Parametric k-best alignment [article]

Peter Huggins, Ruriko Yoshida
2008 arXiv   pre-print
Optimal sequence alignments depend heavily on alignment scoring parameters. Given input sequences, parametric alignment is the well-studied problem that asks for all possible optimal alignment summaries as parameters vary, as well as the optimality region of alignment scoring parameters which yield each optimal alignment. But biologically correct alignments might be suboptimal for all parameter choices. Thus we extend parametric alignment to parametric k-best alignment, which asks for all
more » ... le k-tuples of k-best alignment summaries (s_1, s_2, ..., s_k), as well as the k-best optimality region of scoring parameters which make s_1, s_2, ..., s_k the top k summaries. By exploiting the integer-structure of alignment summaries, we show that, astonishingly, the complexity of parametric k-best alignment is only polynomial in k. Thus parametric k-best alignment is tractable, and can be applied at the whole-genome scale like parametric alignment.
arXiv:0809.1473v1 fatcat:bq5xnh5qrbajjirc3dhnowix54