DocumentCode :
33173
Title :
Convex Optimization for Big Data: Scalable, randomized, and parallel algorithms for big data analytics
Author :
Cevher, Volkan ; Becker, Steffen ; Schmidt, Martin
Author_Institution :
Electr. Eng., Swiss Inst. of Technol., Lausanne, Switzerland
Volume :
31
Issue :
5
fYear :
2014
fDate :
Sept. 2014
Firstpage :
32
Lastpage :
43
Abstract :
This article reviews recent advances in convex optimization algorithms for big data, which aim to reduce the computational, storage, and communications bottlenecks. We provide an overview of this emerging field, describe contemporary approximation techniques such as first-order methods and randomization for scalability, and survey the important role of parallel and distributed computation. The new big data algorithms are based on surprisingly simple principles and attain staggering accelerations even on classical problems.
Keywords :
Big Data; approximation theory; convex programming; data analysis; parallel processing; randomised algorithms; Big Data analytics; communications bottleneck reduction; computational bottleneck reduction; contemporary approximation techniques; convex optimization; distributed computation; first-order methods; parallel algorithm; parallel computation; randomized algorithm; storage bottleneck reduction; Big data; Convex functions; Data processing; Gradient methods; Information analysis; Random processes; Scalability; Signal processing algorithms;
fLanguage :
English
Journal_Title :
Signal Processing Magazine, IEEE
Publisher :
ieee
ISSN :
1053-5888
Type :
jour
DOI :
10.1109/MSP.2014.2329397
Filename :
6879615
Link To Document :
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