STANDARD NETWORK ANALYSIS REPORT

STANDARD NETWORK ANALYSIS REPORT

Input data: camp92

Start time: Fri Oct 14 14:47:30 2011

Data Description

Calculates common social network measures on each selected input network.

Network agent x agent

Network Level Measures

MeasureValue
Row count18.000
Column count18.000
Link count153.000
Density1.000
Components of 1 node (isolates)0
Components of 2 nodes (dyadic isolates)0
Components of 3 or more nodes1
Reciprocity1.000
Characteristic path length5.735
Clustering coefficient1.000
Network levels (diameter)14.000
Network fragmentation0.000
Krackhardt connectedness1.000
Krackhardt efficiency0.000
Krackhardt hierarchy0.000
Krackhardt upperboundedness1.000
Degree centralization0.000
Betweenness centralization0.185
Closeness centralization0.092
Eigenvector centralization0.000
Reciprocal (symmetric)?Yes

Node Level Measures

MeasureMinMaxAvgStddev
Total degree centrality0.5290.5290.5290.000
Total degree centrality [Unscaled]153.000153.000153.0000.000
In-degree centrality0.5290.5290.5290.000
In-degree centrality [Unscaled]153.000153.000153.0000.000
Out-degree centrality0.5290.5290.5290.000
Out-degree centrality [Unscaled]153.000153.000153.0000.000
Eigenvector centrality0.3330.3330.3330.000
Eigenvector centrality [Unscaled]0.2360.2360.2360.000
Eigenvector centrality per component0.2360.2360.2360.000
Closeness centrality0.1490.2180.1760.017
Closeness centrality [Unscaled]0.0090.0130.0100.001
In-Closeness centrality0.0870.2660.1850.041
In-Closeness centrality [Unscaled]0.0050.0160.0110.002
Betweenness centrality0.0000.2460.0720.058
Betweenness centrality [Unscaled]0.00033.5009.7327.891
Hub centrality0.3070.3470.3330.011
Authority centrality0.2390.5370.3270.065
Information centrality0.0490.0590.0560.002
Information centrality [Unscaled]75.32390.72185.0513.248
Clique membership count1.0001.0001.0000.000
Simmelian ties1.0001.0001.0000.000
Simmelian ties [Unscaled]17.00017.00017.0000.000
Clustering coefficient1.0001.0001.0000.000

Key Nodes

This chart shows the Agent that is repeatedly top-ranked in the measures listed below. The value shown is the percentage of measures for which the Agent was ranked in the top three.

Total degree centrality

The Total Degree Centrality of a node is the normalized sum of its row and column degrees. Individuals or organizations who are "in the know" are those who are linked to many others and so, by virtue of their position have access to the ideas, thoughts, beliefs of many others. Individuals who are "in the know" are identified by degree centrality in the relevant social network. Those who are ranked high on this metrics have more connections to others in the same network. The scientific name of this measure is total degree centrality and it is calculated on the agent by agent matrices.

Input network: agent x agent (size: 18, density: 1)

RankAgentValueUnscaledContext*
1All nodes have this value0.529

* Number of standard deviations from the mean of a random network of the same size and density

Mean: 0.529Mean in random network: 1.000
Std.dev: 0.000Std.dev in random network: 0.000

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In-degree centrality

The In Degree Centrality of a node is its normalized in-degree. For any node, e.g. an individual or a resource, the in-links are the connections that the node of interest receives from other nodes. For example, imagine an agent by knowledge matrix then the number of in-links a piece of knowledge has is the number of agents that are connected to. The scientific name of this measure is in-degree and it is calculated on the agent by agent matrices.

Input network(s): agent x agent

RankAgentValueUnscaled
1All nodes have this value0.529

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Out-degree centrality

For any node, e.g. an individual or a resource, the out-links are the connections that the node of interest sends to other nodes. For example, imagine an agent by knowledge matrix then the number of out-links an agent would have is the number of pieces of knowledge it is connected to. The scientific name of this measure is out-degree and it is calculated on the agent by agent matrices. Individuals or organizations who are high in most knowledge have more expertise or are associated with more types of knowledge than are others. If no sub-network connecting agents to knowledge exists, then this measure will not be calculated. The scientific name of this measure is out degree centrality and it is calculated on agent by knowledge matrices. Individuals or organizations who are high in "most resources" have more resources or are associated with more types of resources than are others. If no sub-network connecting agents to resources exists, then this measure will not be calculated. The scientific name of this measure is out degree centrality and it is calculated on agent by resource matrices.

Input network(s): agent x agent

RankAgentValueUnscaled
1All nodes have this value0.529

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Eigenvector centrality

Calculates the principal eigenvector of the network. A node is central to the extent that its neighbors are central. Leaders of strong cliques are individuals who or organizations who are collected to others that are themselves highly connected to each other. In other words, if you have a clique then the individual most connected to others in the clique and other cliques, is the leader of the clique. Individuals or organizations who are connected to many otherwise isolated individuals or organizations will have a much lower score in this measure then those that are connected to groups that have many connections themselves. The scientific name of this measure is eigenvector centrality and it is calculated on agent by agent matrices.

Input network: agent x agent (size: 18, density: 1)

RankAgentValueUnscaledContext*
1All nodes have this value0.333

* Number of standard deviations from the mean of a random network of the same size and density

Mean: 0.333Mean in random network: 0.962
Std.dev: 0.000Std.dev in random network: 0.196

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Eigenvector centrality per component

Calculates the principal eigenvector of the network. A node is central to the extent that its neighbors are central. Each component is extracted as a separate network, Eigenvector Centrality is computed on it and scaled according to the component size. The scores are then combined into a single result vector.

Input network(s): agent x agent

RankAgentValue
1All nodes have this value0.236

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Closeness centrality

The average closeness of a node to the other nodes in a network (also called out-closeness). Loosely, Closeness is the inverse of the average distance in the network from the node to all other nodes.

Input network: agent x agent (size: 18, density: 1)

RankAgentValueUnscaledContext*
1JOHN0.2180.013-25.263
2HARRY0.2020.012-25.873
3DON0.1910.011-26.318
4HOLLY0.1850.011-26.562
5MICHAEL0.1850.011-26.562
6BILL0.1850.011-26.562
7GERY0.1850.011-26.562
8RUSS0.1830.011-26.640
9PAT0.1770.010-26.864
10BRAZEY0.1720.010-27.074

* Number of standard deviations from the mean of a random network of the same size and density

Mean: 0.176Mean in random network: 0.863
Std.dev: 0.017Std.dev in random network: 0.026

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In-Closeness centrality

The average closeness of a node from the other nodes in a network. Loosely, Closeness is the inverse of the average distance in the network to the node and from all other nodes.

Input network(s): agent x agent

RankAgentValueUnscaled
1PAM0.2660.016
2HOLLY0.2540.015
3PAT0.2270.013
4PAULINE0.2210.013
5DON0.2050.012
6JENNIE0.1980.012
7MICHAEL0.1980.012
8ANN0.1930.011
9STEVE0.1930.011
10CAROL0.1830.011

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Betweenness centrality

The Betweenness Centrality of node v in a network is defined as: across all node pairs that have a shortest path containing v, the percentage that pass through v. Individuals or organizations that are potentially influential are positioned to broker connections between groups and to bring to bear the influence of one group on another or serve as a gatekeeper between groups. This agent occurs on many of the shortest paths between other agents. The scientific name of this measure is betweenness centrality and it is calculated on agent by agent matrices.

Input network: agent x agent (size: 18, density: 1)

RankAgentValueUnscaledContext*
1HOLLY0.24633.5005.946
2PAT0.13818.7503.550
3DON0.11615.7833.068
4GERY0.11115.1502.965
5PAM0.11115.0752.953
6MICHAEL0.10714.5832.873
7STEVE0.07510.1752.157
8HARRY0.0689.2672.009
9LEE0.0587.8601.780
10RUSS0.0557.5081.723

* Number of standard deviations from the mean of a random network of the same size and density

Mean: 0.072Mean in random network: -0.023
Std.dev: 0.058Std.dev in random network: 0.045

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Hub centrality

A node is hub-central to the extent that its out-links are to nodes that have many in-links. Individuals or organizations that act as hubs are sending information to a wide range of others each of whom has many others reporting to them. Technically, an agent is hub-central if its out-links are to agents that have many other agents sending links to them. The scientific name of this measure is hub centrality and it is calculated on agent by agent matrices.

Input network(s): agent x agent

RankAgentValue
1BRAZEY0.347
2JENNIE0.345
3PAT0.344
4PAULINE0.342
5CAROL0.342
6STEVE0.340
7BERT0.339
8LEE0.337
9PAM0.337
10ANN0.334

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Authority centrality

A node is authority-central to the extent that its in-links are from nodes that have many out-links. Individuals or organizations that act as authorities are receiving information from a wide range of others each of whom sends information to a large number of others. Technically, an agent is authority-central if its in-links are from agents that have are sending links to many others. The scientific name of this measure is authority centrality and it is calculated on agent by agent matrices.

Input network(s): agent x agent

RankAgentValue
1BILL0.537
2HARRY0.397
3JOHN0.365
4LEE0.352
5RUSS0.347
6GERY0.342
7JENNIE0.342
8ANN0.342
9DON0.331
10MICHAEL0.325

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Information centrality

Calculate the Stephenson and Zelen information centrality measure for each node.

Input network(s): agent x agent

RankAgentValueUnscaled
1STEVE0.05990.721
2BERT0.05888.367
3HOLLY0.05888.055
4PAT0.05787.730
5BRAZEY0.05786.902
6PAM0.05786.607
7CAROL0.05686.335
8PAULINE0.05686.184
9MICHAEL0.05686.174
10DON0.05685.669

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Clique membership count

The number of distinct cliques to which each node belongs. Individuals or organizations who are high in number of cliques are those that belong to a large number of distinct cliques. A clique is defined as a group of three or more actors that have many connections to each other and relatively fewer connections to those in other groups. The scientific name of this measure is clique count and it is calculated on the agent by agent matrices.

Input network(s): agent x agent

RankAgentValue
1All nodes have this value1.000

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Simmelian ties

The normalized number of Simmelian ties of each node.

Input network(s): agent x agent

RankAgentValueUnscaled
1All nodes have this value1.000

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Clustering coefficient

Measures the degree of clustering in a network by averaging the clustering coefficient of each node, which is defined as the density of the node's ego network.

Input network(s): agent x agent

RankAgentValue
1All nodes have this value1.000

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Key Nodes Table

This shows the top scoring nodes side-by-side for selected measures.

RankBetweenness centralityCloseness centralityEigenvector centralityEigenvector centrality per componentIn-degree centralityIn-Closeness centralityOut-degree centralityTotal degree centrality
1HOLLYJOHNHOLLYHOLLYHOLLYPAMHOLLYHOLLY
2PATHARRYBRAZEYBRAZEYBRAZEYHOLLYBRAZEYBRAZEY
3DONDONCAROLCAROLCAROLPATCAROLCAROL
4GERYHOLLYPAMPAMPAMPAULINEPAMPAM
5PAMMICHAELPATPATPATDONPATPAT
6MICHAELBILLJENNIEJENNIEJENNIEJENNIEJENNIEJENNIE
7STEVEGERYPAULINEPAULINEPAULINEMICHAELPAULINEPAULINE
8HARRYRUSSANNANNANNANNANNANN
9LEEPATMICHAELMICHAELMICHAELSTEVEMICHAELMICHAEL
10RUSSBRAZEYBILLBILLBILLCAROLBILLBILL

Produced by ORA developed at CASOS - Carnegie Mellon University