Sequence mining is one of the fundamental data mining tasks. In this paper we present
a novel approach for mining frequent sequences, called Prism. It utilizes a vertical approach
for enumeration and support counting, based on the novel notion of primal block encoding,
which in turn is based on prime factorization theory. Via an extensive evaluation on
both synthetic and real datasets, we show that Prism outperforms popular sequence
mining methods like SPADE [M.J. Zaki, SPADE: An efficient algorithm for mining frequent
sequences, Mach. Learn. J. 42 (1/2) (Jan/Feb 2001) 31–60], PrefixSpan [J. Pei, J. Han,
B. Mortazavi-Asl, H. Pinto, Q. Chen, U. Dayal, M.-C. Hsu, PrefixSpan: Mining sequential
patterns efficiently by prefixprojected pattern growth, in: Int’l Conf. Data Engineering, April
2001] and SPAM [J. Ayres, J.E. Gehrke, T. Yiu, J. Flannick, Sequential pattern mining using
bitmaps, in: SIGKDD Int’l Conf. on Knowledge Discovery and Data Mining, July 2002], by
an order of magnitude or more. |