```
#' Compute NOS using an undirected network and with a user provided
#' network of potential interactions
#'
#' @description Computation of NOS using an undirected network (e.g. a
#' social co-occurence network) and with a user provided network of potential interactions.
#' In an undirected network, all nodes are considered as potential interacting
#' partners.
#' @usage NOSM_POT_undir(net, pot_net, perc = 1, sl = 1)
#' @param net A network, in the form of an edge list. This should be a matrix or
#' dataframe with two columns. Each value in a column is a node. Nodes can be
#' identified using numbers or characters.Data can also be in the format of a
#' frequency interaction matrix, as used in the \link[bipartite]{bipartite} R
#' package. In these cases \code{\link{freqMat_2_edge}} should be used first,
#' to convert the interaction matrix to an edge list.
#' @param pot_net A network of all potential interactions. These should include,
#' as a minimum, all the observed interactions (i.e. all links in net),plus
#' any other possible interaction (such as all those permitted by a certain
#' trophic rule). pot_net should have the same structure as net (e.g. it
#' should be a data frame or matrix).
#' @param perc (default to 1) - the fraction of node pair comparisons to be
#' performed to compute NOS. We recommend performing all possible pair
#' comparisons (perc = 1). However, for exploratory analyses on large sets of
#' networks (or for very large networks), the possibility of using a lower
#' fraction of pair comparisons is a useful option.
#' @param sl (default is 1) Specifies whether cannibalistic interactions should
#' be considered as possible and therefore taken into account and removed
#' during computation ('1') or not ('0').
#' @return A list of class 'NOSM' with a 'Type' attribute 'Pot_undir',
#' containing a vector of overlap values. The \code{\link{summary.NOSM}}
#' methods provides more useful summary statistics.
#' @examples
#' data(boreal)
#' y <- boreal[1:300,] #subset 300 rows for speed
#' d <- sample(nrow(y), 200, replace = FALSE) #create a random pot_net
#' pot_net <- y[d,] #by randomly sampling 200 rows from boreal
#' x <- NOSM_POT_undir(y, pot_net, perc = 1, sl = 1)
#' summary(x)
#' @export
NOSM_POT_undir <- function(net, pot_net, perc = 1, sl = 1){
x <- adj(net, pot_net)
y <- OV(x$adj_all, x$pot_all, perc, sl)
class(y) <- "NOSM"
attr(y, "Type") <- "Pot_undir"
return(y)
}
```

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