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MADMX: A Novel Strategy for Maximal Dense Motif Extraction

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arxiv 1002.0874 v1 pith:W6H2H5ZE submitted 2010-02-04 cs.DS

MADMX: A Novel Strategy for Maximal Dense Motif Extraction

classification cs.DS
keywords madmxmotifsdensemaximalmotifcarecharactersdefined
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We develop, analyze and experiment with a new tool, called MADMX, which extracts frequent motifs, possibly including don't care characters, from biological sequences. We introduce density, a simple and flexible measure for bounding the number of don't cares in a motif, defined as the ratio of solid (i.e., different from don't care) characters to the total length of the motif. By extracting only maximal dense motifs, MADMX reduces the output size and improves performance, while enhancing the quality of the discoveries. The efficiency of our approach relies on a newly defined combining operation, dubbed fusion, which allows for the construction of maximal dense motifs in a bottom-up fashion, while avoiding the generation of nonmaximal ones. We provide experimental evidence of the efficiency and the quality of the motifs returned by MADMX

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