2015
DOI: 10.1021/co5001458
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Statistical Analysis and Interpolation of Compositional Data in Materials Science

Abstract: Compositional data are ubiquitous in chemistry and materials science: analysis of elements in multicomponent systems, combinatorial problems, etc., lead to data that are non-negative and sum to a constant (for example, atomic concentrations). The constant sum constraint restricts the sampling space to a simplex instead of the usual Euclidean space. Since statistical measures such as mean and standard deviation are defined for the Euclidean space, traditional correlation studies, multivariate analysis, and hypo… Show more

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Cited by 20 publications
(15 citation statements)
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“…Since DOC reflects an underlying network 32 , we compared the structure of correlation- and precision-matrices of the microbiota from HIV-infected individuals to the microbiota from the control group. Since the data had a compositional architecture, we first transformed it using Aitchison´s centered log-ratio (clr) procedure 33 37 . We then calculated the Pearson’s correlation matrices using heat maps (Fig.…”
Section: Resultsmentioning
confidence: 99%
“…Since DOC reflects an underlying network 32 , we compared the structure of correlation- and precision-matrices of the microbiota from HIV-infected individuals to the microbiota from the control group. Since the data had a compositional architecture, we first transformed it using Aitchison´s centered log-ratio (clr) procedure 33 37 . We then calculated the Pearson’s correlation matrices using heat maps (Fig.…”
Section: Resultsmentioning
confidence: 99%
“…This study presented a concise framework for robust CODA, mainly focusing on regression problems, in the presence of outlying observations, which often occur in real-world data sets. Although there is an increasing application of CODA methods in diverse fields of the natural [ 32 , 39 , 41 , 42 , 43 ] and social sciences [ 17 , 44 , 45 , 46 , 47 ], classical statistical inference methods have been primarily used so far. Robust CODA methods have been used almost exclusively in geochemical applications [ 48 , 49 , 50 ].…”
Section: Discussionmentioning
confidence: 99%
“…7: (a) hypothesis-driven design and synthesis of a "library" sample with variations in the materials parameter(s) of interest [118][119][120][121] (typically composition); (b) rapid, local, and automated interrogation of the library for the properties of interest; 53,[122][123][124][125][126][127][128] and (c) analysis, mining, display, and curation of the resultant data. [129][130][131] Each step presents current challenges that must be overcome before HTE methodologies can be widely deployed.…”
Section: Challenges For Htementioning
confidence: 99%