Everyone's an Influencer: Quantifying Influence on Twitter
Source:
Fourth International Conference on Web Search and Data Mining (2011)
Abstract:
In this paper we investigate the attributes and relative influence
of 1.6M Twitter users by tracking 74 million diffusion
events that took place on the Twitter follower graph over
a two month interval in 2009. Unsurprisingly, we find that
the largest cascades tend to be generated by users who have
been influential in the past and who have a large number
of followers. We also find that URLs that were rated more
interesting and/or elicited more positive feelings by workers
on Mechanical Turk were more likely to spread. In spite of
these intuitive results, however, we find that predictions of
which particular user or URL will generate large cascades
are relatively unreliable. We conclude, therefore, that wordof-
mouth diffusion can only be harnessed reliably by targeting
large numbers of potential influencers, thereby capturing
average effects. Finally, we consider a family of hypothetical
marketing strategies, defined by the relative cost
of identifying versus compensating potential “influencers.”
We find that although under some circumstances, the most
influential users are also the most cost-effective, under a
wide range of plausible assumptions the most cost-effective
performance can be realized using “ordinary influencers”—
individuals who exert average or even less-than-average influence.
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