Limiting Theorems for the Optimal Alignments Score in Multiple Random Words
Host
Department of Applied Mathematics
Speaker
Ruoting Gong, Assistant Professor
Department of Applied Mathematics, Illinois Institute of Technology
Description
Let Xn(1),...,Xn(m), where Xn(i) = (X1(i),...,Xn(i)), i = 1,...,m, be m independent sequences of independent and identically distributed random variables taking their values in a finite alphabet A. Let the score function S, defined on Am, be non-negative, bounded, permutation-invariant, and satisfy a bounded differences condition. Under a variance lower-bound assumption, a central limit theorem is proved for the optimal alignments score of the m random words. This is in contrast to the Bernoulli matching problem or to the random permutations case, where the limiting law is the Tracy-Widom distribution. In particular, when S(x) = 1{ x1 =...=xm }, a central limit theorem is obtained for the length of the longest common subsequence of random words Xn(1),...,Xn(m). (Joint work with Christian Houdré and Umit Işlak)
Event Topic
Discrete Applied Math Seminar