Title: Network Level Indicators
1Network Level Indicators
- Birds eye view of network
- Image matrix example of network level
- Many network level measures
- Some would argue this is the most appropriate
level of analysis
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2Size
- Number of nodes (people) in the network
- Matters because as size increases
- Density decreases
- Clustering increases
- Reflects network boundary
- Should always be included as a covariate
2
3Density
- Structural property
- Given by
- Should always be included as covariate as well
3
4Density Size Negatively Correlated
- In STEP study we have data from 24 coalitions at
baseline - We correlated size and density and discovered a
negative association as predicted - R-0.69
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5Reciprocity (Mutuality, Symmetry)
- Mutual ties A ? B then B?A
- Some relations are inherently symmetric or
asymmetric - Who did you have lunch with?
- Who did you go to for advice?
- Reciprocity is calculated as the percent of ties
that are reciprocated
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6Triads Transitivity
- Holland Leinhardt introduced the concept of
triads and a triad census - In a directed graph there are 16 possible triads
- A?B B?C A?C
- A?B B?C C?A
- .
- One can do a triad census of a network
calculating the percent of triads of each type in
the network
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7MAN (Mutual, Asymmetric, Null) Census
003
012
102
021D
021U
021C
111D
111U
030T
030C
201
120D
120U
120C
210
300
8Triads Transitivity (cont.)
- Most often concerned with transitivity
- A transitive triad occurs if
- A?B B?C
- Implies
- A?C
- Transitivity implies balance, and balance theory
is one of the foundations of many behavioral
theories - It is believed that people seek balance both
toward others and objects (Heider) - If a person is imbalanced, this creates cognitive
dissonance and people will try to reduce
cognitive dissonance (Festinger)
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9Transitive Triad
C
B
A
10Transitivity
- The percent of transitive triads provides a
measure of cohesion - In the STEP study we found an average of 17 of
triads were transitive.
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114 Nodes?
- One might expect the next level of analysis to
increase to 4 nodes, as reciprocity was 2 nodes,
and triads 3 nodes, but - 4 nodes takes us to groups (this is where cycles
come in) - And back to the lecture on groups
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12Diameter/Ave. Path Length
- Diameter Length of the longest path in the
network - Ave path length/characteristic path length
- Average of all the distances between nodes
- A measure of network size
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13Average and Maximum Change in Cohesion for each
Link Removed
14Cohesion Measure of how close everyone is, on
average, in the network
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15Unconnected Nodes
- Distances are important to calculate in networks
- What about unconnected nodes
- Distance equals infinity
- Creates intractable math calculations
- Substitute some finite number
- Defensible on the grounds that if a node is
included in a network it is reachable because it
is in the same set - Might not be reachable because of measurement
error - Might not be reachable because of instrumentation
(e.g., 5 closest friends)
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16What to substitute for unconnected nodes?
- Choices
- N-1
- Advantages is the maximum theoretical distance
between nodes in any network - N
- Advantages is linearly related to max distance
and would be the distance if a node were deleted - Max. path length plus 1
- Advantages is intuitively more meaningful
- Most Use N-1
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17Clustering
- Watts re-introduced the clustering coefficient
- Average of the individual personal network
densities
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18Personal Network Density
x
x
A
y
y
B
z
z
PN Density 1/6 16.7
PN Density 3/6 50.0
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19Centralization
- The degree ties are focused on one or a few
people - Index ranges from 0 to 1 with 1 being perfectly
centralized. - Recall Centralized network are scale free
networks
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20Examples of Dense Networks (Density36.4)
Decentralized (9.1)
Centralized (50.9)
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21Examples of Sparse Networks (Density18.2)
Decentralized (0.0)
Centralized (87.3)
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22Centralization Can Be Calculated On All
Centrality Measures
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23Centralization (cont.)
- Similar formulas exist for Centralization
Closeness, Betweenness, Integration - Can also be calculated by taking the standard
deviation of the centrality scores.
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24Core Periphery Structures
- CP Networks have cores of densely connected
people and a - Periphery of those loosely connected to the core
and to each other - Can test whether networks have a C-P structure
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25Core-Periphery Analysis
- A network with a perfect CP structure will have
all core nodes connected and peripheral ones
connected only to the core - Construct this idealized matrix and correlate the
ideal with the empirical. - Correlation coefficient is a measure of the CP
26Childrens Health Insurance of Greater LA
(CP0.29)
? Missing Periphery ? Core
27Network Structure Behavior
- Size clearly matters, large networks
- difficult to coordinate organize
- Norms unclear or diffuse
- Diffusion takes longer
- Small networks
- Easy to coordinate
- Information and behaviors of others are known
- Information can travel quickly, but
- Small networks are not powerful
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28Density
- We discussed earlier the possible curvilinear
relationship - Reciprocity At the individual level,
reciprocated relationship should be more likely
associated with behavioral transmission People
more likely influenced by reciprocated
relationships - On the other hand, advice seeking is asymmetric
and one more likely to model those they seek
advice from - Thus, at individual level, reciprocity affects on
behavior depend on relationship and behavior
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29Data from STEP
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30Reciprocity Transitivity
- Networks with high levels of reciprocity
- Diffusion within faster but
- Diffusion between groups slower
- Transitive triads also more likely to
- Increase homogeneity of opinions
- Facilitate diffusion within groups, but inhibit
diffusion of outside ideas
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31Clustering
- High rates of clustering are even more indicative
of closed subgroups - Clustering will inhibit spread between groups but
accelerate it within groups - Higher clustering will increase the importance of
bridges that connect clusters -
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32Centralization
- Centralized networks should/could have fastest
diffusion - Central nodes are key players in the process
- Central nodes are gatekeepers
- Other properties may interact with centralization
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33Core Periphery
- Diffusion more likely to occur in the core
- Take a while for behaviors to filter to the
periphery - Many innovation may come from the periphery then
percolate to the core - Core groups can keep infectious diseases endemic
to communities STDs, HIV, etc.
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342 Mode Data
- Recall that data on events, organizations, etc.
can be used to construct 2 mode networks - E.g., in this class students come from different
departments - Can construct a network based on shared dept.
affiliations
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35Transposing a Matrix
Matrix A
Matrix A (transpose)
35
36Excel File
36
37Steps
- Read into UCINET as excel file
- Input this file Data\affiliations\dept06
- Creates 1 mode data person by person
- And creates 1 mode dept by dept
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38Dept 06 PxP
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39Do They Correlate?
- Dept affiliations may lead to who knows whom
- We can correlate the 2 matrices
- Procedure to do so is know as QAP Quadratic
Assignment Procedure - This procedures accounts for the dependencies in
the rows and columns - QAP Reg. coefficient between knowing and
department affiliation is 0.30
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