Author
Listed:
- Janka Lengyel
- Stéphane Roux
- Seraphim Alvanides
Abstract
The aim of this article and associate Main Map is to highlight the social and economic diversity of the Ruhr area in Germany through the use of multivariate analysis and visualization. To this end we combine two different datasets. Demographic parameters stemming from the 2011 German census and socioeconomic indicators obtained from the microdialog of the German post service. Due to the different spatial resolution of the two datasets, we aggregated the data at the neighbourhood (Stadtteil) level. The multivariate analysis was carried out at this scale using Self-Organizing Maps (SOM), an artificial neuron network, which uses an unsupervised learning mechanism for projecting multidimensional data in a low (in our case two) dimensional space. First we used a visualization technique to better comprehend the relationship between our observations via reducing the dimensionality or complexity of our input data. At the same time, we established a global statistical relationships between the indicators. Finally, using these results we built clusters for revealing the distribution of socioeconomic profiles over the whole region. Our results demonstrate that structural inequalities resulting from the processes of industrialization/deindustrialization in the region are still widely persistent and result in characteristic patterns along the three main rivers, the Lippe, Emscher and the Ruhr. In close connection with this, three types of societal segregation patterns become clearly evident in the Ruhr area, namely nationality, age and economic power.
Suggested Citation
Janka Lengyel & Stéphane Roux & Seraphim Alvanides, 2022.
"Multivariate analysis of socioeconomic profiles in the Ruhr area, Germany,"
Journal of Maps, Taylor & Francis Journals, vol. 18(3), pages 576-584, December.
Handle:
RePEc:taf:tjomxx:v:18:y:2022:i:3:p:576-584
DOI: 10.1080/17445647.2022.2098839
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