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Preface - UMAP 2014 Late-breaking Results

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Proceedings of the

Late-breaking Results at the 22 nd International Conference on User

Modeling, Adaptation, and Personalization (UMAP 2014)

7-11 July 2014, Aalborg, Denmark

Iván Cantador

1

, Min Chi

2

1 Universidad Autónoma de Madrid, Spain ivan.cantador @uam.es

2 North Carolina State University, USA mchi@ncsu.edu

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Preface

The 22nd International Conference on User Modeling, Adaptation, and Personalization (UMAP 2014) was held in Aalborg, Denmark, on July 7-11 2014.

UMAP 2014 late-breaking results contain original and unpublished accounts of innovative research ideas, preliminary results, industry showcases, and system prototypes, addressing both the theory and practice of User Modeling, Adaptation and Personalization. In addition, papers introducing recently started research projects or summarizing project results are included as well.

A total of 6 papers were presented as late-breaking results. Among them, there were five posters and 1 demo. A total of fifteen submissions were received, 13 poster submissions and 2 demo submissions. Each of them was reviewed by at least three members of the Program Committee. Submissions were assessed based on their originality and novelty, potential contribution to the research field, potential impact in particular use cases, and the usefulness of presented experiences, as well as their overall readability.

We thank all authors for submitting and presenting their works, and members of the Program Committee for providing their time and expertise for reviewing and selecting the papers. All their efforts made UMAP 2014 late-breaking results possible.

Iván Cantador Min Chi

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Program Committee

Alejandro Bellogín Universidad Autónoma de Madrid, Spain Shlomo Berkovsky NICTA, Australia

Pradipta Biswas Wolfson College, Cambridge University, UK

Federica Cena Department of Computer Science, University of Torino, Italy Mihaela Cocea School of Computing, University of Portsmouth, UK Elizabeth M. Daly IBM Research, Ireland

Vania Dimitrova School of Computing, University of Leeds, UK Eelco Herder L3S Research Center, Germany

Jesse Hoey University of Waterloo, Canada Dietmar Jannach TU Dortmund, Germany

Bart Knijnenburg University of California, Irvine, USA Nan Li Carnegie Mellon University, USA Pasquale Lops University of Bari, Italy

Collin Lynch University of Pittsburgh, USA Gordon McCalla University of Saskatchewan, Canada

Tanja Mitrovic University of Canterbury, Christchurch, New Zealand Alan Said TU Delft, The Netherlands

Olga C. Santos aDeNu Research Group (UNED), Spain Ben Steichen University of British Columbia, Canada Jie Zhang Nanyang Technological University, Singapore

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