Nir Nice
Microsoft
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Publication
Featured researches published by Nir Nice.
conference on recommender systems | 2014
Yehuda Finkelstein; Ran Gilad-Bachrach; Liran Katzir; Noam Koenigstein; Nir Nice; Ulrich Paquet
A prominent approach in collaborative filtering based recommender systems is using dimensionality reduction (matrix factorization) techniques to map users and items into low-dimensional vectors. In such systems, a higher inner product between a user vector and an item vector indicates that the item better suits the users preference. Traditionally, retrieving the most suitable items is done by scoring and sorting all items. Real world online recommender systems must adhere to strict response-time constraints, so when the number of items is large, scoring all items is intractable. We propose a novel order preserving transformation, mapping the maximum inner product search problem to Euclidean space nearest neighbor search problem. Utilizing this transformation, we study the efficiency of several (approximate) nearest neighbor data structures. Our final solution is based on a novel use of the PCA-Tree data structure in which results are augmented using paths one hamming distance away from the query (neighborhood boosting). The end result is a system which allows approximate matches (items with relatively high inner product, but not necessarily the highest one). We evaluate our techniques on two large-scale recommendation datasets, Xbox Movies and Yahoo~Music, and show that this technique allows trading off a slight degradation in the recommendation quality for a significant improvement in the retrieval time.
conference on recommender systems | 2012
Noam Koenigstein; Nir Nice; Ulrich Paquet; Nir Schleyen
A recent addition to Microsofts Xbox Live Marketplace is a recommender system which allows users to explore both movies and games in a personalized context. The system largely relies on implicit feedback, and runs on a large scale, serving tens of millions of daily users. We describe the system design, and review the core recommendation algorithm.
Archive | 2008
Efim Hudis; Yigal Edery; Oleg Ananiev; John F. Wohlfert; Nir Nice
Archive | 2009
Noam Ben-Yochanan; John Neystadt; Nir Nice; Max Uritsky; Rushmi U. Malaviarachchi
Archive | 2006
Gennady Medvinsky; Nir Nice; Tomer Shiran; Alexander Teplitsky; Paul J. Leach; John Neystadt
Archive | 2009
Nir Nice; Oleg Ananiev; John F. Wohlfert; Amit Finkelstein; Alexander Teplitsky
Archive | 2008
Nir Nice; Hen Fitoussi
Archive | 2008
Efim Hudis; Yigal Edery; Oleg Ananiev; John F. Wohlfert; Nir Nice
Archive | 2010
John Neystadt; Nir Nice
Archive | 2008
Nir Nice; Anat Eyal; Chandrasekhar Nukala; Sreenivas Addagatla; Eugene (John) Neystadt