2018
DOI: 10.31235/osf.io/a3gtd
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Visualizing demographic evolution using geographically inconsistent census data

Abstract: Video Abstract: https://youtu.be/bKeV08Os0uA Census measurements provide reliable demographic data going back centuries. However, their analysis is often hampered by the lack of geographical consistency across time. We propose a visual analytics system that enables the exploration of geographically inconsistent data. Our method also includes incremental developments in the representation, clustering, and visual exploration of census data, allowin… Show more

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Cited by 1 publication
(2 citation statements)
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“…The characterization of clusters for time-space analysis is not simple (Vickers & Rees, 2007). The literature reveals that there are several approaches to characterize clusters, among which are the analysis of the most relevant indicators (Dias & Silver, 2018), the global index of indicators (Singleton et al, 2016), the relative strength of indicators (McLachlan & Norman, 2020), the centroid values of the clusters (Vickers, 2010) and the averages of the cluster indicators (Li & Xie, 2018).…”
Section: Cluster Characterization and Analysis In Time-spacementioning
confidence: 99%
See 1 more Smart Citation
“…The characterization of clusters for time-space analysis is not simple (Vickers & Rees, 2007). The literature reveals that there are several approaches to characterize clusters, among which are the analysis of the most relevant indicators (Dias & Silver, 2018), the global index of indicators (Singleton et al, 2016), the relative strength of indicators (McLachlan & Norman, 2020), the centroid values of the clusters (Vickers, 2010) and the averages of the cluster indicators (Li & Xie, 2018).…”
Section: Cluster Characterization and Analysis In Time-spacementioning
confidence: 99%
“…The lack of consensus on which approach to use suggests that cluster characterization should be based on a combination of these approaches. First, it is possible to identify the most relevant indicators to characterize each cluster through a box plot (Dias & Silver, 2018). Second, the relative strength of the indicator obtained by the standardized indicators' signal allows for recognizing whether the indicator is positive or negative in the cluster's characterization (McLachlan & Norman, 2020).…”
Section: Cluster Characterization and Analysis In Time-spacementioning
confidence: 99%