English

Sublinear Time Motif Discovery from Multiple Sequences

Data Structures and Algorithms 2012-03-14 v2

Abstract

A natural probabilistic model for motif discovery has been used to experimentally test the quality of motif discovery programs. In this model, there are kk background sequences, and each character in a background sequence is a random character from an alphabet Σ\Sigma. A motif G=g1g2...gmG=g_1g_2...g_m is a string of mm characters. Each background sequence is implanted a probabilistically generated approximate copy of GG. For a probabilistically generated approximate copy b1b2...bmb_1b_2...b_m of GG, every character bib_i is probabilistically generated such that the probability for bigib_i\neq g_i is at most α\alpha. We develop three algorithms that under the probabilistic model can find the implanted motif with high probability via a tradeoff between computational time and the probability of mutation. The methods developed in this paper have been used in the software implementation. We observed some encouraging results that show improved performance for motif detection compared with other softwares.

Keywords

Cite

@article{arxiv.1007.2618,
  title  = {Sublinear Time Motif Discovery from Multiple Sequences},
  author = {Bin Fu and Yunhui Fu},
  journal= {arXiv preprint arXiv:1007.2618},
  year   = {2012}
}
R2 v1 2026-06-21T15:48:35.969Z