Paper #1914
- Title:
- One citation, one vote! A new approach for analysing check-all-that-apply (CATA) data using L1-norm methods
- Authors:
- C. Chaya, J.C. Castura and Michael Greenacre
- Date:
- September 2025
- Abstract:
- A unified framework is provided for analysing check-all-that-apply (CATA) product data following the “one citation, one vote” principle. CATA data arise from studies where A assessors evaluate P products by describing samples by checking all of the T terms that apply. Giving every citation the same weight, regardless of the assessor, product, or term, leads to analyses based on the L1 norm where the median absolute deviation is the measure of dispersion. Five permutation tests are proposed to answer the following questions. Do any products differ? For which terms do products differ? Within each of the terms, which products differ? Which product pairs differ? On which terms does each product pair differ? Additionally, we show how products and terms can be clustered following the “one citation, one vote” principle and how principal component analysis using the L1-norm (L1-PCA) can be applied to visualize CATA results in few dimensions. Together, the permutation tests, clustering methods, and L1-PCA provide a unified approach that provides robust results.
- Keywords:
- check-all-that-apply (CATA), pick-any, permutation tests, median absolute deviation (MAD), L1 norm, L1-norm principal component analysis (L1-PCA)
- JEL codes:
- C19, C88
- Area of Research:
- Statistics, Econometrics and Quantitative Methods
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