Title :
A Channel Coding Perspective of Collaborative Filtering
Author :
Aditya, S.T. ; Dabeer, Onkar ; Dey, Bikash Kumar
Author_Institution :
Stanford Univ., Stanford, CA, USA
fDate :
4/1/2011 12:00:00 AM
Abstract :
We consider the problem of collaborative filtering from a channel coding perspective. We model the underlying rating matrix as a finite alphabet matrix with block constant structure. The observations are obtained from this underlying matrix through a discrete memoryless channel with a noisy part representing noisy user behavior and an erasure part representing missing data. Moreover, the clusters over which the underlying matrix is constant are unknown. We establish a threshold result for this model: if the largest cluster size is smaller than C1 log(mn) (where the rating matrix is of size m × n), then the underlying matrix cannot be recovered with any estimator, but if the smallest cluster size is larger than C2 log(mn), then we show a polynomial time estimator with asymptotically vanishing probability of error. In the case of uniform cluster size, not only the order of the threshold, but also the constant is identified.
Keywords :
channel coding; groupware; information filtering; matrix algebra; pattern classification; probability; recommender systems; block constant structure; channel coding; collaborative filtering; discrete memoryless channel; error probability; finite alphabet matrix; polynomial time estimator; rating matrix; recommendation system; Channel coding; Clustering algorithms; Collaboration; Decoding; Noise; Noise measurement; Upper bound; Channel coding; clustering; collaborative filtering; matrix completion; recommendation systems;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2011.2111190