Publikationstyp: Konferenz: Paper
Art der Begutachtung: Peer review (Publikation)
Titel: Can we ignore the compositional nature of compositional data by using deep learning aproaches?
Autor/-in: Templ, Matthias
et. al: No
Tagungsband: Book of Short Papers SIS 2021
Herausgeber/-in des übergeordneten Werkes: Perna, Cirna
Salvati, Nicola
Schirripa Spagnolo, Francesco
Seite(n): 243
Seiten bis: 248
Angaben zur Konferenz: Surface Inspection Summit Europe, Aachen, Germany, 9-10 November 2021
Erscheinungsdatum: 2021
Verlag / Hrsg. Institution: Pearson
Verlag / Hrsg. Institution: London
ISBN: 9788891927361
Sprache: Englisch
Schlagwörter: Deep learning; Compositional data analysis
Fachgebiet (DDC): 006: Spezielle Computerverfahren
Zusammenfassung: Care must be taken not to simply apply multivariate data analysis methods to compositional data. For example, one can show that correlations are biased to be negative, and almost all statistical methods result in biased estimates when applied to compositional data. One way out is to analyze data methods from compositional data analysis, i.e. by carrying out a log-ratio analysis. This contribution has its focus on settings where only the prediction and classification error is important rather than an interpretation of results. In this setting it is well-known that classification and prediction errors are smaller with a log-ratio approach using traditional machine learning methods. However, is this also true when training a neural network who may learn the inner relationships between parts of a whole also without representing the data in log-ratios? This contribution give an indication on this matter using one real data set from chemical measurements on beers.
URI: https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf
https://digitalcollection.zhaw.ch/handle/11475/24598
Volltext Version: Publizierte Version
Lizenz (gemäss Verlagsvertrag): Lizenz gemäss Verlagsvertrag
Departement: School of Engineering
Organisationseinheit: Institut für Datenanalyse und Prozessdesign (IDP)
Enthalten in den Sammlungen:Publikationen School of Engineering

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Templ, M. (2021). Can we ignore the compositional nature of compositional data by using deep learning aproaches? [Conference paper]. In C. Perna, N. Salvati, & F. Schirripa Spagnolo (Eds.), Book of Short Papers SIS 2021 (pp. 243–248). Pearson. https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf
Templ, M. (2021) ‘Can we ignore the compositional nature of compositional data by using deep learning aproaches?’, in C. Perna, N. Salvati, and F. Schirripa Spagnolo (eds) Book of Short Papers SIS 2021. London: Pearson, pp. 243–248. Available at: https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf.
M. Templ, “Can we ignore the compositional nature of compositional data by using deep learning aproaches?,” in Book of Short Papers SIS 2021, 2021, pp. 243–248. [Online]. Available: https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf
TEMPL, Matthias, 2021. Can we ignore the compositional nature of compositional data by using deep learning aproaches? In: Cirna PERNA, Nicola SALVATI und Francesco SCHIRRIPA SPAGNOLO (Hrsg.), Book of Short Papers SIS 2021 [online]. Conference paper. London: Pearson. 2021. S. 243–248. ISBN 9788891927361. Verfügbar unter: https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf
Templ, Matthias. 2021. “Can We Ignore the Compositional Nature of Compositional Data by Using Deep Learning Aproaches?” Conference paper. In Book of Short Papers SIS 2021, edited by Cirna Perna, Nicola Salvati, and Francesco Schirripa Spagnolo, 243–48. London: Pearson. https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf.
Templ, Matthias. “Can We Ignore the Compositional Nature of Compositional Data by Using Deep Learning Aproaches?” Book of Short Papers SIS 2021, edited by Cirna Perna et al., Pearson, 2021, pp. 243–48, https://it.pearson.com/content/dam/region-core/italy/pearson-italy/pdf/Docenti/Universit%C3%A0/pearson-sis-book-2021-parte-1.pdf.


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