Principal component analysis of d-prime values from sensory discrimination tests using binary paired comparisons
•Considering d′ values obtained from sensory discrimination testing.•Analyzing d′ values from binary paired comparisons by Principal Component Analysis.•Comparing multiple products across several sensory attributes.•Gaining information about individuals across multiple sensory attributes. When consi...
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Veröffentlicht in: | Food quality and preference 2020-04, Vol.81, p.103864, Article 103864 |
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Format: | Artikel |
Sprache: | eng |
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Zusammenfassung: | •Considering d′ values obtained from sensory discrimination testing.•Analyzing d′ values from binary paired comparisons by Principal Component Analysis.•Comparing multiple products across several sensory attributes.•Gaining information about individuals across multiple sensory attributes.
When considering sensory discrimination studies, multiple d-prime values are often obtained from several sensory attributes. In this paper, we introduce principal component analysis as a way of gaining information about d-prime values across sensory attributes. Specifically, we propose estimating d-prime values using a Thurstonian mixed model for binary paired comparison data and then using these estimates in a principal component analysis. Binary paired comparisons are a sensitive way to test products with only subtle differences. When analyzing data with a Thurstonian mixed model, product-specific as well as assessor-specific d-prime values are obtained. Principal component analysis of these values results in information about products and assessors across multiple sensory attributes illustrated by product and attribute maps. Furthermore, the analysis captures individual differences. Thus, by using d-prime values from a multi-attribute 2-AFC study in principal component analysis insights that are typically obtained considering quantitative descriptive analysis are obtained. |
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ISSN: | 0950-3293 1873-6343 |
DOI: | 10.1016/j.foodqual.2019.103864 |