Optimal Decision Rules in Logical Recognition Models


Autoria(s): Gupal, Anatol; Ryazanov, Vladimir
Data(s)

15/04/2010

15/04/2010

2009

Resumo

The task of smooth and stable decision rules construction in logical recognition models is considered. Logical regularities of classes are defined as conjunctions of one-place predicates that determine the membership of features values in an intervals of the real axis. The conjunctions are true on a special no extending subsets of reference objects of some class and are optimal. The standard approach of linear decision rules construction for given sets of logical regularities consists in realization of voting schemes. The weighting coefficients of voting procedures are done as heuristic ones or are as solutions of complex optimization task. The modifications of linear decision rules are proposed that are based on the search of maximal estimations of standard objects for their classes and use approximations of logical regularities by smooth sigmoid functions.

Identificador

1313-0455

http://hdl.handle.net/10525/1182

Idioma(s)

en

Publicador

Institute of Information Theories and Applications FOI ITHEA

Palavras-Chave #Precedent-Recognition Recognition #Logical Regularities of Classes #Estimate Calculation Algorithms #Integer Programming #Decision Rules #Sigmoid Formatting Rules
Tipo

Article