Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

It's easy enough to represent a tree or list in haskell using algebraic data types. But how would you go about typographically representing a graph? It seems that you need to have pointers. I'm guessing you could have something like

type Nodetag = String
type Neighbours = [Nodetag]
data Node a = Node a Nodetag Neighbours

And that would be workable. However it feels a bit decoupled; The links between different nodes in the structure don't really "feel" as solid as the links between the current previous and next elements in a list, or the parents and children of a node in a tree. I have a hunch that doing algebraic manipulations on the graph as I defined it would be somewhat hindered by the level of indirection introduced through the tag system.

It is primarily this feeling of doubt and perception of inelegance that causes me to ask this question. Is there a better/more mathematically elegant way of defining graphs in Haskell? Or have I stumbled upon something inherently hard/fundamental? Recursive data structures are sweet, but this seems to be something else. A self referential data structure in a different sense to how trees and lists are self referential. It's like lists and trees are self referential at the type level, but graphs are self referential at the value level.

So what's really going on?

share|improve this question
You might be interested in Martin Erwig's paper on functional graph algorithms: web.engr.oregonstate.edu/~erwig/papers/abstracts.html#JFP01. The fgl package developed out of this. –  John L Mar 16 '12 at 8:39
add comment

6 Answers 6

up vote 16 down vote accepted

I also find it awkward to try to represent data structures with cycles in a pure language. It's the cycles that are really the problem; because values can be shared any ADT that can contain a member of the type (including lists and trees) is really a DAG (Directed Acyclic Graph). The fundamental issue is that if you have values A and B, with A containing B and B containing A, then neither can be created before the other exists. Because Haskell is lazy you can use a trick known as Tying the Knot to get around this, but that makes my brain hurt (because I haven't done much of it yet). I've done more of my substantial programming in Mercury than Haskell so far, and Mercury is strict so knot-tying doesn't help.

Usually when I've run into this before I've just resorted to additional indirection, as you're suggesting; often by using a map from ids to the actual elements, and having elements contain references to the ids instead of to other elements. The main thing I didn't like about doing that (aside from the obvious inefficiency) is that it felt more fragile, introducing the possible errors of looking up an id that doesn't exist or trying to assign the same id to more than one element. You can write code so that these errors won't occur, of course, and even hide it behind abstractions so that the only places where such errors could occur are bounded. But it's still one more thing to get wrong.

However, a quick google for "Haskell graph" led me to http://www.haskell.org/haskellwiki/The_Monad.Reader/Issue5/Practical_Graph_Handling, which looks like a worthwhile read.

share|improve this answer
add comment

In shang's answer you can see how to represent a graph using laziness. The problem with these representations is that they are very difficult to change. The knot-tying trick is useful only if you're going to build a graph once, and afterward it never changes.

In practice, should I actually want to do something with my graph, I use the more pedestrian representations:

  • Edge list
  • Adjacency list
  • Give a unique label to each node, use the label instead of a pointer, and keep a finite map from labels to nodes

If you're going to be changing or editing the graph frequently, I recommend using a representation based on Huet's zipper. This is the representation used internally in GHC for control-flow graphs. You can read about it here:

share|improve this answer
Another problem with tying the knot is that it is very easy to accidentally untie it and waste a lot of space. –  hugomg Mar 16 '12 at 17:48
add comment

As Ben mentioned, cyclic data in Haskell is constructed by a mechanism called "tying the knot". In practice, it means that we write mutually recursive declarations using let or where clauses, which works because the mutually recursive parts are lazily evaluated.

Here's an example graph type:

import Data.Maybe (fromJust)

data Node a = Node
    { label    :: a
    , adjacent :: [Node a]

data Graph a = Graph [Node a]

As you can see, we use actual Node references instead of indirection. Here's how to implement a function that constructs the graph from a list of label associations.

mkGraph :: Eq a => [(a, [a])] -> Graph a
mkGraph links = Graph $ map snd nodeLookupList where

    mkNode (lbl, adj) = (lbl, Node lbl $ map lookupNode adj)

    nodeLookupList = map mkNode links

    lookupNode lbl = fromJust $ lookup lbl nodeLookupList

We take in a list of (nodeLabel, [adjacentLabel]) pairs and construct the actual Node values via an intermediate lookup-list (which does the actual knot-tying). The trick is that nodeLookupList (which has the type [(a, Node a)]) is constructed using mkNode, which in turn refers back to the nodeLookupList to find the adjacent nodes.

share|improve this answer
You should also mention that this data structure is not able to describe graphs. It only describes their unfoldings. (infinite unfoldings in finite space, but still...) –  Rotsor Mar 16 '12 at 13:15
Wow. I haven't had the time to examine all the answers in detail, but I will say that exploiting lazy evaluation like this sounds like you'd be skating on thin ice. How easy would it be to slip into infinite recursion? Still awesome stuff, and feels much better than the datatype I proposed in the question. –  TheIronKnuckle Mar 19 '12 at 22:47
@TheIronKnuckle not too much difference than the infinite lists that Haskellers use all the time :) –  Justin L. Mar 31 at 16:35
add comment

It's true, graphs are not algebraic. To deal with this problem, you have a couple of options:

  1. Instead of graphs, consider infinite trees. Represent cycles in the graph as their infinite unfoldings. In some cases, you may use the trick known as "tying the knot" (explained well in some of the other answers here) to even represent these infinite trees in finite space by creating a cycle in the heap; however, you will not be able to observe or detect these cycles from within Haskell, which makes a variety of graph operations difficult or impossible.
  2. There are a variety of graph algebras available in the literature. The one that comes to mind first is the collection of graph constructors described in section two of Bidirectionalizing Graph Transformations. The usual property guaranteed by these algebras is that any graph can be represented algebraically; however, critically, many graphs will not have a canonical representation. So checking equality structurally isn't enough; doing it correctly boils down to finding graph isomorphism -- known to be something of a hard problem.
  3. Give up on algebraic datatypes; explicitly represent node identity by giving them each unique values (say, Ints) and referring to them indirectly rather than algebraically. This can be made significantly more convenient by making the type abstract and providing an interface that juggles the indirection for you. This is the approach taken by, e.g., fgl and other practical graph libraries on Hackage.
  4. Come up with a brand new approach that fits your use case exactly. This is a very difficult thing to do. =)

So there are pros and cons to each of the above choices. Pick the one that seems best for you.

share|improve this answer
add comment

I always liked Martin Erwig's approach in "Inductive Graphs and Functional Graph Algorithms", which you can read here. FWIW, I once wrote a Scala implementation as well, see https://github.com/nicolast/scalagraphs.

share|improve this answer
To expand on this very roughly, it gives you an abstract graph type on which you can pattern match. The necessary compromise to make this work is that the exact way a graph can be decomposed is not unique, so the result of a pattern match can be implementation-specific. It's not a big deal in practice. If you're curious to learn more about it, I wrote an introductory blog post which might be wroth a read. –  Tikhon Jelvis yesterday
add comment

I like this implementation of a graph taken from here

import Data.Maybe
import Data.Array

class Enum b => Graph a b | a -> b where
    vertices ::  a -> [b]
    edge :: a -> b -> b -> Maybe Double
    fromInt :: a -> Int -> b
share|improve this answer
add comment

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.