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ReadMe.txt
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========================================================================
SNAP : Stanford Network Analysis Platform
http://snap.stanford.edu
========================================================================
Stanford Network Analysis Platform (SNAP) is a general purpose, high
performance system for analysis and manipulation of large networks.
SNAP is written in C++ and it scales to massive graphs with hundreds
of millions of nodes and billions of edges.
/////////////////////////////////////////////////////////////////////////////
Directory structure:
http://snap.stanford.edu/snap/description.html
snap-core:
the core SNAP graph library
snap-adv:
advanced SNAP components, not in the core, but used by examples
snap-exp:
experimental SNAP components, still in development
examples:
small sample applications that demonstrate SNAP functionality
tutorials:
simple programs, demonstrating use of various classes
glib-core:
STL-like library that implements basic data structures, like vectors
(TVec), hash-tables (THash) and strings (TStr), provides
serialization and so on
test:
unit tests for various classes
doxygen:
SNAP reference manuals
Code compiles under Windows (Microsoft Visual Studio, CygWin with gcc) and
Linux and Mac (gcc). Use the SnapExamples*.sln or provided makefiles.
Some of applications expect that GnuPlot and GraphViz are installed and
accessible -- paths are in the system PATH variable or they reside in the
working directory.
/////////////////////////////////////////////////////////////////////////////
Example applications for advanced SNAP functionality are available
in the examples directory and described at:
http://snap.stanford.edu/snap/description.html.
To compile from the command line, execute:
make all # compiles SNAP and all sample applications
To compile on Mac OS X, using Xcode:
1. From the Toolbar, select Scheme (e.g. 'bigclam').
2. Product -> Build. (or Cmd + B).
3. Run executable via the command line; or
Choose the scheme's executable (Product -> Edit Scheme -> Run -> Info)
and run: Product -> Run (or Cmd + R).
Note: If using Gnuplot, add the PATH to the scheme's environment variables.
or create symlink to /usr/bin:
sudo ln -s <gnuplot_dir>/gnuplot /usr/bin/
For code completion, the "docs" target has been created which includes all
Snap-related files and example programs.
Description of examples:
agmfit :
Detects network communities from a given network by fitting
AGM to the given network by maximum likelihood estimation.
agmgen :
Implements the Affiliation Graph Model (AGM). AGM generates
a realistic looking graph from the community affiliation of the nodes.
bigclam :
Formulates community detection problems into non-negative matrix
factorization and discovers community membership factors of nodes.
cascadegen :
Identifies cascades in a list of events.
cascades :
Simulates a SI (susceptible-infected) model on a network and computes
structural properties of cascades.
centrality :
Computes node centrality measures for a graph: closeness, eigen,
degree, betweenness, page rank, hubs and authorities.
cesna :
Implements a large scale overlapping community detection method
for networks with node attributes based on Communities from
Edge Structure and Node Attributes (CESNA).
circles :
Implements a method for identifying users social circles.
cliques :
Finds overlapping dense groups of nodes in networks,
based on the Clique Percolation Method.
coda :
Implements a large scale overlapping community detection method
based on Communities through Directed Affiliations (CoDA), which
handles directed as well as undirected networks. The method is able
to find 2-mode communities where the member nodes form a bipartite
connectivity structure.
community :
Implements network community detection algorithms: Girvan-Newman,
Clauset-Newman-Moore and Infomap.
concomp :
Computes weakly, strongly and biconnected connected components,
articulation points and bridge edges of a graph.
flows :
Computes the maximum network flow in a network.
forestfire :
Generates graphs using the Forest Fire model.
graphgen :
Generates undirected graphs using one of the many SNAP graph generators.
graphhash :
Demonstrates the use of TGHash graph hash table, useful for
counting frequencies of small subgraphs or information cascades.
infopath :
Implements stochastic algorithm for dynamic network inference from
cascade data, see http://snap.stanford.edu/infopath/.
kcores :
Computes the k-core decomposition of the network and plots
the number of nodes in a k-core of a graph as a function of k.
kronem :
Estimates Kronecker graph parameter matrix using EM algorithm.
kronfit :
Estimates Kronecker graph parameter matrix.
krongen :
Generates Kronecker graphs.
localmotifcluster :
Implements a local method for motif-based clustering using MAPPR.
lshtest :
Implements locality sensitive hashing.
magfit :
Estimates Multiplicative Attribute Graph (MAG) model parameter.
maggen :
Generates Multiplicative Attribute Graphs (MAG).
mkdatasets :
Demonstrates how to load different kinds of networks in various
network formats and how to compute various statistics of the network.
motifcluster :
Implements a spectral method for motif-based clustering.
motifs :
Counts the number of occurrence of every possible subgraph on K nodes
in the network.
ncpplot :
Plots the Network Community Profile (NCP).
netevol :
Computes properties of an evolving network, like evolution of
diameter, densification power law, degree distribution, etc.
netinf :
Implements netinf algorithm for network inference from
cascade data, see http://snap.stanford.edu/netinf.
netstat :
Computes statistical properties of a static network, like degree
distribution, hop plot, clustering coefficient, distribution of sizes
of connected components, spectral properties of graph adjacency
matrix, etc.
randwalk :
Computes Personalized PageRank between pairs of nodes.
rolx :
Implements the rolx algorithm for analysing the structural
roles in the graph.
testgraph :
Demonstrates some of the basic SNAP functionality.
temporalmotifs :
Counts temporal motifs in temporal networks.
zygote :
Demonstrates how to use SNAP with the Zygote library, which
significantly speeds up computations that need to process the
same large graph many times.
/////////////////////////////////////////////////////////////////////////////
SNAP documentation:
http://snap.stanford.edu/snap/doc.html
The library defines Graphs (nodes and edges) and Networks (graphs with data
associated with nodes and edges).
Graph types:
TNGraph :
directed graph (single directed edge between a pair of nodes)
TUNGraph :
undirected graph (single undirected edge between a pair of nodes)
TNEGraph :
directed multi-graph (multiple directed edges can exist between
a pair of nodes)
Network types:
TNodeNet<TNodeData> :
like TNGraph, but with TNodeData object for each node
TNodeEDatNet<TNodeData,TEdgeData> :
like TNGraph, but with TNodeData object for each node and TEdgeData
object for each edge
TNodeEdgeNet<TNodeData, TEdgeData> :
like TNEGraph but with TNodeData object for each node and TEdgeData
object for each edge
TNEANet :
like TNEGraph, but with attributes on nodes and edges. The attributes
are dynamic in that they can be defined at runtime
TBigNet<TNodeData> :
memory efficient implementation of TNodeNet (avoids memory
fragmentation)
To generate reference manuals, install doxygen (www.doxygen.org), and execute:
cd doxygen; make all # generates user and developer reference manuals
/////////////////////////////////////////////////////////////////////////////
SNAP tutorials
Sample programs demonstrating the use of foundational SNAP classes and
functionality are available in the tutorials directory.
To compile all the tutorials, execute the following command line:
cd tutorials; make all # generates all the tutorials
/////////////////////////////////////////////////////////////////////////////
SNAP unit tests
Unit tests are available in the test directory.
To run unit tests, install googletest (code.google.com/p/googletest) and
execute:
cd test; make run # compiles and runs all the tests
/////////////////////////////////////////////////////////////////////////////
Description of SNAP files:
http://snap.stanford.edu/snap/description.html
snap-core:
alg.h : Simple algorithms like counting node degrees, simple graph
manipulation (adding/deleting self edges, deleting isolated nodes)
and testing whether graph is a tree or a star.
anf.h : Approximate Neighborhood Function: linear time algorithm to
approximately calculate the diameter of massive graphs.
bfsdfs.h : Algorithms based on Breath First Search (BFS) and Depth First
Search (DFS): shortest paths, spanning trees, graph diameter, and
similar.
bignet.h : Memory efficient implementation of a network with data on
nodes. Use when working with very large networks.
casc.h : Computes cascades from a list of events.
centr.h : Node centrality measures: closeness, betweenness, PageRank, ...
cmty.h : Algorithms for network community detection: Modularity,
Girvan-Newman, Clauset-Newman-Moore.
cncom.h : Connected components: weakly, strongly and biconnected
components, articular nodes and bridge edges.
ff.h : Forest Fire model for generating networks that densify and have
shrinking diameters.
flow.h: Maximum flow algorithms.
gbase.h : Defines flags that are used to identify functionality of graphs.
ggen.h : Various graph generators: random graphs, copying model,
preferential attachment, RMAT, configuration model, Small world model.
ghash.h : Hash table with directed graphs (<tt>TNGraph</tt>) as keys. Uses
efficient adaptive approximate graph isomorphism testing to scale to
large graphs. Useful when one wants to count frequencies of various
small subgraphs or cascades.
gio.h : Graph input output. Methods for loading and saving various textual
and XML based graph formats: Pajek, ORA, DynNet, GraphML (GML),
Matlab.
graph.h : Implements graph types TUNGraph, TNGraph and TNEGraph.
gstat.h : Computes many structural properties of static and evolving networks.
gsvd.h : Eigen and singular value decomposition of graph adjacency matrix.
gviz.h : Interface to GraphViz for plotting small graphs.
kcore.h : K-core decomposition of networks.
network.h : Implements network types TNodeNet, TNodeEDatNet and TNodeEdgeNet.
randwalk.h : Computing random walk scores and personalized PageRank
between pairs of nodes
Snap.h : Main include file of the library.
statplot.h : Plots of various structural network properties: clustering,
degrees, diameter, spectrum, connected components.
subgraph.h : Extracting subgraphs and converting between different
graph/network types.
timenet.h : Temporally evolving networks.
triad.h : Functions for counting triads (triples of connected nodes in the
network) and computing clustering coefficient.
util.h : Utilities to manipulate PDFs, CDFs and CCDFs. Quick and dirty
string manipulation, URL and domain manipulation routines.
snap-adv:
agm*.h : Implements the Affiliation Graph Model (AGM).
cliques.h : Maximal clique detection and Clique Percolation method.
graphcounter.h : Performs fast graph isomorphism testing to count the
frequency of topologically distinct sub-graphs.
kronecker.h : Kronecker Graph generator and KronFit algorithm for
estimating parameters of Kronecker graphs.
mag.h : Implements the Multiplicative Attribute Graph (MAG).
motifcluster.h : Implements motif-based clustering algorithms.
ncp.h : Network community profile plot. Implements local spectral graph
partitioning method to efficiently find communities in networks.
rolx.h : Node role detection.
subgraphenum.h : Enumerates all connected induced sub-graphs of particular
size.
snap-exp:
arxiv.h : Functions for parsing Arxiv data and standardizing author names.
dblp.h : Parser for XML dump of DBLP data.
imdbnet.h : Actors-to-movies bipartite network of IMDB.
mxdag.h Finds the maximum directed-acyclic subgraph of a given
directed graph.
signnet.h : Networks with signed (+1, -1) edges that can denote
trust/distrust between the nodes of the network.
sir.h : SIR epidemic model and SIR parameter estimation.
spinn3r.h : Past parser for loading blog post data from Spinn3r.
trawling.h : Algorithm of extracting bipartite cliques from the network.
wgtnet.h : Weighted networks.
wikinet.h : Networks based on Wikipedia.