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MrPC: causal structure learning in distributed systems

Authors :
Thuc Duy Le
Thin Nguyen
Svetha Venkatesh
Duc Thanh Nguyen
Nguyen, Thin
Nguyen, Duc Thanh
Le, Thuc Duy
Venkatesh, Svetha
ICONIP 2020 International Conference on Neural Information Processing Bangkok, Thailand 18-22 November 2020
Source :
Communications in Computer and Information Science ISBN: 9783030638191, ICONIP (4)
Publication Year :
2020
Publisher :
Switzerland : Springer, 2020.

Abstract

PC algorithm (PC) – named after its authors, Peter and Clark – is an advanced constraint based method for learning causal structures. However, it is a time-consuming algorithm since the number of independence tests is exponential to the number of considered variables. Attempts to parallelise PC have been studied intensively, for example, by distributing the tests to all computing cores in a single computer. However, no effort has been made to speed up PC through parallelising the conditional independence tests into a cluster of computers. In this work, we propose MrPC, a robust and efficient PC algorithm, to accelerate PC to serve causal discovery in distributed systems. Alongside with MrPC, we also propose a novel manner to model non-linear causal relationships in gene regulatory data using kernel functions. We evaluate our method and its variants in the task of building gene regulatory networks. Experimental results on benchmark datasets show that the proposed MrPCgains up to seven times faster than sequential PC implementation. In addition, kernel functions outperform conventional linear causal modelling approach across different datasets. Refereed/Peer-reviewed

Details

Language :
English
ISBN :
978-3-030-63819-1
ISBNs :
9783030638191
Database :
OpenAIRE
Journal :
Communications in Computer and Information Science ISBN: 9783030638191, ICONIP (4)
Accession number :
edsair.doi.dedup.....8b96e80ff4856a2a5b87f9ffb682ed7b