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MABS validation through repeated execution and data mining analysis

MABS validation through repeated execution and data mining analysis
MABS validation through repeated execution and data mining analysis
Agent Based Modelling is the most interesting and advanced approach for simulating a complex system: in a social context, the single parts and the whole are often very hard to describe in detail. Besides, there are agent based formalisms which allow to study the emergency of social behaviour with the creation and study of models, known as artificial societies. Thanks to the ever increasing computational power, it's been possible to use such models to create software, based on intelligent agents, which aggregate behaviour is complex and difficult to predict, and can be used in open and distributed systems. Data mining is born in the last decades in order to help users in finding useful knowledge from the otherwise overwhelming amount of data available nowadays from the web and the data collected every day by companies. Data Mining techniques can therefore be the keystone to reveal non-trivial knowledge expressed by the initial assumption used to build the micro-level of the model and the structure of the society of agents that emerged from the simulation.
1473-8031
10-21
Remondino, Marco
8c910fc7-c73f-4b1f-8da1-3d7f9702b7ae
Correndo, Gianluca
fea0843a-6d4a-4136-8784-0d023fcde3e2
Remondino, Marco
8c910fc7-c73f-4b1f-8da1-3d7f9702b7ae
Correndo, Gianluca
fea0843a-6d4a-4136-8784-0d023fcde3e2

Remondino, Marco and Correndo, Gianluca (2006) MABS validation through repeated execution and data mining analysis. International Journal of Simulation: Systems, Science & Technology, 7 (6), 10-21.

Record type: Article

Abstract

Agent Based Modelling is the most interesting and advanced approach for simulating a complex system: in a social context, the single parts and the whole are often very hard to describe in detail. Besides, there are agent based formalisms which allow to study the emergency of social behaviour with the creation and study of models, known as artificial societies. Thanks to the ever increasing computational power, it's been possible to use such models to create software, based on intelligent agents, which aggregate behaviour is complex and difficult to predict, and can be used in open and distributed systems. Data mining is born in the last decades in order to help users in finding useful knowledge from the otherwise overwhelming amount of data available nowadays from the web and the data collected every day by companies. Data Mining techniques can therefore be the keystone to reveal non-trivial knowledge expressed by the initial assumption used to build the micro-level of the model and the structure of the society of agents that emerged from the simulation.

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Published date: 2006
Organisations: Web & Internet Science

Identifiers

Local EPrints ID: 267934
URI: http://eprints.soton.ac.uk/id/eprint/267934
ISSN: 1473-8031
PURE UUID: d8dec458-7c73-4b0b-bbe7-bc2ebeb3ba93
ORCID for Gianluca Correndo: ORCID iD orcid.org/0000-0003-3335-5759

Catalogue record

Date deposited: 22 Sep 2009 15:14
Last modified: 14 Mar 2024 09:01

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Contributors

Author: Marco Remondino
Author: Gianluca Correndo ORCID iD

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