Thinking Functionally with Haskell (14 page)

BOOK: Thinking Functionally with Haskell
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4.9 Exercises

Exercise A

Which of the following equations are true for all
xs
and which are false?

[]:xs = xs

[]:xs = [[],xs]

xs:[] = xs

xs:[] = [xs]

xs:xs = [xs,xs]

[[]] ++ xs = xs

[[]] ++ xs = [[],xs]

[[]] ++ [xs] = [[],xs]

[xs] ++ [] = [xs]

By the way, why didn’t we define
null = (==[])
?

Exercise B

You want to produce an infinite list of all distinct pairs (
x
,
y
) of natural numbers. It doesn’t matter in which order the pairs are enumerated, as long as they all are there. Say whether or not the definition
allPairs = [(x,y) | x <- [0..], y <- [0..]]

does the job. If you think it doesn’t, can you give a version that does?

Exercise C

Give a definition of the function

disjoint :: (Ord a) => [a] -> [a] -> Bool

that takes two lists in ascending order, and determines whether or not they have an element in common.

Exercise D

Under what conditions do the following two list comprehensions deliver the same result?

[e | x <- xs, p x, y <- ys]

[e | x <- xs, y <- ys, p x]

Compare the costs of evaluating the two expressions.

Exercise E

When the great Indian mathematician Srinivasan Ramanujan was ill in a London hospital, he was visited by the English mathematician G.H. Hardy. Trying to find a subject of conversation, Hardy remarked that he had arrived in a taxi with the number 1729, a rather boring number it seemed to him. Not at all, Ramanujan instantly replied, it is the first number that can be expressed as two cubes in essentially different ways: 1
3
+ 12
3
= 9
3
+ 10
3
= 1729. Write a program to find the second such number.

In fact, define a function that returns a list of all essentially different quadruples (
a
,
b
,
c
,
d
) in the range 0 <
a
,
b
,
c
,
d

n
such that
a
3
+
b
3
=
c
3
+
d
3
. I suggest using a list comprehension, but only after thinking carefully about what it means to say
two quadruples are essentially different. After all,
a
3
+
b
3
=
c
3
+
d
3
can be written in eight different ways.

Exercise F

The dual view of lists is to construct them by adding elements to the end of the list:
data List a = Nil | Snoc (List a) a

Snoc
is, of course,
Cons
backwards. With this view of lists [1, 2, 3] would be represented by
Snoc (Snoc (Snoc Nil 1) 2) 3

Exactly the same information is provided by the two views but it is organised differently. Give the definitions of
head
and
last
for the snoc-view of lists, and define two functions

toList :: [a] -> List a

fromList :: List a -> [a]

for converting efficiently from one view of lists to the other. (Hint:
reverse
is efficient, taking linear time to reverse a list.)
Exercise G

How much space is required to evaluate
length xs
? Consider the following alternative definition of
length
:

length :: [a] -> Int

length xs = loop (0,xs)

where loop (n,[]) = n

loop (n,x:xs) = loop (n+1,xs)

Does the space requirement change? Does it change if we switched to eager evaluation? These questions are taken up in much more detail in
Chapter 7
.

Exercise H

The prelude function
take n
takes the first
n
elements of a list, while
drop n
drops the first
n
elements. Give recursive definitions for these functions. What are the values of
take 0 undefined take undefined []

according to your definition? A more tricky question: can you find a definition in which both the above expressions have the value
[]
? If not, why not?

Which of the following equations are valid for all integers
m
and
n
? You don’t have to justify your answers, just try to understand what they claim to say.

take n xs ++ drop n xs = xs

take m . drop n = drop n . take (m+n)

take m . take n = take (m `min` n)

drop m . drop n = drop (m+n)

The standard prelude function
splitAt n
can be defined by
splitAt n xs = (take n xs,drop n xs)

Though clear, the above definition is maybe a little inefficient as it involves processing
xs
twice. Give a definition of
splitAt
that traverses the list only once.

Exercise I

Which of the following statements about the equation

map (f . g) xs = map f (map g xs)

do you agree with, and which do you disagree with (again, no justification is required)?

1. It’s not true for all
xs
; it depends on whether
xs
is a finite list or not.

2. It’s not true for all
f
and
g
; it depends on whether
f
and
g
are strict functions or not.

3. It’s true for all lists
xs
, finite, partial or infinite, and for all
f
and
g
of the appropriate type. In fact
map (f . g) = map f . map g
is a much neater alternative.

4. It looks true, but it has to be proved so from the definition of
map
and the definition of functional composition.

5. Used right-to-left, it expresses a program optimisation: two traversals of a list are replaced by one.

6. It’s not an optimisation under lazy evaluation because
map g xs
is not computed in its entirety before evaluation of
map f
on the result begins.

7. Whether or not it is computed in pieces or as a whole, the right-hand side does produce an intermediate list, while the left-hand side doesn’t. It is a rule for optimising a program even under lazy evaluation.

Exercise J

Here are some equations; at least one of them is false. Which are the true ones, and which are false? Once again, you do not have to provide any justification for your answers, the aim is just to look at some equations and appreciate what they are saying.

map f . take n
= take n . map f

map f . reverse
= reverse . map f

map f . sort
= sort . map f

map f . filter p = map fst . filter snd . map (fork (f,p))

filter (p . g)
= map (invertg) . filter p . map g
reverse . concat
= concat . reverse . map reverse
filter p . concat = concat . map (filter p)

In the fifth equation assume
invertg
satisfies
invertg . g = id
. The function
fork
in the fourth equation is defined by

fork :: (a -> b,a -> c) -> a -> (b,c)

fork (f,g) x = (f x, g x)

Exercise K

Define
unzip
and
cross
by

unzip = fork (map fst, map snd)

cross (f,g) = fork (f . fst, g . snd)

What are the types of these functions?

Prove by simple equational reasoning that

cross (map f, map g) . unzip = unzip . map (cross (f,g))

You can use the functor laws of
map
and the following rules:

cross (f,g) . fork (h,k) = fork (f . h,g . k)

fork (f,g) . h
= fork (f . h,g . h)
fst . cross (f,g)
= f . fst

snd . cross (f,g)
= g . snd

Exercise L

Continuing from the previous exercise, prove that

cross (f,g) . cross (h,k) = cross (f . h,g . k)

We also have
cross (id,id) = id
(Why?). So it looks like
cross
has functorlike properties, except that it takes a pair of functions. Yes, it’s a
bifunctor
. That suggests a generalisation:

class Bifunctor p where

bimap :: (a -> b) -> (c -> d) -> p a c -> p b d

The arguments to
bimap
are given one by one rather than paired. Express
cross
in terms of
bimap
for the instance
Pair
of
Bifunctor
, where
type Pair a b = (a,b)

Now consider the data type

data Either a b = Left a | Right b

Construct the instance
Either
of
Bifunctor
.

4.10 Answers

Answer to Exercise A

Only the following three equations are true:

xs:[] = [xs]

[[]] ++ [xs] = [[],xs]

[xs] ++ [] = [xs]

If we defined
null
by
null = (==[])
, then its type would have to be the more restrictive
null :: (Eq a) => [a] -> Bool

That means you can only use an equality test on lists if the list elements can be compared for equality. Of course, the empty list contains no elements, so
(==)
is not needed.

Answer to Exercise B

No,
allPairs
produces the infinite list

allPairs = [(0,y) | y <- [0..]]

One alternative, which lists the pairs in ascending order of their sum, is

allPairs = [(x,d-x) | d <- [0..], x <- [0..d]]

Answer to Exercise C

The definition is

disjoint xs [] = True

disjoint [] ys = True

disjoint xs'@(x:xs) ys'@(y:ys)

| x < y
= disjoint xs ys'

| x == y = False

| x > y
= disjoint xs' ys

We used an as-pattern, just to be clever.

Answer to Exercise D

They deliver the same result only if
ys
is a finite list:
ghci> [1 | x <- [1,3], even x, y <- undefined]

[]

ghci> [1 | x <- [1,3], y <- undefined, even x]

*** Exception: Prelude.undefined

ghci> [1 | x <- [1,3], even x, y <- [1..]]

[]

Prelude> [1 | x <- [1,3], y <- [1..], even x]

{Interrupted}

When they do deliver the same result, the former is more efficient.

Answer to Exercise E

One way of generating essentially different quadruples is to restrict the quadruple (
a
,
b
,
c
,
d
) to values satisfying
a

b
and
c

d
and
a
<
c
. Hence

quads n = [(a,b,c,d) | a <- [1..n], b <- [a..n],

c <- [a+1..n],d <- [c..n],

a^3 + b^3 == c^3 + d^3]

The second such number is 4104 = 2
3
+ 16
3
= 9
3
+ 15
3
.

Answer to Exercise F

head :: List a -> a

head (Snoc Nil x) = x

head (Snoc xs x) = head xs

last :: List a -> a

last (Snoc xs x) = x

 

toList :: [a] -> List a

toList = convert . reverse

where convert []
= Nil

convert (x:xs) = Snoc (convert xs) x

fromList :: List a -> [a]

fromList = reverse . convert

where convert Nil
= []

convert (Snoc xs x) = x:convert xs

Answer to Exercise G

It requires a linear amount of space since the expression

1 + (1 + (1 + ... (1 + 0)))

is built up in memory. The space requirement for the second definition of length does not change under lazy evaluation since the expression
loop ((((0 + 1) + 1) + 1 ... +1),[])

is built up in memory. But under eager evaluation the length of a list can be computed using constant extra space.

Answer to Exercise H

take, drop :: Int -> [a] -> [a]

take n []
= []

take n (x:xs) = if n==0 then [] else x:take (n-1) xs

 

drop n []
= []

drop n (x:xs) = if n==0 then x:xs else drop (n-1) xs

With this definition of
take
we have

take undefined [] = [] take 0 undefined = undefined

With the alternative

take n xs | n==0 = []

| null xs = []

| otherwise = head xs: take (n-1) (tail xs)

we have

take undefined [] = undefined take 0 undefined = []

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