Structuring of Ranked Models


Autoria(s): Bobrowski, Leon
Data(s)

15/04/2010

15/04/2010

2009

Resumo

Prognostic procedures can be based on ranked linear models. Ranked regression type models are designed on the basis of feature vectors combined with set of relations defined on selected pairs of these vectors. Feature vectors are composed of numerical results of measurements on particular objects or events. Ranked relations defined on selected pairs of feature vectors represent additional knowledge and can reflect experts' opinion about considered objects. Ranked models have the form of linear transformations of feature vectors on a line which preserve a given set of relations in the best manner possible. Ranked models can be designed through the minimization of a special type of convex and piecewise linear (CPL) criterion functions. Some sets of ranked relations cannot be well represented by one ranked model. Decomposition of global model into a family of local ranked models could improve representation. A procedures of ranked models decomposition is described in this paper.

Identificador

1313-0455

http://hdl.handle.net/10525/1199

Idioma(s)

en

Publicador

Institute of Information Theories and Applications FOI ITHEA

Palavras-Chave #Ranked Regression #CPL Criterion Function #Prognostic Models #Decomposition of Ranked Models #Chain Split and Computations in Practical Rule Mining #Computing Classification Systems
Tipo

Article