Articles | Volume 20, issue 2
https://doi.org/10.5194/acp-20-1021-2020
https://doi.org/10.5194/acp-20-1021-2020
Research article
 | 
27 Jan 2020
Research article |  | 27 Jan 2020

Dimensionality-reduction techniques for complex mass spectrometric datasets: application to laboratory atmospheric organic oxidation experiments

Abigail R. Koss, Manjula R. Canagaratna, Alexander Zaytsev, Jordan E. Krechmer, Martin Breitenlechner, Kevin J. Nihill, Christopher Y. Lim, James C. Rowe, Joseph R. Roscioli, Frank N. Keutsch, and Jesse H. Kroll

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AR by A. Koss on behalf of the Authors (26 Nov 2019)  Author's response   Manuscript 
ED: Publish as is (01 Dec 2019) by Joel Thornton
AR by A. Koss on behalf of the Authors (02 Dec 2019)
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Short summary
Oxidation chemistry of organic compounds in the atmosphere produces a diverse spectrum of products. This diversity is difficult to represent in air quality and climate models, and in laboratory experiments it results in large and complex datasets. This work evaluates several methods to simplify the chemistry of oxidation systems in environmental chambers, including positive matrix factorization, hierarchical clustering analysis, and gamma kinetics parameterization.
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