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WANG Chengjun
wangchj04@gmail.com
     2010.12.24
Drawing dining-table partners
Partition> create Null partition
Draw> draw-select all ctrl+a
Press shift and click to raise the class number of a vertex by 1
Press alt and click to subtract the class number by 1
Position the cursor near the vertex to move the vertices in the same class
Extract a sub-network
Read network and partition ‘continent.clu’
Info> partition
Cluster Freq Freq% CumFreq CumFreq% Representative
---------------------------------------------------------------
    1     9 11.2500          9 11.2500 Algeria
    2     17 21.2500         26 32.5000 Bangladesh
    3     27 33.7500        53 66.2500 Austria
    4      9 11.2500        62 77.5000 Belize
    5      3 3.7500        65 81.2500 Australia
    6     15 18.7500         80 100.0000 Argentina
---------------------------------------------------------------
Operations> Extract from network>partition
   *Vertices 80                                            *Arcs
         1 "Algeria"         0.7842 0.6742 0.5000             78 25    556
         2 "Argentina"         0.2643 0.2643 0.5000           24 25   23023
         3 "Australia"        0.3724 0.8080 0.5000
                                                               26 25   12714
         4 "Austria"         0.6082 0.3733 0.5000
         5 "Barbados"          0.1677 0.5262 0.5000           38 25    1243
         6 "Bangladesh"          0.2388 0.9263 0.5000         78 28    2141
         7 "Belgium /Lux."       0.5515 0.3415 0.5000         7 28    1586
         8 "Belize"          0.1198 0.8247 0.5000             24 28   47886
         9 "Bolivia"         0.0545 0.2730 0.5000             26 28    1242
        10 "Brazil"          0.2030 0.6513 0.5000             38 28    6045
   .....                                                   ….
                                                            *Edges
How to create the circular layout?
First, use KK energy command.
Second, manually move the partitioned
vertices!
   ------------------------------------------------------------------------------
   3. World_system.clu (80)
   ------------------------------------------------------------------------------
   Dimension: 80
   The lowest value: 1
   The highest value: 3
   The highest clusters values:
     Rank Vertex Cluster Id
   --------------------------------
       1 63         3 Reunion
       2 62         3 Moldava. Rep. Of
       3 30         3 Honduras
       4 29         3 Guatemala
   Frequency distribution of cluster numbers:
   Cluster Freq Freq% CumFreq CumFreq% Representative
   ---------------------------------------------------------------
       1     12 15.0000         12 15.0000 Austria
       2     51 63.7500         63 78.7500 Algeria
       3     17 21.2500        80 100.0000 Bangladesh
   ---------------------------------------------------------------
     Sum        80 100.0000
   Continent.clu
   *Vertices 80
     1
     6
     5
   .....
   World system.clu
   *Vertices 80
         2
         2
         2
         1
         3
   .....
   Partition> first partition
    world system.clu
   Second partition
    continent.clu
   Extract second from first
   Dialog box type 6 twice
Operations> shrink network>partition
File> partition> edit
Net> transform> remove> lines with values>lower than
the interaction between Counties of Asia and other five continents
Operations> shrink network>partition




                                                          In the second dialog
                                                              box, input the
                                                           number of selected
                                                           cluster that will not
                                                                be shrunk
   Vector Values            Frequency Freq% CumFreq CumFreq%

 File> vector   
                 
                 
                     --------------------------------------------------------------------------
                      (       ... 2000.0000]
                      ( 2000.0000 ... 10000.0000]
                                                      22 27.5000 22 27.5000
                                                              27 33.7500 49 61.2500
                     ( 10000.0000 ... 20000.0000]             15 18.7500 64 80.0000

 Info> vector   
                 
                      ( 20000.0000 ... 43034.0000]             16 20.0000 80 100.0000
                     --------------------------------------------------------------------------
                    Total                    80 100.0000
   Vector>make partition> by
   Partition> make vector       truncating(abs)
Pajek chapter2 Attributes and Relations

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Pajek chapter2 Attributes and Relations

  • 2. Drawing dining-table partners Partition> create Null partition Draw> draw-select all ctrl+a Press shift and click to raise the class number of a vertex by 1 Press alt and click to subtract the class number by 1 Position the cursor near the vertex to move the vertices in the same class Extract a sub-network Read network and partition ‘continent.clu’ Info> partition Cluster Freq Freq% CumFreq CumFreq% Representative --------------------------------------------------------------- 1 9 11.2500 9 11.2500 Algeria 2 17 21.2500 26 32.5000 Bangladesh 3 27 33.7500 53 66.2500 Austria 4 9 11.2500 62 77.5000 Belize 5 3 3.7500 65 81.2500 Australia 6 15 18.7500 80 100.0000 Argentina --------------------------------------------------------------- Operations> Extract from network>partition
  • 3. *Vertices 80  *Arcs  1 "Algeria" 0.7842 0.6742 0.5000  78 25 556  2 "Argentina" 0.2643 0.2643 0.5000  24 25 23023  3 "Australia" 0.3724 0.8080 0.5000  26 25 12714  4 "Austria" 0.6082 0.3733 0.5000  5 "Barbados" 0.1677 0.5262 0.5000  38 25 1243  6 "Bangladesh" 0.2388 0.9263 0.5000  78 28 2141  7 "Belgium /Lux." 0.5515 0.3415 0.5000  7 28 1586  8 "Belize" 0.1198 0.8247 0.5000  24 28 47886  9 "Bolivia" 0.0545 0.2730 0.5000  26 28 1242  10 "Brazil" 0.2030 0.6513 0.5000  38 28 6045  .....  ….  *Edges
  • 4. How to create the circular layout? First, use KK energy command. Second, manually move the partitioned vertices!
  • 5. ------------------------------------------------------------------------------  3. World_system.clu (80)  ------------------------------------------------------------------------------  Dimension: 80  The lowest value: 1  The highest value: 3  The highest clusters values:  Rank Vertex Cluster Id  --------------------------------  1 63 3 Reunion  2 62 3 Moldava. Rep. Of  3 30 3 Honduras  4 29 3 Guatemala  Frequency distribution of cluster numbers:  Cluster Freq Freq% CumFreq CumFreq% Representative  ---------------------------------------------------------------  1 12 15.0000 12 15.0000 Austria  2 51 63.7500 63 78.7500 Algeria  3 17 21.2500 80 100.0000 Bangladesh  ---------------------------------------------------------------  Sum 80 100.0000
  • 6. Continent.clu  *Vertices 80  1  6  5  .....  World system.clu  *Vertices 80  2  2  2  1  3  .....
  • 7. Partition> first partition world system.clu  Second partition continent.clu  Extract second from first  Dialog box type 6 twice
  • 8. Operations> shrink network>partition File> partition> edit Net> transform> remove> lines with values>lower than
  • 9.
  • 10. the interaction between Counties of Asia and other five continents Operations> shrink network>partition In the second dialog box, input the number of selected cluster that will not be shrunk
  • 11. Vector Values Frequency Freq% CumFreq CumFreq%  File> vector    -------------------------------------------------------------------------- ( ... 2000.0000] ( 2000.0000 ... 10000.0000] 22 27.5000 22 27.5000 27 33.7500 49 61.2500  ( 10000.0000 ... 20000.0000] 15 18.7500 64 80.0000  Info> vector   ( 20000.0000 ... 43034.0000] 16 20.0000 80 100.0000 --------------------------------------------------------------------------  Total 80 100.0000
  • 12. Vector>make partition> by  Partition> make vector truncating(abs)