On Optimizing Deep Convolutional Neural Networks by Evolutionary Computing
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Dias:2017:SLAAI,
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author = "M. U. B. Dias and D. D. N. {De Silva} and
S. Fernando",
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title = "On Optimizing Deep Convolutional Neural Networks by
Evolutionary Computing",
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booktitle = "International Conference on Artificial Intelligence
(SLAAI 2017)",
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year = "2017",
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pages = "29--37",
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address = "University of Moratuwa, Sri Lanka",
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month = "31 " # oct,
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keywords = "genetic algorithms, genetic programming, deep
Networks, Optimization, Evolutionary Computing,
Speeding Up Rate of Convergent, Normalization",
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URL = "https://arxiv.org/abs/1808.01766",
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URL = "http://slaai.lk/proc/2017/s1705.pdf",
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size = "9 pages",
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abstract = "Optimization for deep networks is currently a very
active area of research. As neural networks become
deeper, the ability in manually optimizing the network
becomes harder. Mini-batch normalization,
identification of effective respective fields, momentum
updates, introduction of residual blocks, learning rate
adoption, etc. have been proposed to speed up the rate
of convergent in manual training process while keeping
the higher accuracy level. However, the problem of
finding optimal topological structure for a given
problem is becoming a challenging task need to be
addressed immediately. Few researchers have attempted
to optimize the network structure using evolutionary
computing approaches. Among them, few have successfully
evolved networks with reinforcement learning and
long-short-term memory. A very few has applied
evolutionary programming into deep convolution neural
networks. These attempts are mainly evolved the network
structure and then subsequently optimized the
hyper-parameters of the network. However, a mechanism
to evolve the deep network structure under the
techniques currently being practised in manual process
is still absent. Incorporation of such techniques into
chromosomes level of evolutionary computing, certainly
can take us to better topological deep structures. The
paper concludes by identifying the gap between
evolutionary based deep neural networks and deep neural
networks. Further, it proposes some insights for
optimizing deep neural networks using evolutionary
computing techniques.",
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notes = "Department of Computational Mathematics, University of
Moratuwa, Sri Lanka",
- }
Genetic Programming entries for
M U Bigumjith Dias
Dedimuni De Silva
Subha Fernando
Citations