# How to find smallest substring which contains all characters from a given string?

I have recently come across an interesting question on strings. Suppose you are given following:

``````Input string1: "this is a test string"
Input string2: "tist"
Output string: "t stri"
``````

So, given above, how can I approach towards finding smallest substring of string1 that contains all the characters from string 2?

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Should string2 be rist or tisr? And in that case wouldn't the output be "st str"? –  Dark Castle Mar 17 '10 at 3:07
@kennygrimm, string2 is given as "tist" and that it should be. If you say "rist" or "tisr" than your answer "st str" doesn't contain "i". –  mag Mar 17 '10 at 3:13
Oh I see, I thought that the 'r' was wrong since it wasn't in string2 but you're saying it must contain all of string2 but could also contain other letters... –  Dark Castle Mar 17 '10 at 3:18
@kennygrimm, yes, exactly! –  mag Mar 17 '10 at 3:21
do duplicates in `string2` need to be accounted for as well? cause otherwise the shortest substring having `tist` in `string1` is `this` or `stri` –  Anurag Mar 17 '10 at 6:14

You can do a histogram sweep in `O(N+M)` time and `O(1)` space where `N` is the number of characters in the first string and `M` is the number of characters in the second.

It works like this:

• Make a histogram of the second string's characters (key operation is `hist2[ s2[i] ]++`).
• Make a cumulative histogram of the first string's characters until that histogram contains every character that the second string's histogram contains (which I will call "the histogram condition").
• Then move forwards on the first string, subtracting from the histogram, until it fails to meet the histogram condition. Mark that bit of the first string (before the final move) as your tentative substring.
• Move the front of the substring forwards again until you meet the histogram condition again. Move the end forwards until it fails again. If this is a shorter substring than the first, mark that as your tentative substring.
• Repeat until you've passed through the entire first string.

Note that by varying the check you use on the histogram condition, you can choose either to have the same set of characters as the second string, or at least as many characters of each type. (Its just the difference between `a[i]>0 && b[i]>0` and `a[i]>=b[i]`.)

You can speed up the histogram checks if you keep a track of which condition is not satisfied when you're trying to satisfy it, and checking only the thing that you decrement when you're trying to break it. (On the initial buildup, you count how many items you've satisfied, and increment that count every time you add a new character that takes the condition from false to true.)

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+1: This is much more readable than python. Would be nice if you included a proof/explanation of why it works too. –  Aryabhatta Mar 17 '10 at 14:43
@Rex Kerr: I fail to see how that is O(1) space. Will your histograms not take up O(N+M) space if all character are unique (worst case)? –  Mads Ravn Mar 17 '10 at 15:59
O(M) space can be done (rather than O(N+M)), as you don't really need to concern yourself with characters not present is s2. I agree though, that the space usage is O(1) seems incorrect and does not seem to match the description. –  Aryabhatta Mar 17 '10 at 17:16
You can always bound the space required by the size of the character set. Since the character set is a constant size, it's called `O(1)`. The constant may, however, be large (larger than `M`). Big-O notation is useful for knowing what will happen when your strings get really large, not really small. For bytes, "O(1)" is a bit over 256. (P.S.--I'm afraid I don't have time to write a sufficiently detailed proof of time taken; just note that you have one pass through `M` to build the first histogram and then the head and tail of the substring pass at most once through `N`.) –  Rex Kerr Mar 17 '10 at 17:55
@Moron: You are completely right. I was just following the steps of the algorithm and did not take this (simple) optimization into account. @Rex Kerr: From a theoretical standpoint I believe you are wrong. If you allocate a constant amount of memory I can chose M large enough that your counters overflow, so we would need at least O(log_2(M)) space. In a more pragmatic use of the notation I would also consider O(1) to be a bit misleading as one usually associates this with a small fixed amount of memory. Can we settle for O(min(charset size, M)) :) –  Mads Ravn Mar 18 '10 at 11:45

To see more details including working code, check my blog post at:

http://www.leetcode.com/2010/11/finding-minimum-window-in-s-which.html

To help illustrate this approach, I use an example: string1 = `"acbbaca"` and string2 = `"aba"`. Here, we also use the term "window", which means a contiguous block of characters from string1 (could be interchanged with the term substring).

i) string1 = "acbbaca" and string2 = "aba".

ii) The first minimum window is found. Notice that we cannot advance begin pointer as hasFound['a'] == needToFind['a'] == 2. Advancing would mean breaking the constraint.

iii) The second window is found. begin pointer still points to the first element 'a'. hasFound['a'] (3) is greater than needToFind['a'] (2). We decrement hasFound['a'] by one and advance begin pointer to the right.

iv) We skip 'c' since it is not found in string2. Begin pointer now points to 'b'. hasFound['b'] (2) is greater than needToFind['b'] (1). We decrement hasFound['b'] by one and advance begin pointer to the right.

v) Begin pointer now points to the next 'b'. hasFound['b'] (1) is equal to needToFind['b'] (1). We stop immediately and this is our newly found minimum window.

The idea is mainly based on the help of two pointers (begin and end position of the window) and two tables (needToFind and hasFound) while traversing string1. needToFind stores the total count of a character in string2 and hasFound stores the total count of a character met so far. We also use a count variable to store the total characters in string2 that's met so far (not counting characters where hasFound[x] exceeds needToFind[x]). When count equals string2's length, we know a valid window is found.

Each time we advance the end pointer (pointing to an element x), we increment hasFound[x] by one. We also increment count by one if hasFound[x] is less than or equal to needToFind[x]. Why? When the constraint is met (that is, count equals to string2's size), we immediately advance begin pointer as far right as possible while maintaining the constraint.

How do we check if it is maintaining the constraint? Assume that begin points to an element x, we check if hasFound[x] is greater than needToFind[x]. If it is, we can decrement hasFound[x] by one and advancing begin pointer without breaking the constraint. On the other hand, if it is not, we stop immediately as advancing begin pointer breaks the window constraint.

Finally, we check if the minimum window length is less than the current minimum. Update the current minimum if a new minimum is found.

Essentially, the algorithm finds the first window that satisfies the constraint, then continue maintaining the constraint throughout.

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Here's an O(n) solution. The basic idea is simple: for each starting index, find the least ending index such that the substring contains all of the necessary letters. The trick is that the least ending index increases over the course of the function, so with a little data structure support, we consider each character at most twice.

In Python:

``````from collections import defaultdict

def smallest(s1, s2):
assert s2 != ''
d = defaultdict(int)
nneg = [0]  # number of negative entries in d
def incr(c):
d[c] += 1
if d[c] == 0:
nneg[0] -= 1
def decr(c):
if d[c] == 0:
nneg[0] += 1
d[c] -= 1
for c in s2:
decr(c)
minlen = len(s1) + 1
j = 0
for i in xrange(len(s1)):
while nneg[0] > 0:
if j >= len(s1):
return minlen
incr(s1[j])
j += 1
minlen = min(minlen, j - i)
decr(s1[i])
return minlen
``````
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@algorithmist, I have not worked in Python, but I can get that for...while loop doesn;t seem to O(n). Can you please tell your approach taking example given in the question, would appreciate that. –  mag Mar 17 '10 at 3:29
j can only increase len(s1) times, so the while loop does O(n) work in total. –  user287792 Mar 17 '10 at 3:31
@Rajendra: This algorithm does exactly what I described in my post, if that helps--`i` marks the tail of the substring and `j` marks the head. @algorithmist: nice work, coming up with code ever-so-slightly-faster than I came up with a description! –  Rex Kerr Mar 17 '10 at 3:37

I was just going through this discussion at joelonsoftware.com . Nice approach for finding required smallest substring.

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Please have a look at this as well:

``````//-----------------------------------------------------------------------

bool IsInSet(char ch, char* cSet)
{
char* cSetptr = cSet;
int index = 0;
while (*(cSet+ index) != '\0')
{
if(ch == *(cSet+ index))
{
return true;
}
++index;
}
return false;
}

void removeChar(char ch, char* cSet)
{
bool bShift = false;
int index = 0;
while (*(cSet + index) != '\0')
{
if( (ch == *(cSet + index)) || bShift)
{
*(cSet + index) = *(cSet + index + 1);
bShift = true;
}
++index;
}
}
typedef struct subStr
{
short iStart;
short iEnd;
short szStr;
}ss;

char* subStringSmallest(char* testStr, char* cSet)
{
char* subString = NULL;
int iSzSet = strlen(cSet) + 1;
int iSzString = strlen(testStr)+ 1;
char* cSetBackUp = new char[iSzSet];
memcpy((void*)cSetBackUp, (void*)cSet, iSzSet);

int iStartIndx = -1;
int iEndIndx = -1;
int iIndexStartNext = -1;

std::vector<ss> subStrVec;
int index = 0;

while( *(testStr+index) != '\0' )
{
if (IsInSet(*(testStr+index), cSetBackUp))
{
removeChar(*(testStr+index), cSetBackUp);

if(iStartIndx < 0)
{
iStartIndx = index;
}
else if( iIndexStartNext < 0)
iIndexStartNext = index;
else
;

if (strlen(cSetBackUp) == 0 )
{
iEndIndx = index;
if( iIndexStartNext == -1)
break;
else
{
index = iIndexStartNext;
ss stemp = {iStartIndx, iEndIndx, (iEndIndx-iStartIndx + 1)};
subStrVec.push_back(stemp);
iStartIndx = iEndIndx = iIndexStartNext = -1;
memcpy((void*)cSetBackUp, (void*)cSet, iSzSet);
continue;
}
}
}
else
{
if (IsInSet(*(testStr+index), cSet))
{
if(iIndexStartNext < 0)
iIndexStartNext = index;
}
}

++index;
}

int indexSmallest = 0;
for(int indexVec = 0; indexVec < subStrVec.size(); ++indexVec)
{
if(subStrVec[indexSmallest].szStr > subStrVec[indexVec].szStr)
indexSmallest = indexVec;
}

subString = new char[(subStrVec[indexSmallest].szStr) + 1];
memcpy((void*)subString, (void*)(testStr+ subStrVec[indexSmallest].iStart), subStrVec[indexSmallest].szStr);
memset((void*)(subString + subStrVec[indexSmallest].szStr), 0, 1);

delete[] cSetBackUp;
return subString;
}
//--------------------------------------------------------------------
``````
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Always going for the dumbest solution, there are n^2 substrings, try each and find the shortest. Runs in O(n^3), but I believe this can be done in O(n).

``````min-so-far = INFINITY
min-start = null
min-end = null

i := 1 to string1.length - 1
j := i+1 to string1.length
// check if string1(i, j) contains all characters in string2
// and update min-so-far if it's lower than current best
// update min-start to i, and min-end to j
``````
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@Anurag, I see space complexity is O(1) and time complexity is O(n^3) if I am not wrong. For every substring of string1, we are going to determine if say m characters of string2 are in that substring or not. am I correct? –  mag Mar 17 '10 at 3:25
that's a good optimization Carl.. i just wanted to keep it as simple as possible, so used comments for the non-relevant code. –  Anurag Mar 17 '10 at 3:26
@Rajendra, yepp you're right my oversight :) it's n^3 –  Anurag Mar 17 '10 at 3:28

Edit: apparently there's an O(n) algorithm (cf. algorithmist's answer). Obviously this have this will beat the [naive] baseline described below!

Too bad I gotta go... I'm a bit suspicious that we can get O(n). I'll check in tomorrow to see the winner ;-) Have fun!

Tentative algorithm:
The general idea is to sequentially try and use a character from str2 found in str1 as the start of a search (in either/both directions) of all the other letters of str2. By keeping a "length of best match so far" value, we can abort searches when they exceed this. Other heuristics can probably be used to further abort suboptimal (so far) solutions. The choice of the order of the starting letters in str1 matters much; it is suggested to start with the letter(s) of str1 which have the lowest count and to try with the other letters, of an increasing count, in subsequent attempts.

``````  [loose pseudo-code]
- get count for each letter/character in str1  (number of As, Bs etc.)
- get count for each letter in str2
- minLen = length(str1) + 1  (the +1 indicates you're not sure all chars of
str2 are in str1)
- Starting with the letter from string2 which is found the least in string1,
look for other letters of Str2, in either direction of str1, until you've
found them all (or not, at which case response = impossible => done!).
set x = length(corresponding substring of str1).
- if (x < minLen),
set minlen = x,
also memorize the start/len of the str1 substring.
- continue trying with other letters of str1 (going the up the frequency
list in str1), but abort search as soon as length(substring of strl)
reaches or exceed minLen.
We can find a few other heuristics that would allow aborting a
particular search, based on [pre-calculated ?] distance between a given
letter in str1 and some (all?) of the letters in str2.
- the overall search terminates when minLen = length(str2) or when
we've used all letters of str1 (which match one letter of str2)
as a starting point for the search
``````
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