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Detail
BukuTransductive Learning for Spatial Data Classification
Bibliografi
Author: Ceci, Michelangelo ; Appice, Annalisa ; Malerba, Donato
Bahasa: (EN )    
Tahun Terbit: 2010    
Jenis: Article
Fulltext: Transductive Learning for Spatial Data Classificat.pdf (263.58KB; 0 download)
Abstract
Learning classifiers of spatial data presents several issues, such as the heterogeneity of spatial objects, the implicit definition of spatial relationships among objects, the spatial autocorrelation and the abundance of unlabelled data which potentially convey a large amount of information. The first three issues are due to the inherent structure of spatial units of analysis, which can be easily accommodated if a (multi-)relational data mining approach is considered. The fourth issue demands for the adoption of a transductive setting, which aims to make predictions for a given set of unlabelled data. Transduction is also motivated by the contiguity of the concept of positive autocorrelation, which typically affect spatial phenomena, with the smoothness assumption which characterize the transductive setting. In this work, we investigate a relational approach to spatial
classification in a transductive setting. Computational solutions to the main diffi-culties met in this approach are presented. In particular, a relational upgrade of the na¨ive Bayes classifier is proposed as discriminative model, an iterative algorithm is designed for the transductive classification of unlabelled data, and a distance
measure between relational descriptions of spatial objects is defined in order to determine the k-nearest neighbors of each example in the dataset. Computational solutions have been tested on two real-world spatial datasets. The transformation of spatial data into a multi-relational representation and experimental results are reported and commented.
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