DocumentCode
105862
Title
Dictionary Learning Over Distributed Models
Author
Jianshu Chen ; Towfic, Zaid J. ; Sayed, Ali H.
Author_Institution
Microsoft Res., Redmond, WA, USA
Volume
63
Issue
4
fYear
2015
fDate
Feb.15, 2015
Firstpage
1001
Lastpage
1016
Abstract
In this paper, we consider learning dictionary models over a network of agents, where each agent is only in charge of a portion of the dictionary elements. This formulation is relevant in Big Data scenarios where large dictionary models may be spread over different spatial locations and it is not feasible to aggregate all dictionaries in one location due to communication and privacy considerations. We first show that the dual function of the inference problem is an aggregation of individual cost functions associated with different agents, which can then be minimized efficiently by means of diffusion strategies. The collaborative inference step generates dual variables that are used by the agents to update their dictionaries without the need to share these dictionaries or even the coefficient models for the training data. This is a powerful property that leads to an effective distributed procedure for learning dictionaries over large networks (e.g., hundreds of agents in our experiments). Furthermore, the proposed learning strategy operates in an online manner and is able to respond to streaming data, where each data sample is presented to the network once.
Keywords
inference mechanisms; signal processing; coefficient models; collaborative inference step; dictionary elements; dictionary learning; dictionary models; diffusion strategies; distributed models; inference problem; learning strategy; Aggregates; Cost function; Dictionaries; Distributed databases; Nickel; Vectors; Bi-clustering; conjugate functions; dictionary learning; diffusion strategies; distributed model; dual decomposition; image denoising; novel document detection; topic modeling;
fLanguage
English
Journal_Title
Signal Processing, IEEE Transactions on
Publisher
ieee
ISSN
1053-587X
Type
jour
DOI
10.1109/TSP.2014.2385045
Filename
6994844
Link To Document