Title: Social Network
1Social Network
- Michel Bruley
- WA - Marketing Director
Extract from various presentations B Wellman, K
Toyama, A Sharma, Teradata Aster,
February 2012
2Social Network
A social network is a social structure between
actors, mostly individuals or organizations It
indicates the ways in which they are connected
through various social familiarities, ranging
from casual acquaintance to close familiar bonds
3Society as a Graph
People are represented as nodes Relationships
are represented as edges relationships may be
acquaintanceship, friendship, co-authorship,
etc. Allows analysis using tools of mathematical
graph theory
4Social Network Analysis
Social network analysis SNA is the mapping and
measuring of relationships and flows between
people, groups, organizations, computers or other
information/knowledge processing entities
5Connections
- Size
- Number of nodes
- Density
- Number of ties that are present / the amount of
ties that could be present - Out-degree
- Sum of connections from an actor to others
- In-degree
- Sum of connections to an actor
6Distance
- Walk
- A sequence of actors and relations that begins
and ends with actors - Geodesic distance
- The number of relations in the shortest possible
walk from one actor to another - Maximum flow
- The amount of different actors in the
neighborhood of a source that lead to pathways to
a target
7Some Measures of Power Prestige
- Degree
- Sum of connections from or to an actor
- Transitive weighted degree?Authority, hub,
pagerank - Closeness centrality
- Distance of one actor to all others in the
network - Betweenness centrality
- Number that represents how frequently an actor is
between other actors geodesic paths
8Cliques and Social Roles
- Cliques
- Sub-set of actors
- More closely tied to each other than to actors
who are not part of the sub-set - A lot of work on trawling for communities in
the web-graph - Often, you first find the clique (or a densely
connected subgraph) and then try to interpret
what the clique is about - Social roles
- Defined by regularities in the patterns of
relations among actors
9Network Analysis Example
10Centrality strategic positions
Degree centrality Local attention
Closeness centrality Capacity to communicate
Beetweenness centrality reveal broker "A place
for good ideas"
11Social Network Analysis what for?
- To control information flow
- To improve/stimulate communication
- To improve network resilience
- To trust
- Web applications of Social Networks examples
- Analyzing page importance (Page Rank,
Authorities/Hubs) - Discovering Communities (Finding near-cliques)
- Analyzing Trust (Propagating Trust, Using
propagated trust to fight spam - In Email or In
Web page ranking)
12Tangible Outcomes from SNA
Organisational Re-structures that work
Sell More
Preserving Expertise
Better Knowledge Sharing
Building Better Communities
More Innovation
Competitive Intelligence
13Ways to use SNA to Manage Churn
- Reduce Collateral Churn
- Reactive
- Identify subscribers whose loyalty is threatened
by churn around them - Reduce Influential Churn
- Preventive
- Identify subscribers who, should they churn,
would take a few friends with them - Need to go beyond individual value to network
value ! - A subscriber with negative margin can have very
significant network value and still be very
valuable to keep
Has churned
Prevent collateral churn
Prevent influential churn
14Cross-Sell and Technology Transfer
- 2 smartphone users around you ? smartphone
affinity x 5 !! - Leverage Collateral Adoption
- Reactive
- Identify subscribers whose affinity for products
is increased due to adoption around them
stimulate them - Identify influencers for this adoption
- Proactive
- Identify subscribers who, should they adopt,
would push a few friends to do the same
Adopted
Offer product
Push for adoption
15Acquisition Member gets Member
Campaign Topic
Acquire New Members
Description
One of an Operators major objectives is to keep
(or even extend) the market position. As the
main competitors are making ground by eg.
attractive tariffs or through theacquisition of
new retail partners, acquisition of new customers
becomes a very importantobjective. This
campaign format focuses on influencers in social
communities, who are most likely torecommend a
(off-net) friend to become a new subscriber of
the Operator. The recommendation itself, as well
as the subscription is incentivised for both, the
subscriberand the recommending person.
16Householding / Family identification
- Identify same household relationships
- Construct probable household units
- Identify onnet penetration
- Identify competitor position
- Identify probable decider(s)
- When multiple SIM cards purchased by same person,
identify that other family members are using Sims - Age-related calling patterns
- Combination of a) and b)
17Community Identification and Marketing
- Households / Families
- Seasonal workers
- SMEs
- Students
- Schoolchildren
18Customer Lifestage analysis Analysis based on
identifying critical life stage events using
social network changes
- Going to University
- Moving
- Changing job
- Starting a relationship Moving as a couple
- Imputing demographics
- Age related patterns in the social network
19Winback
Campaign Topic
Retention
Description
SNA offers an opportunity to detect potential
churners earlier (possibly before they
havecompletely ceased all on-net activity) and
also identifies the individuals who are likely
to have the best chance of persuading them to
return. The aim is to use SNA to detect
potential churners during the process of leaving
and motivate them to stay with the Operator.
Current Approach New
Approach
20Competitor Insights
- Tracking dynamic changes in social networks based
on competitor marketing activities - Reaction and impact of mass market campaigns
- Introduction of new products and tariffs
- Network evolution
- Improved accuracy in estimating operator market
share - What does a competitors mass market campaigns do
to the market? - Segmenting competitors subscribers
- Tracking segments based on selected SNA KPIs
21Other business applications
- Facilitate Pre- to Post-Migration
- Identify Rotational Churners, switching between
operators - Identify Internal Churners
- Better customer lifecycle management by tracking
customer network dynamics over his Lifecyle with
the operator - Networks grow and change over time. This will
influence how the operator interacts with the
customer
22Teradata Aster See the Network
- Understand connections among users and
organizations
- Challenges
- Large number of entities with rapidly growing
amount of data for each - Connectivity changing constantly
- Aster Data Value
- SQL-MapReduce function for Graph Analysis eases
and accelerates analysis - Ability to store and analyze massive volumes of
data about users and connections - High loading throughput and incremental loading
to bring new data into analysis
23Teradata Aster References
Social Network Relationship Analysis
- Analysis of user behavior, intent, and actions
across search, ad media and web properties, in
order to drive increased ROI.