Back to Search Start Over

Parallel and Streaming Algorithms for K-Core Decomposition

Authors :
Esfandiari, Hossein
Lattanzi, Silvio
Mirrokni, Vahab
Publication Year :
2018

Abstract

The $k$-core decomposition is a fundamental primitive in many machine learning and data mining applications. We present the first distributed and the first streaming algorithms to compute and maintain an approximate $k$-core decomposition with provable guarantees. Our algorithms achieve rigorous bounds on space complexity while bounding the number of passes or number of rounds of computation. We do so by presenting a new powerful sketching technique for $k$-core decomposition, and then by showing it can be computed efficiently in both streaming and MapReduce models. Finally, we confirm the effectiveness of our sketching technique empirically on a number of publicly available graphs.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1808.02546
Document Type :
Working Paper