This vignette describes the use of complex matrices for signed networks with ambivalent ties.
The vignette on signed two-mode network introduces a third type of tie for signed networks, the ambivalent tie.
# construct network
el <- matrix(c(1, "a", 1, "b", 1, "c", 2, "a", 2, "b"), ncol = 2, byrow = TRUE)
g <- graph_from_edgelist(el, directed = FALSE)
E(g)$sign <- c(1, 1, -1, 1, -1)
V(g)$type <- c(FALSE, TRUE, TRUE, TRUE, FALSE)
# vertex duplication
gu <- as_unsigned_2mode(g, primary = TRUE)
# project and binarize
pu <- bipartite_projection(gu, which = "true")
pu <- delete_edge_attr(pu, "weight")
# vertex contraction
ps <- as_signed_proj(pu)
igraph::as_data_frame(ps, "edges")
#> from to type
#> 1 a b A
#> 2 a c N
#> 3 b c N
Ambivalent ties add a new level of complexity for analytic tasks (especially involving matrices) since it is not clear which value to assign to them. Intuitively they should be “somewhere” between a positive and a negative tie but zero is already taken for the null tie.
We can construct a kind of adjacency matrix with the character values, but we can’t really work with characters analytically.
This is where complex matrices come in. Instead of thinking about edge values being only in one dimension, we can add a second one for negative ties. That is, a positive tie would be coded as (1, 0) and a negative one as (0, 1). It is much easier in this case to include ambivalent ties by assigning (0.5, 0.5) to them.
Tuples like these can also be written as a complex number, i.e. (1, 0) turns into 1 + 0i, (0, 1) into 0 + 1i, and (0.5, 0.5) into 0.5 + 0.5i. Complex numbers may be scary to some, but they have a kind of intuitive interpretation here. The real part is the positive value of an edge and the imaginary part is the negative part. So we could actually also have something like 0.3 + 0.7i which is an edge that is 30% positive and 70% negative. For now, though, the three values from above suffice.
The function as_adj_complex()
can be used to return the
complex adjacency matrix of a signed network with ambivalent ties.
#> a b c
#> a 0.0+0.0i 0.5+0.5i 0+1i
#> b 0.5-0.5i 0.0+0.0i 0+1i
#> c 0.0-1.0i 0.0-1.0i 0+0i
When there is a complex adjacency matrix, then there is also a
complex Laplacian matrix. This matrix can be obtained with
laplacian_matrix_complex()
.
#> a b c
#> a 1.707107+0.0i -0.500000-0.5i 0-1i
#> b -0.500000+0.5i 1.707107+0.0i 0-1i
#> c 0.000000+1.0i 0.000000+1.0i 2+0i