Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
85365 | Computers and Electronics in Agriculture | 2010 | 8 Pages |
The development of molecular techniques for genetic analysis has enabled great advances in cereal breeding. However, their usefulness in hybrid breeding, particularly in assigning new lines to heterotic groups previously established, still remains unsolved. In this work we evaluate the performance of several state-of-art multiclass classifiers onto three molecular marker datasets representing a broad spectrum of maize heterotic patterns. Even though results are variable, they suggest supervised learning algorithms as a valuable complement to traditional breeding programs.
Research highlights▶ Molecular techniques have been proposed to assign maize inbreds to heterotic groups. ▶ We evaluate several supervised learning algorithms onto 3 maize datasets. ▶ Results suggest multiclass classifiers as an alternative to traditional statistical methods.