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This paper describes a method to identify key crystallographic parameters that can serve as strong classifiers of crystal chemistries and hence define new structure maps. The selection of this pair of key parameters from a large set of potential classifiers is accomplished through a linear data-dimensionality reduction method. A multivariate data set of known AI4AII6(BO4)6X2 apatites is used as the basis for the study where each AI4AII6(BO4)6X2 compound is represented as a 29-dimensional vector, where the vector components are discrete scalar descriptors of electronic and crystal structure attributes. A new structure map, defined using the two distortion angles αAII (rotation angle of AIIAIIAII triangular units) and ψAIz = 0AI—O1 (angle the AI—O1 bond makes with the c axis when z = 0 for the AI site), is shown to classify apatite crystal chemistries based on site occupancy on the A, B and X sites. The classification is accomplished using a K-means clustering analysis.

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