Trust and Influence in the Complex Network of Social Media
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Transcript of Trust and Influence in the Complex Network of Social Media
TRUST AND INFLUENCE in the Complex Network of Social Media
Bill Rand Director, Center for Complexity in Business Asst. Professor of Marketing and Computer Science Robert H. Smith School of Business University of Maryland
Connecting the CMO to the CIO...
• Organizations have more data than ever
before...
• Computational power and storage is
cheaper than ever before...
• This enables analytics that can be used,
for example, to:
1. Gain new customers / stop old
customers from churning
2. Find out additional information to
increase share of customer
3. Analyze word-of-mouth and ROI for
media events
Social Media Analytics
Teasers
• Who are the most influential individuals in social media?
• It may not just be those who are the most popular...
• How is trust earned in social media?
• We can design new social network mechanisms that
increase trust in social networks....
Influence joint work with Forrest Stonedahl and Uri Wilensky
Supported by NSF Award IIS-0713619
Who are the most influential
individuals in social networks?
•How does network structure affect
influence?
•What is the value of an individual in a
network?
•If we can simulate a diffusion process at the
micro-level then we can answer these
questions.
Who should you seed?
•Which individuals will allow you to reach the widest
audience as soon as possible?
•Standard Rule-of-Thumb is to seed those with the
highest number of connections
•Alternative Strategies
•Seed the people whose friends do not talk to each
other, spread the message widely (low clustering
coefficient)
•Seed the people who are the closest to everyone else
in the network, centralize your message (low average
path length)
How many to Seed?
•Seeding more people means the
message spreads quicker, but
•Seeding more people costs more, and
•At a certain point you start seeding
people who would have adopted anyway
because of their friends
•So how many people should we seed?
Best Primary Strategies
Optimal Twitter Seeds
Influence • People with lots of friends know other
people with lots of friends which
constrains social contagion.
• The most influential people have lots of
friends but their friends don’t know each
other.
• But this assumes that all individuals trust
each other equally, what happens when
trust varies over a network?
Trust joint work with Hossam Sharara and Lise Getoor
Supported by NSF Award IIS-0746930 and IIS-1018361
Motivation
WOW… I’ll
send it over
to everyone
Book Store
(Invite a friend and get 10%
off your next purchase)
MovieRental.com
(Refer a friend and get
$10 off your next rental)
Bob and Mary will
definitely be
interested.
However, I think
Ann is not
interested in
movies
Ann
Bob
Janet
Mary
John
Dataset
Social Network (user-user following links)
• 11,942 users
• 1.3M follow edges
Digg Network (user-story digging links)
• 48,554 news stories
• 1.9M digg edges
• 6 months (Jul 2010 – Dec 2010)
The Model • Our model takes two factors in to
account:
1. People have different preferences for
different product categories
2. Trust between individuals in
recommendations changes in time
• We can then use this model to predict
who is likely to accept recommendations
in the future.
Results
The Adaptive model, taking both the diffusion dynamics
and the users heterogeneity into account, yields better
performance
A New Viral Marketing
Marketing Mechanism: Adaptive Rewards
Successful recommendations are awarded (α x r) units,
while failed ones are penalized ((1-α) x r) units
• α conservation parameter
Most existing viral marketing strategies assume α=1
(no reason for the user to be selective)
The penalty term helps maintain the average overall
confidence level between different peers
Experimental Results
• Allowing agents to learn the preferences accounts for
both the product preference as well as the confidence
level
Trust
• We can make better predictions about
adoption if we take in to account
heterogeneous preferences and
dynamic trust.
• We can create better mechanisms that
encourage more trust within social
networks.
Any Questions? [email protected]
www.rhsmith.umd.edu/ccb/
bit.ly/ccbssrn
Digital Marketing Analytics Roundtable on June 21st
MS in Marketing Analytics