Tolerance-based and Fuzzy-Rough Feature Selection.


Autoria(s): Jensen, Richard; Shen, Qiang
Contribuinte(s)

Department of Computer Science

Advanced Reasoning Group

Data(s)

21/01/2008

21/01/2008

2007

Resumo

R. Jensen and Q. Shen, 'Tolerance-based and Fuzzy-Rough Feature Selection,' Proceedings of the 16th International Conference on Fuzzy Systems (FUZZ-IEEE'07), pp. 877-882, 2007.

One of the main obstacles facing the application of computational intelligence technologies in pattern recognition (and indeed in many other tasks) is that of dataset dimensionality. To enable pattern classifiers to be effective, a dimensionality minimization step is usually carried out beforehand. Rough set theory has been successfully applied for this as it requires only the supplied data and no other information; most other methods require supplementary knowledge. However, the main limitation of traditional rough set-based selection in the literature is the restrictive requirement that all data is discrete; it is not possible to consider real-valued or noisy data. This has been tackled previously via the use of discretization methods, but may result in information loss. This paper investigates two approaches based on rough set extensions, namely fuzzy-rough and tolerance rough sets, that address these problems and retain dataset semantics. The methods are compared experimentally and utilized for the task of forensic glass fragment identification.

Non peer reviewed

Formato

6

Identificador

Jensen , R & Shen , Q 2007 , ' Tolerance-based and Fuzzy-Rough Feature Selection. ' pp. 877-882 .

PURE: 74171

PURE UUID: 2e54bfab-3c85-4572-a7ab-d1f0ebac6abb

dspace: 2160/441

http://hdl.handle.net/2160/441

Idioma(s)

eng

Tipo

/dk/atira/pure/researchoutput/researchoutputtypes/contributiontoconference/paper

Relação

Direitos