Title
Soft Computing Applied to Distributed Regression with Context-Heterogeneity.
Abstract
In this paper we present a distributed regression framework to model distributed data with different contexts. Different context is defined as the change of the underlying laws of probability in the distributed sources. Most state of the art methods do not take into account the different context and assume that the data comes from the same statistical distribution. We propose an aggregation scheme for models that are in the same neighborhood in terms of similarity by means of a Soft Computing approach, by using several methodologies like fuzzy membership functions, clustering algorithms, feedfoward neural network, stacked generalization and ensemble approaches. We conduct experiments with synthetic and real data sets to validate our proposal. Our proposed algorithm outperforms other models that follow a traditional approach.
Year
Venue
Keywords
2016
JOURNAL OF MULTIPLE-VALUED LOGIC AND SOFT COMPUTING
Distributed learning,soft computing approaches,regression from distributed sources
Field
DocType
Volume
Regression,Computer science,Artificial intelligence,Soft computing,Machine learning
Journal
26
Issue
ISSN
Citations 
3-5
1542-3980
0
PageRank 
References 
Authors
0.34
0
3
Name
Order
Citations
PageRank
Héctor Allende-cid12212.60
Raúl Monge282.48
Héctor Allende314831.69