Standard Network Analysis: knowledge x task

Standard Network Analysis: knowledge x task

Input data: knowledge x task

Start time: Tue Oct 18 11:35:56 2011

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Network Level Measures

MeasureValue
Row count19.000
Column count5.000
Link count28.000
Density0.295

Node Level Measures

MeasureMinMaxAvgStddev
In-degree centrality0.1580.4210.2950.092
In-degree centrality [Unscaled]3.0008.0005.6001.744
Out-degree centrality0.2000.8000.2950.164
Out-degree centrality [Unscaled]1.0004.0001.4740.819

Key Nodes

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): knowledge x task

RankTaskValueUnscaled
1Management0.4218.000
2Design0.3687.000
3Sales0.2635.000
4Development0.2635.000
5Testing0.1583.000

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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): knowledge x task

RankKnowledgeValueUnscaled
1General Programming0.8004.000
2General Engineering0.6003.000
3C0.4002.000
4CAD0.4002.000
5Chuck0.4002.000
6Andrea0.4002.000
7Physics0.2001.000
8Sales information0.2001.000
9Marketing0.2001.000
10Management TechnIques0.2001.000

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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
1----Management-General Programming-
2----Design-General Engineering-
3----Sales-C-
4----Development-CAD-
5----Testing-Chuck-
6------Andrea-
7------Physics-
8------Sales information-
9------Marketing-
10------Management TechnIques-