Feature selection for measurement models

Author:

Mueller TobiasORCID,Segin AlexanderORCID,Weigand ChristophORCID,Schmitt Robert H.ORCID

Abstract

PurposeIn the determination of the measurement uncertainty, the GUM procedure requires the building of a measurement model that establishes a functional relationship between the measurand and all influencing quantities. Since the effort of modelling as well as quantifying the measurement uncertainties depend on the number of influencing quantities considered, the aim of this study is to determine relevant influencing quantities and to remove irrelevant ones from the dataset.Design/methodology/approachIn this work, it was investigated whether the effort of modelling for the determination of measurement uncertainty can be reduced by the use of feature selection (FS) methods. For this purpose, 9 different FS methods were tested on 16 artificial test datasets, whose properties (number of data points, number of features, complexity, features with low influence and redundant features) were varied via a design of experiments.FindingsBased on a success metric, the stability, universality and complexity of the method, two FS methods could be identified that reliably identify relevant and irrelevant influencing quantities for a measurement model.Originality/valueFor the first time, FS methods were applied to datasets with properties of classical measurement processes. The simulation-based results serve as a basis for further research in the field of FS for measurement models. The identified algorithms will be applied to real measurement processes in the future.

Publisher

Emerald

Subject

Strategy and Management,General Business, Management and Accounting

Reference31 articles.

1. An analysis of four missing data treatment methods for supervised learning;Applied Artificial Intelligence,2003

2. From predictive methods to missing data imputation: an optimization approach;Journal of Machine Learning Research,2018

3. A review of feature selection methods on synthetic data;Knowledge and Information Systems,2013

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