Distributed User Profiling via Spectral Methods
Dan-Cristian Tomozei, Laurent Massouli\'e

TL;DR
This paper explores a distributed spectral method for user profiling that predicts preferences with minimal ratings and no central authority, using local message passing and spectral transformations.
Contribution
It introduces a novel distributed spectral profiling algorithm with provable convergence, enabling user preference prediction without prior class knowledge.
Findings
High-probability preference prediction from few ratings
Empirical validation on Netflix data
Distributed algorithms with provable convergence
Abstract
User profiling is a useful primitive for constructing personalised services, such as content recommendation. In the present paper we investigate the feasibility of user profiling in a distributed setting, with no central authority and only local information exchanges between users. We compute a profile vector for each user (i.e., a low-dimensional vector that characterises her taste) via spectral transformation of observed user-produced ratings for items. Our two main contributions follow: i) We consider a low-rank probabilistic model of user taste. More specifically, we consider that users and items are partitioned in a constant number of classes, such that users and items within the same class are statistically identical. We prove that without prior knowledge of the compositions of the classes, based solely on few random observed ratings (namely such ratings for …
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Taxonomy
TopicsRecommender Systems and Techniques · Advanced Bandit Algorithms Research · Human Mobility and Location-Based Analysis
