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  • [LeetCode] Maximum Subarray 解题报告


    Find the contiguous subarray within an array (containing at least one number) which has the largest sum.
    For example, given the array [−2,1,−3,4,−1,2,1,−5,4],
    the contiguous subarray [4,−1,2,1] has the largest sum = 6.
    More practice:
    If you have figured out the O(n) solution, try coding another solution using the divide and conquer approach, which is more subtle.
    » Solve this problem

    [解题思路]
    O(n)就是一维DP.
    假设A(0, i)区间存在k,使得[k, i]区间是以i结尾区间的最大值, 定义为Max[i], 在这里,当求取Max[i+1]时,
    Max[i+1] = Max[i] + A[i+1],  if (Max[i] + A[i+1] >0)
                    = 0, if(Max[i]+A[i+1] <0),如果和小于零,A[i+1]必为负数,没必要保留,舍弃掉
    然后从左往右扫描,求取Max数字的最大值即为所求。

    [Code]
    1:    int maxSubArray(int A[], int n) {  
    2: // Start typing your C/C++ solution below
    3: // DO NOT write int main() function
    4: int sum = 0;
    5: int max = INT_MIN;
    6: for(int i =0; i < n ; i ++)
    7: {
    8: sum +=A[i];
    9: if(sum>max)
    10: max = sum;
    11: if(sum < 0)
    12: sum = 0;
    13: }
    14: return max;
    15: }

    但是题目中要求,不要用这个O(n)解法,而是采用Divide & Conquer。这就暗示了,解法必然是二分。分析如下:

    假设数组A[left, right]存在最大值区间[i, j](i>=left & j<=right),以mid = (left + right)/2 分界,无非以下三种情况:

    subarray A[i,..j] is
    (1) Entirely in A[low,mid-1]
    (2) Entirely in A[mid+1,high]
    (3) Across mid
    对于(1) and (2),直接递归求解即可,对于(3),则需要以min为中心,向左及向右扫描求最大值,意味着在A[left, Mid]区间中找出A[i..mid], 而在A[mid+1, right]中找出A[mid+1..j],两者加和即为(3)的解。

    代码实现如下:
    1:    int maxSubArray(int A[], int n) {  
    2: // Start typing your C/C++ solution below
    3: // DO NOT write int main() function
    4: int maxV = INT_MIN;
    5: return maxArray(A, 0, n-1, maxV);
    6: }
    7: int maxArray(int A[], int left, int right, int& maxV)
    8: {
    9: if(left>right)
    10: return INT_MIN;
    11: int mid = (left+right)/2;
    12: int lmax = maxArray(A, left, mid -1, maxV);
    13: int rmax = maxArray(A, mid + 1, right, maxV);
    14: maxV = max(maxV, lmax);
    15: maxV = max(maxV, rmax);
    16: int sum = 0, mlmax = 0;
    17: for(int i= mid -1; i>=left; i--)
    18: {
    19: sum += A[i];
    20: if(sum > mlmax)
    21: mlmax = sum;
    22: }
    23: sum = 0; int mrmax = 0;
    24: for(int i = mid +1; i<=right; i++)
    25: {
    26: sum += A[i];
    27: if(sum > mrmax)
    28: mrmax = sum;
    29: }
    30: maxV = max(maxV, mlmax + mrmax + A[mid]);
    31: return maxV;
    32: }

    [注意]
    考虑到最大和仍然可能是负数,所以对于有些变量的初始化不能为0,要为INT_MIN。




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  • 原文地址:https://www.cnblogs.com/codingtmd/p/5078991.html
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