Toward Physically Plausible Data-Driven Models: A Novel Neural Network Approach to Symbolic Regression
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- @Article{Kubalik:2023:ACC,
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author = "Jiri Kubalik and Erik Derner and Robert Babuska",
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journal = "IEEE Access",
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title = "Toward Physically Plausible Data-Driven Models: A
Novel Neural Network Approach to Symbolic Regression",
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year = "2023",
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volume = "11",
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pages = "61481--61501",
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abstract = "Many real-world systems can be described by
mathematical models that are human-comprehensible, easy
to analyse and help explain the system's behaviour.
Symbolic regression is a method that can automatically
generate such models from data. Historically, symbolic
regression has been predominantly realized by genetic
programming, a method that evolves populations of
candidate solutions that are subsequently modified by
genetic operators crossover and mutation. However, this
approach suffers from several deficiencies: it does not
scale well with the number of variables and samples in
the training data-models tend to grow in size and
complexity without an adequate accuracy gain, and it is
hard to fine-tune the model coefficients using just
genetic operators. Recently, neural networks have been
applied to learn the whole analytic model, i.e., its
structure and the coefficients, using gradient-based
optimisation algorithms. This paper proposes a novel
neural network-based symbolic regression method that
constructs physically plausible models based on even
very small training data sets and prior knowledge about
the system. The method employs an adaptive weighting
scheme to effectively deal with multiple loss function
terms and an epoch-wise learning process to reduce the
chance of getting stuck in poor local optima.
Furthermore, we propose a parameter-free method for
choosing the model with the best interpolation and
extrapolation performance out of all the models
generated throughout the whole learning process. We
experimentally evaluate the approach on four test
systems: the TurtleBot 2 mobile robot, the magnetic
manipulation system, the equivalent resistance of two
resistors in parallel, and the longitudinal force of
the anti-lock braking system. The results clearly show
the potential of the method to find parsimonious models
that comply with the prior knowledge provided.",
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keywords = "genetic algorithms, genetic programming, ANN,
Artificial neural networks, Neural networks,
Mathematical models, Extrapolation, Data models,
Training data, Knowledge engineering, Symbolic
regression, neural networks, physics-aware modelling",
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DOI = "doi:10.1109/ACCESS.2023.3287397",
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ISSN = "2169-3536",
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notes = "Also known as \cite{10155126}",
- }
Genetic Programming entries for
Jiri Kubalik
Erik Derner
Robert Babuska
Citations