Affiliation:
1. School of Computing, Faculty of Science, Agriculture and Engineering, Newcastle University, Newcastle Upon Tyne NE4 5TG, UK
Abstract
Current specification mining algorithms for temporal data rely on exhaustive search approaches, which become detrimental in real data settings where a plethora of distinct temporal behaviours are recorded over prolonged observations. This paper proposes a novel algorithm, Bolt2, based on a refined heuristic search of our previous algorithm, Bolt. Our experiments show that the proposed approach not only surpasses exhaustive search methods in terms of running time but also guarantees a minimal description that captures the overall temporal behaviour. This is achieved through a hypothesis lattice search that exploits support metrics. Our novel specification mining algorithm also outperforms the results achieved in our previous contribution.
Subject
Computer Networks and Communications,Human-Computer Interaction
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1 articles.
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