Using Network Alignment to Identify Conserved Consumer Behaviour Modelling Constructs
Created by W.Langdon from
gp-bibliography.bib Revision:1.8081
- @InCollection{Mathieson2019,
-
author = "Luke Mathieson and Natalie Jane {de Vries} and
Pablo Moscato",
-
title = "Using Network Alignment to Identify Conserved Consumer
Behaviour Modelling Constructs",
-
booktitle = "Business and Consumer Analytics: New Ideas",
-
publisher = "Springer International Publishing",
-
year = "2019",
-
editor = "Pablo Moscato and Natalie Jane {de Vries}",
-
chapter = "12",
-
pages = "513--541",
-
keywords = "genetic algorithms, genetic programming",
-
isbn13 = "978-3-030-06222-4",
-
DOI = "doi:10.1007/978-3-030-06222-4_12",
-
abstract = "Extracting topological information from networks is a
central problem in many fields including business
analytics. With the increase in large-scale datasets,
effectively comparing similarities and differences
between networks is impossible without Automation. In
some cases, computational search of simple subgraphs is
used to understand the structure of a network. These
approaches, however, miss the global picture of network
similarity. Here we examine the Network Alignment
problem, in which we look for a mapping between vertex
sets of two networks preserving topological
information. Elsewhere, we showed that data analytics
problems are often of varied computational complexity.
We prove that this problem is W[1]-completeW[1]- for
several parameterizations. Since we expect large
instances in the data analytics field, our result
indicates that this problem is a prime candidate for
metaheuristic approaches as it will be hard in practice
to solve exact methods. We develop a memetic algorithm
and demonstrate the effectiveness of the Network
Alignment problem as a tool for discovering structural
information through an application in the area of
consumer behaviour modelling. We believe this to be the
first demonstration of such an approach in the social
sciences and in particular a consumer analytics
application.",
- }
Genetic Programming entries for
Luke Mathieson
Natalie Jane de Vries
Pablo Moscato
Citations