Title
On vehicle surrogate learning with genetic programming ensembles
Date Issued
06 July 2018
Access level
metadata only access
Resource Type
conference paper
Author(s)
Miyashita T.
Universidad de Waseda
Publisher(s)
Association for Computing Machinery, Inc
Abstract
Learning surrogates for product design and optimization is potential to capitalize on competitive market segments. In this paper we propose an approach to learn surrogates of product performance from historical clusters by using ensembles of Genetic Programming. By using computational experiments involving more than 500 surrogate learning instances and 27,858 observations of vehicle models collected over the last thirty years shows (1) the feasibility to learn function surrogates as symbolic ensembles at different levels of granularity of the hierarchical vehicle clustering, (2) the direct relationship of the predictive ability of the learned surrogates in both seen (training) and unseen (testing) scenarios as a function of the number of cluster instances, and (3) the attractive predictive ability of relatively smaller ensemble of trees in unseen scenarios. We believe our approach introduces the building blocks to further advance on studies regarding data-driven product design and market segmentation.
Start page
1704
End page
1710
Language
English
OCDE Knowledge area
Genética, Herencia
Ingeniería mecánica
Subjects
Scopus EID
2-s2.0-85051543513
ISBN of the container
9781450357647
Conference
GECCO 2018 Companion - Proceedings of the 2018 Genetic and Evolutionary Computation Conference Companion
Sponsor(s)
This work by JSPS Kakenhi No. 15K18095 is appreciated.
Sources of information:
Directorio de Producción Científica
Scopus