Title of article :
Relevance regression learning with support vector machines
Original Research Article
Author/Authors :
Bruno Apolloni، نويسنده , , Dario Malchiodi، نويسنده , , Lorenzo Valerio، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
We propose a variant of two SVM regression algorithms expressly tailored in order to exploit additional information summarizing the relevance of each data item, as a measure of its relative importance w.r.t. the remaining examples. These variants, enclosing the original formulations when all data items have the same relevance, are preliminary tested on synthetic and real-world data sets. The obtained results outperform standard SVM approaches to regression if evaluated in light of the above mentioned additional information about data quality.
Keywords :
Relevance-based learning , Uncertainty management , Regression , SVM
Journal title :
Nonlinear Analysis Theory, Methods & Applications
Journal title :
Nonlinear Analysis Theory, Methods & Applications