Clustering consumers based on product discrimination in check-all-that-apply (CATA) data

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Standard

Clustering consumers based on product discrimination in check-all-that-apply (CATA) data. / Castura, J. C.; Meyners, M.; Varela, P.; Næs, T.

I: Food Quality and Preference, Bind 99, 104564, 2022.

Publikation: Bidrag til tidsskriftTidsskriftartikelForskningfagfællebedømt

Harvard

Castura, JC, Meyners, M, Varela, P & Næs, T 2022, 'Clustering consumers based on product discrimination in check-all-that-apply (CATA) data', Food Quality and Preference, bind 99, 104564. https://doi.org/10.1016/j.foodqual.2022.104564

APA

Castura, J. C., Meyners, M., Varela, P., & Næs, T. (2022). Clustering consumers based on product discrimination in check-all-that-apply (CATA) data. Food Quality and Preference, 99, [104564]. https://doi.org/10.1016/j.foodqual.2022.104564

Vancouver

Castura JC, Meyners M, Varela P, Næs T. Clustering consumers based on product discrimination in check-all-that-apply (CATA) data. Food Quality and Preference. 2022;99. 104564. https://doi.org/10.1016/j.foodqual.2022.104564

Author

Castura, J. C. ; Meyners, M. ; Varela, P. ; Næs, T. / Clustering consumers based on product discrimination in check-all-that-apply (CATA) data. I: Food Quality and Preference. 2022 ; Bind 99.

Bibtex

@article{a3915e1b415a43d3b32db5ed64bac88d,
title = "Clustering consumers based on product discrimination in check-all-that-apply (CATA) data",
abstract = "Consumers can be clustered based on their product-related check-all-that-apply (CATA) responses. We identify two paradoxes that can occur if these clusters are derived from conventional similarity coefficients. The first paradox is that clustering similar consumers can nullify within-cluster sensory differentiation of products. The second paradox is that consumers who check many attributes yet disagree can be clustered together, whereas consumers who check fewer attributes without disagreement can be split into different clusters. After illustrating these paradoxes with toy data sets, we propose {"}b-cluster analysis{"}, in which consumers are clustered according to how they differentiate products. We define performance metrics to compare cluster analysis solutions. By design, b-cluster analysis is expected to give different results than CLUSCATA, since the objective of CLUSCATA is to cluster consumers who characterize products similarly, not according to how they differentiate products. We apply b-cluster analysis to the same toy data sets and show that the identified paradoxes do not occur. Then we apply both b-cluster analysis and CLUSCATA to a real consumer data set. We find that the b-cluster analysis solutions have better within-cluster sensory differentiation, better sensory discrimination, and less redundant clusters than CLUSCATA solutions. To investigate the sensitivity of b-cluster analysis to the initial (random) cluster membership allocations, we obtained 10,000 two-cluster solutions, each initialized with a different random partitioning of consumers. The best solution, which retains the most sensory differentiation, was observed in 21.4% of the runs. As a best practice, we recommend running b-cluster analysis several times and choosing the best solution. The proposed b-cluster analysis approach can be extended to other types of sensometric data and may have applications in other fields.",
keywords = "Cluster analysis, Unsupervised classification, Binary data, Sensory evaluation, Consumer testing, Agreement, TRAINED ASSESSORS, QUESTIONS, ASSOCIATION, ERROR, ORDER",
author = "Castura, {J. C.} and M. Meyners and P. Varela and T. N{\ae}s",
year = "2022",
doi = "10.1016/j.foodqual.2022.104564",
language = "English",
volume = "99",
journal = "Food Quality and Preference",
issn = "0950-3293",
publisher = "Pergamon Press",

}

RIS

TY - JOUR

T1 - Clustering consumers based on product discrimination in check-all-that-apply (CATA) data

AU - Castura, J. C.

AU - Meyners, M.

AU - Varela, P.

AU - Næs, T.

PY - 2022

Y1 - 2022

N2 - Consumers can be clustered based on their product-related check-all-that-apply (CATA) responses. We identify two paradoxes that can occur if these clusters are derived from conventional similarity coefficients. The first paradox is that clustering similar consumers can nullify within-cluster sensory differentiation of products. The second paradox is that consumers who check many attributes yet disagree can be clustered together, whereas consumers who check fewer attributes without disagreement can be split into different clusters. After illustrating these paradoxes with toy data sets, we propose "b-cluster analysis", in which consumers are clustered according to how they differentiate products. We define performance metrics to compare cluster analysis solutions. By design, b-cluster analysis is expected to give different results than CLUSCATA, since the objective of CLUSCATA is to cluster consumers who characterize products similarly, not according to how they differentiate products. We apply b-cluster analysis to the same toy data sets and show that the identified paradoxes do not occur. Then we apply both b-cluster analysis and CLUSCATA to a real consumer data set. We find that the b-cluster analysis solutions have better within-cluster sensory differentiation, better sensory discrimination, and less redundant clusters than CLUSCATA solutions. To investigate the sensitivity of b-cluster analysis to the initial (random) cluster membership allocations, we obtained 10,000 two-cluster solutions, each initialized with a different random partitioning of consumers. The best solution, which retains the most sensory differentiation, was observed in 21.4% of the runs. As a best practice, we recommend running b-cluster analysis several times and choosing the best solution. The proposed b-cluster analysis approach can be extended to other types of sensometric data and may have applications in other fields.

AB - Consumers can be clustered based on their product-related check-all-that-apply (CATA) responses. We identify two paradoxes that can occur if these clusters are derived from conventional similarity coefficients. The first paradox is that clustering similar consumers can nullify within-cluster sensory differentiation of products. The second paradox is that consumers who check many attributes yet disagree can be clustered together, whereas consumers who check fewer attributes without disagreement can be split into different clusters. After illustrating these paradoxes with toy data sets, we propose "b-cluster analysis", in which consumers are clustered according to how they differentiate products. We define performance metrics to compare cluster analysis solutions. By design, b-cluster analysis is expected to give different results than CLUSCATA, since the objective of CLUSCATA is to cluster consumers who characterize products similarly, not according to how they differentiate products. We apply b-cluster analysis to the same toy data sets and show that the identified paradoxes do not occur. Then we apply both b-cluster analysis and CLUSCATA to a real consumer data set. We find that the b-cluster analysis solutions have better within-cluster sensory differentiation, better sensory discrimination, and less redundant clusters than CLUSCATA solutions. To investigate the sensitivity of b-cluster analysis to the initial (random) cluster membership allocations, we obtained 10,000 two-cluster solutions, each initialized with a different random partitioning of consumers. The best solution, which retains the most sensory differentiation, was observed in 21.4% of the runs. As a best practice, we recommend running b-cluster analysis several times and choosing the best solution. The proposed b-cluster analysis approach can be extended to other types of sensometric data and may have applications in other fields.

KW - Cluster analysis

KW - Unsupervised classification

KW - Binary data

KW - Sensory evaluation

KW - Consumer testing

KW - Agreement

KW - TRAINED ASSESSORS

KW - QUESTIONS

KW - ASSOCIATION

KW - ERROR

KW - ORDER

U2 - 10.1016/j.foodqual.2022.104564

DO - 10.1016/j.foodqual.2022.104564

M3 - Journal article

VL - 99

JO - Food Quality and Preference

JF - Food Quality and Preference

SN - 0950-3293

M1 - 104564

ER -

ID: 312640102