Evolving Character-Level DenseNet Architectures using Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8229
- @InProceedings{Londt:2021:evoapplications,
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author = "Trevor Londt and Xiaoying Gao and Peter Andreae",
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title = "Evolving Character-Level {DenseNet} Architectures
using Genetic Programming",
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booktitle = "24th International Conference, EvoApplications 2021",
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year = "2021",
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month = "7-9 " # apr,
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editor = "Pedro Castillo and Juanlu Jimenez-Laredo",
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series = "LNCS",
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volume = "12694",
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publisher = "Springer Verlag",
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address = "virtual event",
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pages = "665--680",
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organisation = "EvoStar, Species",
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keywords = "genetic algorithms, genetic programming, ANN, NLP,
Character-level DenseNet, Evolutionary deep learning,
Text classification",
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isbn13 = "978-3-030-72698-0",
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URL = "
https://arxiv.org/abs/2012.02327",
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DOI = "
doi:10.1007/978-3-030-72699-7_42",
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size = "15 pages",
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abstract = "DenseNet architectures have demonstrated impressive
performance in image classification tasks, but limited
research has been conducted on using character-level
DenseNet (char-DenseNet) architectures for text
classification tasks. It is not clear what DenseNet
architectures are optimal for text classification
tasks. The iterative task of designing, training and
testing of char-DenseNets is an NP-Hard problem that
requires expert domain knowledge. Evolutionary deep
learning (EDL) has been used to automatically design
CNN architectures for the image classification domain,
thereby mitigating the need for expert domain
knowledge. This study demonstrates the first work on
using EDL to evolve char-DenseNet architectures for
text classification tasks. A novel genetic
programming-based algorithm (GP-Dense) coupled with an
indirect-encoding scheme, facilitates the evolution of
performant char-DenseNet architectures. The algorithm
is evaluated on two popular text datasets, and the
best-evolved models are benchmarked against four
current state-of-the-art character-level CNN and
DenseNet models. Results indicate that the algorithm
evolves performant models for both datasets that
outperform two of the state-of-the-art models in terms
of model accuracy and three of the state-of-the-art
models in terms of parameter size.",
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notes = "http://www.evostar.org/2021/ EvoApplications2021 held
in conjunction with EuroGP'2021, EvoCOP2021 and
EvoMusArt2021",
- }
Genetic Programming entries for
Trevor Londt
Xiaoying (Sharon) Gao
Peter Andreae
Citations