
AT&T (United States)
Technometrics
Princeton University
Educational Testing Service
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Beaton et al. (Wed,) studied this question.
synapsesocial.com/papers/6a0f306b14089a5783bdd24f — DOI: https://doi.org/10.1080/00401706.1974.10489171