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I have String arrays of arrays.

List<String[]> mainList = new ArrayList<String[]>();

String[] row1 = {"foo", "bar", "moo"}
String[] row2 = {"cocoa", "zoo", "milk", "coffee"}

mainList.add(row1);
mainList.add(row2);

Let's say I want to find an element "milk".

I could do with N^2.

for(int i=0, j=mainList.size(); i<j; i++) {
    for(int x=0, y=mainList.get(i).length(); x<y; x++) {
        String item = mainList.get(i)[x];

        if(item.equals("milk")) {
            return true; //found milk
        }
    }
}

I tried to make it faster by putting all elements as Map key.

//put all elements to map key
Map m = new HashMap<String, String>();
for(int i=0, j=mainList.size(); i<j; i++) {
    for(int x=0, y=mainList.get(i).length(); x<y; x++) {
        m.put(mainList.get(i)[x], "whatever");
    }
}

//now iterate and see if key "milk" is found
if(m.contains("milk")) { return true; }

But I figured this is still N^2 (i.e. for loop inside of for loop, as the number of rows added to mainList like row3['item1', 'item2', 'item3'], the iteration increments in N^2)

how can I optimize this without N^2 ?

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Map m = new HashMap<String>(); This won't compile as a Map has two type parameters. Also, what makes you think this will be O(n^2)? –  Jim Garrison May 11 '11 at 5:20
    
oops, I will fix it now, thanks for pointing out –  masato-san May 11 '11 at 5:21
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4 Answers

up vote 3 down vote accepted

Neither algorithm is N^2 since you visit the elements only once. However, the first algorithm, is O(N) for each lookup, but the second algorithm is O(N) to populate the map and O(1) for each subsequent lookup.

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Oh, I assumed it was N^2 because for loop inside of for loop. I might be misunderstanding –  masato-san May 11 '11 at 5:25
2  
The loop bounds are different, so it can't be N^2. You could call it M*N with M=mainList.size() and N=max(length of any array in mainList), but the important part of algorithmic complexity is figuring out what your significant operation is. In this case, it's the number of comparisons, which has an upper bound of all elements in all arrays in all the lists (i.e., some number N). If your algorithm was instead trying to count the number of duplicates using for(mainList) for (array) for(mainList) for(array), that would be N^2. –  bkail May 11 '11 at 5:29
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If you know the key you are looking for a get operation for a hashmap is actually O(1)

source: http://www.coderfriendly.com/wp-content/uploads/2009/05/java_collections_v2.pdf

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Why can't be the code as below?

        String[] row1 = {"foo", "bar", "moo"};
        String[] row2 = {"cocoa", "zoo", "milk", "coffee"};

        HashMap<String, String> mainMap = new HashMap<String, String>();
        for(String s: row1) {
            mainMap.put(s, s);
        }

        for(String s: row2) {
            mainMap.put(s, s);
        }

        System.out.println(mainMap.get("milk") != null);
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Bkail beat me to this answer, but mine might provide a little more insight (even though it is the same.)

I believe you might be a little unclear on your lookup time and your construction time.

For the first example you provided, I think you have a constant construction time (is allocating a static array constant in Java?). Then, your lookup time (for every lookup) is n (for n elements, not n*n). I can see how this could be a little bit confusing with your notation, as your n elements come in two rows.

However, for your second example, you are spending n on construction. Your actual lookup is O(1), like the other answers said.

So, the important thing to consider is what you are measuring. Asymptotic notation for the lookup is what you're interested in.

Good luck!

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