Viral coefficient – Unveiling the
Holy Grail of online marketing
Joni Salminen & Aarni Hytönen
17.10.2012 1
Contents
1. What?
2. Why?
3. Results?
4. Implications?
5. Limitations?
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What?
• Modelling growth of viral marketing– diffusion of marketing messages in a social network
– The model can be used to determine the viral growth of visitors
in a website at a given time.
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”Viral marketing” is nothing new – it is like word of mouth or peer marketing, only the Internet eliminatesphysical distance and increases the number of potential connections inside the network.
Example
“Like, with ONElist, the grand total of all the advertising I ever did
for that company was I spammed some guy who had posted to
Usenet looking for a mailing list provider. And he was in Norway;
this was on a Saturday evening in January of ‘98, and I just said,
‘Hey, try my service.’ The next day, I wake up, and not only had
he created a list, ten of his friends had created lists. We had
hundreds of users, just within the span of a few hours and one
email. After 11 months we had a million users. Just from that.”
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Why?
• Limited base model used by practitioners
how to improve?
• Through better models better applications,
better theory.
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Base model (Tokuda 2008)
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If x * y > 1, then viralgrowth!
Limitations of the base model
• Lack of carrying capacity
• Circularity (static loop)
• Lack of time (saturation)
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Viral paths
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B
C
A
D
Results?
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where
a = acceptance rate (%)
b = average invites per person
c = initial target group
d = carrying capacity
t = time
Solutions to the base model
• Lack of carrying capacity added
• Circularity (static loop) coefficient
• Lack of time (saturation) added
• (Separating initial target group.)
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Practical implications?
a. increase number of patient zeros (initial group) through
advertising/promotion
b. convert key influencers to increase acceptance (influencers
as hubs, more connections and better quality)
c. run experiments on sub-sets of carrying capacity to find
proper marketing variables.
Combine a+b+c
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Fast wins or sustainability?
Consider also the cumulative growth of visitors:
if expiration is rapid, a long term strategy with a
low viral coefficient may bring better results than
short-term campaigns (topicality).
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Limitations?
• Focusing on visits (not customer relationship)
• Lack of empirical validation ( testing with data)
• The dynamic nature of d (boundaries of the
carrying capacity)
• Aggregates instead of algorithms
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Thanks!
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