Artículo
Enhanced replacement method integration with genetic algorithms populations in QSAR and QSPR theories
Fecha de publicación:
03/2015
Editorial:
Elsevier Science
Revista:
Chemometrics and Intelligent Laboratory Systems
ISSN:
0169-7439
Idioma:
Inglés
Tipo de recurso:
Artículo publicado
Clasificación temática:
Resumen
The selection of an optimal set of molecular descriptors from a much larger collection of such regression variables is a vital step in the elaboration of most QSAR and QSPR models. The aim of this work is to continue advancing this important selection process by combining the enhanced replacement method (ERM) and the well-known genetic algorithms (GA). These approaches had previously proven to yield near-optimal results with a much smaller number of linear regressions than a full search. The newly proposed algorithms were tested on four different experimental datasets, formed by collections of 116, 200, 78, and 100 experimental records from different compounds and 1268, 1338, 1187, and 1306 molecular descriptors, respectively. The comparisons showed that the new alternative ERMp (combination of ERM with a GA population) further improves ERM, it has previously been shown that the latter is superior to GA for the selection of an optimal set of molecular descriptors from a much greater pool.
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Articulos(INIFTA)
Articulos de INST.DE INV.FISICOQUIMICAS TEORICAS Y APLIC.
Articulos de INST.DE INV.FISICOQUIMICAS TEORICAS Y APLIC.
Citación
Mercader, Andrew Gustavo; Duchowicz, Pablo Román; Enhanced replacement method integration with genetic algorithms populations in QSAR and QSPR theories; Elsevier Science; Chemometrics and Intelligent Laboratory Systems; 149; 3-2015; 117-122
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