Generates multiple verbal fluency sequences using one_fluency.
fluency(adjlist, n, pjump = 0, type = 0L, string = FALSE)
a list containing row indices of nodes adjacent node to the ith node as created by get_adjlist.
integer vector specifying for each sequence the number of unique productions.
numeric specifying the probability of a jump.
integer controlling network start and jump nodes.
For type = 0
the process selects the start node and any jump
nodes proportional to their degree. For type = 1
the process
selects a random node to serve both as the start node and the jump node.
For type = 2
the process selects the start and any jump nodes
uniformly at random.
logical specifying whether the output should be of mode character.
List of character vectors containing the indices of the fluency productions. Indices refer to the row of the item in the original adjacency matrix. See get_adjlist.
For details see one_fluency.
Wulff, D. U., Hills, T., & Mata, R. (2018, October 29). Structural differences in the semantic networks of younger and older adults. https://doi.org/10.31234/osf.io/s73dp
Goni, J., Martincorena, I., Corominas-Murtra, B., Arrondo, G., Ardanza- Trevijano, S., & Villoslada, P. (2010). Switcher-random-walks: A cognitive- inspired mechanism for network exploration. International Journal of Bifurcation and Chaos, 20(03), 913-922.
# NOT RUN {
# generate watts strogatz graph
network = grow_ws(n = 100, k = 3)
# create verbal fluency sequences
fluency(get_adjlist(network), c(10, 10))
# create verbal fluency sequence
# with high jump probability
fluency(get_adjlist(network), c(10, 10), pjump = .5)
# }
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