Logo do repositório
 
A carregar...
Miniatura
Publicação

A biobjective feature selection algorithm for large omics datasets

Utilize este identificador para referenciar este registo.
Nome:Descrição:Tamanho:Formato: 
27_Cavique_et_al-2018-Expert_Systems.pdf332.87 KBAdobe PDF Ver/Abrir

Orientador(es)

Resumo(s)

Feature selection is one of the most important concepts in data mining when dimensionality reduction is needed. The performance measures of feature selection encompass predictive accuracy and result comprehensibility. Consistency‐based methods are a significant category of feature selection research that substantially improves the comprehensibility of the result using the parsimony principle. In this work, the biobjective version of the algorithm logical analysis of inconsistent data is applied to large volumes of data. In order to deal with hundreds of thousands of attributes, heuristic decomposition uses parallel processing to solve a set covering problem and a cross‐validation technique. The biobjective solutions contain the number of reduced features and the accuracy. The algorithm is applied to omics datasets with genome‐like characteristics of patients with rare diseases.

Descrição

Palavras-chave

Biobjective Optimization Feature Selection Heuristic Decomposition Logical Analysis of Data Rare Diseases.

Contexto Educativo

Citação

Expert Systems. 2018;35(4):e12301.doi:10.1111/exsy.12301

Projetos de investigação

Projeto de investigaçãoVer mais

Unidades organizacionais

Fascículo

Editora

Expert Systems

Licença CC

Métricas Alternativas