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PROPERTY 
• Relational: Measure of Relations between 2 Nodes 
• Line Value 
• Non-Relational: Measure of Relation’s Parties 
• Vertex Value: Color, Size, … 
SVG Export
NON-RELATIONAL PROPERTY 
• Discrete 
Domain 
• Continuous Number 
Vector Partition 
Structura 
l 
Attribute 
• Statistical & Known Beforehand • Study of Network 
• Structural Vector: Coordination of Vertex in an 
Image 
• Structural Partition: Central or Joining Vertex 
• Partition Attribute: Poor or Wealthy Vertex 
• Vector Attribute: ?
PARTITION PROPERTY 
SMALL Discrete Value Domain Set 
 Tries to partition the vertices into classes of same value 
 Examples 
 Gender = {Male, Female}; Partition Attribute 
 Density = {Low, High, Huge}; Structural Partition 
Partition values for each vertex is stored in separate *.clu file. The values can be edited. 
By selecting a partition, it can drawn by Draw > Network + First Partition
VECTOR PROPERTY 
Continuous Infinite Value Domain Set 
• Example 
• Coordination of Vertices in 2D (x, y) in R2 ; Structural Vector 
• In case Vertices Represent Human  Height, Weight, .. ; Vector Attribute 
• Partition  Vector 
• Just Proper Meaning is Needed 
• Vector  Partition 
• Categorization of Values; 
• Less, Between, Greater; e.g. Height  Tall, Medium, Short 
• Truncate the Absolute Value 
Vector values for each vertex is stored in separate *.vec file. The values can be edited. 
By selecting a vector, it can drawn by Draw > Network + First Vector
VECTOR & PARTITION
REDUCTION  SUBNETWORK 
In Case the Network is Very Large or Complex, Concentrate in Portion or 
Generalize all of it … 
Partition Property is the Main Tool 
• Local View (Zoom In): Just Vertices of Same Partition Value 
• Global View (Zoom Out): Treat Vertices of Same Partition Value as ONE 
Vertex 
• Contextual View: One Group to Zoom IN the Others to Zoom Out 
• Exceptional Global View
Local View of North American Countries 
Contextual View of Asian 
Countries toward Other Continents 
Global View of Countries as Continents
SUBNETWORK 
• Extract Second Partition from First in Local View 
• The Subnetwork Looses its Connection to the Original Network Partitions! 
• Solution 
1. Network has Two Partition P1 & P2 
2. Extract Subnetwork for Value X of Partition P1 
3. Want to Know P2 Values for the Subnetwork 
4. Extract P1 for the Value X from P2  New Partition is Created 
• Extract Subvector in Local View 
• Accompany Local View based on a Partition with Vector 
• Shrink Vector in Global View 
• Accompany Global View based on a Partition with Vector 
• For Each Partition of Same Value for Vertices Which Vector Value is 
Chosen? 
• Min, Max, Mean, …
TEMPORAL ANALYSIS 
A Vertex may Change its Value of a Partition Value Migration to another 
Value 
• Statistical Analysis of the Change 
• Cross-Tab 
• Associativity 
• Needs Two Partition File for the Same Partition Property for Different Time
QUESTION 
• Reduction by Vector  Extract Subnetwork by Vector Values 
• Solution:

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Exploratory Social Network Analysis with Pajek: Attributes & Relations

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  • 2. PROPERTY • Relational: Measure of Relations between 2 Nodes • Line Value • Non-Relational: Measure of Relation’s Parties • Vertex Value: Color, Size, … SVG Export
  • 3. NON-RELATIONAL PROPERTY • Discrete Domain • Continuous Number Vector Partition Structura l Attribute • Statistical & Known Beforehand • Study of Network • Structural Vector: Coordination of Vertex in an Image • Structural Partition: Central or Joining Vertex • Partition Attribute: Poor or Wealthy Vertex • Vector Attribute: ?
  • 4. PARTITION PROPERTY SMALL Discrete Value Domain Set  Tries to partition the vertices into classes of same value  Examples  Gender = {Male, Female}; Partition Attribute  Density = {Low, High, Huge}; Structural Partition Partition values for each vertex is stored in separate *.clu file. The values can be edited. By selecting a partition, it can drawn by Draw > Network + First Partition
  • 5. VECTOR PROPERTY Continuous Infinite Value Domain Set • Example • Coordination of Vertices in 2D (x, y) in R2 ; Structural Vector • In case Vertices Represent Human  Height, Weight, .. ; Vector Attribute • Partition  Vector • Just Proper Meaning is Needed • Vector  Partition • Categorization of Values; • Less, Between, Greater; e.g. Height  Tall, Medium, Short • Truncate the Absolute Value Vector values for each vertex is stored in separate *.vec file. The values can be edited. By selecting a vector, it can drawn by Draw > Network + First Vector
  • 7. REDUCTION  SUBNETWORK In Case the Network is Very Large or Complex, Concentrate in Portion or Generalize all of it … Partition Property is the Main Tool • Local View (Zoom In): Just Vertices of Same Partition Value • Global View (Zoom Out): Treat Vertices of Same Partition Value as ONE Vertex • Contextual View: One Group to Zoom IN the Others to Zoom Out • Exceptional Global View
  • 8. Local View of North American Countries Contextual View of Asian Countries toward Other Continents Global View of Countries as Continents
  • 9. SUBNETWORK • Extract Second Partition from First in Local View • The Subnetwork Looses its Connection to the Original Network Partitions! • Solution 1. Network has Two Partition P1 & P2 2. Extract Subnetwork for Value X of Partition P1 3. Want to Know P2 Values for the Subnetwork 4. Extract P1 for the Value X from P2  New Partition is Created • Extract Subvector in Local View • Accompany Local View based on a Partition with Vector • Shrink Vector in Global View • Accompany Global View based on a Partition with Vector • For Each Partition of Same Value for Vertices Which Vector Value is Chosen? • Min, Max, Mean, …
  • 10. TEMPORAL ANALYSIS A Vertex may Change its Value of a Partition Value Migration to another Value • Statistical Analysis of the Change • Cross-Tab • Associativity • Needs Two Partition File for the Same Partition Property for Different Time
  • 11. QUESTION • Reduction by Vector  Extract Subnetwork by Vector Values • Solution: