Together alone

a group-based polarization measurement

Journal Article (2021)
Author(s)

T. Tang (TU Delft - Transport and Logistics)

Amineh Ghorbani (TU Delft - Energy and Industry)

Flaminio Squazzoni (University of Milan)

Caspar Chorus (TU Delft - Transport and Logistics)

Research Group
Transport and Logistics
Copyright
© 2021 T. Tang, Amineh Ghorbani, Flaminio Squazzoni, C.G. Chorus
DOI related publication
https://doi.org/10.1007/s11135-021-01271-y
More Info
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Publication Year
2021
Language
English
Copyright
© 2021 T. Tang, Amineh Ghorbani, Flaminio Squazzoni, C.G. Chorus
Research Group
Transport and Logistics
Issue number
5
Volume number
56
Pages (from-to)
3587-3619
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Abstract

The growing polarization of our societies and economies has been extensively studied in various disciplines and is subject to public controversy. Yet, measuring polarization is hampered by the discrepancy between how polarization is conceptualized and measured. For instance, the notion of group, especially groups that are identified based on similarities between individuals, is key to conceptualizing polarization but is usually neglected when measuring polarization. To address the issue, this paper presents a new polarization measurement based on a grouping method called “Equal Size Binary Grouping” (ESBG) for both uni- and multi-dimensional discrete data, which satisfies a range of desired properties. Inspired by techniques of clustering, ESBG divides the population into two groups of equal sizes based on similarities between individuals, while overcoming certain theoretical and practical problems afflicting other grouping methods, such as discontinuity and contradiction of reasoning. Our new polarization measurement and the grouping method are illustrated by applying them to a two-dimensional synthetic data set. By means of a so-called “squeezing-and-moving” framework, we show that our measurement is closely related to bipolarization and could help stimulate further empirical research.

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