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Unit cell refinement from powder diffraction data; the use of regression diagnostics

T. J. B. Holland and S. A. T. Redfern
Unit cell refinement from powder diffraction data; the use of regression diagnostics
Mineralogical Magazine (February 1997) 61 (1): 65-77

Abstract

We discuss the use of regression diagnostics combined with nonlinear least-squares to refine cell parameters from powder diffraction data, presenting a method which minimizes residuals in the experimentally-determined quantity (usually 2theta (sub hkl) or energy, E (sub hkl) ). Regression diagnostics, particularly deletion diagnostics, are invaluable in detection of outliers and influential data which could be deleterious to the regressed results. The usual practice of simple inspection of calculated residuals alone often fails to detect the seriously deleterious outliers in a dataset, because bare residuals provide no information on the leverage (sensitivity) of the datum concerned. The regression diagnostics which predict the change expected in each cell constant upon deletion of each observation (hkl reflection) are particularly valuable in assessing the sensitivity of the calculated results to individual reflections. A new computer program, implementing nonlinear regression methods and providing the diagnostic output, is described.


ISSN: 0026-461X
Serial Title: Mineralogical Magazine
Serial Volume: 61
Serial Issue: 1
Title: Unit cell refinement from powder diffraction data; the use of regression diagnostics
Affiliation: University of Cambridge, Department of Earth Sciences, Cambridge, United Kingdom
Pages: 65-77
Published: 199702
Text Language: English
Publisher: Mineralogical Society, London, United Kingdom
References: 12
Accession Number: 1997-040264
Categories: Mineralogy of silicates
Document Type: Serial
Bibliographic Level: Analytic
Country of Publication: United Kingdom
Secondary Affiliation: GeoRef, Copyright 2017, American Geosciences Institute.
Update Code: 199714
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