EGSGP: an Ensemble System Based on Geometric Semantic GeneticProgramming
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gp-bibliography.bib Revision:1.8051
- @InProceedings{Rosenfeld:2022:WIVACE,
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author = "Liah Rosenfeld and Leonardo Vanneschi",
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title = "{EGSGP}: an Ensemble System Based on Geometric
Semantic GeneticProgramming",
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booktitle = "WIVACE 2022, XVI International Workshop on Artificial
Life and Evolutionary Computation",
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year = "2022",
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editor = "Claudio {De Stefano} and Francesco Fontanella and
Leonardo Vanneschi",
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volume = "1780",
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series = "Computer and Information Science",
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pages = "278--290",
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address = "Gaeta (LT), Italy",
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month = sep # " 14-16",
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publisher = "Springer",
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keywords = "genetic algorithms, genetic programming",
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isbn13 = "978-3-031-31183-3",
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DOI = "doi:10.1007/978-3-031-31183-3_23",
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abstract = "This work is inspired by the idea of seeding Genetic
Programming (GP) populations with trained models from a
pool of different Machine Learning (ML) methods,
instead of using randomly generated individuals. If one
considers standard GP, tackling this problem is very
challenging, because each ML method uses its own
representation, typically very different from the
others. However, the task becomes easier if we use
Geometric Semantic GP(GSGP). In fact, GSGP allows us to
abstract from the representation, focusing purely on
semantics. Following this idea, we introduce EGSGP, a
novel method that can be see neither as a new
initialisation technique for GSGP, or as an ensemble
method, that uses GSGP to combine different Base
Learners (BLs). To counteract overfitting, we focused
on the study of elitism and Soft Target (ST)
regularisation, studying several variants of EGSGP. In
particular, systems that use or do not use elitism, and
that use (with different parameters) or do not use ST
were investigated. After an intensive study of the new
parameters that characterise EGSGP, those variants were
compared with the used BLs and with GSGP on three
real-life regression problems. The presented results
indicate that EGSGP out performs the BLs and GSGP on
all the studied test problems. While the difference
between EGSGP and GSGP is statistically significant on
two of the three test problems, EGSGP out performs all
the BLs in a statistically significant way only on one
of them",
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notes = "Published after the
workshop.
http://wivace2022.unicas.it/files/programWIVACE2022.pdf
Liah Rosenfeld MSc
https://run.unl.pt/bitstream/10362/140850/1/TAA0156.pdf",
- }
Genetic Programming entries for
Liah Rosenfeld
Leonardo Vanneschi
Citations