Redirigiendo al acceso original de articulo en 24 segundos...
Inicio  /  Urban Science  /  Vol: 2 Par: 3 (2018)  /  Artículo
ARTÍCULO
TITULO

Determining Factors for Slum Growth with Predictive Data Mining Methods

John Friesen    
Lea Rausch    
Peter F. Pelz and Johannes Fürnkranz    

Resumen

Currently, more than half of the world?s population lives in cities. Out of these more than four billion people, almost one quarter live in slums or informal settlements. In order to improve living conditions and provide possible solutions for the major problems in slums (e.g., insufficient infrastructure), it is important to understand the current situation of this form of settlement and its development. There are many different models that attempt to simulate the development of slums. In this paper, we present data mining models that correlate information about the temporal development of slums with other economic, ecologic, and demographic factors in order to identify dependencies. Different learning algorithms, such as decision rules and decision trees, are used to learn descriptive models for slum development from data, and the results are evaluated with commonly used attribute evaluation methods known from data mining. The results confirm various previously made statements about slum development in a quantitative way, such as the fact that slum development is very strongly linked to the demographic development of a country. Applying the introduced classification models to the most recent data for different regions, it can be shown that the slum development in Africa is expected to be above average.

 Artículos similares

       
 
Polixeni Iliopoulou, Vassilios Krassanakis, Loukas-Moysis Misthos and Christina Theodoridi    
Short-term house rentals constitute a growing component of tourist accommodation in several countries and the determination of factors affecting rents is an important consideration in relevant studies. Short-term rentals have shown increasing trends in t... ver más

 
Nair Emmanuela da Silveira Pereira, Susana Beatriz Vinzón, Marcos Nicolás Gallo and Mariela Gabioux    
On the southeastern coast of Brazil, the bays of Ilha Grande and Sepetiba are linked by the Ilha Grande Channel, where remarkably strong currents have been consistently observed. Tidal forces cannot explain the strength of these currents. Previous resear... ver más
Revista: Hydrology

 
Jingting Li, Ming-Chih Chiu, Xiaowei Lin, Chan Liu, Zhen Tian, Qinghua Cai and Vincent H. Resh    
The species-area relationship (SAR) is a well-established, globally recognized ecological pattern, and research on SAR has expanded to include the phylogenetic diversity-area relationship (PDAR). However, this research has generally been limited to terre... ver más
Revista: Water

 
Gergely Ámon, Katalin Bene, Richard Ray, Zoltán Gribovszki and Péter Kalicz    
More frequent high-intensity, short-duration rainfall events increase the risk of flash floods on steeply sloped watersheds. Where measured data are unavailable, numerical models emerge as valuable tools for predicting flash floods. Recent applications o... ver más
Revista: Water

 
Omar Mohammed Horani, Ali Khatibi, Anas Ratib AL-Soud, Jacquline Tham and Ahmad Samed Al-Adwan    
The adoption of business analytics (BA) has become increasingly important for organizations seeking to gain a competitive edge in today?s data-driven business landscape. Hence, understanding the key factors influencing the adoption of BA at the organizat... ver más