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I guess this is one of the most commonly asked interview questions, yet I am unable to solve it in an efficient way(efficient meaning lesser time complexity and use of a suitable Data Structure). The problem is this way: If there is a m x n matrix of chars (say haystack) and a given char string of length k (the needle) . Write a program to check if the haystack contains the needle. Please note that we need to search the haystack only top to down or left to right. For example

Haystack

ahydsfd
sdflddl
dfdfd
dfdl
uifddffdhc

Needle:
hdffi

Output:
Yes Found!!
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closed as not a real question by casperOne Apr 28 '12 at 15:26

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center.If this question can be reworded to fit the rules in the help center, please edit the question.

    
What's wrong with searching left-to-right ant top-to-bottom separately? –  n.m. Mar 1 '12 at 10:08
    
I was told by two consecutive interviewers that there is a better approach. I am not sure, "better" in what sense did they mean. –  hytriutucx Mar 1 '12 at 10:09
    
@javacoder990: did you not ask the interviewers what they meant ? –  High Performance Mark Mar 1 '12 at 10:24
1  
@n.m.: something to do with cache performance, maybe? Searching top-down is going to be a cache-killer anyway, but you can probably reduce the total number of misses a little bit by mixing it in with the left-to-right searches. –  Steve Jessop Mar 1 '12 at 11:32
    
@Steve Jessop: in "one of the most commonly asked interview questions"? –  n.m. Mar 1 '12 at 11:52
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4 Answers

up vote 8 down vote accepted

The naive bruteforce is O(m*n*k). Here are some ideas for optimization.

Single Search
Instead of doing a search for horizontals and then another for verticals, do both simultaneously. Every time you find an occurrence of the first letter of the needle look for a horizontal and a vertical match starting at that letter. This won't improve the complexity, but in many cases this could halve the time since you'll only look at bad starts once.

Rare Letters
Instead of looking for the first letter of the needle, look for the rarest letter which occurs in the needle. This will rule out a lot of the possible matches. To determine which letters are rarest either scan through the entire board or use random sampling.

Efficient String Searching
Use a better string searching algorithm such as Knuth–Morris–Pratt. Search each row and each column individually using the algorithm. My bet is that this is what the interviewers are after, since it reduces the complexity to O(m*n).

Exploit Short Rows
I notice that not all rows have the same length. When you look for vertical matches, you can stop searching on that row as soon as the needle 'pops out' of the sack, since all needles further along the row will also exit the sack and therefore cannot match.

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Below is algorithm with sample data which will find niddle by doing left-top->right-bottom traverse only once:

public class NeedleSearch {

private final static char[] needle1 = "hdffi".toCharArray();
private final static char[] needle2 = "lfl".toCharArray();

private final static char[] needle3 = "ahw".toCharArray();

private final static char[] needle4 = "sddl".toCharArray();

private final static NeedleSearch search = new NeedleSearch(new char[][] {
        "hhydsfd".toCharArray(),
        "sdflddl".toCharArray(),
        "dfdfd".toCharArray(),
        "dfdl".toCharArray(),
        "uifddffdhc".toCharArray()
});

private final char[][] haystack;

public NeedleSearch(char[][] haystack) {
    this.haystack = haystack;
}

public static void main(String[] args) {
    System.out.println((search.find(needle1) ? "Yes" : "No") + " Found!!");
    System.out.println((search.find(needle2) ? "Yes" : "No") + " Found!!");
    System.out.println((search.find(needle3) ? "Yes" : "No") + " Found!!");
    System.out.println((search.find(needle4) ? "Yes" : "No") + " Found!!");
}

public boolean find(char[] niddle) {
    for (int j = 0; j < haystack.length - niddle.length + 1; j++) {
        for (int k = 0; k < haystack[j].length - niddle.length + 1; k++) {
            if (findInLine(j, k, 1, 0, niddle, 0) || findInLine(j, k, 0, 1, niddle, 0)) {
                return true;
            }
        }
    }
    return false;
}

protected boolean findInLine(int x, int y, int moveDown, int moveRight, char[] niddle, int i) {
    if (niddle.length == i) {// found needle, end of recursion
        return true;
    }

    if (x >= haystack.length || y >= haystack[x].length) { // reached edge, end of recursion
        return false;
    }

    return haystack[x][y] == niddle[i] && findInLine(x + moveDown, y + moveRight, moveDown, moveRight, niddle, i + 1);// dig deeper
}

}

O(n) equals to m*n (Worst time complexity is sensitive to length of needle). It doesn't use any DS except plain arrays and possible to quickly prototype during phone screen/phone interview. Basically you iterate through each element and explore elements to the bottom/right in order to find if they match needed sequence.

Keep in mind that on interview nobody asks questions which requires dozens lines of codes. Solutions could be implemented in 10-20 lines of code/pseudo code.

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The brute force method will have worst time complexity of m*n.That is if needle is single character and we start parsing matrix row wise or column wise.

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Of course if needle has length of x character then it can be optimized to have complexity of (m-x-1)*n! –  mawia Mar 1 '12 at 10:12
    
The problem is with longer needles. –  n.m. Mar 1 '12 at 10:15
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You can restrict the search of the first char to n-k columns and m-k rows. Once found, 2(k-1) would comparisons are required for the answer.

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