A Multi-level Refinement Approach for Structural Synthesis of Optimal Probabilistic Models
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- @Article{benouhiba:2021:FI,
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author = "Toufik Benouhiba",
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title = "A Multi-level Refinement Approach for Structural
Synthesis of Optimal Probabilistic Models",
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journal = "Fundamenta Informaticae",
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year = "2021",
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volume = "179",
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number = "1",
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pages = "1--33",
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keywords = "genetic algorithms, genetic programming, model
synthesis, refinement, Search-based software
engineering, SBSE, constraint satisfaction,
probabilistic model checking",
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publisher = "IOS press",
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URL = "
https://journals.sagepub.com/doi/pdf/10.3233/FI-2021-2011",
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DOI = "
doi:10.3233/FI-2021-2011",
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size = "33 pages",
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abstract = "Probabilistic models play an important role in many
fields such as distributed systems and simulations.
Like non-probabilistic systems, they can be synthesized
using classical refinement-based techniques, but they
also require identifying the probability distributions
to be used and their parameters. Since a fully
automated and blind refinement is generally
undecidable, many works tried to synthesize them by
looking for the parameters of the distributions.
Syntax-guided synthesizing approaches are more
powerful, they try to synthesize models structurally by
using context-free grammars. However, many problems
arise like huge search space, the complexity of
generated models, and the limitation of context-free
grammars to define constraints over the structure. In
this paper, we propose a multi-step refinement
approach, based on meta-models, offering several
abstraction levels to reduce the size of the search
space. More specifically, each refinement step is
divided into two stages in which the desired shape of
models is first described by context-sensitive
constraints. In the second stage, model templates are
instantiated by using global optimization techniques.
We use our approach to a synthesize a set of optimal
probabilistic models and show that context-sensitive
constraints coupled with the multi-level abilities of
the approach make the synthesis task more effective.",
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notes = "LISCO Laboratory - Department of computer science,
Badji Mokthar Annaba University, PO BOX 12, Annaba,
Algeria",
- }
Genetic Programming entries for
Toufik Benouhiba
Citations