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I found a piece of code that I was writing for interview prep few months ago.

According to the comment I had, it was trying to solve this problem:

Given some dollar value in cents (e.g. 200 = 2 dollars, 1000 = 10 dollars), find all the combinations of coins that make up the dollar value. There are only penny, nickel, dime, and quarter. (quarter = 25 cents, dime = 10 cents, nickel = 5 cents, penny = 1 cent)

For example, if 100 was given, the answer should be...
4 quarter(s) 0 dime(s) 0 nickel(s) 0 pennies
3 quarter(s) 1 dime(s) 0 nickel(s) 15 pennies
etc.

This can be solved in both iterative and recursive ways, I believe. My recursive solution is quite buggy, and I was wondering how other people would solve this problem. The difficult part of this problem was making it as efficient as possible.

UPDATE
Making this thread into a community wiki, because apparently, we have gathered many different implementations :)

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3  
I'm not an USA citizen, so... can you say to use what is a quarter, a dime, a nickel and a penny? – akappa Jul 9 at 23:27
1  
@akappa: penny = 1 cent; nickel = 5 cents; dime = 10 cents; quarter = 25 cents :) – bLee Jul 9 at 23:29
1 dollar == 4 quarters == 10 dimes == 20 nickels == 100 cents – George Phillips Jul 9 at 23:30
Can we turn this into a code golf please? This would be VERY insteresting :) – John T Jul 9 at 23:34
@John T: code golf? I've never heard of that term! Anyway, I'm hoping to see some interesting answers, since SO community can solve any problem – bLee Jul 9 at 23:40
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10 Answers

vote up 0 vote down

This blog entry of mine solves this knapsack like problem for the figures from an XKCD comic. A simple change to the items dict and the exactcost value will yield all solutions for your problem too.

If the problem were to find the change that used the least cost, then a naive greedy algorithm that used as much of the highest value coin might well fail for some combinations of coins and target amount. For example if there are coins with values 1, 3, and 4; and the target amount is 6 then the greedy algorithm might suggest three coins of value 4, 1, and 1 when it is easy to see that you could use two coins each of value 3.

  • Paddy.
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vote up 0 vote down

This is very similar to Project Euler Problem #31. Check out the answer forum (visible once you supply the correct answer) for other interesting solutions.

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vote up 8 vote down

I looked into this once a long time ago, and you can read my little write-up on it.

By using generating functions, you can get a closed-form constant-time solution to the problem. Graham, Knuth, and Patashnik’s Concrete Mathematics is the book for this, and contains a fairly extensive discussion of the problem. Essentially you define a polynomial where the nth coefficient is the number of ways of making change for n dollars.

Pages 4-5 of the writeup show how you can use Mathematica (or any other convenient computer algebra system) to compute the answer for 10^10^6 dollars in a couple seconds in three lines of code.

(And this was long enough ago that that’s a couple of seconds on a 75Mhz Pentium...)

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+1: Wonderful answer :) – akappa Jul 10 at 13:39
Good answer, but minor quibbles: note that (1) This gives the number of ways, while for some reason the question asks for the actual set of all ways. Of course, there can be no way of finding the set in polynomial time, since the output itself has superpolynomially many entries (2) It is debatable whether a generating function is a "closed form" (see Herbert Wilf's wonderful book *Generatingfunctionology*: math.upenn.edu/~wilf/DownldGF.html) and if you mean an expression like (1+√5)^n, it takes Ω(log n) time to compute, not constant time. – ShreevatsaR Jul 10 at 18:33
vote up 0 vote down

Duh, I feel stupid right now. Below there is an overly complicated solution, which I'll preserve because it is a solution, after all. A simple solution would be this:

// Generate a pretty string
val coinNames = List(("quarter", "quarters"), 
                     ("dime", "dimes"), 
                     ("nickel", "nickels"), 
                     ("penny", "pennies"))
def coinsString = 
  Function.tupled((quarters: Int, dimes: Int, nickels:Int, pennies: Int) => (
    List(quarters, dimes, nickels, pennies) 
    zip coinNames // join with names
    map (t => (if (t._1 != 1) (t._1, t._2._2) else (t._1, t._2._1))) // correct for number
    map (t => t._1 + " " + t._2) // qty name
    mkString " "
  ))

def allCombinations(amount: Int) = 
 (for{quarters <- 0 to (amount / 25)
      dimes <- 0 to ((amount - 25*quarters) / 10)
      nickels <- 0 to ((amount - 25*quarters - 10*dimes) / 5)
  } yield (quarters, dimes, nickels, amount - 25*quarters - 10*dimes - 5*nickels)
 ) map coinsString mkString "\n"

Here is the other solution. This solution is based on the observation that each coin is a multiple of the others, so they can be represented in terms of them.

// Just to make things a bit more readable, as these routines will access
// arrays a lot
val coinValues = List(25, 10, 5, 1)
val coinNames = List(("quarter", "quarters"), 
                     ("dime", "dimes"), 
                     ("nickel", "nickels"), 
                     ("penny", "pennies"))
val List(quarter, dime, nickel, penny) = coinValues.indices.toList


// Find the combination that uses the least amount of coins
def leastCoins(amount: Int): Array[Int] =
  ((List(amount) /: coinValues) {(list, coinValue) =>
    val currentAmount = list.head
    val numberOfCoins = currentAmount / coinValue
    val remainingAmount = currentAmount % coinValue
    remainingAmount :: numberOfCoins :: list.tail
  }).tail.reverse.toArray

// Helper function. Adjust a certain amount of coins by
// adding or subtracting coins of each type; this could
// be made to receive a list of adjustments, but for so
// few types of coins, it's not worth it.
def adjust(base: Array[Int], 
           quarters: Int, 
           dimes: Int, 
           nickels: Int, 
           pennies: Int): Array[Int] =
  Array(base(quarter) + quarters, 
        base(dime) + dimes, 
        base(nickel) + nickels, 
        base(penny) + pennies)

// We decrease the amount of quarters by one this way
def decreaseQuarter(base: Array[Int]): Array[Int] =
  adjust(base, -1, +2, +1, 0)

// Dimes are decreased this way
def decreaseDime(base: Array[Int]): Array[Int] =
  adjust(base, 0, -1, +2, 0)

// And here is how we decrease Nickels
def decreaseNickel(base: Array[Int]): Array[Int] =
  adjust(base, 0, 0, -1, +5)

// This will help us find the proper decrease function
val decrease = Map(quarter -> decreaseQuarter _,
                   dime -> decreaseDime _,
                   nickel -> decreaseNickel _)

// Given a base amount of coins of each type, and the type of coin,
// we'll produce a list of coin amounts for each quantity of that particular
// coin type, up to the "base" amount
def coinSpan(base: Array[Int], whichCoin: Int) = 
  (List(base) /: (0 until base(whichCoin)).toList) { (list, _) =>
    decrease(whichCoin)(list.head) :: list
  }

// Generate a pretty string
def coinsString(base: Array[Int]) = (
  base 
  zip coinNames // join with names
  map (t => (if (t._1 != 1) (t._1, t._2._2) else (t._1, t._2._1))) // correct for number
  map (t => t._1 + " " + t._2)
  mkString " "
)

// So, get a base amount, compute a list for all quarters variations of that base,
// then, for each combination, compute all variations of dimes, and then repeat
// for all variations of nickels.
def allCombinations(amount: Int) = {
  val base = leastCoins(amount)
  val allQuarters = coinSpan(base, quarter)
  val allDimes = allQuarters flatMap (base => coinSpan(base, dime))
  val allNickels = allDimes flatMap (base => coinSpan(base, nickel))
  allNickels map coinsString mkString "\n"
}

So, for 37 coins, for example:

scala> println(allCombinations(37))
0 quarter 0 dimes 0 nickels 37 pennies
0 quarter 0 dimes 1 nickel 32 pennies
0 quarter 0 dimes 2 nickels 27 pennies
0 quarter 0 dimes 3 nickels 22 pennies
0 quarter 0 dimes 4 nickels 17 pennies
0 quarter 0 dimes 5 nickels 12 pennies
0 quarter 0 dimes 6 nickels 7 pennies
0 quarter 0 dimes 7 nickels 2 pennies
0 quarter 1 dime 0 nickels 27 pennies
0 quarter 1 dime 1 nickel 22 pennies
0 quarter 1 dime 2 nickels 17 pennies
0 quarter 1 dime 3 nickels 12 pennies
0 quarter 1 dime 4 nickels 7 pennies
0 quarter 1 dime 5 nickels 2 pennies
0 quarter 2 dimes 0 nickels 17 pennies
0 quarter 2 dimes 1 nickel 12 pennies
0 quarter 2 dimes 2 nickels 7 pennies
0 quarter 2 dimes 3 nickels 2 pennies
0 quarter 3 dimes 0 nickels 7 pennies
0 quarter 3 dimes 1 nickel 2 pennies
1 quarter 0 dimes 0 nickels 12 pennies
1 quarter 0 dimes 1 nickel 7 pennies
1 quarter 0 dimes 2 nickels 2 pennies
1 quarter 1 dime 0 nickels 2 pennies
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vote up 2 vote down

If the currency system allows it, a simple greedy algorithm that takes as many of each coin as possible, starting with the highest value currency.

Otherwise, dynamic programming is required to find an optimal solution quickly since this problem is essentially the knapsack problem.

For example, if a currency system has the coins: {13, 8, 1}, the greedy solution would make change for 24 as {13, 8, 1, 1, 1}, but the true optimal solution is {8, 8, 8}

Edit: I thought we were making change optimally, not listing all the ways to make change for a dollar. My recent interview asked how to make change so I jumped ahead before finishing to read the question.

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the problem is not necessarily for one dollar -- it could 2 or 23, so your solution is still the only correct one. – Neil G Jul 10 at 4:20
(for the general case) – Neil G Jul 10 at 4:21
vote up 1 vote down

Here's some absolutely straightforward C++ code to solve the problem which did ask for all the combinations to be shown.

#include <stdio.h>
#include <stdlib.h>

int main(int argc, char *argv[])
{
    if (argc != 2)
    {
    	printf("usage: change amount-in-cents\n");
    	return 1;
    }

    int total = atoi(argv[1]);

    printf("quarter\tdime\tnickle\tpenny\tto make %d\n", total);

    int combos = 0;

    for (int q = 0; q <= total / 25; q++)
    {
    	int total_less_q = total - q * 25;
    	for (int d = 0; d <= total_less_q / 10; d++)
    	{
    		int total_less_q_d = total_less_q - d * 10;
    		for (int n = 0; n <= total_less_q_d / 5; n++)
    		{
    			int p = total_less_q_d - n * 5;
    			printf("%d\t%d\t%d\t%d\n", q, d, n, p);
    			combos++;
    		}
    	}
    }

    printf("%d combinations\n", combos);

    return 0;
}

But I'm quite intrigued about the sub problem of just calculating the number of combinations. I suspect there's a closed-form equation for it.

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vote up 1 vote down

semi-hack to get around the unique combination problem - force descending order:

$denoms = [1,5,10,25]
def all_combs(sum,last) 
  return 1 if sum == 0
  return $denoms.select{|d| d &le sum && d &le last}.inject(0) {|total,denom|
           total+all_combs(sum-denom,denom)}
end

This will run slow since it won't be memoized, but you get the idea.

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vote up 3 vote down

I would favor a recursive solution. You have some list of denominations, if the smallest one can evenly divide any remaining currency amount, this should work fine.

Basically, you move from largest to smallest denominations.
Recursively,

  1. You have a current total to fill, and a largest denomination (with more than 1 left). If there is only 1 denomination left, there is only one way to fill the total. You can use 0 to k copies of your current denomination such that k * cur denomination <= total.
  2. For 0 to k, call the function with the modified total and new largest denomination.
  3. Add up the results from 0 to k. That's how many ways you can fill your total from the current denomination on down. Return this number.

Here's my python version of your stated problem, for 200 cents. I get 1463 ways. This version prints all the combinations and the final count total.

#!/usr/bin/python

# find the number of ways to reach a total with the given number of combinations

cents = 200
denominations = [25, 10, 5, 1]
names = {25: "quarter(s)", 10: "dime(s)", 5 : "nickel(s)", 1 : "pennies"}

def count_combs(left, i, comb, add):
    if add: comb.append(add)
    if left == 0 or (i+1) == len(denominations):
        if (i+1) == len(denominations) and left > 0:
            comb.append( (left, denominations[i]) )
            i += 1
        while i < len(denominations):
            comb.append( (0, denominations[i]) )
            i += 1
        print " ".join("%d %s" % (n,names[c]) for (n,c) in comb)
        return 1
    cur = denominations[i]
    return sum(count_combs(left-x*cur, i+1, comb[:], (x,cur)) for x in range(0, int(left/cur)+1))

print count_combs(cents, 0, [], None)
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Haven't ran it, but by going through your logic, it makes sense :) – bLee Jul 9 at 23:48
You can replace the last two lines of the function with "return sum(count_combs(...) for ...)" - that way the list doesn't get materialized at all. :) – Nick Johnson Jul 10 at 9:24
Thanks for the tip. I'm always interested in ways to tighten up code. – leif Jul 10 at 13:33
vote up 3 vote down

Let C(i,J) the set of combinations of making i cents using the values in the set J.

You can define C as that:

alt text

(first(J) takes in a deterministic way an element of a set)

It turns out a pretty recursive function... and reasonably efficient if you use memoization ;)

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Yeah, this ("dynamic programming", in a sense) is going to be the optimal solution. – ShreevatsaR Jul 9 at 23:38
What does first() do? Sorry, I'm trying to recall my math/logic notations.... – bLee Jul 9 at 23:51
you're right: take J as a list and not as a set: then first(J) brings to you the first element and J \ first(J) gives to you the rest of the list. – akappa Jul 9 at 23:52
vote up 0 vote down

Both: iterate through all denominations from high to low, take one of denomination, subtract from requried total, then recurse on remainder (constraining avilable denominations to be equal or lower to current iteration value.)

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