Multitask Feature Learning as Multiobjective Optimization: A New Genetic Programming Approach to Image Classification
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- @Article{Ying_Bi:Cybernetics3,
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author = "Ying Bi and Bing Xue and Mengjie Zhang",
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title = "Multitask Feature Learning as Multiobjective
Optimization: A New Genetic Programming Approach to
Image Classification",
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journal = "IEEE Transactions on Cybernetics",
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year = "2023",
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volume = "53",
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number = "5",
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pages = "3007--3020",
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month = may,
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keywords = "genetic algorithms, genetic programming, Evolutionary
computation (EC), feature learning, GP, image
classification, multiobjective optimisation, multitask
learning",
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ISSN = "2168-2267",
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DOI = "doi:10.1109/TCYB.2022.3174519",
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size = "14 pages",
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abstract = "Feature learning is a promising approach to image
classification. However, it is difficult due to high
image variations. When the training data are small, it
becomes even more challenging, due to the risk of
overfitting. Multitask feature learning has shown the
potential for improving generalization. However,
existing methods are not effective for handling the
case that multiple tasks are partially conflicting.
Therefore, for the first time, this article proposes to
solve a multitask feature learning problem as a
multiobjective optimization problem by developing a
genetic programming approach with a new representation
to image classification. In the new approach, all the
tasks share the same solution space and each solution
is evaluated on multiple tasks so that the objectives
of all the tasks can be optimized simultaneously using
a single population. To learn effective features, a new
and compact program representation is developed to
allow the new approach to evolving solutions shared
across tasks. The new approach can automatically find a
diverse set of nondominated solutions that achieve good
tradeoffs between different tasks. To further reduce
the risk of overfitting, an ensemble is created by
selecting non-dominated solutions to solve each image
classification task. The results show that the new
approach significantly outperforms a large number of
benchmark methods on six problems consisting of 15
image classification datasets of varying difficulty.
Further analysis shows that these new designs are
effective for improving the performance. The detailed
analysis clearly reveals the benefits of solving
multitask feature learning as multi-objective
optimisation in improving the generalisation.",
-
notes = "also known as \cite{9781346}",
- }
Genetic Programming entries for
Ying Bi
Bing Xue
Mengjie Zhang
Citations