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dc.contributorSalamó, Maria
dc.contributor.authorGutiérrez Fandiño, Asier
dc.contributor.otherUniversitat Politècnica de Catalunya. Universitat de Barcelona
dc.date.accessioned2021-04-30T08:54:42Z
dc.date.available2021-04-30T08:54:42Z
dc.date.issued2020-04-14
dc.identifier.urihttp://hdl.handle.net/2117/344882
dc.description.abstractRecommender Systems (RS) are a fundamental part of any relevant e-commerce website, and the inclusion, improvement and optimization of this kind of systems is a growing trend. As these systems evolve, people are more demanding with the accuracy and explainability of their recommendations. The goal of this work is to create a RS that provides simple explanations of the recommendations that it provides. These explanations are obtained by nding the di erent relations that can be interpreted from the data of any dataset. This work shows that recommendations can be explained in an easy way with Machine Learning (ML) algorithms that let contexts be understood from di erent perspectives. In this master thesis, every ML algorithm provides recommendations. Since algorithms can be explained, recommendations provided by them can also be explained in natural language, and, in some cases, the explanations are even provided with a helper picture. ML algorithms used in this master thesis provide recommendations with some features that can be queried by the user in order to meet user's current recommendation expectations or ltering settings. Users, therefore, obtain not only explainability, but a very open recommender system where dark patterns do not exist and there are neither boring nor repetitive recommendations. Users can easily explore explainable recommendation spaces that are prepared speci cally for each one of them, with parameters that help them decide implicitly the ratio of exploration and exploitation. All this work is presented in a framework that allows to encode as much context information as wanted by capturing as best recommendation space as possible at the time explainability results evolve even richer. This framework comprehends all the di erent representation, aggregation, computing and visualization techniques coded in a modular and extendable way so that it can be applied to any recommendation scenario. A variety of datasets have been tested in many ways showing surprisingly positive results of recommendation explanation capabilities in all the datasets.
dc.language.isoeng
dc.publisherUniversitat Politècnica de Catalunya
dc.subjectÀrees temàtiques de la UPC::Informàtica
dc.subject.lcshRecommender systems (Information filtering)
dc.subject.lcshMachine learning
dc.subject.othersistemes de recomanació
dc.subject.otherexplicabilitat
dc.subject.otherdependent de context
dc.subject.otherampliable
dc.subject.otherinteractiu per a l'usuari
dc.subject.othermúltiples conjunt de dades
dc.subject.otherrecommender systems
dc.subject.otherexplainability
dc.subject.othercontext-aware
dc.subject.otherexpandable
dc.subject.otheruser-interactive
dc.subject.othermultidataset
dc.titleExplainability on recommender systems using contextual data
dc.typeMaster thesis
dc.subject.lemacSistemes recomanadors (Filtratge d'informació)
dc.subject.lemacAprenentatge automàtic
dc.identifier.slug148688
dc.rights.accessOpen Access
dc.date.updated2020-09-21T06:49:47Z
dc.audience.educationlevelMàster
dc.audience.mediatorFacultat d'Informàtica de Barcelona
dc.audience.degreeMÀSTER UNIVERSITARI EN INTEL·LIGÈNCIA ARTIFICIAL (Pla 2017)


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