Sciweavers

MCS
2005
Springer

Between Two Extremes: Examining Decompositions of the Ensemble Objective Function

13 years 9 months ago
Between Two Extremes: Examining Decompositions of the Ensemble Objective Function
We study how the error of an ensemble regression estimator can be decomposed into two components: one accounting for the individual errors and the other accounting for the correlations within the ensemble. This is the well known Ambiguity decomposition; we show an alternative way to decompose the error, and show how both decompositions have been exploited in a learning scheme. Using a scaling parameter in the decomposition we can blend the gradient (and therefore the learning process) smoothly between two extremes, from concentrating on individual accuracies and ignoring diversity, up to a full non-linear optimization of all parameters, treating the ensemble as a single learning unit. We demonstrate how this also applies to ensembles using a soft combination of posterior probability estimates, so can be utilised for classifier ensembles.
Gavin Brown, Jeremy L. Wyatt, Ping Sun
Added 28 Jun 2010
Updated 28 Jun 2010
Type Conference
Year 2005
Where MCS
Authors Gavin Brown, Jeremy L. Wyatt, Ping Sun
Comments (0)