Multiobjective genetic programming with adaptive clustering
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- @InProceedings{Ferariu:2011:ieeeICCP,
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author = "Lavinia Ferariu and Bogdan Burlacu",
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title = "Multiobjective genetic programming with adaptive
clustering",
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booktitle = "IEEE International Conference on Intelligent Computer
Communication and Processing (ICCP 2011)",
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year = "2011",
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month = "25-27 " # aug,
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pages = "27--32",
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address = "Cluj-Napoca, Romania",
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size = "6 pages",
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abstract = "This paper presents a new approach meant to provide an
automatic design of feed forward neural models by means
of multiobjective graph genetic programming. The
suggested algorithm can deal with partially
interconnected neural architectures and various types
of global and local neurons within each hidden neural
layer. It concomitantly ensures the reduction of
variables and the selection of convenient model
structures and parameters, by working on a set of
graph-based encrypted individuals built via genetic
programming with the guarantee of phenotypic and
genotypic validity. In order to provide a realistic
assessment of the neural models, the optimisation is
carried out subject to multiple objectives of different
priorities. In relation to this idea, the authors
propose a new Pareto-ranking strategy, which
progressively guides the search towards the preferred
zones of the exploration space. The fitness assignment
procedure monitors the phenotypic diversity of the best
individuals, as well as the convergence speed of the
algorithm, and exploits the resulted heuristics for
performing a preliminary clustering of individuals. The
experimental trials targeting the identification of an
industrial system show the capacity of the suggested
approach to automatically build simple and precise
models, whilst dealing with noisy data and scarce a
priori information.",
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keywords = "genetic algorithms, genetic programming,
Pareto-ranking strategy, adaptive clustering, automatic
design, convergence speed, feedforward neural model,
genotypic validity, graph based encrypted individual,
hidden neural layer, industrial system, interconnected
neural architecture, model structure, multiobjective
graph genetic programming, noisy data, phenotypic
validity, cryptography, feedforward neural nets, graph
theory, pattern clustering",
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DOI = "doi:10.1109/ICCP.2011.6047840",
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notes = "Also known as \cite{6047840}",
- }
Genetic Programming entries for
Lavinia Ferariu
Bogdan Burlacu
Citations