|
Vol-1688 urn:nbn:de:0074-1688-5Copyright ©
2016 for the individual papers
by the papers' authors. Copying permitted for private and academic purposes.
This volume is published and copyrighted by its editors.
|
Poster-RecSys 2016
Poster Proceedings of ACM RecSys 2016
Proceedings of the Poster Track of the 10th ACM Conference on Recommender Systems (RecSys 2016)
Boston, USA, September 17, 2016.
Edited by
Ido Guy, Yahoo Research, Israel
Amit Sharma, Microsoft Research, USA
Table of Contents
- MoocRec.com : Massive Open Online Courses Recommender System
Panagiotis Symeonidis, Dimitrios Malakoudis
- Recommendation from Intransitive Pairwise Comparisons
Elja Arjas, Arnoldo Frigessi, Valeria Vitelli, Marta Crispino
- A Secure Shopping Experience Based on Blockchain and Beacon Technology
Remo Manuel Frey, Denis Vučkovac, Alexander Ilic
- Cross Domain Recommendation Using Vector Space Transfer Learning
Masahiro Kazama, Istvan Varga
- Genre Prediction to Inform the Recommendation Process
Nevena Dragovic, Maria Soledad Pera
- An Entity Graph Based Recommender System
Sneha Chaudhari, Amos Azaria, Tom Mitchell
- Explicit Elimination of Similarity Blocking for Session-based Recommendation
Mattia Brusamento, Roberto Pagano, Martha Larson, Paolo Cremonesi
- Modelling Session Activity with Neural Embedding
Oren Barkan, Yael Brumer, Noam Koenigstein
- Detecting Trending Venues Using Foursquare’s Data
Stephanie Yang, Max Sklar
- How to Survive Dynamic Pricing Competition in E-commerce
Rainer Schlosser, Martin Boissier, Andre Schober, Matthias Uflacker
- Weighted Random Walks for Meta-Path Expansion in Heterogeneous Networks
Fatemeh Vahedian, Robin Burke, Bamshad Mobasher
- rrecsys: An R-package for Prototyping Recommendation Algorithms
Ludovik Çoba, Markus Zanker
- Item2vec: Neural Item Embedding for Collaborative Filtering
Oren Barkan, Noam Koenigstein
- Idomaar: A Framework for Multi-dimensional Benchmarking of Recommender Algorithms
Mario Scriminaci, Andreas Lommatzsch, Benjamin Kille, Frank Hopfgartner, Martha Larson, Davide Malagoli, Andras Sereny, Till Plumbaum
- Tip Ranker: A M.L. Approach to Ranking Short Reviews
Enrique Cruz, Berk Kapicioglu
- Deep Auto-Encoding for Context-Aware Inference of Preferred Items’ Categories
Moshe Unger, Bracha Shapira, Lior Rokach, Ariel Bar
- Music Playlist Recommendation via Preference Embedding
Chih-Ming Chen, Chun-Yao Yang, Chih-Chun Hsia, Yian Chen, Ming-Feng Tsai
- Dish Discovery via Word Embeddings on Restaurant Reviews
Chih-Yu Chao, Yi-Fan Chu, Yi Ho, Chuan-Ju Wang, Ming-Feng Tsai
- Combining Dynamic A/B Experimentation and Recommender Systems in MOOCs
Joseph Jay Williams, Luong Hoang
- Towards Understanding Latent Factors and User Profiles by Enhancing Matrix Factorization
with Tags
Tim Donkers, Benedikt Loepp, Jürgen Ziegler
- Is Readability a Valuable Signal for Hashtag Recommendations?
Ion Madrazo, Maria Soledad Pera
- Memory Priming and User Preferences
Evagelia Anagnostopoulou, Efthimios Bothos, Babis Magoutas, Gregoris Mentzas
- Representing Items as Word-Embedding Vectors and Generating Recommendations by Measuring
their Linear Independence
Ludovico Boratto, Salvatore Carta, Gianni Fenu, Roberto Saia
- User Segmentation for Controlling Recommendation Diversity
Farzad Eskandanian, Bamshad Mobasher, Robin Burke
We offer a BibTeX file for citing papers of this workshop from LaTeX.
2016-09-15: submitted by Amit Sharma, metadata incl. bibliographic data published under Creative Commons CC0
2016-09-16: published on CEUR-WS.org
|valid HTML5|