ComplexRec 2018

Proceedings of Second Workshop on Recommendation in Complex Scenarios

Casper Petersen (Redaktør), Toine Bogers (Redaktør), Marijn Koolen (Redaktør), Bamshad Mobasher (Redaktør), Alan Said (Redaktør)

Publikation: Bog/antologi/afhandling/rapportAntologiForskningpeer review

Resumé

Over the past decade, recommendation algorithms for ratings prediction and item ranking have steadily matured. However, these state-of-the-art algorithms are typically applied in relatively straightforward and static scenarios: given information about a user’s past item preferences in isolation, can we predict whether they will like a new item or rank all unseen items based on predicted interest?

In reality, recommendation is often a more complex problem: the evaluation of a list of recommended items never takes place in a vacuum, and it is often a single step in the user’s more complex background task or need. The goal of the ComplexRec 2018 workshop is to offer an interactive venue for discussing approaches to recommendation in complex scenarios that have no simple one-size-fits-all solution.
OriginalsprogEngelsk
Antal sider37
StatusUdgivet - 7 okt. 2018
BegivenhedComplexRec 2018: 2nd Workshop on Recommendation in Complex Scenarios - Vancouver, BC, Canada, Vancouver, Canada
Varighed: 7 okt. 20187 okt. 2018
Konferencens nummer: 2
http://complexrec2018.aau.dk

Workshop

WorkshopComplexRec 2018: 2nd Workshop on Recommendation in Complex Scenarios
Nummer2
LokationVancouver, BC, Canada
LandCanada
ByVancouver
Periode07/10/201807/10/2018
Internetadresse

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Petersen, C., Bogers, T., Koolen, M., Mobasher, B., & Said, A. (red.) (2018). ComplexRec 2018: Proceedings of Second Workshop on Recommendation in Complex Scenarios.
Petersen, Casper (Redaktør) ; Bogers, Toine (Redaktør) ; Koolen, Marijn (Redaktør) ; Mobasher, Bamshad (Redaktør) ; Said, Alan (Redaktør). / ComplexRec 2018 : Proceedings of Second Workshop on Recommendation in Complex Scenarios. 2018. 37 s.
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ComplexRec 2018 : Proceedings of Second Workshop on Recommendation in Complex Scenarios. / Petersen, Casper (Redaktør); Bogers, Toine (Redaktør); Koolen, Marijn (Redaktør); Mobasher, Bamshad (Redaktør); Said, Alan (Redaktør).

2018. 37 s.

Publikation: Bog/antologi/afhandling/rapportAntologiForskningpeer review

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Petersen C, (ed.), Bogers T, (ed.), Koolen M, (ed.), Mobasher B, (ed.), Said A, (ed.). ComplexRec 2018: Proceedings of Second Workshop on Recommendation in Complex Scenarios. 2018. 37 s.