Ideas for colorfully and clearly highlighting graph edges according to weights












5












$begingroup$


I am trying to figure out a way to include edgeweights in the visualisation of a graph in Mathematica, to find an idea for the drawing such that even for relatively large node numbers the graphs remain visually clear. But the basic built-in feature leads to rather messy layouts as soon as there are large number of nodes/edges. Here's an example below:



SeedRandom[100]
n = 500;
m = 1000;
edgeweights = 1./RandomReal[{0.1, 1}, m];
G = RandomGraph[{n, m}, EdgeWeight -> edgeweights]


Produces:
enter image description here



Including GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True} into the definition of G produces:



enter image description here



It seems to simply draw the nodes whose connecting edge weight is larger closer to one another, which leads to a very dense embedded layout.



Would it be possible to:




  • Modulate the edge thickness and color [*] according to their weights? The weights do not necessarily have to be given in the graph definition (G), they could also simply be called for the purpose of the visualisation.


[*]: That is, the greater the weight, the thicker and the more brightly colored the edge. For normalization, we can use the maximal weight in the vector of edgeweights.










share|improve this question









$endgroup$

















    5












    $begingroup$


    I am trying to figure out a way to include edgeweights in the visualisation of a graph in Mathematica, to find an idea for the drawing such that even for relatively large node numbers the graphs remain visually clear. But the basic built-in feature leads to rather messy layouts as soon as there are large number of nodes/edges. Here's an example below:



    SeedRandom[100]
    n = 500;
    m = 1000;
    edgeweights = 1./RandomReal[{0.1, 1}, m];
    G = RandomGraph[{n, m}, EdgeWeight -> edgeweights]


    Produces:
    enter image description here



    Including GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True} into the definition of G produces:



    enter image description here



    It seems to simply draw the nodes whose connecting edge weight is larger closer to one another, which leads to a very dense embedded layout.



    Would it be possible to:




    • Modulate the edge thickness and color [*] according to their weights? The weights do not necessarily have to be given in the graph definition (G), they could also simply be called for the purpose of the visualisation.


    [*]: That is, the greater the weight, the thicker and the more brightly colored the edge. For normalization, we can use the maximal weight in the vector of edgeweights.










    share|improve this question









    $endgroup$















      5












      5








      5





      $begingroup$


      I am trying to figure out a way to include edgeweights in the visualisation of a graph in Mathematica, to find an idea for the drawing such that even for relatively large node numbers the graphs remain visually clear. But the basic built-in feature leads to rather messy layouts as soon as there are large number of nodes/edges. Here's an example below:



      SeedRandom[100]
      n = 500;
      m = 1000;
      edgeweights = 1./RandomReal[{0.1, 1}, m];
      G = RandomGraph[{n, m}, EdgeWeight -> edgeweights]


      Produces:
      enter image description here



      Including GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True} into the definition of G produces:



      enter image description here



      It seems to simply draw the nodes whose connecting edge weight is larger closer to one another, which leads to a very dense embedded layout.



      Would it be possible to:




      • Modulate the edge thickness and color [*] according to their weights? The weights do not necessarily have to be given in the graph definition (G), they could also simply be called for the purpose of the visualisation.


      [*]: That is, the greater the weight, the thicker and the more brightly colored the edge. For normalization, we can use the maximal weight in the vector of edgeweights.










      share|improve this question









      $endgroup$




      I am trying to figure out a way to include edgeweights in the visualisation of a graph in Mathematica, to find an idea for the drawing such that even for relatively large node numbers the graphs remain visually clear. But the basic built-in feature leads to rather messy layouts as soon as there are large number of nodes/edges. Here's an example below:



      SeedRandom[100]
      n = 500;
      m = 1000;
      edgeweights = 1./RandomReal[{0.1, 1}, m];
      G = RandomGraph[{n, m}, EdgeWeight -> edgeweights]


      Produces:
      enter image description here



      Including GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True} into the definition of G produces:



      enter image description here



      It seems to simply draw the nodes whose connecting edge weight is larger closer to one another, which leads to a very dense embedded layout.



      Would it be possible to:




      • Modulate the edge thickness and color [*] according to their weights? The weights do not necessarily have to be given in the graph definition (G), they could also simply be called for the purpose of the visualisation.


      [*]: That is, the greater the weight, the thicker and the more brightly colored the edge. For normalization, we can use the maximal weight in the vector of edgeweights.







      graphics graphs-and-networks visualization






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      asked 15 hours ago









      user929304user929304

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          3 Answers
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          $begingroup$

          edgeStyle[weights_, thickbounds_:{0.0001,0.01}, colorf_:ColorData["SolarColors"]]:=
          Block[{minmax, thickness, color},
          minmax = MinMax[weights];
          thickness = Thickness /@ Rescale[weights, minmax, thickbounds];
          color = colorf /@ Rescale[weights, minmax, {0, 1}];
          Thread[Directive[Opacity[.7], CapForm["Round"], thickness, color]]
          ]


          Here's the example:



          Graph[G, EdgeStyle -> Thread[EdgeList[G] -> edgeStyle[edgeweights]], 
          VertexSize -> 1, VertexStyle -> Blue]


          enter image description here



          With different thickness and color:



          Graph[G, EdgeStyle -> 
          Thread[EdgeList[G] ->
          edgeStyle[edgeweights, {0.0001, 0.02},
          ColorData["BrightBands"]]], VertexSize -> 1, VertexStyle -> Blue]


          enter image description here






          share|improve this answer









          $endgroup$





















            3












            $begingroup$

            I do not think that any good way exists. Once a graph is large enough, it will always look like a hairball unless it has a clear structure that might be made visible. For example, this is a similarity graph of musicians. The musicians cluster into groups, and it is possible to make this structure visible. Your example graph, on the other hand, is completely random, with random edge weights. Since there are lots of nodes and edges, but no real information is contained within them, I do not think that it can be visualized in a meaningful way.



            Assuming that there is something to show, things you can try are:





            • Take edge weights into consideration when computing the layout. Look up individual graph layouts on the GraphLayout doc page, and see if they support weights. You have already found GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True}, but it's still useful to mention this for other readers.



              The example I linked above was created by one of the authors of the igraph library. IGraph/M is a Mathematica interface to igraph (and much more), and exposes multiple layout algorithms that support weights. The above example was created using the DrL layout (IGLayoutDrL function in IGraph/M)




            • Visualize weights as not edge lengths, but edge weights or edge colours. You can do this with EdgeStyle. IGraph/M provides a very convenient way to do it:



              SeedRandom[137]
              g = RandomGraph[{10, 20}, EdgeWeight -> RandomReal[{.1, 1}, 20]]

              Graph[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/3]]] //
              IGEdgeMap[AbsoluteThickness[10 #] &, EdgeStyle -> IGEdgeProp[EdgeWeight]]


              enter image description here




            • Use colours in the same way.



              Graph[g, EdgeStyle -> Directive[CapForm["Round"], AbsoluteThickness[4]]] //
              IGEdgeMap[ColorData["RustTones"], EdgeStyle -> Rescale@*IGEdgeProp[EdgeWeight]]


              enter image description here




            • Use all of the above: edge length, edge thickness and edge colour.



              IGLayoutFruchtermanReingold[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/2]]] // 
              IGEdgeMap[
              Directive[ColorData["RustTones"][#], AbsoluteThickness[10 #]] &,
              EdgeStyle -> (#/Max[#] &)@*IGEdgeProp[EdgeWeight]]


              enter image description here




            • Cluster the graph vertices before visualizing them. The clustering can take weights into account.



              CommunityGraphPlot[g]


              enter image description here



              This related to what I said above. First, try to identify the structure, then explicitly make it visible.








            share|improve this answer









            $endgroup$





















              1












              $begingroup$

              When you have a lot of things to display in a small space you get a mess no matter what. But you can always try to make it better. I suggest 2 steps:




              1. Untangle a bit the mess with GraphLayout

              2. Avoid noise in style logic


              1. Untangle a bit the mess with GraphLayout



              I would use a proper GraphLayout for a specific cases. For instance, a general messy graph can benefit from "GravityEmbedding" which will be available in V12 (compare left and right images):



              RandomGraph[{100,100},ImageSize->400,GraphLayout->#]&/@
              {Automatic,"GravityEmbedding"}


              enter image description here



              But on the other hand in case of trees you are better of with "RadialEmbedding"



              Graph[RandomInteger[#]<->#+1&/@Range[0,500],ImageSize->400,GraphLayout->#]&/@
              {Automatic,"RadialEmbedding"}


              enter image description here



              And so on depending on your specific graph structure.



              2. Avoid noise in style logic



              I recommend to read an article I wrote (even so your graphs are larger a lot of logic still holds):



              On design of styles for small weighted graphs: https://community.wolfram.com/groups/-/m/t/838652



              enter image description here






              share|improve this answer









              $endgroup$














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                $begingroup$

                edgeStyle[weights_, thickbounds_:{0.0001,0.01}, colorf_:ColorData["SolarColors"]]:=
                Block[{minmax, thickness, color},
                minmax = MinMax[weights];
                thickness = Thickness /@ Rescale[weights, minmax, thickbounds];
                color = colorf /@ Rescale[weights, minmax, {0, 1}];
                Thread[Directive[Opacity[.7], CapForm["Round"], thickness, color]]
                ]


                Here's the example:



                Graph[G, EdgeStyle -> Thread[EdgeList[G] -> edgeStyle[edgeweights]], 
                VertexSize -> 1, VertexStyle -> Blue]


                enter image description here



                With different thickness and color:



                Graph[G, EdgeStyle -> 
                Thread[EdgeList[G] ->
                edgeStyle[edgeweights, {0.0001, 0.02},
                ColorData["BrightBands"]]], VertexSize -> 1, VertexStyle -> Blue]


                enter image description here






                share|improve this answer









                $endgroup$


















                  3












                  $begingroup$

                  edgeStyle[weights_, thickbounds_:{0.0001,0.01}, colorf_:ColorData["SolarColors"]]:=
                  Block[{minmax, thickness, color},
                  minmax = MinMax[weights];
                  thickness = Thickness /@ Rescale[weights, minmax, thickbounds];
                  color = colorf /@ Rescale[weights, minmax, {0, 1}];
                  Thread[Directive[Opacity[.7], CapForm["Round"], thickness, color]]
                  ]


                  Here's the example:



                  Graph[G, EdgeStyle -> Thread[EdgeList[G] -> edgeStyle[edgeweights]], 
                  VertexSize -> 1, VertexStyle -> Blue]


                  enter image description here



                  With different thickness and color:



                  Graph[G, EdgeStyle -> 
                  Thread[EdgeList[G] ->
                  edgeStyle[edgeweights, {0.0001, 0.02},
                  ColorData["BrightBands"]]], VertexSize -> 1, VertexStyle -> Blue]


                  enter image description here






                  share|improve this answer









                  $endgroup$
















                    3












                    3








                    3





                    $begingroup$

                    edgeStyle[weights_, thickbounds_:{0.0001,0.01}, colorf_:ColorData["SolarColors"]]:=
                    Block[{minmax, thickness, color},
                    minmax = MinMax[weights];
                    thickness = Thickness /@ Rescale[weights, minmax, thickbounds];
                    color = colorf /@ Rescale[weights, minmax, {0, 1}];
                    Thread[Directive[Opacity[.7], CapForm["Round"], thickness, color]]
                    ]


                    Here's the example:



                    Graph[G, EdgeStyle -> Thread[EdgeList[G] -> edgeStyle[edgeweights]], 
                    VertexSize -> 1, VertexStyle -> Blue]


                    enter image description here



                    With different thickness and color:



                    Graph[G, EdgeStyle -> 
                    Thread[EdgeList[G] ->
                    edgeStyle[edgeweights, {0.0001, 0.02},
                    ColorData["BrightBands"]]], VertexSize -> 1, VertexStyle -> Blue]


                    enter image description here






                    share|improve this answer









                    $endgroup$



                    edgeStyle[weights_, thickbounds_:{0.0001,0.01}, colorf_:ColorData["SolarColors"]]:=
                    Block[{minmax, thickness, color},
                    minmax = MinMax[weights];
                    thickness = Thickness /@ Rescale[weights, minmax, thickbounds];
                    color = colorf /@ Rescale[weights, minmax, {0, 1}];
                    Thread[Directive[Opacity[.7], CapForm["Round"], thickness, color]]
                    ]


                    Here's the example:



                    Graph[G, EdgeStyle -> Thread[EdgeList[G] -> edgeStyle[edgeweights]], 
                    VertexSize -> 1, VertexStyle -> Blue]


                    enter image description here



                    With different thickness and color:



                    Graph[G, EdgeStyle -> 
                    Thread[EdgeList[G] ->
                    edgeStyle[edgeweights, {0.0001, 0.02},
                    ColorData["BrightBands"]]], VertexSize -> 1, VertexStyle -> Blue]


                    enter image description here







                    share|improve this answer












                    share|improve this answer



                    share|improve this answer










                    answered 13 hours ago









                    halmirhalmir

                    10.6k2544




                    10.6k2544























                        3












                        $begingroup$

                        I do not think that any good way exists. Once a graph is large enough, it will always look like a hairball unless it has a clear structure that might be made visible. For example, this is a similarity graph of musicians. The musicians cluster into groups, and it is possible to make this structure visible. Your example graph, on the other hand, is completely random, with random edge weights. Since there are lots of nodes and edges, but no real information is contained within them, I do not think that it can be visualized in a meaningful way.



                        Assuming that there is something to show, things you can try are:





                        • Take edge weights into consideration when computing the layout. Look up individual graph layouts on the GraphLayout doc page, and see if they support weights. You have already found GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True}, but it's still useful to mention this for other readers.



                          The example I linked above was created by one of the authors of the igraph library. IGraph/M is a Mathematica interface to igraph (and much more), and exposes multiple layout algorithms that support weights. The above example was created using the DrL layout (IGLayoutDrL function in IGraph/M)




                        • Visualize weights as not edge lengths, but edge weights or edge colours. You can do this with EdgeStyle. IGraph/M provides a very convenient way to do it:



                          SeedRandom[137]
                          g = RandomGraph[{10, 20}, EdgeWeight -> RandomReal[{.1, 1}, 20]]

                          Graph[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/3]]] //
                          IGEdgeMap[AbsoluteThickness[10 #] &, EdgeStyle -> IGEdgeProp[EdgeWeight]]


                          enter image description here




                        • Use colours in the same way.



                          Graph[g, EdgeStyle -> Directive[CapForm["Round"], AbsoluteThickness[4]]] //
                          IGEdgeMap[ColorData["RustTones"], EdgeStyle -> Rescale@*IGEdgeProp[EdgeWeight]]


                          enter image description here




                        • Use all of the above: edge length, edge thickness and edge colour.



                          IGLayoutFruchtermanReingold[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/2]]] // 
                          IGEdgeMap[
                          Directive[ColorData["RustTones"][#], AbsoluteThickness[10 #]] &,
                          EdgeStyle -> (#/Max[#] &)@*IGEdgeProp[EdgeWeight]]


                          enter image description here




                        • Cluster the graph vertices before visualizing them. The clustering can take weights into account.



                          CommunityGraphPlot[g]


                          enter image description here



                          This related to what I said above. First, try to identify the structure, then explicitly make it visible.








                        share|improve this answer









                        $endgroup$


















                          3












                          $begingroup$

                          I do not think that any good way exists. Once a graph is large enough, it will always look like a hairball unless it has a clear structure that might be made visible. For example, this is a similarity graph of musicians. The musicians cluster into groups, and it is possible to make this structure visible. Your example graph, on the other hand, is completely random, with random edge weights. Since there are lots of nodes and edges, but no real information is contained within them, I do not think that it can be visualized in a meaningful way.



                          Assuming that there is something to show, things you can try are:





                          • Take edge weights into consideration when computing the layout. Look up individual graph layouts on the GraphLayout doc page, and see if they support weights. You have already found GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True}, but it's still useful to mention this for other readers.



                            The example I linked above was created by one of the authors of the igraph library. IGraph/M is a Mathematica interface to igraph (and much more), and exposes multiple layout algorithms that support weights. The above example was created using the DrL layout (IGLayoutDrL function in IGraph/M)




                          • Visualize weights as not edge lengths, but edge weights or edge colours. You can do this with EdgeStyle. IGraph/M provides a very convenient way to do it:



                            SeedRandom[137]
                            g = RandomGraph[{10, 20}, EdgeWeight -> RandomReal[{.1, 1}, 20]]

                            Graph[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/3]]] //
                            IGEdgeMap[AbsoluteThickness[10 #] &, EdgeStyle -> IGEdgeProp[EdgeWeight]]


                            enter image description here




                          • Use colours in the same way.



                            Graph[g, EdgeStyle -> Directive[CapForm["Round"], AbsoluteThickness[4]]] //
                            IGEdgeMap[ColorData["RustTones"], EdgeStyle -> Rescale@*IGEdgeProp[EdgeWeight]]


                            enter image description here




                          • Use all of the above: edge length, edge thickness and edge colour.



                            IGLayoutFruchtermanReingold[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/2]]] // 
                            IGEdgeMap[
                            Directive[ColorData["RustTones"][#], AbsoluteThickness[10 #]] &,
                            EdgeStyle -> (#/Max[#] &)@*IGEdgeProp[EdgeWeight]]


                            enter image description here




                          • Cluster the graph vertices before visualizing them. The clustering can take weights into account.



                            CommunityGraphPlot[g]


                            enter image description here



                            This related to what I said above. First, try to identify the structure, then explicitly make it visible.








                          share|improve this answer









                          $endgroup$
















                            3












                            3








                            3





                            $begingroup$

                            I do not think that any good way exists. Once a graph is large enough, it will always look like a hairball unless it has a clear structure that might be made visible. For example, this is a similarity graph of musicians. The musicians cluster into groups, and it is possible to make this structure visible. Your example graph, on the other hand, is completely random, with random edge weights. Since there are lots of nodes and edges, but no real information is contained within them, I do not think that it can be visualized in a meaningful way.



                            Assuming that there is something to show, things you can try are:





                            • Take edge weights into consideration when computing the layout. Look up individual graph layouts on the GraphLayout doc page, and see if they support weights. You have already found GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True}, but it's still useful to mention this for other readers.



                              The example I linked above was created by one of the authors of the igraph library. IGraph/M is a Mathematica interface to igraph (and much more), and exposes multiple layout algorithms that support weights. The above example was created using the DrL layout (IGLayoutDrL function in IGraph/M)




                            • Visualize weights as not edge lengths, but edge weights or edge colours. You can do this with EdgeStyle. IGraph/M provides a very convenient way to do it:



                              SeedRandom[137]
                              g = RandomGraph[{10, 20}, EdgeWeight -> RandomReal[{.1, 1}, 20]]

                              Graph[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/3]]] //
                              IGEdgeMap[AbsoluteThickness[10 #] &, EdgeStyle -> IGEdgeProp[EdgeWeight]]


                              enter image description here




                            • Use colours in the same way.



                              Graph[g, EdgeStyle -> Directive[CapForm["Round"], AbsoluteThickness[4]]] //
                              IGEdgeMap[ColorData["RustTones"], EdgeStyle -> Rescale@*IGEdgeProp[EdgeWeight]]


                              enter image description here




                            • Use all of the above: edge length, edge thickness and edge colour.



                              IGLayoutFruchtermanReingold[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/2]]] // 
                              IGEdgeMap[
                              Directive[ColorData["RustTones"][#], AbsoluteThickness[10 #]] &,
                              EdgeStyle -> (#/Max[#] &)@*IGEdgeProp[EdgeWeight]]


                              enter image description here




                            • Cluster the graph vertices before visualizing them. The clustering can take weights into account.



                              CommunityGraphPlot[g]


                              enter image description here



                              This related to what I said above. First, try to identify the structure, then explicitly make it visible.








                            share|improve this answer









                            $endgroup$



                            I do not think that any good way exists. Once a graph is large enough, it will always look like a hairball unless it has a clear structure that might be made visible. For example, this is a similarity graph of musicians. The musicians cluster into groups, and it is possible to make this structure visible. Your example graph, on the other hand, is completely random, with random edge weights. Since there are lots of nodes and edges, but no real information is contained within them, I do not think that it can be visualized in a meaningful way.



                            Assuming that there is something to show, things you can try are:





                            • Take edge weights into consideration when computing the layout. Look up individual graph layouts on the GraphLayout doc page, and see if they support weights. You have already found GraphLayout -> {"SpringElectricalEmbedding", "EdgeWeighted" -> True}, but it's still useful to mention this for other readers.



                              The example I linked above was created by one of the authors of the igraph library. IGraph/M is a Mathematica interface to igraph (and much more), and exposes multiple layout algorithms that support weights. The above example was created using the DrL layout (IGLayoutDrL function in IGraph/M)




                            • Visualize weights as not edge lengths, but edge weights or edge colours. You can do this with EdgeStyle. IGraph/M provides a very convenient way to do it:



                              SeedRandom[137]
                              g = RandomGraph[{10, 20}, EdgeWeight -> RandomReal[{.1, 1}, 20]]

                              Graph[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/3]]] //
                              IGEdgeMap[AbsoluteThickness[10 #] &, EdgeStyle -> IGEdgeProp[EdgeWeight]]


                              enter image description here




                            • Use colours in the same way.



                              Graph[g, EdgeStyle -> Directive[CapForm["Round"], AbsoluteThickness[4]]] //
                              IGEdgeMap[ColorData["RustTones"], EdgeStyle -> Rescale@*IGEdgeProp[EdgeWeight]]


                              enter image description here




                            • Use all of the above: edge length, edge thickness and edge colour.



                              IGLayoutFruchtermanReingold[g, EdgeStyle -> Directive[CapForm["Round"], Opacity[1/2]]] // 
                              IGEdgeMap[
                              Directive[ColorData["RustTones"][#], AbsoluteThickness[10 #]] &,
                              EdgeStyle -> (#/Max[#] &)@*IGEdgeProp[EdgeWeight]]


                              enter image description here




                            • Cluster the graph vertices before visualizing them. The clustering can take weights into account.



                              CommunityGraphPlot[g]


                              enter image description here



                              This related to what I said above. First, try to identify the structure, then explicitly make it visible.









                            share|improve this answer












                            share|improve this answer



                            share|improve this answer










                            answered 13 hours ago









                            SzabolcsSzabolcs

                            163k14448945




                            163k14448945























                                1












                                $begingroup$

                                When you have a lot of things to display in a small space you get a mess no matter what. But you can always try to make it better. I suggest 2 steps:




                                1. Untangle a bit the mess with GraphLayout

                                2. Avoid noise in style logic


                                1. Untangle a bit the mess with GraphLayout



                                I would use a proper GraphLayout for a specific cases. For instance, a general messy graph can benefit from "GravityEmbedding" which will be available in V12 (compare left and right images):



                                RandomGraph[{100,100},ImageSize->400,GraphLayout->#]&/@
                                {Automatic,"GravityEmbedding"}


                                enter image description here



                                But on the other hand in case of trees you are better of with "RadialEmbedding"



                                Graph[RandomInteger[#]<->#+1&/@Range[0,500],ImageSize->400,GraphLayout->#]&/@
                                {Automatic,"RadialEmbedding"}


                                enter image description here



                                And so on depending on your specific graph structure.



                                2. Avoid noise in style logic



                                I recommend to read an article I wrote (even so your graphs are larger a lot of logic still holds):



                                On design of styles for small weighted graphs: https://community.wolfram.com/groups/-/m/t/838652



                                enter image description here






                                share|improve this answer









                                $endgroup$


















                                  1












                                  $begingroup$

                                  When you have a lot of things to display in a small space you get a mess no matter what. But you can always try to make it better. I suggest 2 steps:




                                  1. Untangle a bit the mess with GraphLayout

                                  2. Avoid noise in style logic


                                  1. Untangle a bit the mess with GraphLayout



                                  I would use a proper GraphLayout for a specific cases. For instance, a general messy graph can benefit from "GravityEmbedding" which will be available in V12 (compare left and right images):



                                  RandomGraph[{100,100},ImageSize->400,GraphLayout->#]&/@
                                  {Automatic,"GravityEmbedding"}


                                  enter image description here



                                  But on the other hand in case of trees you are better of with "RadialEmbedding"



                                  Graph[RandomInteger[#]<->#+1&/@Range[0,500],ImageSize->400,GraphLayout->#]&/@
                                  {Automatic,"RadialEmbedding"}


                                  enter image description here



                                  And so on depending on your specific graph structure.



                                  2. Avoid noise in style logic



                                  I recommend to read an article I wrote (even so your graphs are larger a lot of logic still holds):



                                  On design of styles for small weighted graphs: https://community.wolfram.com/groups/-/m/t/838652



                                  enter image description here






                                  share|improve this answer









                                  $endgroup$
















                                    1












                                    1








                                    1





                                    $begingroup$

                                    When you have a lot of things to display in a small space you get a mess no matter what. But you can always try to make it better. I suggest 2 steps:




                                    1. Untangle a bit the mess with GraphLayout

                                    2. Avoid noise in style logic


                                    1. Untangle a bit the mess with GraphLayout



                                    I would use a proper GraphLayout for a specific cases. For instance, a general messy graph can benefit from "GravityEmbedding" which will be available in V12 (compare left and right images):



                                    RandomGraph[{100,100},ImageSize->400,GraphLayout->#]&/@
                                    {Automatic,"GravityEmbedding"}


                                    enter image description here



                                    But on the other hand in case of trees you are better of with "RadialEmbedding"



                                    Graph[RandomInteger[#]<->#+1&/@Range[0,500],ImageSize->400,GraphLayout->#]&/@
                                    {Automatic,"RadialEmbedding"}


                                    enter image description here



                                    And so on depending on your specific graph structure.



                                    2. Avoid noise in style logic



                                    I recommend to read an article I wrote (even so your graphs are larger a lot of logic still holds):



                                    On design of styles for small weighted graphs: https://community.wolfram.com/groups/-/m/t/838652



                                    enter image description here






                                    share|improve this answer









                                    $endgroup$



                                    When you have a lot of things to display in a small space you get a mess no matter what. But you can always try to make it better. I suggest 2 steps:




                                    1. Untangle a bit the mess with GraphLayout

                                    2. Avoid noise in style logic


                                    1. Untangle a bit the mess with GraphLayout



                                    I would use a proper GraphLayout for a specific cases. For instance, a general messy graph can benefit from "GravityEmbedding" which will be available in V12 (compare left and right images):



                                    RandomGraph[{100,100},ImageSize->400,GraphLayout->#]&/@
                                    {Automatic,"GravityEmbedding"}


                                    enter image description here



                                    But on the other hand in case of trees you are better of with "RadialEmbedding"



                                    Graph[RandomInteger[#]<->#+1&/@Range[0,500],ImageSize->400,GraphLayout->#]&/@
                                    {Automatic,"RadialEmbedding"}


                                    enter image description here



                                    And so on depending on your specific graph structure.



                                    2. Avoid noise in style logic



                                    I recommend to read an article I wrote (even so your graphs are larger a lot of logic still holds):



                                    On design of styles for small weighted graphs: https://community.wolfram.com/groups/-/m/t/838652



                                    enter image description here







                                    share|improve this answer












                                    share|improve this answer



                                    share|improve this answer










                                    answered 7 hours ago









                                    Vitaliy KaurovVitaliy Kaurov

                                    57.8k6162283




                                    57.8k6162283






























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