Differences between revisions 29 and 30
Revision 29 as of 2006-11-30 06:23:21
Size: 12508
Editor: anonymous
Comment:
Revision 30 as of 2006-11-30 06:39:25
Size: 15352
Editor: anonymous
Comment:
Deletions are marked like this. Additions are marked like this.
Line 156: Line 156:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 163: Line 163:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 176: Line 176:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 185: Line 185:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 275: Line 275:
 (Time Results will vary.) [[br]] (Time Results will vary.)
Line 280: Line 280:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 292: Line 292:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 298: Line 298:
 (Time results will vary.) [[br]] (Time results will vary.)
Line 344: Line 344:

 * Returns a Wheel graph with n nodes.
 * A Wheel graph is a basic structure where one node is connected to all other nodes and those (outer) nodes are connected cyclically.
 * This constructor depends on NetworkX numeric labels.
        
==== Plotting ====

 * Upon construction, the position dictionary is filled to override the spring-layout algorithm. By convention, each wheel graph will be displayed with the first (0) node in the center, the second node at the top, and the rest following in a counterclockwise manner.
 * With the wheel graph, we see that it doesn't take a very large n at all for the spring-layout to give a counter-intuitive display. (See Graphics Array examples below).
 * Filling the position dictionary in advance adds O(n) to the constructor. Feel free to race the constructors below in the examples section. The much larger difference is the time added by the spring-layout algorithm when plotting. (Also shown in the example below). The spring model is typically described as O(n^3), as appears to be the case in the NetworkX source code.

==== Code ====

{{{
pos_dict = {}
        pos_dict[0] = [0,0]
        for i in range(n)[1:]:
            x = float(functions.cos((pi/2) + ((2*pi)/(n-1))*(i-1)))
            y = float(functions.sin((pi/2) + ((2*pi)/(n-1))*(i-1)))
            pos_dict[i] = [x,y]
        G = NX.wheel_graph(n)
        return graph.Graph(G, pos=pos_dict, name="Wheel graph on %d vertices"%n)
}}}

==== Examples ====

===== The following examples require NetworkX (to use default): =====
{{{
 sage: import networkx as NX
}}}

===== Compare the constructor speeds. =====
{{{
 time n = NX.wheel_graph(3989); spring3989 = Graph(n)
}}}
 CPU time: 0.07 s, Wall time: 0.09 s
[[br]] (Time results will vary._

{{{
 time posdict3989 = graphs.WheelGraph(3989)
}}}
 CPU time: 5.99 s, Wall time: 8.74 s
[[br]] (Time results will vary.)

===== Compare the plotting speeds. =====
{{{
 sage: n = NX.wheel_graph(23)
 sage: spring23 = Graph(n)
 sage: posdict23 = graphs.WheelGraph(23)
}}}
{{{
 time spring23.show()
}}}
 CPU time: 2.24 s, Wall time: 3.00 s
[[br]] (Time results will vary.)

{{{
 time posdict23.show()
}}}
 CPU time: 0.68 s, Wall time: 1.14 s
[[br]] (Time results will vary.)

===== View many [cycle] graphs as a SAGE Graphics Array. =====
====== With the position dictionary filled: ======
{{{
 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ... k = graphs.WheelGraph(i+3)
 ... g.append(k)
 ...
 sage: for i in range(4):
 ... n = []
 ... for m in range(4):
 ... n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ... j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()
}}}

====== With the spring-layout algorithm: ======
{{{
 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ... spr = NX.wheel_graph(i+3)
 ... k = Graph(spr)
 ... g.append(k)
 ...
 sage: for i in range(4):
 ... n = []
 ... for m in range(4):
 ... n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ... j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()
}}}




== Named Graphs ==

=== Petersen ===

==== Info ====
==== Plotting ====
==== Properties ====
==== Code ====
==== Examples ====
 * Here is the Petersen Graph as constructed in the database
attachment:petersen_pos.png
 * And compare with the Petersen Graph plotted using the spring layout algorithm
attachment:petersen_spring.png

== Graph Families ==

=== Complete Graphs ===

==== Info ====
Line 363: Line 485:
== Named Graphs ==

=== Petersen ===

==== Info ====
==== Plotting ====
==== Properties ====
==== Code ====
==== Examples ====
 * Here is the Petersen Graph as constructed in the database
attachment:petersen_pos.png
 * And compare with the Petersen Graph plotted using the spring layout algorithm
attachment:petersen_spring.png

== Graph Families ==

=== Complete Graphs ===
=== Complete Bipartite Graphs ===
Line 401: Line 507:
=== Complete Bipartite Graphs ===

==== Info ====
==== Plotting ====
==== Code ====
==== Examples ====

===== The following examples require NetworkX (to use default): =====
{{{
 sage: import networkx as NX
}}}

===== Compare the constructor speeds. =====
===== Compare the plotting speeds. =====
===== View many [cycle] graphs as a SAGE Graphics Array. =====
====== With the position dictionary filled: ======
====== With the spring-layout algorithm: ======




TableOfContents

In Process of Updating... Check back 11/23/06

Introduction

The SAGE Graph Theory Project aims to implement Graph objects and algorithms in ["SAGE"].

The goal of the Graph Database is to implement constructors for many common graphs, as well as thorough docstrings that can be used for educational purposes. Please check below for updates and note the section set aside for suggestions at the bottom of the page.

Emily Kirkman is working on this project.

Class Docstrings

A collection of constructors of common graphs.

USES:
    A list of all graphs and graph structures in this database is available via tab completion.
    Type "graphs." and then hit tab to see which graphs are available.

    The docstrings include educational information about each named graph with the hopes that this
    database can be used as a reference.

PLOTTING:
    All graphs (i.e., networks) have an associated SAGE graphics object, which you can display:
        
        sage: G = WheelGraph(15)
        sage: p = G.plot()
        sage: is_Graphics(p)
        True

    When creating a graph in SAGE, the default positioning of nodes is determined using the spring-layout
    algorithm.  Often, it is more efficient to pre-set the positions in a dictionary.  Additionally, we can use
    this position dictionary to display the graph in an intuitive manner, whereas the spring-layout would 
    fail if the graph is not very symmetric.  For example, consider the Petersen graph with default node
    positioning vs. the Petersen graph constructed by this database:

        sage: petersen_spring = Graph({0:[1,4,5], 1:[0,2,6], 2:[1,3,7], 3:[2,4,8], 4:[0,3,9],\
                5:[0,7,8], 6:[1,8,9], 7:[2,5,9], 8:[3,5,6], 9:[4,6,7]})
        sage.: petersen_spring.show()
        sage: petersen_database = graphs.PetersenGraph()
        sage.: petersen_database.show()
    
    For all the constructors in this database (except the random and empty graphs), the position dictionary
    is filled, instead of using the spring-layout algorithm.

ORGANIZATION:
    The constructors available in this database are organized as follows:
        Basic Structures:
            - EmptyGraph
            - CycleGraph
            - StarGraph
            - WheelGraph
        Named Graphs:
            - PetersenGraph
        Families of Graphs:
            - CompleteGraph
            - CompleteBipartiteGraph
            - RandomGNP
            - RandomGNPFast

AUTHORS:
    -- Robert Miller (2006-11-05): initial version - empty, random, petersen
    -- Emily Kirkman (2006-11-12): basic structures, node positioning for all constructors
    -- Emily Kirkman (2006-11-19): docstrings, examples
    
TODO:
    [] more named graphs
    [] thorough docstrings and examples
    [] set properties (as they are implemented)
    [] add query functionality for large database

Basic Structures

Empty Graphs

Info

  • Returns an empty graph (0 nodes and 0 edges).
  • This is useful for constructing graphs by adding edges and vertices individually or in a loop.

Plotting

  • When plotting, this graph will use the default spring-layout algorithm, unless a position dictionary is specified.

Code

 return graph.Graph()

Examples

Add one vertex to an empty graph.

 sage: empty1 = graphs.EmptyGraph()
 sage: empty1.add_vertex()
 sage: empty1.show()

attachment:empty1.png

Use for loops to build a graph from an empty graph.

 sage: empty2 = graphs.EmptyGraph()
 sage: for i in range(5):
 ...    empty2.add_vertex() # add 5 nodes, labeled 0-4
 ...
 sage: for i in range(3):
 ...    empty2.add_edge(i,i+1) # add edges {[0:1],[1:2],[2:3]}
 ...
 sage: for i in range(4)[1:]:
 ...    empty2.add_edge(4,i) # add edges {[1:4],[2:4],[3:4]}
 ...
 sage: empty2.show()

attachment:empty2.png

Cycle Graphs

Info

  • Returns a cycle graph with n nodes.
  • A cycle graph is a basic structure which is also typically called an n-gon.
  • This constructor is dependant on vertices numbered 0 through n-1 in NetworkX cycle_graph()

Plotting

  • Upon construction, the position dictionary is filled to override the spring-layout algorithm. By convention, each cycle graph will be displayed with the first (0) node at the top, with the rest following in a counterclockwise manner.
  • The cycle graph is a good opportunity to compare efficiency of filling a position dictionary vs. using the spring-layout algorithm for plotting. Because the cycle graph is very symmetric, the resulting plots should be similar (in cases of small n).
  • Filling the position dictionary in advance adds O(n) to the constructor. Feel free to race the constructors below in the examples section. The much larger difference is the time added by the spring-layout algorithm when plotting. (Also shown in the example below). The spring model is typically described as O(n^3), as appears to be the case in the NetworkX source code.

Code

 pos_dict = {}
 for i in range(n):
     x = float(functions.cos((pi/2) + ((2*pi)/n)*i))
     y = float(functions.sin((pi/2) + ((2*pi)/n)*i))
     pos_dict[i] = [x,y]
 G = NX.cycle_graph(n)
 return graph.Graph(G, pos=pos_dict, name="Cycle graph on %d vertices"%n)

Examples

The following examples require NetworkX (to use default):

 sage: import networkx as NX

Compare the constructor speeds.

 time n = NX.cycle_graph(3989); spring3989 = Graph(n)
  • CPU time: 0.05 s, Wall time: 0.07 s

br (Time results will vary.)

 time posdict3989 = graphs.CycleGraph(3989)
  • CPU time: 5.18 s, Wall time: 6.17 s

br (Time results will vary.)

Compare the plotting speeds.

 sage: n = NX.cycle_graph(23)
 sage: spring23 = Graph(n)
 sage: posdict23 = graphs.CycleGraph(23)

 time spring23.show()
  • CPU time: 2.04 s, Wall time: 2.72 s

br (Time results will vary.)

attachment:cycle_spr23.png

 time posdict23.show()
  • CPU time: 0.57 s, Wall time: 0.71 s

br (Time results will vary.)

attachment:cycl_pd23.png

View many cycle graphs as a SAGE Graphics Array.

With the position dictionary filled:

 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ...    k = graphs.CycleGraph(i+3)
 ...    g.append(k)
 ...
 sage: for i in range(4):
 ...    n = []
 ...    for m in range(4):
 ...        n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ...    j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()

attachment:cycle_pd_array.png

With the spring-layout algorithm:

 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ...    spr = NX.cycle_graph(i+3)       
 ...    k = Graph(spr)
 ...    g.append(k)
 ...
 sage: for i in range(4):
 ...    n = []
 ...    for m in range(4):
 ...        n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ...    j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()

attachment:cycle_spr_array.png

Star Graphs

Info

  • Returns a star graph with n+1 nodes.
  • A Star graph is a basic structure where one node is connected to all other nodes.
  • This constructor is dependant on NetworkX numeric labels.

Plotting

  • Upon construction, the position dictionary is filled to override the spring-layout algorithm. By convention, each star graph will be displayed with the first (0) node in the center, the second node (1) at the top, with the rest following in a counterclockwise manner. (0) is the node connected to all other nodes.
  • The star graph is a good opportunity to compare efficiency of filling a position dictionary vs. using the spring-layout algorithm for plotting. As far as display, the spring-layout should push all other nodes away from the (0) node, and thus look very similar to this constructor's positioning.
  • Filling the position dictionary in advance adds O(n) to the constructor. Feel free to race the constructors below in the examples section. The much larger difference is the time added by the spring-layout algorithm when plotting. (Also shown in the example below). The spring model is typically described as O(n^3), as appears to be the case in the NetworkX source code.

Code

 pos_dict = {}
 pos_dict[0] = [0,0]
 for i in range(n+1)[1:]:
     x = float(functions.cos((pi/2) + ((2*pi)/n)*(i-1)))
     y = float(functions.sin((pi/2) + ((2*pi)/n)*(i-1)))
     pos_dict[i] = [x,y]
 G = NX.star_graph(n)
 return graph.Graph(G, pos=pos_dict, name="Star graph on %d vertices"%(n+1))

Examples

The following examples require NetworkX (to use default):

 sage: import networkx as NX

Compare the constructor speeds.

 time n = NX.star_graph(3989); spring3989 = Graph(n)
  • CPU time: 0.08 s, Wall time: 0.10 s

br (Time Results will vary.)

 time posdict3989 = graphs.StarGraph(3989)
  • CPU time: 5.43 s, Wall time: 7.41 s

br (Time results will vary.)

Compare the plotting speeds.

 sage: n = NX.star_graph(23)
 sage: spring23 = Graph(n)
 sage: posdict23 = graphs.StarGraph(23)

 time spring23.show()
  • CPU time: 2.31 s, Wall time: 3.14 s

br (Time results will vary.)

 time posdict23.show()
  • CPU time: 0.68 s, Wall time: 0.80 s

br (Time results will vary.)

View many star graphs as a SAGE Graphics Array.

With the position dictionary filled:

 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ...    k = graphs.StarGraph(i+3)
 ...    g.append(k)
 ...
 sage: for i in range(4):
 ...    n = []
 ...    for m in range(4):
 ...        n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ...    j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()

With the spring-layout algorithm:

 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ...    spr = NX.star_graph(i+3)       
 ...    k = Graph(spr)
 ...    g.append(k)
 ...
 sage: for i in range(4):
 ...    n = []
 ...    for m in range(4):
 ...        n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ...    j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()

Wheel Graphs

Info

  • Returns a Wheel graph with n nodes.
  • A Wheel graph is a basic structure where one node is connected to all other nodes and those (outer) nodes are connected cyclically.
  • This constructor depends on NetworkX numeric labels.

Plotting

  • Upon construction, the position dictionary is filled to override the spring-layout algorithm. By convention, each wheel graph will be displayed with the first (0) node in the center, the second node at the top, and the rest following in a counterclockwise manner.
  • With the wheel graph, we see that it doesn't take a very large n at all for the spring-layout to give a counter-intuitive display. (See Graphics Array examples below).
  • Filling the position dictionary in advance adds O(n) to the constructor. Feel free to race the constructors below in the examples section. The much larger difference is the time added by the spring-layout algorithm when plotting. (Also shown in the example below). The spring model is typically described as O(n^3), as appears to be the case in the NetworkX source code.

Code

pos_dict = {}
        pos_dict[0] = [0,0]
        for i in range(n)[1:]:
            x = float(functions.cos((pi/2) + ((2*pi)/(n-1))*(i-1)))
            y = float(functions.sin((pi/2) + ((2*pi)/(n-1))*(i-1)))
            pos_dict[i] = [x,y]
        G = NX.wheel_graph(n)
        return graph.Graph(G, pos=pos_dict, name="Wheel graph on %d vertices"%n)

Examples

The following examples require NetworkX (to use default):

 sage: import networkx as NX

Compare the constructor speeds.

 time n = NX.wheel_graph(3989); spring3989 = Graph(n)
  • CPU time: 0.07 s, Wall time: 0.09 s

br (Time results will vary._

 time posdict3989 = graphs.WheelGraph(3989)
  • CPU time: 5.99 s, Wall time: 8.74 s

br (Time results will vary.)

Compare the plotting speeds.

 sage: n = NX.wheel_graph(23)
 sage: spring23 = Graph(n)
 sage: posdict23 = graphs.WheelGraph(23)

 time spring23.show()
  • CPU time: 2.24 s, Wall time: 3.00 s

br (Time results will vary.)

 time posdict23.show()
  • CPU time: 0.68 s, Wall time: 1.14 s

br (Time results will vary.)

View many [cycle] graphs as a SAGE Graphics Array.

With the position dictionary filled:

 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ...    k = graphs.WheelGraph(i+3)
 ...    g.append(k)
 ...
 sage: for i in range(4):
 ...    n = []
 ...    for m in range(4):
 ...        n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ...    j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()

With the spring-layout algorithm:

 sage: g = []
 sage: j = []
 sage: for i in range(16):
 ...    spr = NX.wheel_graph(i+3)       
 ...    k = Graph(spr)
 ...    g.append(k)
 ...
 sage: for i in range(4):
 ...    n = []
 ...    for m in range(4):
 ...        n.append(g[4*i + m].plot(node_size=50, with_labels=False))
 ...    j.append(n)
 ...
 sage: G = sage.plot.plot.GraphicsArray(j)
 sage: G.show()

Named Graphs

Petersen

Info

Plotting

Properties

Code

Examples

  • Here is the Petersen Graph as constructed in the database

attachment:petersen_pos.png

  • And compare with the Petersen Graph plotted using the spring layout algorithm

attachment:petersen_spring.png

Graph Families

Complete Graphs

Info

Plotting

Code

Examples

The following examples require NetworkX (to use default):

 sage: import networkx as NX

Compare the constructor speeds.

Compare the plotting speeds.

View many [cycle] graphs as a SAGE Graphics Array.

With the position dictionary filled:

With the spring-layout algorithm:

Complete Bipartite Graphs

Info

Plotting

Code

Examples

The following examples require NetworkX (to use default):

 sage: import networkx as NX

Compare the constructor speeds.

Compare the plotting speeds.

View many [cycle] graphs as a SAGE Graphics Array.

With the position dictionary filled:

With the spring-layout algorithm:

Graphs I Plan to Add

Suggestions

  • ???

graph_database (last edited 2008-11-14 13:42:09 by anonymous)