DocumentCode :
1796740
Title :
MapReduce guided approximate inference over graphical models
Author :
Haque, Ashraful ; Chandra, Swarup ; Khan, Latifur ; Baron, Michael
Author_Institution :
Dept. of Comput. Sci., Univ. of Texas at Dallas, Richardson, TX, USA
fYear :
2014
fDate :
9-12 Dec. 2014
Firstpage :
446
Lastpage :
453
Abstract :
A graphical model represents the data distribution of a data generating process and inherently captures its feature relationships. This stochastic model can be used to perform inference, to calculate posterior probabilities, in various applications such as classification. Exact inference algorithms are known to be intractable on large networks due to exponential time and space complexity. Approximate inference algorithms are instead widely used in practice to overcome this constraint, with a trade off in accuracy. Stochastic sampling is one such method where an approximate probability distribution is empirically evaluated using various sampling techniques. However, these algorithms may still suffer from scalability issues on large and complex networks. To address this challenge, we have designed and implemented several MapReduce based distributed versions of a specific type of approximate inference algorithm called Adaptive Importance Sampling (AIS). We compare and evaluate the proposed approaches using benchmark networks. Experimental result shows that our approach achieves significant scaleup and speedup compared to the sequential algorithm, while achieving similar accuracy asymptotically.
Keywords :
data analysis; graph theory; importance sampling; inference mechanisms; parallel processing; statistical distributions; AIS; MapReduce guided approximate inference algorithms; adaptive importance sampling; approximate probability distribution; benchmark networks; data distribution; data generating process; empirical evaluation; exponential space complexity; exponential time complexity; feature relationships; graphical models; large-complex networks; posterior probabilities; scalability issues; stochastic model; stochastic sampling; Approximation algorithms; Computer architecture; Graphical models; Inference algorithms; Markov random fields; Monte Carlo methods; Proposals; Adaptive Importance Sampling; Approximate Inference; MapReduce;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Computational Intelligence and Data Mining (CIDM), 2014 IEEE Symposium on
Conference_Location :
Orlando, FL
Type :
conf
DOI :
10.1109/CIDM.2014.7008702
Filename :
7008702
Link To Document :
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