A tie-break model for graph search
January 25, 2015 Β· Declared Dead Β· π Discrete Applied Mathematics
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Authors
Derek G. Corneil, Jeremie Dusart, Michel Habib, Fabien de Montgolfier
arXiv ID
1501.06148
Category
cs.DS: Data Structures & Algorithms
Citations
10
Venue
Discrete Applied Mathematics
Last Checked
4 months ago
Abstract
In this paper, we consider the problem of the recognition of various kinds of orderings produced by graph searches. To this aim, we introduce a new framework, the Tie-Breaking Label Search (TBLS), in order to handle a broad variety of searches. This new model is based on partial orders defined on the label set and it unifies the General Label Search (GLS) formalism of Krueger, Simonet and Berry (2011), and the "pattern-conditions" formalism of Corneil and Krueger (2008). It allows us to derive some general properties including new pattern-conditions (yielding memory-efficient certificates) for many usual searches, including BFS, DFS, LBFS and LDFS. Furthermore, the new model allows easy expression of multi-sweep uses of searches that depend on previous (search) orderings of the graph's vertex set.
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