Title of article :
Discrete neighborhood representations and modified stacked generalization methods for distributed regression
Author/Authors :
allende-cid, Hector pontifícia universidad - escuela de ingeniería informática, Chile , allende, Hector universidad técnica federico santa maría - departamento de informática, Chile , monge, Raul universidad técnica federico santa maría - departamento de informática, Chile , moraga, Claudio european centre for soft computing 33600,mieres asturias spain tu dortmund university, Germany
From page :
842
To page :
855
Abstract :
When distributed data sources have different contexts the problem of Distributed Regression becomes severe. It is the underlying law of probability that constitutes the context of a source. A new Distributed Regression System is presented,which makes use of a discrete representation of the probability density functions (pdfs). Neighborhoods of similar datasets are detected by comparing their approximated pdfs. This information supports an ensemble-based approach,and the improvement of a second level unit,as it is the case in stacked generalization. Two synthetic and six real data sets are used to compare the proposed method with other state-of-the-art models. The obtained results are positive for most datasets. © J.UCS
Keywords :
Context , aware regression , Distributed machine learning , Similarity representation
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Journal title :
Journal of J.UCS (Journal of Universal Computer Science)
Record number :
2715305
Link To Document :
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