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Gaussian Process Factorization Machines for Context-aware Recommendations

dc.contributor.authorNguyen, Trung
dc.contributor.authorKaratzoglou, Alexandros
dc.contributor.authorBaltrunas, Linas
dc.coverage.spatialGold Coast Australia
dc.date.accessioned2015-12-10T23:23:31Z
dc.date.createdJuly 6-11 2014
dc.date.issued2014
dc.date.updated2015-12-10T10:40:29Z
dc.description.abstractContext-aware recommendation (CAR) can lead to significant improvements in the relevance of the recommended items by modeling the nuanced ways in which context influences preferences. The dominant approach in context-aware recommendation has been the multidimensional latent factors approach in which users, items, and context variables are represented as latent features in a low-dimensional space. An interaction between a user, item, and a context variable is typically modeled as some linear combination of their latent features. However, given the many possible types of interactions between user, items and contextual variables, it may seem unrealistic to restrict the interactions among them to linearity. To address this limitation, we develop a novel and powerful non-linear probabilistic algorithm for context-aware recommendation using Gaussian processes. The method which we call Gaussian Process Factorization Machines (GPFM) is applicable to both the explicit feedback setting (e.g. numerical ratings as in the Netflix dataset) and the implicit feedback setting (i.e. purchases, clicks). We derive stochastic gradient descent optimization to allow scalability of the model. We test GPFM on five different benchmark contextual datasets. Experimental results demonstrate that GPFM outperforms state-of-the-art context-aware recommendation methods.
dc.identifier.isbn9781450322577
dc.identifier.urihttp://hdl.handle.net/1885/66993
dc.publisherAssociation for Computing Machinery (ACM)
dc.relation.ispartofseries37th Annual ACM SIGIR Conference
dc.sourceGaussian Process Factorizatin Machines for Context-aware Recommendations
dc.titleGaussian Process Factorization Machines for Context-aware Recommendations
dc.typeConference paper
local.bibliographicCitation.lastpage72
local.bibliographicCitation.startpage63
local.contributor.affiliationNguyen, Trung, College of Engineering and Computer Science, ANU
local.contributor.affiliationKaratzoglou, Alexandros, Telefonica Research
local.contributor.affiliationBaltrunas, Linas, Telefonica Research
local.contributor.authoruidNguyen, Trung, u5075561
local.description.embargo2037-12-31
local.description.notesImported from ARIES
local.description.refereedYes
local.identifier.absfor170203 - Knowledge Representation and Machine Learning
local.identifier.absseo970108 - Expanding Knowledge in the Information and Computing Sciences
local.identifier.ariespublicationu4334215xPUB1379
local.identifier.doi10.1145/2600428.2609623
local.identifier.scopusID2-s2.0-84904581264
local.type.statusPublished Version

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