Acceleration of Genetic Programming by Hierarchical Structure Learning: A Case Study on Image Recognition Program Synthesis
Created by W.Langdon from
gp-bibliography.bib Revision:1.8010
- @Article{Watchareeruetai:2009:IS,
-
author = "Ukrit Watchareeruetai and Tetsuya Matsumoto and
Noboru Ohnishi and Hiroaki Kudo and Yoshinori Takeuchi",
-
title = "Acceleration of Genetic Programming by Hierarchical
Structure Learning: A Case Study on Image Recognition
Program Synthesis",
-
journal = "IEICE Transactions on Information and Systems",
-
year = "2009",
-
volume = "E92-D",
-
number = "10",
-
pages = "2094--2102",
-
month = oct,
-
email = "ukrit@ieee.org",
-
publisher = "IEICE",
-
keywords = "genetic algorithms, genetic programming, hierarchical
structure acceleration, learning node, training
subsets, population integration",
-
ISSN = "0916-8532",
-
URL = "http://search.ieice.org/bin/summary.php?id=e92-d_10_2094&category=D&year=2009&lang=E&abst=",
-
abstract = "We propose a learning strategy for acceleration in
learning speed of genetic programming (GP), named
hierarchical structure GP (HSGP). The HSGP exploits
multiple learning nodes (LNs) which are connected in a
hierarchical structure, e.g., a binary tree. Each LN
runs conventional evolutionary process to evolve its
own population, and sends the evolved population into
the connected higher-level LN. The lower-level LN
evolves the population with a smaller subset of
training data. The higher-level LN then integrates the
evolved population from the connected lower-level LNs
together, and evolves the integrated population further
by using a larger subset of training data. In HSGP,
evolutionary processes are sequentially executed from
the bottom-level LNs to the top-level LN which evolves
with the entire training data. In the experiments, we
adopt conventional GPs and the HSGPs to evolve image
recognition programs for given training images. The
results show that the use of hierarchical structure
learning can significantly improve learning speed of
GPs. To achieve the same performance, the HSGPs need
only 30-40percent of the computation cost needed by
conventional GPs.",
- }
Genetic Programming entries for
Ukrit WatchAreeruetai
Tetsuya Matsumoto
Noboru Ohnishi
Hiroaki Kudo
Yoshinori Takeuchi
Citations