J4 ›› 2012, Vol. 30 ›› Issue (4): 418-.

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Parallel Extreme Learning Machines Based on Binary Cascade Architecture

WANG Leia,b,LIU Yana,XIA Juanb   

  1. a.School of Economics Information Engineering;b.The Key Lab of Financial Intelligence and Financial Engineering,Southwestern University of Finance &Economics,Chengdu 610074,China
  • Online:2012-07-26 Published:2012-10-12

Abstract:

ELM(Extreme Learning Machines) always works inefficiently on large-scale and high-dimension datasets for huge memory and computation costs.We prepose a novel parallel algorithm for training ELM quickly based on “divide and conquer” strategy.It dispatches large-scale datasets to a cluster of computing nodes by utilizing special binary cascade architecture,and then updates weights of SLFN(Single Hidden Layer Feed-forward Neural Network) in parallel.Theoretical analysis proves that the new algorithm converges to the best least-square solution monotonously with finite steps.Preliminary experimental results show that the new algorithm  has good generalization ability, excellent speedup ratio and parallel efficiency.

Key words: single hidden layer feed-forward neural network, extreme learning machines, parallel extreme learning machines, binary cascade architecture

CLC Number: 

  • TP391.4