# Algorithm to find the duplicate numbers in an array ---Fastest Way

I need the fastest and simple algorithm which finds the duplicate numbers in an array, also should be able to know the number of duplicates.

Eg: if the array is `{2,3,4,5,2,4,6,2,4,7,3,8,2}`

I should be able to know that there are four 2's, two 3's and three 4's.

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More often than not, fastest algorithm won't be simple and simple ones won't be fast :( –  Amarghosh Dec 5 '09 at 9:42
The fastest algorithm is to write it yourself :-) –  Stephen C Dec 5 '09 at 9:51
What's the input specification? Small natural numbers? Any 32-bit unsigned numbers? Hundreds of those? Hundreds of milions? –  Tadeusz A. Kadłubowski Dec 5 '09 at 11:28

Make a hash table where the key is array item and value is counter how many times the corresponding array item has occurred in array. This is efficient way to do it, but probably not the fastest way.

Something like this (in pseudo code). You will find plenty of hash map implementations for C by googling.

`````` hash_map = create_new_hash_map()
for item in array {
if hash_map.contains_key(item){
counter = hash_map.get(item)
} else {
counter = 0
}
counter = counter + 1
hash_map.put(item, counter)
}
``````
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This can be solved elegantly using Linq:

``````public static void Main(string[] args)
{
List<int> list = new List<int> { 2, 3, 4, 5, 2, 4, 6, 2, 4, 7, 3, 8, 2 };

var grouping = list
.GroupBy(x => x)
.Select(x => new { Item = x.Key, Count = x.Count()});

foreach (var item in grouping)
Console.WriteLine("Item {0} has count {1}", item.Item, item.Count);
}
``````

Internally it probably uses hashing to partition the list, but the code hides the internal details - here we are only telling it what to calculate. The compiler / runtime is free to choose how to calculate it, and optimize as it sees fit. Thanks to Linq this same code will run efficiently whether run an a list in memory, or if the list is in a database. In real code you should use this, but I guess you want to know how internally it works.

A more imperative approach that demonstrates the actual algorithm is as follows:

``````    List<int> list = new List<int> { 2, 3, 4, 5, 2, 4, 6, 2, 4, 7, 3, 8, 2 };

Dictionary<int, int> counts = new Dictionary<int, int>();
foreach (int item in list)
{
if (!counts.ContainsKey(item))
{
counts[item] = 1;
}
else
{
counts[item]++;
}
}

foreach (KeyValuePair<int, int> item in counts)
Console.WriteLine("Item {0} has count {1}", item.Key, item.Value);
``````

Here you can see that we iterate over the list only once, keeping a count for each item we see on the way. This would be a bad idea if the items were in a database though, so for real code, prefer to use the Linq method.

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He says that he needs the algorithm in C –  the_drow Dec 5 '09 at 9:54
The question now says C as the language. –  cletus Dec 5 '09 at 9:55
OK thanks. C doesn't have Linq, so you must use the second method. –  Mark Byers Dec 5 '09 at 10:01
I will leave translating it to C as an exercise for the reader. :) –  Mark Byers Dec 5 '09 at 10:02

here's a C version that does it with standard input; it's as fast as the length of the input (beware, the number of parameters on the command line is limited...) but should give you an idea on how to proceed:

``````#include <stdio.h>

int main ( int argc, char **argv ) {
int dups[10] = { 0 };
int i;

for ( i = 1 ; i < argc ; i++ )
dups[atoi(argv[i])]++;

for ( i = 0 ; i < 10 ; i++ )
printf("%d: %d\n", i, dups[i]);

return 0;
}
``````

example usage:

``````    \$ gcc -o dups dups.c

\$ ./dups 0 0 3 4 5
0: 2
1: 0
2: 0
3: 1
4: 1
5: 1
6: 0
7: 0
8: 0
9: 0
``````

caveats:

• if you plan to count also the number of 10s, 11s, and so on -> the dups[] array must be bigger

• left as an exercise is to implement reading from an array of integers and to determine their position

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please don't post inherently unsafe example code as it will be read by people without much programming experience; the least you should do is parametrize the max value (eg `#define MAX_VALUE 10`) and check that the input is `>= 0` and `< MAX_VALUE` to avoid buffer overflows; for example code, a simple `assert()` would be enough; using `strtoul()` to properly validate the user input would be a bonus –  Christoph Dec 5 '09 at 10:26
@Christoph, my intent was to have him do the checks as long as think how to count beyond 10 different elements. The exercise smells too much of homework to give a full-featured solution. –  lorenzog Dec 5 '09 at 11:01

If you know the lower and upper bounds, and they are not too far apart, this would be a good place to use a Radix Sort. Since this smells of homework, I'm leaving it to the OP to read the article and implement the algorithm.

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The more you tell us about the input arrays the faster we can make the algorithm. For example, for your example of single-digit numbers then creating an array of 10 elements (indexed 0:9) and accumulating number of occurrences of number in the right element of the array (poorly worded explanation but you probably catch my drift) is likely to be faster than hashing. (I say likely to be faster because I haven't done any measurements and won't).

I agree with most respondents that hashing is probably the right approach for the most general case, but it's always worth thinking about whether yours is a special case.

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If you don't want to use hash table or smtg like that, just sort the array then count the number of occurrences, something like below should work

``````	Arrays.sort(array);
lastOne=array's first element;
count=0,
for(i=0; i <array's length; i++)
{
if(array[i]==lastOne)
increment count
else
print(array[i] + " has " + count + " occurrences");
lastOne=array[i+1];
}
``````
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+1 for a simple idea that in the case you can modify the array does not need a lot more memory when elements don't repeat frequently like we have with the hashmap approach. –  RnR Dec 5 '09 at 10:40

If the range of the numbers is known and small, you could use an array to keep track of how many times you've seen each (this is a bucket sort in essence). IF it's big you can sort it and then count duplicates as they will be following each other.

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You can use hash tables to store each element value as a key. Then increment +1 each time a key already exists.

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Using hash tables / associative arrays / dictionaries (all the same thing but the terminology changes between programming environments) is the way to go.

As an example in python:

``````numberList = [1, 2, 3, 2, 1, ...]
countDict = {}
for value in numberList:
countDict[value] = countDict.get(value, 0) + 1

# Now countDict contains each value pointing to their count
``````

Similar constructions exist in most programming languages.

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`> I need the fastest and simple algorithm which finds the duplicate numbers in an array, also should be able to know the number of duplicates.`

I think the fastest algorithm is counting the duplicates in an array:

``````#include <stdlib.h>
#include <stdio.h>
#include <limits.h>
#include <assert.h>

typedef int arr_t;
typedef unsigned char dup_t;
const dup_t dup_t_max=UCHAR_MAX;

dup_t *count_duplicates( arr_t *arr, arr_t min, arr_t max, size_t arr_len ){
assert( min <= max );
dup_t *dup = calloc( max-min+1, sizeof(dup[0]) );
for( size_t i=0; i<arr_len; i++ ){
assert( min <= arr[i] && arr[i] <= max && dup[ arr[i]-min ] < dup_t_max );
dup[ arr[i]-min ]++;
}
return dup;
}

int main(void){
arr_t arr[] = {2,3,4,5,2,4,6,2,4,7,3,8,2};
size_t arr_len = sizeof(arr)/sizeof(arr[0]);
arr_t min=0, max=16;
dup_t *dup = count_duplicates( arr, min, max, arr_len );
printf( "  value count\n" );
printf( "  -----------\n" );
for( size_t i=0; i<(size_t)(max-min+1); i++ ){
if( dup[i] ){
printf( "%5i %5i\n", (int)(i+min), (int)(dup[i]) );
}
}
free(dup);
}``````

Note: You can not use the fastest algorithm on every array.

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The code first sorts the array and then moves unique elements to the front, keeping track of the number of elements. It's slower than using bucket sort, but more convenient.

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

static int cmpi(const void *p1, const void *p2)
{
int i1 = *(const int *)p1;
int i2 = *(const int *)p2;
return (i1 > i2) - (i1 < i2);
}

size_t make_unique(int values[], size_t count, size_t *occ_nums)
{
if(!count) return 0;

qsort(values, count, sizeof *values, cmpi);

size_t top = 0;
int prev_value = values[0];
if(occ_nums) occ_nums[0] = 1;

size_t i = 1;
for(; i < count; ++i)
{
if(values[i] != prev_value)
{
++top;
values[top] = prev_value = values[i];
if(occ_nums) occ_nums[top] = 1;
}
else ++occ_nums[top];
}

}

int main(void)
{
int values[] = { 2, 3, 4, 5, 2, 4, 6, 2, 4, 7, 3, 8, 2 };

size_t occ_nums[sizeof values / sizeof *values];
size_t unique_count = make_unique(
values, sizeof values / sizeof *values, occ_nums);

size_t i = 0;
for(; i < unique_count; ++i)
{
printf("number %i occurred %u time%s\n",
values[i], (unsigned)occ_nums[i], occ_nums[i] > 1 ? "s": "");
}
}
``````
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option 1: hash it. option 2: sort it and then count consecutive runs.

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There is an "algorithm" that I use all the time to find duplicate lines in a file in Unix:

``````sort file | uniq -d
``````

If you implement the same strategy in C, then it is very difficult to beat it with a fancier strategy such as hash tables. Call a sorting algorithm, and then call your own function to detect duplicates in the sorted list. The sorting algorithm takes O(n*log(n)) time and the uniq function takes linear time. (Southern Hospitality makes a similar point, but I want to emphasize that what he calls "option 2" seems both simpler and faster than the more popular hash tables suggestion.)

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Counting sort is the answer to the above question.If you see the algorithm for counting sort you will find that there is an array that is kept for keeping the count of an element i present in the original array.

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Here is another solution but it takes O(nlogn) time. Use Divide and Conquer approach to sort the given array using merge sort. During combine step in merge sort, find the duplicates by comparing the elements in the two sorted sub-arrays.

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