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    Visualising Bivariate Patterns using Association Measures


    Chinwan, Amit (2024) Visualising Bivariate Patterns using Association Measures. PhD thesis, National University of Ireland Maynooth.

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    Abstract

    Correlation matrix displays are valuable tools for investigating bivariate associations, typically showcasing Pearson’s correlation—a linear association measure—for pairs of numerical variables. However, these displays have limitations in capturing complex non-linear associations and associations involving categorical variables. This thesis addresses these limitations by introducing alternative association measures that accommodate pairs of numerical, ordinal, and categorical variables, as well as mixed pairs where one variable is categorical and the other is numerical. For numerical variables, we incorporate modern non-linear association measures like distance correlation and the maximal information coefficient (MIC). Notably, our displays present multiple association measures for each variable pair, revealing patterns beyond linear associations or associations dependent on levels of a grouping variable. To address space issues with high-dimensional datasets, we also offer a linear layout display, showing one or more association measures for each variable pair. Furthermore, we employ seriation for matrix displays and importance sorting for linear displays to emphasize highly-associated variables or pairs with significant differences, making them easier to discern and interpret. These improvements enhance the effectiveness and efficiency of data analysis, allowing for a more comprehensive understanding of associations in various datasets.
    Item Type: Thesis (PhD)
    Keywords: Visualising; Bivariate Patterns; Association Measures;
    Academic Unit: Faculty of Science and Engineering > Mathematics and Statistics
    Item ID: 18317
    Depositing User: IR eTheses
    Date Deposited: 26 Mar 2024 13:53
    URI: https://mu.eprints-hosting.org/id/eprint/18317
    Use Licence: This item is available under a Creative Commons Attribution Non Commercial Share Alike Licence (CC BY-NC-SA). Details of this licence are available here

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