Temporal network analysis of Twitter data shows echo chamber strength declining due to rising cross-opinion interactions, with polarization and network dynamics evolving independently.
Divide and Conquer: Partitioning Online Social Networks
1 Pith paper cite this work. Polarity classification is still indexing.
abstract
Online Social Networks (OSNs) have exploded in terms of scale and scope over the last few years. The unprecedented growth of these networks present challenges in terms of system design and maintenance. One way to cope with this is by partitioning such large networks and assigning these partitions to different machines. However, social networks possess unique properties that make the partitioning problem non-trivial. The main contribution of this paper is to understand different properties of social networks and how these properties can guide the choice of a partitioning algorithm. Using large scale measurements representing real OSNs, we first characterize different properties of social networks, and then we evaluate qualitatively different partitioning methods that cover the design space. We expose different trade-offs involved and understand them in light of properties of social networks. We show that a judicious choice of a partitioning scheme can help improve performance.
fields
physics.soc-ph 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
citing papers explorer
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Inside the Echo Chamber: Disentangling network dynamics from polarization
Temporal network analysis of Twitter data shows echo chamber strength declining due to rising cross-opinion interactions, with polarization and network dynamics evolving independently.