Combining neural computation and genetic programming for observational causality detection and causal modelling
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- @Article{murari:AIR,
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author = "Andrea Murari and Riccardo Rossi and Michela Gelfusa",
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title = "Combining neural computation and genetic programming
for observational causality detection and causal
modelling",
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journal = "Artificial Intelligence Review",
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year = "2023",
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volume = "56",
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pages = "6365--6401",
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month = jul,
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keywords = "genetic algorithms, genetic programming, ANN",
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URL = "http://link.springer.com/article/10.1007/s10462-022-10320-3",
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DOI = "doi:10.1007/s10462-022-10320-3",
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abstract = "A methodology, to determine the causal relations
between time series and to derive the set of equations
describing the interacting systems, has been developed.
The techniques proposed are completely data driven and
they are based on ensembles of Time Delay Neural
Networks (TDNNs) and Symbolic Regression (SR) via
Genetic Programming (GP). With regard to the detection
of the causal influences and the identification of
graphical causal networks, the developed tools have
better performances than those reported in the
literature. For example, the TDNN ensembles can cope
with evolving systems, non-Markovianity, feedback loops
and multicausality. In its turn, on the basis of the
information derived from the TDNN ensembles, SR via GP
permits to identify the set of equations, i.e. the
detailed model of the interacting systems. Numerical
tests and real life examples from various disciplines
prove the power and versatility of the developed tools,
capable of handling tens of time series and even
images. The excellent results obtained emphasise the
importance of recording the time evolution of signals,
which would allow a much better understanding of many
issues, ranging from the physical to the social and
medical sciences.",
- }
Genetic Programming entries for
Andrea Murari
Riccardo Rossi
Michela Gelfusa
Citations