A Brief Introduction to the Use of Machine Learning Techniques in the Analysis of Agent-Based Models

In this paper, we give a succinct introduction to some basic concepts imported from the fields of Machine and Statistical Learning that can be useful in the analysis of complex agent-based models (ABM). The paper presents some guidelines in the design of experiments. It then focuses on considering a...

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Bibliographic Details
Published inAdvances in Management Engineering pp. 179 - 186
Main Authors Pereda, María, Santos, José Ignacio, Galán, José Manuel
Format Book Chapter
LanguageEnglish
Published Switzerland Springer International Publishing AG 2017
Springer International Publishing
SeriesLecture Notes in Management and Industrial Engineering
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Summary:In this paper, we give a succinct introduction to some basic concepts imported from the fields of Machine and Statistical Learning that can be useful in the analysis of complex agent-based models (ABM). The paper presents some guidelines in the design of experiments. It then focuses on considering an ABM simulation as a computational experiment relating parameters with a response variable of interest, i.e. a statistic obtained from the simulation. This perspective gives the opportunity of using a supervised learning algorithm to fit the response with the parameters. The fitted model can be used to better interpret and understand the relation between the parameters of the ABM and the results in the simulation.
ISBN:9783319558882
3319558889
ISSN:2198-0772
2198-0780
DOI:10.1007/978-3-319-55889-9_11