2020
DOI: 10.1002/spe.2876
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Data dimensionality reduction techniques for Industry 4.0: Research results, challenges, and future research directions

Abstract: Summary From the last few years, we have witnessed the fourth generation industrial revolution (Industry 4.0), impact of which will be seen in the years to come in various disciplines such as healthcare, transportation, IoT, smart grid, autonomous vehicles, and image processing. These applications in Industry 4.0 may have data in the form of images, speech signals, videos having high dimensions containing multiple dimensions to represent data along different axis. So, the complexity of data processing increase… Show more

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Cited by 28 publications
(6 citation statements)
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“…Tableau and Qlik View are two visualization tools commonly utilized [25]. With the right visualization, it is possible to identify issues with experimental data that may affect how conventional analytic results are presented [26].…”
Section: Methodsmentioning
confidence: 99%
“…Tableau and Qlik View are two visualization tools commonly utilized [25]. With the right visualization, it is possible to identify issues with experimental data that may affect how conventional analytic results are presented [26].…”
Section: Methodsmentioning
confidence: 99%
“…Chhikara et al [11] proposed a taxonomy to show the different data dimensionality reduction techniques. The results gathered by the authors with feature extraction techniques show that the best algorithm may vary from data singularities.…”
Section: Related Workmentioning
confidence: 99%
“…The dimensionality reduction algorithms transform a high-dimensional data set into a representative lower-dimensional subset, as not all data features may be equally relevant for the problem at hand, greatly reducing computational complexity ( Xu et al., 2019 ). This technique is widely used for data preprocessing, by two different ways: i) feature selection, in which the input features are combined to obtain a new dataset with a smaller number of new variables that retain the original information based on the input components and projection, and ii) feature extraction, in which the most relevant features of the original dataset are kept by removing those features that contribute little or nothing to the output features ( Chhikara et al., 2020 ).…”
Section: Taxonomy Based On the Tasks To Be Solvedmentioning
confidence: 99%