Alan Said
Alan Said
Home
Bio
Talks
Publications
Service
Light
Dark
Automatic
Benchmarking
Coherence and inconsistencies in rating behavior: estimating the magic barrier type: publication profile: false of recommender systems
Recommender Systems have to deal with a wide variety of users and user types that express their preferences in different ways. This …
Alan Said
,
A. Bellogín
Jan 1, 2018
Cite
DOI
Introduction to the Special Issue on Recommender System Benchmarking
Recommender systems addvalue to vast content resources by matching users with items of interest. In recent years, immense progress has …
Paolo Cremonesi
,
Alan Said
,
Domonkos Tikk
,
Michelle X. Zhou
Cite
DOI
URL
Recommender systems challenge 2014
The 2014 ACM Recommender Systems Challenge invited re- searchers and practitioners to work towards a common goal, this goal being the …
Alan Said
,
S. Dooms
,
B. Loni
,
D. Tikk
Cite
DOI
RiVal - A toolkit to foster reproducibility in recommender system evaluation
Currently, it is diffcult to put in context and compare the results from a given evaluation of a recommender system, mainly because too …
Alan Said
,
A. Bellogín
Cite
DOI
A month in the life of a production news recommender system
During the last decade, recommender systems have become a ubiquitous feature in the online world. Research on systems and algorithms in …
Alan Said
,
Jimmy Lin
,
Alejandro Bellogín
,
Arjen De Vries
Cite
DOI
URL
Workshop on benchmarking adaptive retrieval and recommender systems
Evaluating adaptive and personalized information retrieval tech-niques is known to be a difficult endeavor. The rapid evolution of …
Pablo Castells
,
Frank Hopfgartner
,
Alan Said
,
Mounia Lalmas
Cite
DOI
URL
A 3D approach to recommender system evaluation
In this work we describe an approach at multi-objective recommender system evaluation based on a previously introduced 3D benchmarking …
Alan Said
,
S. Albayrak
,
B.J. Jain
Cite
DOI
News Recommendation in the Wild: CWI's Recommendation Algorithms in the NRS type: publication profile: false Challenge
This work presents the recommendation algorithms deployed by the winning team (recomenders.net) in the ACM RecSys 2013 News Recommender …
Alan Said
,
Alejandro Bellogín
,
Arjen De Vries
Jan 1, 2013
Cite
Cite
×