A Meta-Model Perspective and Attribute Grammar Approach to Facilitating the Development of Novel Neural Network Models
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InCollection{DBLP:series/sci/Hussain11,
-
author = "Talib S. Hussain",
-
title = "A Meta-Model Perspective and Attribute Grammar
Approach to Facilitating the Development of Novel
Neural Network Models",
-
booktitle = "Meta-Learning in Computational Intelligence",
-
publisher = "Springer",
-
year = "2011",
-
editor = "Norbert Jankowski and Wlodzislaw Duch and
Krzysztof Grabczewski",
-
volume = "358",
-
series = "Studies in Computational Intelligence",
-
pages = "245--272",
-
keywords = "genetic algorithms, genetic programming, NGAGE, GNML",
-
timestamp = "Tue, 16 May 2017 14:24:34 +0200",
-
biburl = "https://dblp.org/rec/series/sci/Hussain11.bib",
-
bibsource = "dblp computer science bibliography, https://dblp.org",
-
URL = "https://drive.google.com/file/d/1TPQ4NG5fJhl2b7Gj9ikfQevyLaXVsZPD/view",
-
DOI = "doi:10.1007/978-3-642-20980-2_8",
-
size = "28 pages",
-
abstract = "There is a need for methods and tools that facilitate
the systematic exploration of novel artificial neural
network models. While significant progress has been
made in developing concise artificial neural networks
that implement basic models of neural activation,
connectivity and plasticity, limited success has been
attained in creating neural networks that integrate
multiple diverse models to produce highly complex
neural systems. From a problem-solving perspective,
there is a need for effective methods for combining
different neural-network-based learning systems in
order to solve complex problems. Different models may
be more appropriate for solving different subproblems,
and robust, systematic methods for combining those
models may lead to more powerful machine learning
systems. From a neuroscience modelling perspective,
there is a need for effective methods for integrating
different models to produce more robust models of the
brain. These needs may be met through the development
of meta-model languages that represent diverse neural
models and the interactions between different neural
elements. A meta-model language based on attribute
grammars, the Network Generating Attribute Grammar
Encoding, is presented, and its capability for
facilitating automated search of complex combinations
of neural components from different models is
discussed.",
-
notes = "Raytheon BBN Technologies, Cambridge, MA, USA",
- }
Genetic Programming entries for
Talib S Hussain
Citations