Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration

The present work deals with the recommendation of values in interactive configuration, with no prior knowledge about the user, but given a list of products previously configured and bought by other users ("sales histories"). The basic idea is to recommend, for a given variable at a...

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Main Authors: Hélène Fargier, Pierre-François Gimenez, Jérôme Mengin
Format: Article
Language:English
Published: Graz University of Technology 2020-03-01
Series:Journal of Universal Computer Science
Subjects:
Online Access:https://lib.jucs.org/article/24003/download/pdf/
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spelling doaj-00fba7e4f1084db6bfaac755e4f727002021-09-28T14:07:48ZengGraz University of TechnologyJournal of Universal Computer Science0948-69682020-03-0126331834210.3897/jucs.2020.01824003Experimental Evaluation of Three Value Recommendation Methods in Interactive ConfigurationHélène Fargier0Pierre-François Gimenez1Jérôme Mengin2IRIT, Université de ToulouseLAAS-CNRS, Université de ToulouseIRIT, Université de ToulouseThe present work deals with the recommendation of values in interactive configuration, with no prior knowledge about the user, but given a list of products previously configured and bought by other users ("sales histories"). The basic idea is to recommend, for a given variable at a given step of the configuration process, a value that has been chosen by other users in a similar context, where the context is defined by the variables that have already been decided, and the values that the current user has chosen for these variables. From this point, two directions have been explored. The first one is to select a set of similar configurations in the sales history (typically, the k closest ones, using a distance measure) and to compute the best recommendation from this set - this is the line proposed by [Coster et al., 2002]. The second one, that we propose here, is to learn a model from the entire sample as representation of the users' preferences, and to use it to recommend a pertinent value; three families of models are experimented: the Bayesian networks, the naive Bayesian networks and the lexicographic preferences trees.https://lib.jucs.org/article/24003/download/pdf/product configurationrecommendationmachine lea
collection DOAJ
language English
format Article
sources DOAJ
author Hélène Fargier
Pierre-François Gimenez
Jérôme Mengin
spellingShingle Hélène Fargier
Pierre-François Gimenez
Jérôme Mengin
Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration
Journal of Universal Computer Science
product configuration
recommendation
machine lea
author_facet Hélène Fargier
Pierre-François Gimenez
Jérôme Mengin
author_sort Hélène Fargier
title Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration
title_short Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration
title_full Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration
title_fullStr Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration
title_full_unstemmed Experimental Evaluation of Three Value Recommendation Methods in Interactive Configuration
title_sort experimental evaluation of three value recommendation methods in interactive configuration
publisher Graz University of Technology
series Journal of Universal Computer Science
issn 0948-6968
publishDate 2020-03-01
description The present work deals with the recommendation of values in interactive configuration, with no prior knowledge about the user, but given a list of products previously configured and bought by other users ("sales histories"). The basic idea is to recommend, for a given variable at a given step of the configuration process, a value that has been chosen by other users in a similar context, where the context is defined by the variables that have already been decided, and the values that the current user has chosen for these variables. From this point, two directions have been explored. The first one is to select a set of similar configurations in the sales history (typically, the k closest ones, using a distance measure) and to compute the best recommendation from this set - this is the line proposed by [Coster et al., 2002]. The second one, that we propose here, is to learn a model from the entire sample as representation of the users' preferences, and to use it to recommend a pertinent value; three families of models are experimented: the Bayesian networks, the naive Bayesian networks and the lexicographic preferences trees.
topic product configuration
recommendation
machine lea
url https://lib.jucs.org/article/24003/download/pdf/
work_keys_str_mv AT helenefargier experimentalevaluationofthreevaluerecommendationmethodsininteractiveconfiguration
AT pierrefrancoisgimenez experimentalevaluationofthreevaluerecommendationmethodsininteractiveconfiguration
AT jeromemengin experimentalevaluationofthreevaluerecommendationmethodsininteractiveconfiguration
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