Adaptive Localizer Based on Splitting Trees - Testing Software and Systems (ICTSS 2017)
Conference Papers Year : 2017

Adaptive Localizer Based on Splitting Trees

Roland Groz
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Catherine Oriat

Abstract

When testing a black box system that cannot be reset, it may be useful to use a localizer procedure that will ensure that the test sequence goes at some point through a state that can be identified with a characterizing set of input sequences. In this paper, we propose a procedure that will localize when the separating sequences are organized in a splitting tree. Compared to previous localizing sequences based on characterization sets, using the tree structure one can define an adaptive localizer, and the complexity of localizing depends on the height of the tree instead of the number of states.
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hal-01678983 , version 1 (09-01-2018)

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Roland Groz, Adenilso Simao, Catherine Oriat. Adaptive Localizer Based on Splitting Trees. 29th IFIP International Conference on Testing Software and Systems (ICTSS), Oct 2017, St. Petersburg, Russia. pp.326-332, ⟨10.1007/978-3-319-67549-7_21⟩. ⟨hal-01678983⟩
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