Analysis of Binary Search

Background

Days before, I was studying the tree structure. In tree search operation, we need to find a minimum element in a node that is bigger (in this blog, bigger do not include equal) than the giving key. Since the element in tree node is ordered, therefore the idea of binary search can be used. So this problem can be simplified as follows:

Given a sorted array and a key, how to efficiently find position of the minimum element that is bigger than key ?

At the beginning, I thought it was easy to develop a efficiently binary locate algorithm to solve this problem, but later I find that my understanding to binary search is just preliminary. In this blog, I will give you a better understanding of binary search and develop a efficiently binary locate algorithm.

Analyze the Binary Search

There are many ways to write a binary search code, here is an example.

int BinSearch(int *arr,int len,int key){
    int low=0,high=len-1,mid=0;
    while(low <= high) {
        mid=(low+high)/2;
        if( arr[mid] > key) {
            high=mid-1;
        } else if( arr[mid] < key) {
            low=mid+1;
        } else {
            return mid; /* line a */
        }
    }
    return -1; /* line b */
}

The idea of this classical algorithm is easy to understand, but we need to know deeply how it works. In other words, when a binary search was done. What is the value of low, mid and high? This is very important when we develop a locate algorithm based on binary search. In the next, I will give some observations and the corresponding analysis.
First, mid is between the low and high (include low and high themselves). From the code above, at the first line, this claim hold true. In the later stage of this algorithm, we find that mid=(low+high)/2, so mid is between the low and high. Note that the value of low is bigger than high in the last if we can not find the key in array.
Second, if key is not in array, mid is equal to either high or low. This is because that if the key is not in array, this algorithm will return at line b, which means low<=high is not true. Since high and low will decrease or increase by 1 in each iteration, before this iteration, we have low=high. Under this situation, by executing mid=(low+high)/2, we have mid=high=low. Thus, mid will equal to high or low in the last no matter low=mid+1 or high=mid-1 was executed.
Third, the element array[low] is bigger than key if key is not in array. From the deduction above, we know that in the last, low is bigger than high, therefore array[low] is bigger than array[high]. Additionally, in the last iteration, if high=mid-1 is executed, we have arr[mid] is bigger than key. When the program return from line b, we have mid=low=high+1, therefore, arr[low]=arr[mid] is bigger than key.
Fourth, the element array[high] is smaller than key if key is not in array. Based on the above deduction, this is obvious.

Note the observation 2,3,4 are only true when key is not equal to any element in array, i.e., the program return from line b. Here is an example for you to make it clear. If we have an array as follows and we want to find 4, which is in array.

Pos 0 1 2 3 4 5 6
Value 1 4 6 7 8 11 13

Based on the algorithm above, we check element 7 first. Since 7 is bigger than 4, we have low=0,mid=3,high=2 now. In the next iteration, we check the element 4. Since this element is just the one we want to find, therefore the program directly return from line a, and we have low=0,mid=1,high=2. From this example, we know that claim 2,3,4 are not true.

Develope a Binary Locate Algorithm

From the analysis above, it is easy to implement this algorithm. We just need to modify two lines of code in the previous code.
First, if the key is in array, we know the program will return at line a, and the element array[mid] is equal to key, therefore the minimum element bigger than key is at mid+1. Second, if the key is not in array, based on the deduction above, we just need to return low. The detail code are shown as follows.

int BinLocate(int *arr,int len,int key){
    int low=0,high=len-1,mid=0;
    while(low <= high) {
        mid=(low+high)/2;
        if( arr[mid] > key) {
            high=mid-1;
        } else if( arr[mid] < key) {
            low=mid+1;
        } else {
            return mid+1; /* line a */
        }
    }
    return low; /* line b */
}

Another Version

As I have mentioned before, there are many ways to write to binary search. And therefore there is verious kinds of binary locate implementation. I have find another implementation and I think this one is better.

int BinLocate(int *arr,int len,int key){
    int low=-1,high=len,mid=0;
    while( (low+1) < high) {
        mid=(low+high)/2;
        if( arr[mid] > key) {
            high=mid;
        } else if( arr[mid] < key) {
            low=mid;
        } else {
            return mid+1; /* line a */
        }
    }
    return high; /* line b */
}

Which one you is the one you like? For me, I think this one is better since this code is much more easy to read and understand (the last line return high clearly demonstrated the function of this code).

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