Tesis
Spatial self-organization in Santiago: methods and applications.
Fecha
2021-08-02Autor
Sánchez Undurraga, Raimundo
Institución
Resumen
Assembling spatial units into meaningful clusters is a challenging task, as it must cope
with a consequential computational complexity while controlling for the modifiable
areal unit problem (MAUP), spatial autocorrelation and attribute multicollinearity.
Nevertheless, we sustain that these effects can reveal significant interactions among
diverse spatial phenomena, such as segregation and economic specialization, but most
methods treat this apparent disorder as noise.
In order to address this issue, we have developed a hierarchical regionalization
algorithm that is sensitive to scalar variations of multivariate spatial correlations,
recalculating PCA scores at all aggregation steps in order to account for differences in
the span of autocorrelation effects for diverse variables. In such a way, we intend to
provide a method that minimizes the information loss associated with both MAUP
zoning and scale effects, while providing results that allow studying the self organization of spatial patterns avoiding arbitrary zoning decisions. This algorithm
produces a hierarchical cartography, which has multiple applications, where two
particular cases were studied in Santiago de Chile.
With these settings, the scalar evolution of several social distress measures is compared
between empirical and 120 random datasets. Remarkably, adjusting several indicators
with real and simulated data allows for a clear definition of a stopping rule for spatial
hierarchical clustering. Indeed, increasing correlations with scale in random datasets are
spurious MAUP effects, so they can be discounted from real data results in order to
identify an optimal clustering level, as defined by the maximum of authentic spatial
self-organization. This allows to single out the most socially distressed areas in Greater
Santiago, thus providing relevant socio-spatial insights from their cartographic and
statistical analysis, which agrees to independent diagnostics
On the other hand, despite the abundance of works in hedonic mass appraisal, the
potential of implementing hierarchical structures to market segmentation has not been
fully explored. The purpose of this research is to fill this gap in the literature by
studying the impact of incorporating complex architectures to predictive models, such
as: econometrics models, artificial neural networks and hybrid models of combined
forecasts. Our results confirm that all models exceed their predictive capability when
applied in a hierarchical framework
In sum, a useful methodology is developed to systematically explore the black box of
spatial interdependence and multiscalar self-organizing phenomena, while linking these
questions to relevant real world issues.