In this paper, we analyze the effectiveness of a leading finite state automaton (FSA) induction algorithm, windowed evidence driven state merging (W-EDSM). W-EDSM generates small automata that correctly label a given set of positive and a given set of negative example strings defined by a regular (Type 3) language. In particular, W-EDSM builds a prefix tree for the exemplars which is then collapsed into a FSA. This is done by selecting nodes to merge based on a simple heuristic until no more merges are possible. Our experimental results show that the heuristic used works well for later merges, but not very well for early merges. Based on this observation, we are able to make a small modifi-cation to W-EDSM which improves the performance of the algorithm by 27% and suggest other avenues for futher enhancement.
CITATION STYLE
Cicchello, O., & Kremer, S. C. (2002). Beyond EDSM. In Lecture Notes in Artificial Intelligence (Subseries of Lecture Notes in Computer Science) (Vol. 2484, pp. 37–48). Springer Verlag. https://doi.org/10.1007/3-540-45790-9_4
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