Launchers and Targets in Social Networks
Influence propagation in social networks is a subject of growing interest. A relevant issue in those networks involves the identification of key influencers. These players have an important role on viral marketing strategies and message propagation, including political propaganda and fake news. In e...
Saved in:
| Main Authors | , |
|---|---|
| Format | Journal Article |
| Language | English |
| Published |
27.01.2021
|
| Subjects | |
| Online Access | Get full text |
| DOI | 10.48550/arxiv.2101.11337 |
Cover
| Summary: | Influence propagation in social networks is a subject of growing interest. A
relevant issue in those networks involves the identification of key
influencers. These players have an important role on viral marketing strategies
and message propagation, including political propaganda and fake news. In
effect, an important way to fight malicious usage on social networks is to
understand their properties, their structure and the way messages propagate.
This paper proposes two new indices for analysing message propagation in
social networks, based on the network topological nature and the power of the
message. The first index involves the strength of each node as a launcher of
the message, dividing the nodes into launchers and non-launchers. The second
index addresses the potential of each member as a receiver (target) of the
message, dividing the nodes into targets and non-targets. Launcher individuals
should indicate strong influencers and target individuals should identify the
best target consumers. These indices can assist other known metrics when used
to select efficient influencers in a social network. For instance, instead of
choosing a strong and probably expensive member according to its degree in the
network (number of followers), we may previously select those belonging to the
launchers group and look for the lowest degree members, which are probably
cheaper but still guarantying almost the same influence effectiveness as the
largest degree members.
On a different direction, using the second index, the strong target members
should characterize relevant consumers of information in the network, which may
include fake news' regular collectors.
We discuss these indices using small-world randomly generated graphs and a
number of real-world social networks available in known datasets repositories. |
|---|---|
| DOI: | 10.48550/arxiv.2101.11337 |