Correntropy–based density–preserving data sampling as an alternative to standard cross–validation.

Budka, M. and Gabrys, B., 2010. Correntropy–based density–preserving data sampling as an alternative to standard cross–validation. In: World Congress on Computational Intelligence (WCCI 2010), Barcelona, Spain. (In Press)

Warning

There is a more recent version of this eprint available. Click here to view it.

Full text not available from this repository.

Abstract

Estimation of the generalization ability of a predictive model is an important issue, as it indicates expected performance on previously unseen data and is also used for model selection. Currently used generalization error estimation procedures like cross–validation (CV) or bootstrap are stochastic and thus require multiple repetitions in order to produce reliable results, which can be computationally expensive if not prohibitive. The correntropy–based Density Preserving Sampling procedure (DPS) proposed in this paper eliminates the need for repeating the error estimation procedure by dividing the available data into subsets, which are guaranteed to be representative of the input dataset. This allows to produce low variance error estimates with accuracy comparable to 10 times repeated cross–validation at a fraction of computations required by CV, which has been investigated using a set of publicly available benchmark datasets and standard classifiers.

Item Type:Conference or Workshop Item (Paper)
Subjects:Generalities > Computer Science and Informatics > Artificial Intelligence
Generalities > Computer Science and Informatics
Group:School of Design, Engineering & Computing > Smart Technology Research Centre
ID Code:13203
Deposited By:Professor Bogdan Gabrys
Deposited On:05 Mar 2010 22:12
Last Modified:07 Mar 2013 15:22

Available Versions of this Item

Repository Staff Only -
BU Staff Only -
Help Guide - Editing Your Items in BURO