Extraction and Replacement Operators for Network Objects
Various operators which allow extraction or replacement of various
components of a network
object.
## S3 method for class 'network' x[i, j, na.omit = FALSE] ## S3 replacement method for class 'network' x[i, j, names.eval = NULL, add.edges = FALSE] <- value x %e% attrname x %e% attrname <- value x %eattr% attrname x %eattr% attrname <- value x %n% attrname x %n% attrname <- value x %nattr% attrname x %nattr% attrname <- value x %v% attrname x %v% attrname <- value x %vattr% attrname x %vattr% attrname <- value
x |
an object of class |
i, j |
indices of the vertices with respect to which adjacency is to be tested. Empty values indicate that all vertices should be employed (see below). |
na.omit |
logical; should missing edges be omitted (treated as
no-adjacency), or should |
names.eval |
optionally, the name of an edge attribute to use for assigning edge values. |
add.edges |
logical; should new edges be added to |
value |
the value (or set thereof) to be assigned to the selected
element of |
attrname |
the name of a network or vertex attribute (as appropriate). |
Indexing for edge extraction operates in a manner analogous to matrix
objects. Thus, x[,]
selects all vertex pairs, x[1,-5]
selects
the pairing of vertex 1 with all vertices except for 5, etc. Following
this, it is acceptable for i
and/or j
to be logical vectors
indicating which vertices are to be included. During assignment, an attempt
is made to match the elements of value
to the extracted pairs in an
intelligent way; in particular, elements of value
will be replicated
if too few are supplied (allowing expressions like x[1,]<-1
). Where
names.eval==NULL
, zero and non-zero values are taken to indicate the
presence of absence of edges. x[2,4]<-6
thus adds a single (2,4)
edge to x
, and x[2,4]<-0
removes such an edge (if present).
If x
is multiplex, assigning 0 to a vertex pair will eliminate
all edges on that pair. Pairs are taken to be directed where
is.directed(x)==TRUE
, and undirected where
is.directed(x)==FALSE
.
If an edge attribute is specified using names.eval
, then the provided
values will be assigned to that attribute. When assigning values, only
extant edges are employed (unless add.edges==TRUE
); in the latter
case, any non-zero assignment results in the addition of an edge where
currently absent. If the attribute specified is not present on a given
edge, it is added. Otherwise, any existing value is overwritten. The
%e%
operator can also be used to extract/assign edge values; in those
roles, it is respectively equivalent to get.edge.value(x,attrname)
and set.edge.value(x,attrname=attrname,value=value)
(if value
is a matrix) and set.edge.attribute(x,attrname=attrname,value=value)
(if value
is anything else). That is, if value
is a matrix,
the assignment operator treats it as an adjacency matrix; and if not, it
treats it as a vector (recycled as needed) in the internal ordering of edges
(i.e., edge IDs), skipping over deleted edges. In no case will attributes be
assigned to nonexisted edges.
The %n%
and %v%
operators serve as front-ends to the network
and vertex extraction/assignment functions (respectively). In the
extraction case, x %n% attrname
is equivalent to
get.network.attribute(x,attrname)
, with x %v% attrname
corresponding to get.vertex.attribute(x,attrname)
. In assignment,
the respective equivalences are to
set.network.attribute(x,attrname,value)
and
set.vertex.attribute(x,attrname,value)
. Note that the “%%”
assignment forms are generally slower than the named versions of the
functions beause they will trigger an additional internal copy of the
network object.
The %eattr%
, %nattr%
, and %vattr%
operators are
equivalent to %e%
, %n%
, and %v%
(respectively). The
short forms are more succinct, but may produce less readable code.
The extracted data, or none.
Carter T. Butts buttsc@uci.edu
Butts, C. T. (2008). “network: a Package for Managing Relational Data in R.” Journal of Statistical Software, 24(2). https://www.jstatsoft.org/v24/i02/
#Create a random graph (inefficiently) g<-network.initialize(10) g[,]<-matrix(rbinom(100,1,0.1),10,10) plot(g) #Demonstrate edge addition/deletion g[,]<-0 g[1,]<-1 g[2:3,6:7]<-1 g[,] #Set edge values g[,,names.eval="boo"]<-5 as.sociomatrix(g,"boo") #Assign edge values from a vector g %e% "hoo" <- "wah" g %e% "hoo" g %e% "om" <- c("wow","whee") g %e% "om" #Assign edge values as a sociomatrix g %e% "age" <- matrix(1:100, 10, 10) g %e% "age" as.sociomatrix(g,"age") #Set/retrieve network and vertex attributes g %n% "blah" <- "Pork!" #The other white meat? g %n% "blah" == "Pork!" #TRUE! g %v% "foo" <- letters[10:1] #Letter the vertices g %v% "foo" == letters[10:1] #All TRUE
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.