algebraic-graphs-0.0.3: A library for algebraic graph construction and transformation

Copyright(c) Andrey Mokhov 2016-2017
LicenseMIT (see the file LICENSE)
Maintainerandrey.mokhov@gmail.com
Stabilityunstable
Safe HaskellNone
LanguageHaskell2010

Algebra.Graph.AdjacencyMap.Internal

Contents

Description

This module exposes the implementation of adjacency maps. The API is unstable and unsafe. Where possible use non-internal module Algebra.Graph.AdjacencyMap instead.

Synopsis

Adjacency map

newtype AdjacencyMap a Source #

The AdjacencyMap data type represents a graph by a map of vertices to their adjacency sets. We define a law-abiding Num instance as a convenient notation for working with graphs:

0           == vertex 0
1 + 2       == overlay (vertex 1) (vertex 2)
1 * 2       == connect (vertex 1) (vertex 2)
1 + 2 * 3   == overlay (vertex 1) (connect (vertex 2) (vertex 3))
1 * (2 + 3) == connect (vertex 1) (overlay (vertex 2) (vertex 3))

The Show instance is defined using basic graph construction primitives:

show (empty     :: AdjacencyMap Int) == "empty"
show (1         :: AdjacencyMap Int) == "vertex 1"
show (1 + 2     :: AdjacencyMap Int) == "vertices [1,2]"
show (1 * 2     :: AdjacencyMap Int) == "edge 1 2"
show (1 * 2 * 3 :: AdjacencyMap Int) == "edges [(1,2),(1,3),(2,3)]"
show (1 * 2 + 3 :: AdjacencyMap Int) == "graph [1,2,3] [(1,2)]"

The Eq instance satisfies all axioms of algebraic graphs:

  • overlay is commutative and associative:

          x + y == y + x
    x + (y + z) == (x + y) + z
  • connect is associative and has empty as the identity:

      x * empty == x
      empty * x == x
    x * (y * z) == (x * y) * z
  • connect distributes over overlay:

    x * (y + z) == x * y + x * z
    (x + y) * z == x * z + y * z
  • connect can be decomposed:

    x * y * z == x * y + x * z + y * z

The following useful theorems can be proved from the above set of axioms.

  • overlay has empty as the identity and is idempotent:

      x + empty == x
      empty + x == x
          x + x == x
  • Absorption and saturation of connect:

    x * y + x + y == x * y
        x * x * x == x * x

When specifying the time and memory complexity of graph algorithms, n and m will denote the number of vertices and edges in the graph, respectively.

Constructors

AdjacencyMap 

Fields

  • adjacencyMap :: Map a (Set a)

    The adjacency map of the graph: each vertex is associated with a set of its direct successors.

consistent :: Ord a => AdjacencyMap a -> Bool Source #

Check if the internal graph representation is consistent, i.e. that all edges refer to existing vertices. It should be impossible to create an inconsistent adjacency map, and we use this function in testing.

consistent empty                  == True
consistent (vertex x)             == True
consistent (overlay x y)          == True
consistent (connect x y)          == True
consistent (edge x y)             == True
consistent (edges xs)             == True
consistent (graph xs ys)          == True
consistent (fromAdjacencyList xs) == True

Basic graph construction primitives

empty :: AdjacencyMap a Source #

Construct the empty graph. Complexity: O(1) time and memory.

isEmpty     empty == True
hasVertex x empty == False
vertexCount empty == 0
edgeCount   empty == 0

vertex :: a -> AdjacencyMap a Source #

Construct the graph comprising a single isolated vertex. Complexity: O(1) time and memory.

isEmpty     (vertex x) == False
hasVertex x (vertex x) == True
hasVertex 1 (vertex 2) == False
vertexCount (vertex x) == 1
edgeCount   (vertex x) == 0

overlay :: Ord a => AdjacencyMap a -> AdjacencyMap a -> AdjacencyMap a Source #

Overlay two graphs. This is an idempotent, commutative and associative operation with the identity empty. Complexity: O((n + m) * log(n)) time and O(n + m) memory.

isEmpty     (overlay x y) == isEmpty   x   && isEmpty   y
hasVertex z (overlay x y) == hasVertex z x || hasVertex z y
vertexCount (overlay x y) >= vertexCount x
vertexCount (overlay x y) <= vertexCount x + vertexCount y
edgeCount   (overlay x y) >= edgeCount x
edgeCount   (overlay x y) <= edgeCount x   + edgeCount y
vertexCount (overlay 1 2) == 2
edgeCount   (overlay 1 2) == 0

connect :: Ord a => AdjacencyMap a -> AdjacencyMap a -> AdjacencyMap a Source #

Connect two graphs. This is an associative operation with the identity empty, which distributes over the overlay and obeys the decomposition axiom. Complexity: O((n + m) * log(n)) time and O(n + m) memory. Note that the number of edges in the resulting graph is quadratic with respect to the number of vertices of the arguments: m = O(m1 + m2 + n1 * n2).

isEmpty     (connect x y) == isEmpty   x   && isEmpty   y
hasVertex z (connect x y) == hasVertex z x || hasVertex z y
vertexCount (connect x y) >= vertexCount x
vertexCount (connect x y) <= vertexCount x + vertexCount y
edgeCount   (connect x y) >= edgeCount x
edgeCount   (connect x y) >= edgeCount y
edgeCount   (connect x y) >= vertexCount x * vertexCount y
edgeCount   (connect x y) <= vertexCount x * vertexCount y + edgeCount x + edgeCount y
vertexCount (connect 1 2) == 2
edgeCount   (connect 1 2) == 1

vertices :: Ord a => [a] -> AdjacencyMap a Source #

Construct the graph comprising a given list of isolated vertices. Complexity: O(L * log(L)) time and O(L) memory, where L is the length of the given list.

vertices []            == empty
vertices [x]           == vertex x
hasVertex x . vertices == elem x
vertexCount . vertices == length . nub
vertexSet   . vertices == Set.fromList

edges :: Ord a => [(a, a)] -> AdjacencyMap a Source #

Construct the graph from a list of edges. Complexity: O((n + m) * log(n)) time and O(n + m) memory.

edges []          == empty
edges [(x, y)]    == edge x y
edgeCount . edges == length . nub
edgeList . edges  == nub . sort

fromAdjacencyList :: Ord a => [(a, [a])] -> AdjacencyMap a Source #

Construct a graph from an adjacency list. Complexity: O((n + m) * log(n)) time and O(n + m) memory.

fromAdjacencyList []                                  == empty
fromAdjacencyList [(x, [])]                           == vertex x
fromAdjacencyList [(x, [y])]                          == edge x y
fromAdjacencyList . adjacencyList                     == id
overlay (fromAdjacencyList xs) (fromAdjacencyList ys) == fromAdjacencyList (xs ++ ys)

Graph properties

edgeList :: AdjacencyMap a -> [(a, a)] Source #

The sorted list of edges of a graph. Complexity: O(n + m) time and O(m) memory.

edgeList empty          == []
edgeList (vertex x)     == []
edgeList (edge x y)     == [(x,y)]
edgeList (star 2 [3,1]) == [(2,1), (2,3)]
edgeList . edges        == nub . sort

adjacencyList :: AdjacencyMap a -> [(a, [a])] Source #

The sorted adjacency list of a graph. Complexity: O(n + m) time and O(m) memory.

adjacencyList empty               == []
adjacencyList (vertex x)          == [(x, [])]
adjacencyList (edge 1 2)          == [(1, [2]), (2, [])]
adjacencyList (star 2 [3,1])      == [(1, []), (2, [1,3]), (3, [])]
fromAdjacencyList . adjacencyList == id

Graph transformation

removeVertex :: Ord a => a -> AdjacencyMap a -> AdjacencyMap a Source #

Remove a vertex from a given graph. Complexity: O(n*log(n)) time.

removeVertex x (vertex x)       == empty
removeVertex x . removeVertex x == removeVertex x

removeEdge :: Ord a => a -> a -> AdjacencyMap a -> AdjacencyMap a Source #

Remove an edge from a given graph. Complexity: O(log(n)) time.

removeEdge x y (edge x y)       == vertices [x, y]
removeEdge x y . removeEdge x y == removeEdge x y
removeEdge x y . removeVertex x == removeVertex x
removeEdge 1 1 (1 * 1 * 2 * 2)  == 1 * 2 * 2
removeEdge 1 2 (1 * 1 * 2 * 2)  == 1 * 1 + 2 * 2

gmap :: (Ord a, Ord b) => (a -> b) -> AdjacencyMap a -> AdjacencyMap b Source #

Transform a graph by applying a function to each of its vertices. This is similar to Functor's fmap but can be used with non-fully-parametric AdjacencyMap. Complexity: O((n + m) * log(n)) time.

gmap f empty      == empty
gmap f (vertex x) == vertex (f x)
gmap f (edge x y) == edge (f x) (f y)
gmap id           == id
gmap f . gmap g   == gmap (f . g)

induce :: Ord a => (a -> Bool) -> AdjacencyMap a -> AdjacencyMap a Source #

Construct the induced subgraph of a given graph by removing the vertices that do not satisfy a given predicate. Complexity: O(m) time, assuming that the predicate takes O(1) to be evaluated.

induce (const True)  x      == x
induce (const False) x      == empty
induce (/= x)               == removeVertex x
induce p . induce q         == induce (\x -> p x && q x)
isSubgraphOf (induce p x) x == True