This approach involves finding the longest increasing subsequence (LIS) ending at each index and the longest decreasing subsequence (LDS) starting from each index. The idea is to find a peak such that the sum of the longest increasing and decreasing subsequences is maximized, and then determine how many elements need to be removed such that only the peak and the subsequences are left.
Time Complexity: O(n^2), where n is the length of the array, due to the nested loops to calculate LIS and LDS.
Space Complexity: O(n) for the LIS and LDS arrays.
1function minMountainRemovals(nums) {
2 const n = nums.length;
3 const lis = Array(n).fill(1);
4 const lds = Array(n).fill(1);
5
6 for (let i = 0; i < n; i++)
7 for (let j = 0; j < i; j++)
8 if (nums[i] > nums[j]) lis[i] = Math.max(lis[i], lis[j] + 1);
9
10 for (let i = n - 1; i >= 0; i--)
11 for (let j = n - 1; j > i; j--)
12 if (nums[i] > nums[j]) lds[i] = Math.max(lds[i], lds[j] + 1);
13
14 let maxMountain = 0;
15 for (let i = 0; i < n; i++)
16 if (lis[i] > 1 && lds[i] > 1)
17 maxMountain = Math.max(maxMountain, lis[i] + lds[i] - 1);
18
19 return n - maxMountain;
20}
21
This JavaScript version employs arrays to manage LIS and LDS similar to other languages mentioned, identifying acceptable peaks and computing minimal removals by estimating the missing elements required to create the largest mountain shape.
This method involves a greedy approach using two-pointer strategy to find potential mountain peaks. We employ two pointers to detect increasing and decreasing sequences, merging the results to form the largest mountain, iteratively removing non-peak elements.
Time Complexity: O(n^2), requiring traversal through sequences twice with nested loops.
Space Complexity: O(n) due to additional arrays retaining incremental results.
1def minMountainRemovals(nums):
2 n = len(nums)
3 lis = [1] * n
4 lds = [1] * n
5
6 for i in range(n):
7 for j in range(i):
8 if nums[i] > nums[j]:
9 lis[i] = max(lis[i], lis[j] + 1)
10
11 for i in range(n - 1, -1, -1):
12 for j in range(n - 1, i, -1):
13 if nums[i] > nums[j]:
14 lds[i] = max(lds[i], lds[j] + 1)
15
16 max_mountain = 0
17 for i in range(n):
18 if lis[i] > 1 and lds[i] > 1:
19 max_mountain = max(max_mountain, lis[i] + lds[i] - 1)
20
21 return n - max_mountain
22
In Python, the two-pointer based approach translates into relatively straightforward list operations, along with sequence splitting. Ultimately, increased attention to sequence analysis ensures minimal removals while sustaining mountainous cohesion.