A novel feature selection method to extract multiple adjacent solutions for viral genomic sequences classification
Academic Article
Publication Date:
2016
abstract:
Here, we present a new feature-selection algorithm based on mixed
integer programming methods [2] able to extract multiple and adjacent solutions for supervised learning problems applied to biological
data. We focus on those problems where the relative position of a
feature (i.e., nucleotide locus) is relevant. In particular, we aim to find
sets of distinctive features, which are as close as possible to each
other and which appear with the same required characteristics. Our
algorithm adopts a fast and effective method to evaluate the quality
of the extracted sets of features and it has been successfully integrated in a rule-based classification framework [3].
Iris type:
01.01 Articolo in rivista
Keywords:
viral genomic sequences; bioinformatics; feature selection
List of contributors:
Bertolazzi, Paola; Felici, Giovanni
Published in: