Optimization research on Artificial Neural network Model
Created by W.Langdon from
gp-bibliography.bib Revision:1.8178
- @InProceedings{Zhao:2011:ICCSNT,
-
author = "Zhao Huanping and Lv Congying and Yang Xinfeng",
-
title = "Optimization research on Artificial Neural network
Model",
-
booktitle = "International Conference on Computer Science and
Network Technology (ICCSNT 2011)",
-
year = "2011",
-
month = "24-26 " # dec,
-
volume = "3",
-
pages = "1724--1727",
-
address = "Harbin",
-
abstract = "Optimisation Research on Artificial Neural Tree
Network Model is divided into two parts: optimising
topology structure and optimising parameters. For
optimising topology structure, building-block-library
based genetic programming algorithm, anarchical
variable probability vector based probabilistic
incremental program evolution algorithm and
tree-encoded based particle swarm optimisation
algorithm are proposed. The above algorithms can
effectively reduce the number of invalid individuals
generated in evolution process, improve the convergence
speed and error precision of the NTNM. For optimising
parameters, differential evolution algorithm is
introduced. It has characteristics of less parameters
to control, easier to implement and uneasy to fall into
local minimum, etc. which make it very suitable for the
optimisation of parameters.",
-
keywords = "genetic algorithms, genetic programming, NTNM,
anarchical variable probability vector, artificial
neural network model, artificial neural tree network
model, building-block-library based genetic programming
algorithm, convergence speed, differential evolution
algorithm, error precision, evolution process, invalid
individuals, optimisation research, optimising
parameters, optimising topology structure, parameter
optimisation, probabilistic incremental program
evolution algorithm, tree-encoded based particle swarm
optimisation algorithm, convergence, neural nets,
particle swarm optimisation, probability, topology,
trees (mathematics), vectors",
-
DOI = "doi:10.1109/ICCSNT.2011.6182301",
-
notes = "Also known as \cite{6182301}",
- }
Genetic Programming entries for
Huanping Zhao
Congying Lv
Xinfeng Yang
Citations