Pattern Discovery in Colored Strings

Author:

Lipták Zsuzsanna1,Puglisi Simon J.2,Rossi Massimiliano3

Affiliation:

1. University of Verona, Department of Computer Science, Verona, Italy

2. Helsinki Institute of Information Technology (HIIT) and Department of Computer Science, University of Helsinki, Finland

3. University of Florida, Department of Computer and Information Science and Engineering, Gainesville, FL, United States

Abstract

In this article, we consider the problem of identifying patterns of interest in colored strings. A colored string is a string where each position is assigned one of a finite set of colors. Our task is to find substrings of the colored string that always occur followed by the same color at the same distance. The problem is motivated by applications in embedded systems verification, in particular, assertion mining. The goal there is to automatically find properties of the embedded system from the analysis of its simulation traces. We show that, in our setting, the number of patterns of interest is upper-bounded by O ( n 2 ), where n is the length of the string. We introduce a baseline algorithm, running in O ( n 2 ) time, which identifies all patterns of interest satisfying certain minimality conditions for all colors in the string. For the case where one is interested in patterns related to one color only, we also provide a second algorithm that runs in O ( n 2 log n ) time in the worst case but is faster than the baseline algorithm in practice. Both solutions use suffix trees, and the second algorithm also uses an appropriately defined priority queue, which allows us to reduce the number of computations. We performed an experimental evaluation of the proposed approaches over both synthetic and real-world datasets, and found that the second algorithm outperforms the first algorithm on all simulated data, while on the real-world data, the performance varies between a slight slowdown (on half of the datasets) and a speedup by a factor of up to 11.

Funder

Academy of Finland

National Science Foundation (NSF) IIS

Publisher

Association for Computing Machinery (ACM)

Subject

Theoretical Computer Science

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