# How to find all permutations of a given word in a given text?

This is an interview question (phone screen): write a function (in Java) to find all permutations of a given word that appear in a given text. For example, for word `abc` and text `abcxyaxbcayxycab` the function should return `abc, bca, cab`.

I would answer this question as follows:

• Obviously I can loop over all permutations of the given word and use a standard `substring` function. However it might be difficult (for me right now) to write code to generate all word permutations.

• It is easier to loop over all text substrings of the word size, sort each substring and compare it with the "sorted" given word. I can code such a function immediately.

• I can probably modify some substring search algorithm but I do not remember these algorithms now.

How would you answer this question?

This is probably not the most efficient solution algorithmically, but it is clean from a class design point of view. This solution takes the approach of comparing "sorted" given words.

We can say that a word is a permutation of another if it contains the same letters in the same number. This means that you can convert the word from a `String` to a `Map<Character,Integer>`. Such conversion will have complexity O(n) where n is the length of the `String`, assuming that insertions in your `Map` implementation cost O(1).

The `Map` will contain as keys all the characters found in the word and as values the frequencies of the characters.

Example. abbc is converted to `[a->1, b->2, c->1]`

bacb is converted to `[a->1, b->2, c->1]`

So if you have to know if two words are one the permutation of the other, you can convert them both into maps and then invoke `Map.equals`.

Then you have to iterate over the text string and apply the transformation to all the substrings of the same length of the words that you are looking for.

Improvement proposed by Inerdial

This approach can be improved by updating the Map in a "rolling" fashion.

I.e. if you're matching at index `i=3` in the example haystack in the OP (the substring `xya`), the map will be `[a->1, x->1, y->1]`. When advancing in the haystack, decrement the character count for `haystack[i]`, and increment the count for `haystack[i+needle.length()]`.

(Dropping zeroes to make sure `Map.equals()` works, or just implementing a custom comparison.)

Improvement proposed by Max

What if we also introduce `matchedCharactersCnt` variable? At the beginning of the haystack it will be `0`. Every time you change your map towards the desired value - you increment the variable. Every time you change it away from the desired value - you decrement the variable. Each iteration you check if the variable is equal to the length of needle. If it is - you've found a match. It would be faster than comparing the full map every time.

Pseudocode provided by Max:

``````needle = "abbc"
text = "abbcbbabbcaabbca"

needleSize = needle.length()
//Map of needle character counts
targetMap = [a->1, b->2, c->1]

matchedLength = 0
curMap = [a->0, b->0, c->0]
//Initial map initialization
for (int i=0;i<needle.length();i++) {
if (curMap.contains(haystack[i])) {
matchedLength++
curMap[haystack[i]]++
}
}

if (matchedLength == needleSize) {
System.out.println("Match found at: 0");
}

//Search itself
for (int i=0;i<haystack.length()-needle.length();i++) {
int targetValue1 = targetMap[haystack[i]]; //Reading from hashmap, O(1)
int curValue1 = curMap[haystack[i]]; //Another read
//If we are removing beneficial character
if (targetValue1 > 0 && curValue1 > 0 && curValue1 <= targetValue1) {
matchedLength--;
}
curMap[haystack[i]] = curValue1 + 1; //Write to hashmap, O(1)

//We are adding a beneficial character
if (targetValue2 > 0 && curValue2 < targetValue2) { //If we don't need this letter at all, the amount of matched letters decreases
matchedLength++;
}
curMap[haystack[i+needle.length()]] = curValue2 + 1; //Write

if (matchedLength == needleSize) {
System.out.println("Match found at: "+(i+1));
}
}

//Basically with 4 reads and 2 writes which are
//independent of the size of the needle,
//we get to the maximal possible performance: O(n)
``````
• this answer seems incomplete. You say how you are going to canonicalize the word, but say nothing about finding permutations in the text. Would you be using the same idea as the posters 2nd? May 23, 2012 at 20:58
• When combined with the OP's second idea, this approach can be improved by updating the Map in a "rolling" fashion. I.e. if you're matching at index `i=3` in the example haystack in the OP (the substring `xya`), the map will be `[a->1, x->1, y->1]`. When advancing in the haystack, decrement the character count for `haystack[i]`, and increment the count for `haystack[i+needle.length()]`. (Dropping zeroes to make sure `Map.equals()` works, or just implementing a custom comparison.) May 23, 2012 at 21:02
• @Inerdial your improvement is really elegant! Congrats!! May 23, 2012 at 21:05
• @ColinD You are ritht. I have updated my answer. If you think it is still incomplete, feel free to edit it. :) May 23, 2012 at 21:06
• What if we also introduce `matchedCharactersCnt` variable? At the beginning of the haystack it will be 0. Every time you change your map towards the desired value - you increment the variable. Every time you change it away from the desired value - you decrement the variable. Each iteration you check if the variable == length of needle. If it is - you've found a match. It would be faster than comparing the full map every time. May 23, 2012 at 21:25

To find a permutation of a string you can use number theory. But you will have to know the 'theory' behind this algorithm in advance before you can answer the question using this algorithm.

There is a method where you can calculate a hash of a string using prime numbers. Every permutation of the same string will give the same hash value. All other string combination which is not a permutation will give some other hash value.

The hash-value is calculated by c1 * p1 + c2 * p2 + ... + cn * pn where ci is a unique value for the current char in the string and where pi is a unique prime number value for the ci char.

Here is the implementation.

``````public class Main {
static int[] primes = new int[] { 2, 3, 5, 7, 11, 13, 17,
19, 23, 29, 31, 37, 41, 43, 47, 53, 59, 61, 67, 71,
73, 79, 83, 89, 97, 101, 103 };

public static void main(String[] args) {
final char[] text = "abcxaaabbbccyaxbcayaaaxycab"
.toCharArray();
char[] abc = new char[]{'a','b','c'};
int match = val(abc);
for (int i = 0; i < text.length - 2; i++) {
char[] _123 = new char[]{text[i],text[i+1],text[i+2]};
if(val(_123)==match){
System.out.println(new String(_123) );
}
}
}
static int p(char c) {
return primes[(int)c - (int)'a'];
}
static int val(char[] cs) {
return
p(cs)*(int)cs + p(cs)*(int)cs + p(cs)*(int)cs;
}
}
``````

The output of this is: abc bca cab

• This is not correct. The correct way to calculate such a hash would be to use p(cs) * p(cs) * p(cs). It's ok for small strings, for big ones, however, you will have to use BigInteger for the hash, so it has a limited applicability. Oct 14, 2018 at 3:43

You should be able to do this in a single pass. Start by building a map that contains all the characters in the word you're searching for. So initially the map contains `[a, b, c]`.

Now, go through the text one character at a time. The loop looks something like this, in pseudo-code.

``````found_string = "";
for each character in text
if character is in map
remove character from map
append character to found_string
if map is empty
output found_string
found_string = ""
add all characters back to map
end if
else
// not a permutation of the string you're searching for
refresh map with characters from found_string
found_string = ""
end if
end for
``````

If you want unique occurrences, change the output step so that it adds the found strings to a map. That'll eliminate duplicates.

There's the issue of words that contain duplicated letters. If that's a problem, make the key the letter and the value a count. 'Removing' a character means decrementing its count in the map. If the count goes to 0, then the character is in effect removed from the map.

The algorithm as written won't find overlapping occurrences. That is, given the text `abcba`, it will only find `abc`. If you want to handle overlapping occurrences, you can modify the algorithm so that when it finds a match, it decrements the index by one minus the length of the found string.

That was a fun puzzle. Thanks.

• Agree: a fun puzzle. I just note that the code in my answer is affected by a the duplicated letters problem. I'll edit my code inspired from your answer. May 23, 2012 at 22:20

This is what I would do - set up a flag array with one element equal to 0 or 1 to indicate whether that character in STR had been matched

Set the first result string RESULT to empty.

for each character C in TEXT:

Set an array X equal to the length of STR to all zeroes.

for each character S in STR: If C is the JTH character in STR, and X[J] == 0, then set X[J] <= 1 and add C to RESULT. If the length of RESULT is equal to STR, add RESULT to a list of permutations and set the elements of X[] to zeroes again.

If C is not any character J in STR having X[J]==0, then set the elements of X[] to zeroes again.

The second approach seems very elegant to me and should be perfectly acceptable. I think it scales at `O(M * N log N)`, where `N` is word length and `M` is text length.

I can come up with a somewhat more complex `O(M)` algorithm:

1. Count the occurrence of each character in the word
2. Do the same for the first N (i.e. `length(word)`) characters of the text
3. Subtract the two frequency vectors, yielding `subFreq`
4. Count the number of non-zeroes in `subFreq`, yielding `numDiff`
5. If `numDiff` equals zero, there is a match
6. Update `subFreq` and `numDiff` in constant time by updating for the first and after-last character in the text
7. Go to 5 until reaching the end of the text

EDIT: See that several similar answers have been posted. Most of this algorithm is equivalent to the rolling frequency counting suggested by others. My humble addition is also updating the number of differences in a rolling fashion, yielding an `O(M+N)` algorithm rather than an `O(M*N)` one.

EDIT2: Just saw that Max has basically suggested this in the comments, so brownie points to him.

• O(M+N) is a huge improvement over O(M*N) :)
– Chip
May 23, 2012 at 22:01
• I'm not sure why is your algorithm `O(M+N)`, are you assuming that reading and writing into Map is `O(N)`? I believe your algorithm is `O(M)`. For a proper Map implementation (suiting this task) reading/writing would be `O(1)`. May 23, 2012 at 22:12
• @Max its actually O(M) since N < M. I'm sure you thought N was the text size :) I did too.
– Chip
May 23, 2012 at 22:14
• @Chip yes, sorry, I thought N is length of haystack. Fixed my comment. May 23, 2012 at 22:15
• Steps 1-4 are `O(N)` and steps 5-7 are `O(M)`, yielding `O(M+N)` for the entire algorithm. (darn mixed them up myself too) May 23, 2012 at 22:15

This code should do the work:

``````import java.util.ArrayList;
import java.util.List;

public class Permutations {
public static void main(String[] args) {
final String word = "abc";
final String text = "abcxaaabbbccyaxbcayxycab";
List<Character> charsActuallyFound = new ArrayList<Character>();
StringBuilder match = new StringBuilder(3);

for (Character c : text.toCharArray()) {
if (word.contains(c.toString()) && !charsActuallyFound.contains(c)) {
match.append(c);
if (match.length()==word.length())
{
System.out.println(match);
match = new StringBuilder(3);
charsActuallyFound.clear();
}
} else {
match = new StringBuilder(3);
charsActuallyFound.clear();
}
}
}
}
``````

The charsActuallyFound List is used to keep track of character already found in the loop. It is needed to avoid mathing "aaa" "bbb" "ccc" (added by me to the text you specified).

After further reflection, I think my code only work if the given word has no duplicate characters. The code above correctly print

``````abc
bca
cab
``````

but if you seaarch for the word "aaa", then nothing is printed, because each char can not be matched more than one time. Inspired from Jim Mischel answer, I edit my code, ending with this:

``````import java.util.ArrayList;
import java.util.List;

public class Permutations {
public static void main(String[] args) {
final String text = "abcxaaabbbccyaxbcayaaaxycab";

printMatches("aaa", text);
printMatches("abc", text);
}

private static void printMatches(String word, String text) {
System.out.println("matches for "+word +" in "+text+":");

StringBuilder match = new StringBuilder(3);
StringBuilder notYetFounds=new StringBuilder(word);

for (Character c : text.toCharArray()) {
int idx = notYetFounds.indexOf(c.toString());
if (idx!=-1) {
notYetFounds.replace(idx,idx+1,"");

match.append(c);
if (match.length()==word.length())
{
System.out.println(match);
match = new StringBuilder(3);
notYetFounds=new StringBuilder(word);
}
} else {
match = new StringBuilder(3);
notYetFounds=new StringBuilder(word);
}
}
System.out.println();
}

}
``````

This give me following output:

``````matches for aaa in abcxaaabbbccyaxbcayaaaxycab:
aaa
aaa

matches for abc in abcxaaabbbccyaxbcayaaaxycab:
abc
bca
cab
``````

Did some benchmark, the code above found 30815 matches of "abc" in a random string of 36M in just 4,5 seconds. As Jim already said, thanks for this puzzle...

• 1. Map would yield MUCH more performance. This part in your code `notYetFounds.indexOf(c.toString());` makes whole algorithm to be a whooping `O(needle.length()*haystack.length())` complexity, as `indexOf` complexity in your case is basically `O(needle.length())`. However reading/writing into a map is `O(1)` complexity. Therefore, algorithms that use Map result in `O(haystack.length())` complexity which is a magnitude faster (especially for huge needles). May 24, 2012 at 5:00
• 2. Your algorithm can't handle overlapping needles, and I don't see a way to modify it so it would handle them. For example: `haystack="abcba"` and `needle="abc"` would result in two matches: `[abc]ba` and `ab[cba]`, while your algorithm produces only first match (and then resets the buffers). May 24, 2012 at 5:04
• Yes, I saw. if needle increase in length the code will start start to perform slowly. I'll try to code another version with maps. Oh and no, overlapping words are not matched by my code... May 24, 2012 at 6:41
• Max: I did some other test. The performance of my code is not linear on needle.length(). While with a needle of 3 chars it took 453 ms, with one of 405 chars it took 2515 ms. Using freq maps is faster than using StringBuilder when needle.legth > ~ 140. I'll edit my answer to include the source code of the map version. May 24, 2012 at 7:35
• Mmh, I was totally wrong: the code using frequency map is ALWAYS fast than that using string builder. Both version performance are slowed by the fact that i was rebuilding the builder (or the map) for every character, even if they are untouched! Changes this make both version faster, and the frequency map code is now performing better for eahc leght of searched word. May 24, 2012 at 8:37