Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results

Abstract Background Structured datasets, such as time-series or survey-based tables, often lack intuitive visualizations that reveal rankings, interrelationships, or leadership dominance among subjects. Traditional parametric statistics fail to capture such relational patterns, especially in ordinal...

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Main Authors: Tsair-Wei Chien, Willy Chou
Format: Article
Language:English
Published: BMC 2025-08-01
Series:BMC Medical Research Methodology
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Online Access:https://doi.org/10.1186/s12874-025-02643-w
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author Tsair-Wei Chien
Willy Chou
author_facet Tsair-Wei Chien
Willy Chou
author_sort Tsair-Wei Chien
collection DOAJ
description Abstract Background Structured datasets, such as time-series or survey-based tables, often lack intuitive visualizations that reveal rankings, interrelationships, or leadership dominance among subjects. Traditional parametric statistics fail to capture such relational patterns, especially in ordinal or categorical data. This study proposes a novel nonparametric framework to visualize leadership styles through network diagrams. Methods We introduced a three-tier “basket model”—cells (small baskets), columns (medium baskets), and the full table (large basket)—to transform rectangular data into weighted co-word matrices. Using publicly available 2023 HCAHPS survey data from 52 U.S. states and territories, we applied a follower-leader clustering algorithm (FLCA) implemented in R. Leadership was classified into three types: absolute, relative, and no advantage. Network visualizations were generated using Sankey-style diagrams to highlight dominance and inter-cluster relationships. Results The weighted approach successfully identified Nebraska as the top leader in the upper 20 states and District of Columbia as a cluster leader among the bottom 20 after data inversion. The network diagrams effectively differentiated between absolute dominance (single strong cluster), relative dominance (sub-cluster formations), and no dominance (multiple independent clusters). Compared to traditional bar charts and choropleths, the method provided deeper insights into inter-state performance dynamics. Conclusion This study offers an innovative method for visualizing rankings and leadership patterns in rectangular datasets. By combining a multi-level basket model with co-word network analysis and open-source R scripts, users can quickly generate interpretable, cluster-based dominance diagrams. The approach is scalable, customizable, and applicable to a variety of fields, including healthcare, education, and public policy. Future work may extend this model to dynamic visual tools and broader interdisciplinary applications.
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spelling doaj-art-00e3bbff41004e84a69cc6cbd3c9da9e2025-08-24T11:35:53ZengBMCBMC Medical Research Methodology1471-22882025-08-0125111410.1186/s12874-025-02643-wVisualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey resultsTsair-Wei Chien0Willy Chou1Department of Medical Research, Chi-Mei Medical CenterDepartment of Physical Medicine and Rehabilitation, Liouying Chi-Mei HospitalAbstract Background Structured datasets, such as time-series or survey-based tables, often lack intuitive visualizations that reveal rankings, interrelationships, or leadership dominance among subjects. Traditional parametric statistics fail to capture such relational patterns, especially in ordinal or categorical data. This study proposes a novel nonparametric framework to visualize leadership styles through network diagrams. Methods We introduced a three-tier “basket model”—cells (small baskets), columns (medium baskets), and the full table (large basket)—to transform rectangular data into weighted co-word matrices. Using publicly available 2023 HCAHPS survey data from 52 U.S. states and territories, we applied a follower-leader clustering algorithm (FLCA) implemented in R. Leadership was classified into three types: absolute, relative, and no advantage. Network visualizations were generated using Sankey-style diagrams to highlight dominance and inter-cluster relationships. Results The weighted approach successfully identified Nebraska as the top leader in the upper 20 states and District of Columbia as a cluster leader among the bottom 20 after data inversion. The network diagrams effectively differentiated between absolute dominance (single strong cluster), relative dominance (sub-cluster formations), and no dominance (multiple independent clusters). Compared to traditional bar charts and choropleths, the method provided deeper insights into inter-state performance dynamics. Conclusion This study offers an innovative method for visualizing rankings and leadership patterns in rectangular datasets. By combining a multi-level basket model with co-word network analysis and open-source R scripts, users can quickly generate interpretable, cluster-based dominance diagrams. The approach is scalable, customizable, and applicable to a variety of fields, including healthcare, education, and public policy. Future work may extend this model to dynamic visual tools and broader interdisciplinary applications.https://doi.org/10.1186/s12874-025-02643-wLeadership structure classificationRectangular data visualizationCo-word network analysisBasket modelHCAHPS survey
spellingShingle Tsair-Wei Chien
Willy Chou
Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results
BMC Medical Research Methodology
Leadership structure classification
Rectangular data visualization
Co-word network analysis
Basket model
HCAHPS survey
title Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results
title_full Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results
title_fullStr Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results
title_full_unstemmed Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results
title_short Visualizing leadership classifications in rectangular data using a basket model and co-word network analysis: a case study of U.S. HCAHPS survey results
title_sort visualizing leadership classifications in rectangular data using a basket model and co word network analysis a case study of u s hcahps survey results
topic Leadership structure classification
Rectangular data visualization
Co-word network analysis
Basket model
HCAHPS survey
url https://doi.org/10.1186/s12874-025-02643-w
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