Copyright | (c) Andrey Mokhov 2016-2019 |
---|---|
License | MIT (see the file LICENSE) |
Maintainer | andrey.mokhov@gmail.com |
Stability | experimental |
Safe Haskell | None |
Language | Haskell2010 |
Alga is a library for algebraic construction and manipulation of graphs in Haskell. See this paper for the motivation behind the library, the underlying theory, and implementation details.
This module defines the core data type Graph
and associated algorithms.
For graphs that are known to be non-empty at compile time, see
Algebra.Graph.NonEmpty. Graph
is an instance of type classes defined in
modules Algebra.Graph.Class and Algebra.Graph.HigherKinded.Class, which
can be used for polymorphic graph construction and manipulation.
Synopsis
- data Graph a
- empty :: Graph a
- vertex :: a -> Graph a
- edge :: a -> a -> Graph a
- overlay :: Graph a -> Graph a -> Graph a
- connect :: Graph a -> Graph a -> Graph a
- vertices :: [a] -> Graph a
- edges :: [(a, a)] -> Graph a
- overlays :: [Graph a] -> Graph a
- connects :: [Graph a] -> Graph a
- foldg :: b -> (a -> b) -> (b -> b -> b) -> (b -> b -> b) -> Graph a -> b
- buildg :: (forall b. b -> (a -> b) -> (b -> b -> b) -> (b -> b -> b) -> b) -> Graph a
- isSubgraphOf :: Ord a => Graph a -> Graph a -> Bool
- (===) :: Eq a => Graph a -> Graph a -> Bool
- isEmpty :: Graph a -> Bool
- size :: Graph a -> Int
- hasVertex :: Eq a => a -> Graph a -> Bool
- hasEdge :: Eq a => a -> a -> Graph a -> Bool
- vertexCount :: Ord a => Graph a -> Int
- edgeCount :: Ord a => Graph a -> Int
- vertexList :: Ord a => Graph a -> [a]
- edgeList :: Ord a => Graph a -> [(a, a)]
- vertexSet :: Ord a => Graph a -> Set a
- edgeSet :: Ord a => Graph a -> Set (a, a)
- adjacencyList :: Ord a => Graph a -> [(a, [a])]
- path :: [a] -> Graph a
- circuit :: [a] -> Graph a
- clique :: [a] -> Graph a
- biclique :: [a] -> [a] -> Graph a
- star :: a -> [a] -> Graph a
- stars :: [(a, [a])] -> Graph a
- tree :: Tree a -> Graph a
- forest :: Forest a -> Graph a
- mesh :: [a] -> [b] -> Graph (a, b)
- torus :: [a] -> [b] -> Graph (a, b)
- deBruijn :: Int -> [a] -> Graph [a]
- removeVertex :: Eq a => a -> Graph a -> Graph a
- removeEdge :: Eq a => a -> a -> Graph a -> Graph a
- replaceVertex :: Eq a => a -> a -> Graph a -> Graph a
- mergeVertices :: (a -> Bool) -> a -> Graph a -> Graph a
- splitVertex :: Eq a => a -> [a] -> Graph a -> Graph a
- transpose :: Graph a -> Graph a
- induce :: (a -> Bool) -> Graph a -> Graph a
- induceJust :: Graph (Maybe a) -> Graph a
- simplify :: Ord a => Graph a -> Graph a
- sparsify :: Graph a -> Graph (Either Int a)
- sparsifyKL :: Int -> Graph Int -> Graph
- compose :: Ord a => Graph a -> Graph a -> Graph a
- box :: Graph a -> Graph b -> Graph (a, b)
- data Context a = Context {}
- context :: (a -> Bool) -> Graph a -> Maybe (Context a)
Algebraic data type for graphs
The Graph
data type is a deep embedding of the core graph construction
primitives empty
, vertex
, overlay
and connect
. We define a 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))
Note: the Num
instance does not satisfy several "customary laws" of Num
,
which dictate that fromInteger
0
and fromInteger
1
should act as
additive and multiplicative identities, and negate
as additive inverse.
Nevertheless, overloading fromInteger
, +
and *
is very convenient when
working with algebraic graphs; we hope that in future Haskell's Prelude will
provide a more fine-grained class hierarchy for algebraic structures, which we
would be able to utilise without violating any laws.
The Eq
instance is currently implemented using the AdjacencyMap
as the
canonical graph representation and 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 hasempty
as the identity:x * empty == x empty * x == x x * (y * z) == (x * y) * z
connect
distributes overoverlay
: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
hasempty
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 will
denote the number of vertices in the graph, m will denote the number of
edges in the graph, and s will denote the size of the corresponding
Graph
expression. For example, if g
is a Graph
then n, m and s can
be computed as follows:
n ==vertexCount
g m ==edgeCount
g s ==size
g
Note that size
counts all leaves of the expression:
vertexCount
empty
== 0size
empty
== 1vertexCount
(vertex
x) == 1size
(vertex
x) == 1vertexCount
(empty
+empty
) == 0size
(empty
+empty
) == 2
Converting a Graph
to the corresponding AdjacencyMap
takes O(s + m * log(m))
time and O(s + m) memory. This is also the complexity of the graph equality
test, because it is currently implemented by converting graph expressions to
canonical representations based on adjacency maps.
The total order on graphs is defined using size-lexicographic comparison:
- Compare the number of vertices. In case of a tie, continue.
- Compare the sets of vertices. In case of a tie, continue.
- Compare the number of edges. In case of a tie, continue.
- Compare the sets of edges.
Here are a few examples:
vertex
1 <vertex
2vertex
3 <edge
1 2vertex
1 <edge
1 1edge
1 1 <edge
1 2edge
1 2 <edge
1 1 +edge
2 2edge
1 2 <edge
1 3
Note that the resulting order refines the isSubgraphOf
relation and is
compatible with overlay
and connect
operations:
isSubgraphOf
x y ==> x <= y
empty
<= x
x <= x + y
x + y <= x * y
Deforestation (fusion) is implemented for some functions in this module. This means that when a function tagged as a "good producer" is composed with a "good consumer", the intermediate structure will not be built.
Instances
Basic graph construction primitives
edge :: a -> a -> Graph a Source #
Construct the graph comprising a single edge. Complexity: O(1) time, memory and size.
edge x y ==connect
(vertex
x) (vertex
y)hasEdge
x y (edge x y) == TrueedgeCount
(edge x y) == 1vertexCount
(edge 1 1) == 1vertexCount
(edge 1 2) == 2
overlay :: Graph a -> Graph a -> Graph a Source #
Overlay two graphs. An alias for the constructor Overlay
. This is a
commutative, associative and idempotent operation with the identity empty
.
Complexity: O(1) time and memory, O(s1 + s2) size.
isEmpty
(overlay x y) ==isEmpty
x &&isEmpty
yhasVertex
z (overlay x y) ==hasVertex
z x ||hasVertex
z yvertexCount
(overlay x y) >=vertexCount
xvertexCount
(overlay x y) <=vertexCount
x +vertexCount
yedgeCount
(overlay x y) >=edgeCount
xedgeCount
(overlay x y) <=edgeCount
x +edgeCount
ysize
(overlay x y) ==size
x +size
yvertexCount
(overlay 1 2) == 2edgeCount
(overlay 1 2) == 0
connect :: Graph a -> Graph a -> Graph a Source #
Connect two graphs. An alias for the constructor Connect
. This is an
associative operation with the identity empty
, which distributes over
overlay
and obeys the decomposition axiom.
Complexity: O(1) time and memory, O(s1 + s2) size. 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
yhasVertex
z (connect x y) ==hasVertex
z x ||hasVertex
z yvertexCount
(connect x y) >=vertexCount
xvertexCount
(connect x y) <=vertexCount
x +vertexCount
yedgeCount
(connect x y) >=edgeCount
xedgeCount
(connect x y) >=edgeCount
yedgeCount
(connect x y) >=vertexCount
x *vertexCount
yedgeCount
(connect x y) <=vertexCount
x *vertexCount
y +edgeCount
x +edgeCount
ysize
(connect x y) ==size
x +size
yvertexCount
(connect 1 2) == 2edgeCount
(connect 1 2) == 1
vertices :: [a] -> Graph a Source #
Construct the graph comprising a given list of isolated vertices. Complexity: O(L) time, memory and size, where L is the length of the given list.
Good consumer of lists and producer of graphs.
vertices [] ==empty
vertices [x] ==vertex
xhasVertex
x . vertices ==elem
xvertexCount
. vertices ==length
.nub
vertexSet
. vertices == Set.fromList
overlays :: [Graph a] -> Graph a Source #
Overlay a given list of graphs. Complexity: O(L) time and memory, and O(S) size, where L is the length of the given list, and S is the sum of sizes of the graphs in the list.
Good consumer of lists and producer of graphs.
overlays [] ==empty
overlays [x] == x overlays [x,y] ==overlay
x y overlays ==foldr
overlay
empty
isEmpty
. overlays ==all
isEmpty
connects :: [Graph a] -> Graph a Source #
Connect a given list of graphs. Complexity: O(L) time and memory, and O(S) size, where L is the length of the given list, and S is the sum of sizes of the graphs in the list.
Good consumer of lists and producer of graphs.
connects [] ==empty
connects [x] == x connects [x,y] ==connect
x y connects ==foldr
connect
empty
isEmpty
. connects ==all
isEmpty
Graph folding
foldg :: b -> (a -> b) -> (b -> b -> b) -> (b -> b -> b) -> Graph a -> b Source #
Generalised Graph
folding: recursively collapse a Graph
by applying
the provided functions to the leaves and internal nodes of the expression.
The order of arguments is: empty, vertex, overlay and connect.
Complexity: O(s) applications of given functions. As an example, the
complexity of size
is O(s), since all functions have cost O(1).
Good consumer.
foldgempty
vertex
overlay
connect
== id foldgempty
vertex
overlay
(flip
connect
) ==transpose
foldg 1 (const
1) (+) (+) ==size
foldg True (const
False) (&&) (&&) ==isEmpty
foldg False (== x) (||) (||) ==hasVertex
x
buildg :: (forall b. b -> (a -> b) -> (b -> b -> b) -> (b -> b -> b) -> b) -> Graph a Source #
Build a graph given an interpretation of the four graph construction primitives empty
,
vertex
, overlay
and connect
, in this order. See examples for further clarification.
Functions expressed with buildg
are good producers.
buildg f == fempty
vertex
overlay
connect
buildg (\e _ _ _ -> e) ==empty
buildg (\_ v _ _ -> v x) ==vertex
x buildg (\e v o c -> o (foldg
e v o c x) (foldg
e v o c y)) ==overlay
x y buildg (\e v o c -> c (foldg
e v o c x) (foldg
e v o c y)) ==connect
x y buildg (\e v o _ ->foldr
o e (map
v xs)) ==vertices
xs buildg (\e v o c ->foldg
e v o (flip
c) g) ==transpose
gfoldg
e v o c (buildg f) == f e v o c
Relations on graphs
isSubgraphOf :: Ord a => Graph a -> Graph a -> Bool Source #
The isSubgraphOf
function takes two graphs and returns True
if the
first graph is a subgraph of the second.
Complexity: O(s + m * log(m)) time. Note that the number of edges m of a
graph can be quadratic with respect to the expression size s.
Good consumer of both arguments.
isSubgraphOfempty
x == True isSubgraphOf (vertex
x)empty
== False isSubgraphOf x (overlay
x y) == True isSubgraphOf (overlay
x y) (connect
x y) == True isSubgraphOf (path
xs) (circuit
xs) == True isSubgraphOf x y ==> x <= y
(===) :: Eq a => Graph a -> Graph a -> Bool infix 4 Source #
Structural equality on graph expressions. Complexity: O(s) time.
x === x == True
x === x + empty
== False
x + y === x + y == True
1 + 2 === 2 + 1 == False
x + y === x * y == False
Graph properties
isEmpty :: Graph a -> Bool Source #
Check if a graph is empty. Complexity: O(s) time.
Good consumer.
isEmptyempty
== True isEmpty (overlay
empty
empty
) == True isEmpty (vertex
x) == False isEmpty (removeVertex
x $vertex
x) == True isEmpty (removeEdge
x y $edge
x y) == False
hasVertex :: Eq a => a -> Graph a -> Bool Source #
Check if a graph contains a given vertex. Complexity: O(s) time.
Good consumer.
hasVertex xempty
== False hasVertex x (vertex
y) == (x == y) hasVertex x .removeVertex
x ==const
False
vertexCount :: Ord a => Graph a -> Int Source #
The number of vertices in a graph. Complexity: O(s * log(n)) time.
Good consumer.
vertexCountempty
== 0 vertexCount (vertex
x) == 1 vertexCount ==length
.vertexList
vertexCount x < vertexCount y ==> x < y
vertexList :: Ord a => Graph a -> [a] Source #
edgeList :: Ord a => Graph a -> [(a, a)] Source #
The sorted list of edges of a graph. Complexity: O(s + m * log(m)) time and O(m) memory. Note that the number of edges m of a graph can be quadratic with respect to the expression size s.
Good consumer of graphs and producer of lists.
edgeListempty
== [] edgeList (vertex
x) == [] edgeList (edge
x y) == [(x,y)] edgeList (star
2 [3,1]) == [(2,1), (2,3)] edgeList .edges
==nub
.sort
edgeList .transpose
==sort
.map
swap
. edgeList
adjacencyList :: Ord a => Graph a -> [(a, [a])] Source #
Standard families of graphs
clique :: [a] -> Graph a Source #
The clique on a list of vertices. Complexity: O(L) time, memory and size, where L is the length of the given list.
Good consumer of lists and producer of graphs.
clique [] ==empty
clique [x] ==vertex
x clique [x,y] ==edge
x y clique [x,y,z] ==edges
[(x,y), (x,z), (y,z)] clique (xs ++ ys) ==connect
(clique xs) (clique ys) clique .reverse
==transpose
. clique
biclique :: [a] -> [a] -> Graph a Source #
The biclique on two lists of vertices. Complexity: O(L1 + L2) time, memory and size, where L1 and L2 are the lengths of the given lists.
Good consumer of both arguments and producer of graphs.
biclique [] [] ==empty
biclique [x] [] ==vertex
x biclique [] [y] ==vertex
y biclique [x1,x2] [y1,y2] ==edges
[(x1,y1), (x1,y2), (x2,y1), (x2,y2)] biclique xs ys ==connect
(vertices
xs) (vertices
ys)
star :: a -> [a] -> Graph a Source #
The star formed by a centre vertex connected to a list of leaves. Complexity: O(L) time, memory and size, where L is the length of the given list.
Good consumer of lists and good producer of graphs.
star x [] ==vertex
x star x [y] ==edge
x y star x [y,z] ==edges
[(x,y), (x,z)] star x ys ==connect
(vertex
x) (vertices
ys)
stars :: [(a, [a])] -> Graph a Source #
The stars formed by overlaying a list of star
s. An inverse of
adjacencyList
.
Complexity: O(L) time, memory and size, where L is the total size of the
input.
Good consumer of lists and producer of graphs.
stars [] ==empty
stars [(x, [])] ==vertex
x stars [(x, [y])] ==edge
x y stars [(x, ys)] ==star
x ys stars ==overlays
.map
(uncurry
star
) stars .adjacencyList
== idoverlay
(stars xs) (stars ys) == stars (xs ++ ys)
tree :: Tree a -> Graph a Source #
The tree graph constructed from a given Tree
data structure.
Complexity: O(T) time, memory and size, where T is the size of the
given tree (i.e. the number of vertices in the tree).
tree (Node x []) ==vertex
x tree (Node x [Node y [Node z []]]) ==path
[x,y,z] tree (Node x [Node y [], Node z []]) ==star
x [y,z] tree (Node 1 [Node 2 [], Node 3 [Node 4 [], Node 5 []]]) ==edges
[(1,2), (1,3), (3,4), (3,5)]
forest :: Forest a -> Graph a Source #
The forest graph constructed from a given Forest
data structure.
Complexity: O(F) time, memory and size, where F is the size of the
given forest (i.e. the number of vertices in the forest).
forest [] ==empty
forest [x] ==tree
x forest [Node 1 [Node 2 [], Node 3 []], Node 4 [Node 5 []]] ==edges
[(1,2), (1,3), (4,5)] forest ==overlays
.map
tree
mesh :: [a] -> [b] -> Graph (a, b) Source #
Construct a mesh graph from two lists of vertices. Complexity: O(L1 * L2) time, memory and size, where L1 and L2 are the lengths of the given lists.
mesh xs [] ==empty
mesh [] ys ==empty
mesh [x] [y] ==vertex
(x, y) mesh xs ys ==box
(path
xs) (path
ys) mesh [1..3] "ab" ==edges
[ ((1,'a'),(1,'b')), ((1,'a'),(2,'a')), ((1,'b'),(2,'b')), ((2,'a'),(2,'b')) , ((2,'a'),(3,'a')), ((2,'b'),(3,'b')), ((3,'a'),(3,'b')) ]
torus :: [a] -> [b] -> Graph (a, b) Source #
Construct a torus graph from two lists of vertices. Complexity: O(L1 * L2) time, memory and size, where L1 and L2 are the lengths of the given lists.
torus xs [] ==empty
torus [] ys ==empty
torus [x] [y] ==edge
(x,y) (x,y) torus xs ys ==box
(circuit
xs) (circuit
ys) torus [1,2] "ab" ==edges
[ ((1,'a'),(1,'b')), ((1,'a'),(2,'a')), ((1,'b'),(1,'a')), ((1,'b'),(2,'b')) , ((2,'a'),(1,'a')), ((2,'a'),(2,'b')), ((2,'b'),(1,'b')), ((2,'b'),(2,'a')) ]
deBruijn :: Int -> [a] -> Graph [a] Source #
Construct a De Bruijn graph of a given non-negative dimension using symbols from a given alphabet. Complexity: O(A^(D + 1)) time, memory and size, where A is the size of the alphabet and D is the dimension of the graph.
deBruijn 0 xs ==edge
[] [] n > 0 ==> deBruijn n [] ==empty
deBruijn 1 [0,1] ==edges
[ ([0],[0]), ([0],[1]), ([1],[0]), ([1],[1]) ] deBruijn 2 "0" ==edge
"00" "00" deBruijn 2 "01" ==edges
[ ("00","00"), ("00","01"), ("01","10"), ("01","11") , ("10","00"), ("10","01"), ("11","10"), ("11","11") ]transpose
(deBruijn n xs) ==fmap
reverse
$ deBruijn n xsvertexCount
(deBruijn n xs) == (length
$nub
xs)^n n > 0 ==>edgeCount
(deBruijn n xs) == (length
$nub
xs)^(n + 1)
Graph transformation
removeEdge :: Eq a => a -> a -> Graph a -> Graph a Source #
Remove an edge from a given graph. Complexity: O(s) time, memory and size.
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 * 2size
(removeEdge x y z) <= 3 *size
z
replaceVertex :: Eq a => a -> a -> Graph a -> Graph a Source #
The function
replaces vertex replaceVertex
x yx
with vertex y
in a
given Graph
. If y
already exists, x
and y
will be merged.
Complexity: O(s) time, memory and size.
Good consumer and producer.
replaceVertex x x == id replaceVertex x y (vertex
x) ==vertex
y replaceVertex x y ==mergeVertices
(== x) y
mergeVertices :: (a -> Bool) -> a -> Graph a -> Graph a Source #
Merge vertices satisfying a given predicate into a given vertex. Complexity: O(s) time, memory and size, assuming that the predicate takes O(1) to be evaluated.
Good consumer and producer.
mergeVertices (const
False) x == id mergeVertices (== x) y ==replaceVertex
x y mergeVerticeseven
1 (0 * 2) == 1 * 1 mergeVerticesodd
1 (3 + 4 * 5) == 4 * 1
splitVertex :: Eq a => a -> [a] -> Graph a -> Graph a Source #
Split a vertex into a list of vertices with the same connectivity. Complexity: O(s + k * L) time, memory and size, where k is the number of occurrences of the vertex in the expression and L is the length of the given list.
Good consumer of lists and producer of graphs.
splitVertex x [] ==removeVertex
x splitVertex x [x] == id splitVertex x [y] ==replaceVertex
x y splitVertex 1 [0,1] $ 1 * (2 + 3) == (0 + 1) * (2 + 3)
transpose :: Graph a -> Graph a Source #
Transpose a given graph. Complexity: O(s) time, memory and size.
Good consumer and producer.
transposeempty
==empty
transpose (vertex
x) ==vertex
x transpose (edge
x y) ==edge
y x transpose . transpose == id transpose (box
x y) ==box
(transpose x) (transpose y)edgeList
. transpose ==sort
.map
swap
.edgeList
induce :: (a -> Bool) -> Graph a -> Graph a Source #
Construct the induced subgraph of a given graph by removing the vertices that do not satisfy a given predicate. Complexity: O(s) time, memory and size, assuming that the predicate takes O(1) to be evaluated.
Good consumer and producer.
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
induceJust :: Graph (Maybe a) -> Graph a Source #
Construct the induced subgraph of a given graph by removing the vertices
that are Nothing
.
Complexity: O(s) time, memory and size.
Good consumer and producer.
induceJust (vertex
Nothing
) ==empty
induceJust (edge
(Just
x)Nothing
) ==vertex
x induceJust .fmap
Just
==id
induceJust .fmap
(\x -> if p x thenJust
x elseNothing
) ==induce
p
simplify :: Ord a => Graph a -> Graph a Source #
Simplify a graph expression. Semantically, this is the identity function, but it simplifies a given expression according to the laws of the algebra. The function does not compute the simplest possible expression, but uses heuristics to obtain useful simplifications in reasonable time. Complexity: the function performs O(s) graph comparisons. It is guaranteed that the size of the result does not exceed the size of the given expression.
Good consumer.
simplify == idsize
(simplify x) <=size
x simplifyempty
===
empty
simplify 1===
1 simplify (1 + 1)===
1 simplify (1 + 2 + 1)===
1 + 2 simplify (1 * 1 * 1)===
1 * 1
sparsify :: Graph a -> Graph (Either Int a) Source #
Sparsify a graph by adding intermediate Left
Int
vertices between the
original vertices (wrapping the latter in Right
) such that the resulting
graph is sparse, i.e. contains only O(s) edges, but preserves the
reachability relation between the original vertices. Sparsification is useful
when working with dense graphs, as it can reduce the number of edges from
O(n^2) down to O(n) by replacing cliques, bicliques and similar densely
connected structures by sparse subgraphs built out of intermediate vertices.
Complexity: O(s) time, memory and size.
sort
.reachable
x ==sort
.rights
.reachable
(Right
x) . sparsifyvertexCount
(sparsify x) <=vertexCount
x +size
x + 1edgeCount
(sparsify x) <= 3 *size
xsize
(sparsify x) <= 3 *size
x
sparsifyKL :: Int -> Graph Int -> Graph Source #
Sparsify a graph whose vertices are integers in the range [1..n]
, where
n
is the first argument of the function, producing an array-based graph
representation from Data.Graph (introduced by King and Launchbury, hence
the name of the function). In the resulting graph, vertices [1..n]
correspond to the original vertices, and all vertices greater than n
are
introduced by the sparsification procedure.
Complexity: O(s) time and memory. Note that thanks to sparsification, the resulting graph has a linear number of edges with respect to the size of the original algebraic representation even though the latter can potentially contain a quadratic O(s^2) number of edges.
sort
.reachable
k ==sort
.filter
(<= n) .flip
reachable
k . sparsifyKL nlength
(vertices
$ sparsifyKL n x) <=vertexCount
x +size
x + 1length
(edges
$ sparsifyKL n x) <= 3 *size
x
Graph composition
compose :: Ord a => Graph a -> Graph a -> Graph a Source #
Left-to-right relational composition of graphs: vertices x
and z
are
connected in the resulting graph if there is a vertex y
, such that x
is
connected to y
in the first graph, and y
is connected to z
in the
second graph. There are no isolated vertices in the result. This operation is
associative, has empty
and single-vertex
graphs as annihilating zeroes,
and distributes over overlay
.
Complexity: O(n * m * log(n)) time, O(n + m) memory, and O(m1 + m2)
size, where n and m stand for the number of vertices and edges in the
resulting graph, while m1 and m2 are the number of edges in the original
graphs. Note that the number of edges in the resulting graph may be
quadratic, i.e. m = O(m1 * m2), but the algebraic representation requires
only O(m1 + m2) operations to list them.
Good consumer of both arguments and good producer.
composeempty
x ==empty
compose xempty
==empty
compose (vertex
x) y ==empty
compose x (vertex
y) ==empty
compose x (compose y z) == compose (compose x y) z compose x (overlay
y z) ==overlay
(compose x y) (compose x z) compose (overlay
x y) z ==overlay
(compose x z) (compose y z) compose (edge
x y) (edge
y z) ==edge
x z compose (path
[1..5]) (path
[1..5]) ==edges
[(1,3), (2,4), (3,5)] compose (circuit
[1..5]) (circuit
[1..5]) ==circuit
[1,3,5,2,4]size
(compose x y) <=edgeCount
x +edgeCount
y + 1
box :: Graph a -> Graph b -> Graph (a, b) Source #
Compute the Cartesian product of graphs. Complexity: O(s1 * s2) time, memory and size, where s1 and s2 are the sizes of the given graphs.
box (path
[0,1]) (path
"ab") ==edges
[ ((0,'a'), (0,'b')) , ((0,'a'), (1,'a')) , ((0,'b'), (1,'b')) , ((1,'a'), (1,'b')) ]
Up to an isomorphism between the resulting vertex types, this operation
is commutative, associative, distributes over overlay
, has singleton
graphs as identities and empty
as the annihilating zero. Below ~~
stands for the equality up to an isomorphism, e.g. (x, ()) ~~ x
.
box x y ~~ box y x box x (box y z) ~~ box (box x y) z box x (overlay
y z) ==overlay
(box x y) (box x z) box x (vertex
()) ~~ x box xempty
~~empty
transpose
(box x y) == box (transpose
x) (transpose
y)vertexCount
(box x y) ==vertexCount
x *vertexCount
yedgeCount
(box x y) <=vertexCount
x *edgeCount
y +edgeCount
x *vertexCount
y
Context
The Context
of a subgraph comprises its inputs
and outputs
, i.e. all
the vertices that are connected to the subgraph's vertices. Note that inputs
and outputs can belong to the subgraph itself. In general, there are no
guarantees on the order of vertices in inputs
and outputs
; furthermore,
there may be repetitions.
context :: (a -> Bool) -> Graph a -> Maybe (Context a) Source #
Extract the Context
of a subgraph specified by a given predicate. Returns
Nothing
if the specified subgraph is empty.
Good consumer.
context (const
False) x == Nothing context (== 1) (edge
1 2) == Just (Context
[ ] [2 ]) context (== 2) (edge
1 2) == Just (Context
[1 ] [ ]) context (const
True ) (edge
1 2) == Just (Context
[1 ] [2 ]) context (== 4) (3 * 1 * 4 * 1 * 5) == Just (Context
[3,1] [1,5])