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I'm trying to traverse a graph with DFS.

But when I tried to pass visited node list as a function's parameter, I found there is a problem.

When I reached at the node which has no connected node except its previous node, the recursive call ends and the information about visited nodes disappears so fall into infinite loop...

Is there an any way to keep an information about visited nodes except using imperative way?

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I don't know OCAML, but can you pass a set around that contains visited nodes? – Bill Dec 18 '12 at 4:11
I'm a novice of ocaml, but ocaml is value-oriented language so once the value of a variable is set, there is no way to change the value except using imperative way which is not preferred way in functional programming.... – glast Dec 18 '12 at 4:17
In Clojure (functional), when you add to a set, you get a new set. There are constructs in the language that support this notion. – Bill Dec 18 '12 at 4:20
I appreciate your comment. I'll keep finding – glast Dec 18 '12 at 4:23
up vote 3 down vote accepted

Elaborating on Jeffrey's answer, you have several different styles available. I give here only snippets that I haven't tested, so there may be small or large mistakes.

  1. You can use side-effects everywhere:

    module NodeSet = Set.Make(...)
    let traverse action graph_root =
      let visited = ref NodeSet.empty in
      let rec loop node =
        action node;
        visited := NodeSet.add node !visited;
        let handle child =
          if not (NodeSet.mem child !visited)
          then loop acc child in
        List.iter handle (children node)
      in loop graph_root

    The "visit" applies the imperative function action to all nodes in the graph.

  2. You can store the visited node in a mutable reference, but thread the state of the traversal as an accumulator acc instead of sequencing side-effects directly. This would correspond to a use of the State monad.

    let traverse action init_state graph_root =
      let visited = ref NodeSet.empty in
      let rec loop acc node =
        let acc = action acc node in
        visited := NodeSet.add node !visited;
        let handle acc child =
          if NodeSet.mem child !visited
          then acc
          else loop acc child in
        List.fold_left handle acc (children node)
      in loop init_state graph_root
  3. You can reuse this state-passing logic to also pass the visited node information.

    let traverse action init_state graph_root =
      let rec loop acc visited node =
        let acc = action acc node in
        let visited = NodeSet.add node visited in
        let handle (acc, visited) child =
          if NodeSet.mem child !visited
          then (acc, visited)
          else loop acc visited child in
        List.fold_left handle (acc, visited) (children node)
      in loop init_state NodeSet.empty graph_root
  4. Finally, you can move to a tail-recursive traversal by passing information about which nodes should be computed next in the first recursive call. This corresponds to a general transformation into Continuation Passing Style, but with a domain-specific representation of continuations (simply nodes to visit).

    let traverse action init_state graph_root =
      let rec loop acc visited = function
        | [] -> acc
        | node::to_visit ->
           if NodeSet.mem node visited then loop acc visited to_visit
           else begin
             let acc = action acc node in
             let visited = NodeSet.add node visited in
             let to_visit = children node @ to_visit in
             loop acc visited to_visit
      in loop NodeSet.empty init_state [graph_root]

    Jeffrey remarks that with this presentation, you can change the traversal order from DFS to BFS by simply changing the way to_visit is updated, adding children nodes to the end of the sequence rather than at the beginning (which requires a queue structure to be algorithmically efficient).

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in 4., shouldn't you filter out already visited nodes? Like let to_visit = children node @ to_visit |> List.remove_if (flip NodeSet.mem visited) in … – unhammer Oct 25 '14 at 21:51
well spotted @unhammer, thanks. I have changed the code to check for already-visited just before visiting, rather than filter out at children gathering time. If I remember correctly, it is not correct to only filter at children-listing time (because the node may already be in the to_visit list). Checking only at visting-time is rather inefficient because there may be many duplicates put in to_visit, but the code shape scales better to weighted-edge applications such as Dijkstra where not all ways to come to an edge are equal. – gasche Oct 26 '14 at 10:14
"it is not correct to only filter at children-listing time (because the node may already be in the to_visit list)" – I'm not sure I understand; the snippet in my comment filters the concatenation of children and to_visit. I can't get it to fail when I test it, but I don't know if I can prove it to be correct either :-) Do you have a counter-example? – unhammer Oct 27 '14 at 9:08
Ah, found one counter-example at least: in a labelled graph, there may be two edges to the same node with different labels, so to_visit might end up getting the same child twice in one go – unhammer Oct 31 '14 at 12:33

One way to look at this is that you want to go forward to try other possible nodes in the graph, rather than returning (as you would do, say, to traverse a tree). You can have parameters that describe not only the nodes you've visited but the ones you are planning to visit. The to-visit parameter is initially just the first node. Every time you get to a new node you add any unvisited adjacent nodes (which you can tell by looking at the visited node set) to the unvisited node set, and continue in this fashion recursively. The difference between DFS and BFS, then, would be in the way you order the list of nodes to be visited.

In functional programming, there are many times when instead of returning from a function, you instead call a function to do the next thing. (That's why tail recursion is sometimes important.)

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