Benchmark and application of unsupervised classification approaches for univariate data

Journal Article (2021)
Author(s)

Maria El Abbassi (Kavli institute of nanoscience Delft, TU Delft - Applied Sciences)

Jan Overbeck (Swiss Federal Laboratories for Materials Science and Technology (Empa), University of Basel)

Oliver Braun (University of Basel, Swiss Federal Laboratories for Materials Science and Technology (Empa))

Michel Calame (University of Basel, Swiss Federal Laboratories for Materials Science and Technology (Empa))

Herre S.J. van der Zant (TU Delft - Applied Sciences, Kavli institute of nanoscience Delft)

Mickael L. Perrin (Swiss Federal Laboratories for Materials Science and Technology (Empa))

Research Group
QN/van der Zant Lab
DOI related publication
https://doi.org/10.1038/s42005-021-00549-9 Final published version
More Info
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Publication Year
2021
Language
English
Research Group
QN/van der Zant Lab
Issue number
1
Volume number
4
Article number
50
Downloads counter
310
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Abstract

Unsupervised machine learning, and in particular data clustering, is a powerful approach for the analysis of datasets and identification of characteristic features occurring throughout a dataset. It is gaining popularity across scientific disciplines and is particularly useful for applications without a priori knowledge of the data structure. Here, we introduce an approach for unsupervised data classification of any dataset consisting of a series of univariate measurements. It is therefore ideally suited for a wide range of measurement types. We apply it to the field of nanoelectronics and spectroscopy to identify meaningful structures in data sets. We also provide guidelines for the estimation of the optimum number of clusters. In addition, we have performed an extensive benchmark of novel and existing machine learning approaches and observe significant performance differences. Careful selection of the feature space construction method and clustering algorithms for a specific measurement type can therefore greatly improve classification accuracies.