Treffer: Effects of network topology on the performance of consensus and distributed learning of SVMs using ADMM

Title:
Effects of network topology on the performance of consensus and distributed learning of SVMs using ADMM
Publisher Information:
Data Science and AI division, Department of Computer Science and Engineering, Chalmers University of Technology and University of Gothenburg, Gothenburg, Sweden
PeerJ
Publication Year:
2021
Collection:
University of Skövde: Publications (DiVA)
Document Type:
Fachzeitschrift article in journal/newspaper
File Description:
application/pdf
Language:
English
Relation:
PeerJ Computer Science, 2021, 7; ISI:000626728000001
DOI:
10.7717/peerj-cs.397
Rights:
info:eu-repo/semantics/openAccess
Accession Number:
edsbas.2D620AEF
Database:
BASE

Weitere Informationen

The Alternating Direction Method of Multipliers (ADMM) is a popular and promising distributed framework for solving large-scale machine learning problems. We consider decentralized consensus-based ADMM in which nodes may only communicate with one-hop neighbors. This may cause slow convergence. We investigate the impact of network topology on the performance of an ADMM-based learning of Support Vector Machine using expander, and mean-degree graphs, and additionally some of the common modern network topologies. In particular, we investigate to which degree the expansion property of the network influences the convergence in terms of iterations, training and communication time. We furthermore suggest which topology is preferable. Additionally, we provide an implementation that makes these theoretical advances easily available. The results show that the performance of decentralized ADMM-based learning of SVMs in terms of convergence is improved using graphs with large spectral gaps, higher and homogeneous degrees. ; CC BY 4.0 Corresponding author Shirin Tavara, tavara@chalmers.se The authors received no funding for this work.