P-99: Ninety-Nine Prolog Problems
werner.hett@bfh.ch or werner.hett@gmail.com
The purpose of this problem collection is to give you the opportunity
to practice your skills in logic programming. Your goal should be
to find the most elegant solution of the given problems. Efficiency is
important, but logical clarity is even more crucial. Some of the (easy)
problems can be trivially solved using built-in predicates.
However, in these cases, you learn more if you try to find your
own solution.
Every predicate that you write should begin with a comment
that describes the predicate in a declarative statement.
Do not describe procedurally, what the predicate does,
but write down a logical statement which includes the
arguments of the predicate. You should also indicate the intended data types of
the arguments and the allowed flow patterns.
The problems have different levels of difficulty.
Those marked with a single asterisk (*) are easy. If you have
successfully solved the preceeding problems
you should be able to solve them within a few (say 15) minutes.
Problems marked with two asterisks (**) are of intermediate
difficulty. If you are a skilled Prolog programmer it
shouldn't take you more than 30-90 minutes to solve them.
Problems marked with three asterisks (***) are more difficult.
You may need more time (i.e. a few hours or more) to find a good solution.
Working with Prolog lists
A list is either empty or it is composed of a first element
(head) and a tail, which is a list itself.
In Prolog we represent the empty list by the atom [] and a non-empty list
by a term [H|T] where H denotes the head and T denotes the tail.
- P01
(*) Find the last element of a list.
- Example:
?- my_last(X,[a,b,c,d]).
X = d
- P02
(*) Find the last but one element of a list.
- (zweitletztes Element, l'avant-dernier élément)
- P03
(*) Find the K'th element of a list.
- The first element in the list is number 1.
Example:
?- element_at(X,[a,b,c,d,e],3).
X = c
- P04
(*) Find the number of elements of a list.
- P05
(*) Reverse a list.
- P06
(*) Find out whether a list is a palindrome.
- A palindrome can be read forward or backward; e.g. [x,a,m,a,x].
- P07
(**) Flatten a nested list structure.
- Transform a list, possibly holding lists as elements into a `flat'
list by replacing each list with its elements (recursively).
Example:
?- my_flatten([a, [b, [c, d], e]], X).
X = [a, b, c, d, e]
Hint: Use the predefined predicates is_list/1 and append/3
- P08
(**) Eliminate consecutive duplicates of list elements.
- If a list contains repeated elements they should be replaced
with a single copy of the element. The order of the elements should
not be changed.
Example:
?- compress([a,a,a,a,b,c,c,a,a,d,e,e,e,e],X).
X = [a,b,c,a,d,e]
- P09
(**) Pack consecutive duplicates of list elements into sublists.
- If a list contains repeated elements they should be placed
in separate sublists.
Example:
?- pack([a,a,a,a,b,c,c,a,a,d,e,e,e,e],X).
X = [[a,a,a,a],[b],[c,c],[a,a],[d],[e,e,e,e]]
- P10
(*) Run-length encoding of a list.
- Use the result of problem P09 to implement the so-called
run-length encoding data compression method. Consecutive duplicates
of elements are encoded as terms [N,E] where N is the number
of duplicates of the element E.
Example:
?- encode([a,a,a,a,b,c,c,a,a,d,e,e,e,e],X).
X = [[4,a],[1,b],[2,c],[2,a],[1,d][4,e]]
- P11
(*) Modified run-length encoding.
- Modify the result of problem P10 in such a way that if an element
has no duplicates it is simply copied into the result list. Only
elements with duplicates are transferred as [N,E] terms.
Example:
?- encode_modified([a,a,a,a,b,c,c,a,a,d,e,e,e,e],X).
X = [[4,a],b,[2,c],[2,a],d,[4,e]]
- P12
(**) Decode a run-length encoded list.
- Given a run-length code list generated as specified
in problem P11. Construct its uncompressed version.
- P13
(**) Run-length encoding of a list (direct solution).
- Implement the so-called run-length encoding data compression
method directly. I.e. don't explicitly create the sublists
containing the duplicates, as in problem P09, but only count them.
As in problem P11, simplify the result list by replacing the singleton
terms [1,X] by X.
Example:
?- encode_direct([a,a,a,a,b,c,c,a,a,d,e,e,e,e],X).
X = [[4,a],b,[2,c],[2,a],d,[4,e]]
- P14
(*) Duplicate the elements of a list.
- Example:
?- dupli([a,b,c,c,d],X).
X = [a,a,b,b,c,c,c,c,d,d]
- P15
(**) Duplicate the elements of a list a given number of times.
- Example:
?- dupli([a,b,c],3,X).
X = [a,a,a,b,b,b,c,c,c]
What are the results of the goal:
?- dupli(X,3,Y).
- P16
(**) Drop every N'th element from a list.
- Example:
?- drop([a,b,c,d,e,f,g,h,i,k],3,X).
X = [a,b,d,e,g,h,k]
- P17
(*) Split a list into two parts; the length of the first
part is given.
- Do not use any predefined predicates.
Example:
?- split([a,b,c,d,e,f,g,h,i,k],3,L1,L2).
L1 = [a,b,c]
L2 = [d,e,f,g,h,i,k]
- P18
(**) Extract a slice from a list.
- Given two indices, I and K, the slice is the list
containing the elements between the I'th and K'th element
of the original list (both limits included). Start counting
the elements with 1.
Example:
?- slice([a,b,c,d,e,f,g,h,i,k],3,7,L).
X = [c,d,e,f,g]
- P19
(**) Rotate a list N places to the left.
- Examples:
?- rotate([a,b,c,d,e,f,g,h],3,X).
X = [d,e,f,g,h,a,b,c]
?- rotate([a,b,c,d,e,f,g,h],-2,X).
X = [g,h,a,b,c,d,e,f]
Hint: Use the predefined predicates length/2 and append/3,
as well as the result of problem P17.
- P20
(*) Remove the K'th element from a list.
- Example:
?- remove_at(X,[a,b,c,d],2,R).
X = b
R = [a,c,d]
- P21
(*) Insert an element at a given position into a list.
- Example:
?- insert_at(alfa,[a,b,c,d],2,L).
L = [a,alfa,b,c,d]
- P22
(*) Create a list containing all integers within a given range.
- Example:
?- range(4,9,L).
L = [4,5,6,7,8,9]
- P23
(**) Extract a given number of randomly selected elements from a
list.
- The selected items shall be put into a result list.
Example:
?- rnd_select([a,b,c,d,e,f,g,h],3,L).
L = [e,d,a]
Hint: Use the built-in random number generator random/2 and the
result of problem P20.
- P24
(*) Lotto: Draw N different random numbers from the set 1..M.
- The selected numbers shall be put into a result list.
Example:
?- rnd_select(6,49,L).
L = [23,1,17,33,21,37]
Hint: Combine the solutions of problems P22 and P23.
- P25
(*) Generate a random permutation of the elements of a list.
- Example:
?- rnd_permu([a,b,c,d,e,f],L).
L = [b,a,d,c,e,f]
Hint: Use the solution of problem P23.
- P26
(**) Generate the combinations of K distinct objects
chosen from the N elements of a list
-
In how many ways can a committee of 3 be chosen from a group of
12 people? We all know that there are C(12,3) = 220 possibilities
(C(N,K) denotes the well-known binomial coefficients). For pure
mathematicians, this result may be great. But we want to
really generate all the possibilities (via backtracking).
Example:
?- combination(3,[a,b,c,d,e,f],L).
L = [a,b,c] ;
L = [a,b,d] ;
L = [a,b,e] ;
...
- P27
(**) Group the elements of a set into disjoint subsets.
-
a) In how many ways can a group of 9 people work in 3 disjoint subgroups
of 2, 3 and 4 persons? Write a predicate that generates all the
possibilities via backtracking.
Example:
?- group3([aldo,beat,carla,david,evi,flip,gary,hugo,ida],G1,G2,G3).
G1 = [aldo,beat], G2 = [carla,david,evi], G3 = [flip,gary,hugo,ida]
...
b) Generalize the above predicate in a way that we can specify a list
of group sizes and the predicate will return a list of groups.
Example:
?- group([aldo,beat,carla,david,evi,flip,gary,hugo,ida],[2,2,5],Gs).
Gs = [[aldo,beat],[carla,david],[evi,flip,gary,hugo,ida]]
...
Note that we do not want permutations of the group members; i.e.
[[aldo,beat],...] is the same solution as [[beat,aldo],...]. However,
we make a difference between [[aldo,beat],[carla,david],...] and
[[carla,david],[aldo,beat],...].
You may find more about this combinatorial problem in a good book
on discrete mathematics under the term "multinomial coefficients".
- P28
(**) Sorting a list of lists according to length of sublists
-
a) We suppose that a list (InList) contains elements that are
lists themselves. The objective is to sort the elements of InList
according to their length. E.g. short lists first, longer lists
later, or vice versa.
Example:
?- lsort([[a,b,c],[d,e],[f,g,h],[d,e],[i,j,k,l],[m,n],[o]],L).
L = [[o], [d, e], [d, e], [m, n], [a, b, c], [f, g, h], [i, j, k, l]]
b) Again, we suppose that a list (InList) contains elements that are
lists themselves. But this time the objective is to sort the elements
of InList according to their length frequency; i.e. in the default,
where sorting is done ascendingly, lists with rare lengths are placed
first, others with a more frequent length come later.
Example:
?- lfsort([[a,b,c],[d,e],[f,g,h],[d,e],[i,j,k,l],[m,n],[o]],L).
L = [[i, j, k, l], [o], [a, b, c], [f, g, h], [d, e], [d, e], [m, n]]
Note that in the above example, the first two lists in the result L
have length 4 and 1, both lengths appear just once. The third and
forth list have length 3 which appears, there are two list of this
length. And finally, the last three lists have length 2. This is
the most frequent length.
Arithmetic
- P31
(**) Determine whether a given integer number is prime.
- Example:
?- is_prime(7).
Yes
- P32
(**) Determine the greatest common divisor of two positive integer
numbers.
- Use Euclid's algorithm.
Example:
?- gcd(36, 63, G).
G = 9
Define gcd as an arithmetic function; so you can use it like this:
?- G is gcd(36,63).
G = 9
- P33
(*) Determine whether two positive integer numbers are coprime.
- Two numbers are coprime if their greatest common divisor equals 1.
Example:
?- coprime(35, 64).
Yes
- P34
(**) Calculate Euler's totient function phi(m).
- Euler's so-called totient function phi(m) is defined as the number
of positive integers r (1 <= r < m) that are coprime to m.
Example: m = 10: r = 1,3,7,9; thus phi(m) = 4.
Note the special case: phi(1) = 1.
?- Phi is totient_phi(10).
Phi = 4
Find out what the value of phi(m) is if m is a prime number.
Euler's totient function plays an important role in one of the
most widely used public key cryptography methods (RSA). In this
exercise you should use the most primitive method to calculate
this function (there are smarter ways that we shall discuss later).
- P35
(**) Determine the prime factors of a given positive integer.
- Construct a flat list containing the prime factors
in ascending order.
Example:
?- prime_factors(315, L).
L = [3,3,5,7]
- P36
(**) Determine the prime factors of a given positive integer (2).
- Construct a list containing the prime factors and
their multiplicity.
Example:
?- prime_factors_mult(315, L).
L = [[3,2],[5,1],[7,1]]
Hint: The problem is similar to problem
P13.
- P37
(**) Calculate Euler's totient function phi(m) (improved).
- See problem P34 for the definition of Euler's totient function.
If the list of the prime factors of a number m is known in the form
of problem P36 then the function phi(m) can be efficiently
calculated as follows:
Let [[p1,m1],[p2,m2],[p3,m3],...] be the list of prime factors (and
their multiplicities) of a given number m. Then phi(m) can be calculated
with the following formula:
phi(m) = (p1 - 1) * p1**(m1 - 1) * (p2 - 1) * p2**(m2 - 1) *
(p3 - 1) * p3**(m3 - 1) * ...
Note that a**b stands for the b'th power of a.
- P38
(*) Compare the two methods of calculating Euler's totient function.
- Use the solutions of problems P34 and P37 to compare the algorithms.
Take the number of logical inferences as a measure for efficiency.
Try to calculate phi(10090) as an example.
- P39
(*) A list of prime numbers.
- Given a range of integers by its lower and upper limit, construct
a list of all prime numbers in that range.
- P40
(**) Goldbach's conjecture.
- Goldbach's conjecture says that every positive even number
greater than 2 is the sum of two prime numbers. Example: 28 = 5 + 23.
It is one of the most famous facts in number theory that has not
been proved to be correct in the general case.
It has been numerically
confirmed up to very large numbers (much larger than we can go with our
Prolog system). Write a predicate to find the two prime numbers
that sum up to a given even integer.
Example:
?- goldbach(28, L).
L = [5,23]
- P41
(**) A list of Goldbach compositions.
- Given a range of integers by its lower and upper limit, print
a list of all even numbers and their Goldbach composition.
Example:
?- goldbach_list(9,20).
10 = 3 + 7
12 = 5 + 7
14 = 3 + 11
16 = 3 + 13
18 = 5 + 13
20 = 3 + 17
In most cases, if an even number is written as the sum of two
prime numbers, one of them is very small. Very rarely, the primes
are both bigger than say 50. Try to find out how many such cases
there are in the range 2..3000.
Example (for a print limit of 50):
?- goldbach_list(1,2000,50).
992 = 73 + 919
1382 = 61 + 1321
1856 = 67 + 1789
1928 = 61 + 1867
Logic and Codes
- P46
(**) Truth tables for logical expressions.
- Define predicates and/2, or/2, nand/2, nor/2, xor/2, impl/2
and equ/2 (for logical equivalence) which succeed or
fail according to the result of their respective operations; e.g.
and(A,B) will succeed, if and only if both A and B succeed.
Note that A and B can be Prolog goals (not only the constants
true and fail).
A logical expression in two variables can then be written in
prefix notation, as in the following example: and(or(A,B),nand(A,B)).
Now, write a predicate table/3 which prints the truth table of a
given logical expression in two variables.
Example:
?- table(A,B,and(A,or(A,B))).
true true true
true fail true
fail true fail
fail fail fail
- P47
(*) Truth tables for logical expressions (2).
- Continue problem P46 by defining and/2, or/2, etc as being
operators. This allows to write the logical expression in the
more natural way, as in the example: A and (A or not B).
Define operator precedence as usual; i.e. as in Java.
Example:
?- table(A,B, A and (A or not B)).
true true true
true fail true
fail true fail
fail fail fail
- P48
(**) Truth tables for logical expressions (3).
- Generalize problem P47 in such a way that the logical
expression may contain any number of logical variables.
Define table/2 in a way that table(List,Expr) prints the
truth table for the expression Expr, which contains the
logical variables enumerated in List.
Example:
?- table([A,B,C], A and (B or C) equ A and B or A and C).
true true true true
true true fail true
true fail true true
true fail fail true
fail true true true
fail true fail true
fail fail true true
fail fail fail true
- P49
(**) Gray code.
- An n-bit Gray code is a sequence of n-bit strings constructed
according to certain rules. For example,
n = 1: C(1) = ['0','1'].
n = 2: C(2) = ['00','01','11','10'].
n = 3: C(3) = ['000','001','011','010',´110´,´111´,´101´,´100´].
Find out the construction rules and write a predicate with the following
specification:
% gray(N,C) :- C is the N-bit Gray code
Can you apply the method of "result caching" in order to make the predicate
more efficient, when it is to be used repeatedly?
- P50
(***) Huffman code.
- First of all, consult a good book on discrete mathematics or
algorithms for a detailed description of Huffman codes!
We suppose a set of symbols with their frequencies, given as a list of
fr(S,F) terms. Example:
[fr(a,45),fr(b,13),fr(c,12),fr(d,16),fr(e,9),fr(f,5)]. Our objective is to
construct a list hc(S,C) terms, where C is the Huffman code word for
the symbol S. In our example, the result could be Hs = [hc(a,'0'),
hc(b,'101'), hc(c,'100'), hc(d,'111'), hc(e,'1101'),
hc(f,'1100')] [hc(a,'01'),...etc.].
The task shall be performed by the predicate huffman/2 defined as follows:
% huffman(Fs,Hs) :- Hs is the Huffman code table for the frequency table Fs
Binary Trees
A binary tree is either empty or it is composed of a root
element and two successors, which are binary trees themselves.
In Prolog we represent the empty tree by the atom 'nil' and the
non-empty tree by the term t(X,L,R), where X denotes the root
node and L and R denote the left and right subtree, respectively.
The example tree depicted opposite is therefore represented by the
following Prolog term:
T1 = t(a,t(b,t(d,nil,nil),t(e,nil,nil)),t(c,nil,t(f,t(g,nil,nil),nil)))
Other examples are a binary tree that consists of a root node only:
T2 = t(a,nil,nil) or an empty binary tree: T3 = nil
You can check your predicates using these example trees. They are
given as test cases in p54.pl.
- P54
(*) Check whether a given term represents a binary tree
- Write a predicate istree/1 which succeeds if and only if its argument
is a Prolog term representing a binary tree.
Example:
?- istree(t(a,t(b,nil,nil),nil)).
Yes
?- istree(t(a,t(b,nil,nil))).
No
- P55
(**) Construct completely balanced binary trees
- In a completely balanced binary tree, the following property holds for
every node: The number of nodes in its left subtree and the number of
nodes in its right subtree are almost equal, which means their
difference is not greater than one.
Write a predicate cbal_tree/2 to construct completely balanced
binary trees for a given number of nodes. The predicate should
generate all solutions via backtracking. Put the letter 'x'
as information into all nodes of the tree.
Example:
?- cbal_tree(4,T).
T = t(x, t(x, nil, nil), t(x, nil, t(x, nil, nil))) ;
T = t(x, t(x, nil, nil), t(x, t(x, nil, nil), nil)) ;
etc......No
- P56
(**) Symmetric binary trees
- Let us call a binary tree symmetric if you can draw a vertical
line through the root node and then the right subtree is the mirror
image of the left subtree.
Write a predicate symmetric/1 to check whether a given binary
tree is symmetric. Hint:
Write a predicate mirror/2 first to
check whether one tree is the mirror image of another.
We are only interested in the structure, not in the contents
of the nodes.
- P57
(**) Binary search trees (dictionaries)
- Use the predicate add/3, developed in chapter 4 of the course,
to write a predicate to construct a binary search tree
from a list of integer numbers.
Example:
?- construct([3,2,5,7,1],T).
T = t(3, t(2, t(1, nil, nil), nil), t(5, nil, t(7, nil, nil)))
Then use this predicate to test the solution of the problem P56.
Example:
?- test_symmetric([5,3,18,1,4,12,21]).
Yes
?- test_symmetric([3,2,5,7,4]).
No
- P58
(**) Generate-and-test paradigm
- Apply the generate-and-test paradigm to construct all symmetric,
completely balanced binary trees with a given number of nodes.
Example:
?- sym_cbal_trees(5,Ts).
Ts = [t(x, t(x, nil, t(x, nil, nil)), t(x, t(x, nil, nil), nil)),
t(x, t(x, t(x, nil, nil), nil), t(x, nil, t(x, nil, nil)))]
How many such trees are there with 57 nodes? Investigate about
how many solutions there are for a given number of nodes? What if
the number is even? Write an appropriate predicate.
- P59
(**) Construct height-balanced binary trees
- In a height-balanced binary tree, the following property holds for
every node: The height of its left subtree and the height of
its right subtree are almost equal, which means their
difference is not greater than one.
Write a predicate hbal_tree/2 to construct height-balanced
binary trees for a given height. The predicate should
generate all solutions via backtracking. Put the letter 'x'
as information into all nodes of the tree.
Example:
?- hbal_tree(3,T).
T = t(x, t(x, t(x, nil, nil), t(x, nil, nil)), t(x, t(x, nil, nil),
t(x, nil, nil))) ;
T = t(x, t(x, t(x, nil, nil), t(x, nil, nil)), t(x, t(x, nil, nil),
nil)) ;
etc......No
- P60
(**) Construct height-balanced binary trees with a given number of nodes
- Consider a height-balanced binary tree of height H. What is the
maximum number of nodes it can contain?
Clearly, MaxN = 2**H - 1.
However, what is the minimum number MinN? This question is more
difficult. Try to find a recursive statement and turn it into a
predicate minNodes/2 defined as follwos:
% minNodes(H,N) :- N is the minimum number of nodes in a
height-balanced binary tree of height H.
(integer,integer), (+,?)
On the other hand, we might ask: what is the maximum height H a
height-balanced binary tree with N nodes can have?
% maxHeight(N,H) :- H is the maximum height of a height-balanced
binary tree with N nodes
(integer,integer), (+,?)
Now, we can attack the main problem: construct all the
height-balanced binary trees with a given nuber of nodes.
% hbal_tree_nodes(N,T) :- T is a height-balanced binary tree with
N nodes.
Find out how many height-balanced trees exist for N = 15.
- P61
(*) Count the leaves of a binary tree
- A leaf is a node with no successors. Write a predicate
count_leaves/2 to count them.
% count_leaves(T,N) :- the binary tree T has N leaves
- P61A
(*) Collect the leaves of a binary tree in a list
- A leaf is a node with no successors. Write a predicate
leaves/2 to collect them in a list.
% leaves(T,S) :- S is the list of all leaves of the binary tree T
- P62
(*) Collect the internal nodes of a binary tree in a list
- An internal node of a binary tree has either one or two non-empty
successors. Write a predicate internals/2 to collect
them in a list.
% internals(T,S) :- S is the list of internal nodes of
the binary tree T.
- P62B
(*) Collect the nodes at a given level in a list
- A node of a binary tree is at level N if the path from the
root to the node has length N-1. The root node is at level 1.
Write a predicate atlevel/3 to collect all nodes at a given
level in a list.
% atlevel(T,L,S) :- S is the list of nodes of the binary tree
T at level L
Using atlevel/3 it is easy to construct a predicate levelorder/2
which creates the level-order sequence of the nodes. However,
there are more efficient ways to do that.
- P63
(**) Construct a complete binary tree
- A complete binary tree with height H is
defined as follows: The levels 1,2,3,...,H-1 contain the
maximum number of nodes (i.e 2**(i-1) at the level i, note
that we start counting the levels from 1 at the root).
In level H, which may contain less than the maximum possible number
of nodes, all the nodes are "left-adjusted". This means
that in a levelorder tree traversal all internal nodes come
first, the leaves come second, and empty successors (the nil's
which are not really nodes!) come last.
Particularly, complete binary trees are used as data structures
(or addressing schemes) for heaps.
We can assign an address number to each node in a complete
binary tree by enumerating the nodes in levelorder, starting
at the root with number 1. In doing so, we realize that for
every node X with address A the following property holds:
The address of X's left and right successors are 2*A and 2*A+1,
respectively, supposed the successors do exist. This fact can
be used to elegantly construct a complete binary tree structure.
Write a predicate complete_binary_tree/2 with the following
specification:
% complete_binary_tree(N,T) :- T is a complete binary tree with
N nodes. (+,?)
Test your predicate in an appropriate way.
- P64
(**) Layout a binary tree (1)
- Given a binary tree as the usual Prolog term t(X,L,R) (or nil).
As a preparation for drawing the tree, a layout algorithm is
required to determine the position of each node in a rectangular
grid. Several layout methods are conceivable, one of them is
shown in the illustration below.
In this layout strategy, the position of a node v
is obtained by the following two rules:
- x(v) is equal to the position of the node v
in the inorder sequence
- y(v) is equal to the depth of the node v in
the tree
In order to store the position of the nodes, we extend the Prolog
term representing a node (and its successors) as follows:
% nil represents the empty tree (as usual)
% t(W,X,Y,L,R) represents a (non-empty) binary tree with root
W "positioned" at (X,Y), and subtrees L and R
Write a predicate layout_binary_tree/2 with the following
specification:
% layout_binary_tree(T,PT) :- PT is the "positioned" binary
tree obtained from the binary tree T. (+,?)
Test your predicate in an appropriate way.
- P65
(**) Layout a binary tree (2)
-
An alternative layout method is depicted in the illustration
opposite. Find out the rules and write the corresponding
Prolog predicate. Hint: On a given level, the horizontal
distance between neighboring nodes is constant.
Use the same conventions as in problem P64 and test your
predicate in an appropriate way.
- P66
(***) Layout a binary tree (3)
-
Yet another layout strategy is shown in the illustration
opposite. The method yields a very compact layout while
maintaining a certain symmetry in every node. Find out
the rules and write the corresponding Prolog predicate.
Hint: Consider the horizontal distance between a node and its
successor nodes. How tight can you pack together two subtrees to
construct the combined binary tree?
Use the same conventions as in problem P64 and P65 and
test your predicate in an appropriate way. Note: This is
a difficult problem. Don't give up too early!
Which layout do you like most?
- P67
(**) A string representation of binary trees
-
Somebody represents binary trees as strings of the
following type (see example opposite):
a(b(d,e),c(,f(g,)))
a)
Write a Prolog predicate which generates this string
representation, if the tree is given as usual (as nil or
t(X,L,R) term). Then write a predicate which does
this inverse; i.e. given the string representation,
construct the tree in the usual form. Finally, combine the
two predicates in a single predicate tree_string/2 which
can be used in both directions.
b)
Write the same predicate tree_string/2 using difference lists
and a single predicate tree_dlist/2 which does the conversion
between a tree and a difference list in both directions.
For simplicity, suppose the information in the nodes is a single
letter and there are no spaces in the string.
- P68
(**) Preorder and inorder sequences of binary trees
- We consider binary trees with nodes that are identified by
single lower-case letters, as in the example of problem P67.
a)
Write predicates preorder/2 and inorder/2 that construct
the preorder and inorder sequence of a given binary tree,
respectively. The results should be atoms, e.g. 'abdecfg'
for the preorder sequence of the example in problem P67.
b)
Can you use preorder/2 from problem part a) in the reverse
direction; i.e. given a preorder sequence, construct a
corresponding tree? If not, make the necessary arrangements.
c)
If both the preorder sequence and the inorder sequence of
the nodes of a binary tree are given, then the tree is determined
unambiguously. Write a predicate pre_in_tree/3 that does
the job.
d)
Solve problems a) to c) using difference lists. Cool! Use the
predefined predicate time/1 to compare the solutions.
What happens if the same character appears in more than one node.
Try for instance pre_in_tree(aba,baa,T).
- P69
(**) Dotstring representation of binary trees
- We consider again binary trees with nodes that are identified by
single lower-case letters, as in the example of problem P67. Such a
tree can be represented by the preorder sequence of its nodes in which
dots (.) are inserted where an empty subtree (nil) is encountered
during the tree traversal. For example, the tree shown in problem P67
is represented as 'abd..e..c.fg...'. First, try to establish a
syntax (BNF or syntax diagrams) and then write a predicate
tree_dotstring/2 which does the conversion in both directions.
Use difference lists.
Multiway Trees
A multiway tree is composed of a root element and
a (possibly empty) set of successors which are multiway trees
themselves. A multiway tree is never empty. The set of successor
trees is sometimes called a forest.
In Prolog we represent a multiway tree by a term t(X,F), where X denotes
the root node and F denotes the forest of successor trees (a Prolog list).
The example tree depicted opposite is therefore represented by the
following Prolog term:
T = t(a,[t(f,[t(g,[])]),t(c,[]),t(b,[t(d,[]),t(e,[])])])
- P70B
(*) Check whether a given term represents a multiway tree
- Write a predicate istree/1 which succeeds if and only if its argument
is a Prolog term representing a multiway tree.
Example:
?- istree(t(a,[t(f,[t(g,[])]),t(c,[]),t(b,[t(d,[]),t(e,[])])])).
Yes
- P70C
(*) Count the nodes of a multiway tree
- Write a predicate nnodes/1 which counts the nodes of a given
multiway tree.
Example:
?- nnodes(t(a,[t(f,[])]),N).
N = 2
Write another version of the predicate that allows
for a flow pattern (o,i).
- P70
(**) Tree construction from a node string
- We suppose that the nodes of a multiway tree contain single
characters. In the depth-first order sequence of its nodes, a
special character ^ has been inserted whenever, during the
tree traversal, the move is a backtrack to the previous level.
By this rule, the tree in the figure opposite is
represented as: afg^^c^bd^e^^^
Define the syntax of the string and write a predicate tree(String,Tree)
to construct the Tree when the String is given. Work with atoms (instead
of strings). Make your predicate work in both directions.
- P71
(*) Determine the internal path length of a tree
- We define the internal path length of a multiway tree as the
total sum of the path lengths from the root to all nodes of the tree.
By this definition, the tree in the figure of problem P70 has an internal
path length of 9. Write a predicate ipl(Tree,IPL) for the flow
pattern (+,-).
- P72
(*) Construct the bottom-up order sequence of the tree nodes
- Write a predicate bottom_up(Tree,Seq) which constructs the
bottom-up sequence of the nodes of the multiway tree Tree. Seq
should be a Prolog list. What happens if you run your predicate
backwords?
- P73
(**) Lisp-like tree representation
- There is a particular notation for multiway trees in Lisp.
Lisp is a prominent functional programming language, which is used
primarily for artificial intelligence problems. As such it is one of
the main competitors of Prolog. In Lisp almost everything is a list,
just as in Prolog everything is a term.
The following pictures show how multiway tree structures are
represented in Lisp.
Note that in the "lispy" notation a node with successors (children)
in the tree is always the first element in a list, followed by its
children.
The "lispy" representation of a multiway tree is a sequence of
atoms and parentheses '(' and ')', which we shall collectively
call "tokens". We can represent this sequence of tokens
as a Prolog list; e.g. the lispy expression (a (b c)) could be
represented as the Prolog list ['(', a, '(', b, c, ')', ')'].
Write a predicate tree_ltl(T,LTL) which constructs the "lispy
token list" LTL if the tree is given as term T in the usual
Prolog notation.
Example:
?- tree_ltl(t(a,[t(b,[]),t(c,[])]),LTL).
LTL = ['(', a, '(', b, c, ')', ')']
As a second, even more interesting exercise try to rewrite
tree_ltl/2 in a way that the inverse conversion is also
possible: Given the list LTL, construct the Prolog tree T.
Use difference lists.
Graphs
A graph is defined as a set of nodes
and a set of edges, where each edge is a pair of nodes.
There are several ways to represent graphs in Prolog. One method is to
represent each edge separately as one clause (fact). In this form,
the graph depicted below is represented as the following predicate:
edge(h,g).
edge(k,f).
edge(f,b).
...
We call this edge-clause form. Obviously,
isolated nodes cannot be represented.
Another method is to represent the whole graph as one data object. According
to the definition of the graph as a pair of two sets (nodes and edges), we
may use the following Prolog term to represent the example graph:
graph([b,c,d,f,g,h,k],[e(b,c),e(b,f),e(c,f),e(f,k),e(g,h)])
We call this graph-term form. Note, that the lists are kept sorted,
they are really sets, without duplicated elements. Each edge
appears only once in the edge list; i.e. an edge from
a node x to another node y is represented as e(x,y), the term e(y,x)
is not present. The graph-term form is our default representation.
In SWI-Prolog there are predefined predicates to work
with sets.
A third representation method is to associate with each node the set
of nodes that are adjacent to that node. We call this the
adjacency-list form. In our example:
[n(b,[c,f]), n(c,[b,f]), n(d,[]), n(f,[b,c,k]), ...]
The representations we introduced so far are Prolog terms and therefore
well suited for automated processing, but their syntax is not very
user-friendly. Typing the terms by hand is cumbersome and error-prone.
We can define a more compact and "human-friendly" notation
as follows: A graph is represented by a list of atoms and terms of
the type X-Y (i.e. functor '-' and arity 2). The atoms stand for
isolated nodes, the X-Y terms describe edges. If an X appears as an
endpoint of an edge, it is automatically defined as a node.
Our example could be written as:
[b-c, f-c, g-h, d, f-b, k-f, h-g]
We call this the human-friendly form. As the example shows,
the list does not have to be sorted and may even contain the same
edge multiple times. Notice the isolated node d. (Actually, isolated
nodes do not even have to be atoms in the Prolog sense, they can
be compound terms, as in d(3.75,blue) instead of d in the example).
When the edges are directed we call them arcs. These
are represented by ordered pairs. Such a graph is called
directed graph. To represent a directed graph, the forms
discussed above are slightly modified. The example graph opposite
is represented as follows:
- Arc-clause form
- arc(s,u).
arc(u,r).
...
- Graph-term form
- digraph([r,s,t,u,v],[a(s,r),a(s,u),a(u,r),a(u,s),a(v,u)])
- Adjacency-list form
- [n(r,[]),n(s,[r,u]),n(t,[]),n(u,[r]),n(v,[u])]
Note that the adjacency-list does not have the information on whether
it is a graph or a digraph.
- Human-friendly form
- [s > r, t, u > r, s > u, u > s, v > u]
Finally, graphs and digraphs may have additional information attached
to nodes and edges (arcs). For the nodes, this is no problem, as we can
easily replace the single character identifiers with arbitrary compound
terms, such as city('London',4711). On the other hand, for
edges we have to extend our notation. Graphs with additional information
attached to edges are called labelled graphs.
- Arc-clause form
- arc(m,q,7).
arc(p,q,9).
arc(p,m,5).
- Graph-term form
- digraph([k,m,p,q],[a(m,p,7),a(p,m,5),a(p,q,9)])
- Adjacency-list form
- [n(k,[]),n(m,[q/7]),n(p,[m/5,q/9]),n(q,[])]
Notice how the edge information has been packed into a term with
functor '/' and arity 2, together with the corresponding node.
- Human-friendly form
- [p>q/9, m>q/7, k, p>m/5]
The notation for labelled graphs can also be used for so-called
multi-graphs, where more than one edge (or arc) are allowed
between two given nodes.
- P80
(***) Conversions
- Write predicates to convert between the different graph
representations. With these predicates, all representations
are equivalent; i.e. for the following problems you can always pick
freely the most convenient form. The reason this problem is rated (***) is
not because it's particularly difficult, but because it's a lot
of work to deal with all the special cases.
- P81
(**) Path from one node to another one
- Write a predicate path(G,A,B,P) to find an acyclic path P from
node A to node b in the graph G. The predicate should return all paths
via backtracking.
- P82
(*) Cycle from a given node
- Write a predicate cycle(G,A,P) to find a closed path (cycle) P
starting at a given node A in the graph G. The predicate should
return all cycles via backtracking.
- P83
(**) Construct all spanning trees
- Write a predicate s_tree(Graph,Tree) to construct
(by backtracking) all spanning trees
of a given graph. With this predicate, find out how many
spanning trees there are for the graph depicted to the left.
The data of this example graph can be found in the file p83.dat.
When you have a correct solution for the s_tree/2 predicate, use it to
define two other useful predicates: is_tree(Graph) and
is_connected(Graph). Both are five-minutes tasks!
- P84
(**) Construct the minimal spanning tree
- Write a predicate ms_tree(Graph,Tree,Sum) to construct
the minimal spanning tree of a given labelled graph. Hint:
Use the algorithm of Prim. A small modification of the solution of
P83 does the trick. The data of the example graph to the right can
be found in the file p84.dat.
- P85
(**) Graph isomorphism
- Two graphs G1(N1,E1) and G2(N2,E2) are isomorphic if there is
a bijection f: N1 -> N2 such that for any nodes X,Y of N1, X and Y
are adjacent if and only if f(X) and f(Y) are adjacent.
Write a predicate that determines whether two graphs are isomorphic.
Hint: Use an open-ended list to represent the function f.
- P86
(**) Node degree and graph coloration
- a) Write a predicate degree(Graph,Node,Deg) that determines
the degree of a given node.
b) Write a predicate that generates a list of all nodes of a
graph sorted according to decreasing degree.
c) Use Welch-Powell's algorithm to paint the nodes of a graph
in such a way that adjacent nodes have different colors.
- P87
(**) Depth-first order graph traversal
(alternative solution)
- Write a predicate that generates a depth-first order graph
traversal sequence. The starting point should be specified,
and the output should be a list of nodes that are reachable from
this starting point (in depth-first order).
- P88
(**) Connected components
(alternative solution)
- Write a predicate that splits a graph into its connected components.
- P89
(**) Bipartite graphs
- Write a predicate that finds out whether a given graph is bipartite.
Miscellaneous Problems
- P90
(**) Eight queens problem
- This is a classical problem in computer science. The objective is to
place eight queens on a chessboard so that no two queens are attacking
each other; i.e., no two queens are in the same row, the same column,
or on the same diagonal.
Hint: Represent the positions of the queens as a list of numbers 1..N.
Example: [4,2,7,3,6,8,5,1] means that the queen in the first column
is in row 4, the queen in the second column is in row 2, etc.
Use the generate-and-test paradigm.
- P91
(**) Knight's tour
- Another famous problem is this one: How can a knight jump on
an NxN chessboard in such a way that it visits every square exactly
once?
Hints: Represent the squares by pairs of their coordinates of
the form X/Y, where both X and Y are integers between 1 and N.
(Note that '/' is just a convenient functor, not division!)
Define the relation jump(N,X/Y,U/V) to express the fact that a
knight can jump from X/Y to U/V on a NxN chessboard. And finally,
represent the solution of our problem as a list of N*N knight
positions (the knight's tour).
- P92
(***) Von Koch's conjecture
- Several years ago I met a mathematician who was intrigued by
a problem for which he didn't know a solution. His name was Von Koch,
and I don't know whether the problem has been solved since.
Anyway the puzzle goes like this: Given a tree with N nodes
(and hence N-1 edges). Find a way to enumerate the nodes from 1 to N
and, accordingly, the edges from 1 to N-1 in such a way, that for
each edge K the difference of its node numbers equals to K.
The conjecture is that this is always possible.
For small trees the problem is easy to solve by hand. However, for
larger trees, and 14 is already very large, it is extremely difficult
to find a solution. And remember, we don't know for sure whether there is
always a solution!
Write a predicate that calculates a numbering scheme for a given
tree. What is the solution for the larger tree pictured above?
- P93
(***) An arithmetic puzzle
- Given a list of integer numbers, find a correct way of inserting
arithmetic signs (operators) such that the result is a correct equation.
Example: With the list of numbers [2,3,5,7,11] we can form the
equations 2-3+5+7 = 11 or 2 = (3*5+7)/11 (and ten others!).
- P94
(***) Generate K-regular simple graphs with N nodes
- In a K-regular graph all nodes have a degree of K; i.e. the number
of edges incident in each node is K. How many (non-isomorphic!) 3-regular
graphs with 6 nodes are there? See also a table of results
and a Java applet that can represent
graphs geometrically.
- P95
(**) English number words
- On financial documents, like cheques, numbers must sometimes be
written in full words. Example: 175 must be written as one-seven-five.
Write a predicate full_words/1 to print (non-negative) integer numbers
in full words.
- P96
(**) Syntax checker
(alternative solution with difference lists)
-
In a certain programming language (Ada) identifiers are defined
by the syntax diagram (railroad chart) opposite.
Transform the syntax diagram into a system of syntax diagrams
which do not contain loops; i.e. which are purely recursive.
Using these modified diagrams, write a predicate identifier/1 that can
check whether or not a given string is a legal identifier.
% identifier(Str) :- Str is a legal identifier
- P97
(**) Sudoku
-
Sudoku puzzles go like this:
Problem statement Solution
. . 4 | 8 . . | . 1 7 9 3 4 | 8 2 5 | 6 1 7
| | | |
6 7 . | 9 . . | . . . 6 7 2 | 9 1 4 | 8 5 3
| | | |
5 . 8 | . 3 . | . . 4 5 1 8 | 6 3 7 | 9 2 4
--------+---------+-------- --------+---------+--------
3 . . | 7 4 . | 1 . . 3 2 5 | 7 4 8 | 1 6 9
| | | |
. 6 9 | . . . | 7 8 . 4 6 9 | 1 5 3 | 7 8 2
| | | |
. . 1 | . 6 9 | . . 5 7 8 1 | 2 6 9 | 4 3 5
--------+---------+-------- --------+---------+--------
1 . . | . 8 . | 3 . 6 1 9 7 | 5 8 2 | 3 4 6
| | | |
. . . | . . 6 | . 9 1 8 5 3 | 4 7 6 | 2 9 1
| | | |
2 4 . | . . 1 | 5 . . 2 4 6 | 3 9 1 | 5 7 8
Every spot in the puzzle belongs to a (horizontal) row and a (vertical)
column, as well as to one single 3x3 square (which we call "square"
for short). At the beginning, some of the spots carry a single-digit
number between 1 and 9. The problem is to fill the missing spots with
digits in such a way that every number between 1 and 9 appears exactly
once in each row, in each column, and in each square.
- P98
(***) Nonograms
-
Around 1994, a certain kind of puzzles was very popular in England.
The "Sunday Telegraph" newspaper wrote: "Nonograms are puzzles from
Japan and are currently published each week only in The Sunday
Telegraph. Simply use your logic and skill to complete the grid
and reveal a picture or diagram." As a Prolog programmer, you are in
a better situation: you can have your computer do the work! Just write
a little program ;-).
The puzzle goes like this: Essentially, each row and column of a
rectangular bitmap is annotated with the respective lengths of
its distinct strings of occupied cells. The person who solves the puzzle
must complete the bitmap given only these lengths.
Problem statement: Solution:
|_|_|_|_|_|_|_|_| 3 |_|X|X|X|_|_|_|_| 3
|_|_|_|_|_|_|_|_| 2 1 |X|X|_|X|_|_|_|_| 2 1
|_|_|_|_|_|_|_|_| 3 2 |_|X|X|X|_|_|X|X| 3 2
|_|_|_|_|_|_|_|_| 2 2 |_|_|X|X|_|_|X|X| 2 2
|_|_|_|_|_|_|_|_| 6 |_|_|X|X|X|X|X|X| 6
|_|_|_|_|_|_|_|_| 1 5 |X|_|X|X|X|X|X|_| 1 5
|_|_|_|_|_|_|_|_| 6 |X|X|X|X|X|X|_|_| 6
|_|_|_|_|_|_|_|_| 1 |_|_|_|_|X|_|_|_| 1
|_|_|_|_|_|_|_|_| 2 |_|_|_|X|X|_|_|_| 2
1 3 1 7 5 3 4 3 1 3 1 7 5 3 4 3
2 1 5 1 2 1 5 1
For the example above, the problem can be stated as the two lists
[[3],[2,1],[3,2],[2,2],[6],[1,5],[6],[1],[2]] and
[[1,2],[3,1],[1,5],[7,1],[5],[3],[4],[3]] which give the
"solid" lengths of the rows and columns, top-to-bottom and
left-to-right, respectively. Published puzzles are larger than this
example, e.g. 25 x 20, and apparently always have unique solutions.
- P99
(***) Crossword puzzle
-
Given an empty (or almost empty) framework of a crossword puzzle and
a set of words. The problem is to place the words into the framework.
The particular crossword puzzle is specified in a text file which
first lists the words (one word per line) in an arbitrary order. Then,
after an empty line, the crossword framework is defined. In this
framework specification, an empty character location is represented
by a dot (.). In order to make the solution easier, character locations
can also contain predefined character values. The puzzle opposite
is defined in the file p99a.dat, other examples
are p99b.dat and p99d.dat.
There is also an example of a puzzle (p99c.dat)
which does not have a solution.
Words are strings (character lists) of at least two characters.
A horizontal or vertical sequence of character places in the
crossword puzzle framework is called a site.
Our problem is to find a compatible way of placing words onto sites.
Hints: (1) The problem is not easy. You will need some time to
thoroughly understand it. So, don't give up too early! And remember
that the objective is a clean solution, not just a quick-and-dirty hack!
(2) Reading the data file is a tricky problem for which a solution
is provided in the file
p99-readfile.pl. Use the predicate
read_lines/2.
(3) For efficiency reasons it is important, at least for
larger puzzles, to sort the words and the sites in a particular order.
For this part of the problem, the solution of
P28 may be very helpful.
Last modified: Sun Apr 26 10:55:38 W. Europe Daylight Time 2009