This approach uses dynamic programming to solve the problem by creating a 2D table to store the lengths of the longest common subsequences for different substrings. Each cell dp[i][j]
in the table represents the longest common subsequence length of substrings text1[0..i-1]
and text2[0..j-1]
. The table is filled using the following rules:
text1[i-1]
and text2[j-1]
are equal, then dp[i][j] = dp[i-1][j-1] + 1
.dp[i][j] = max(dp[i-1][j], dp[i][j-1])
.The final answer is dp[text1.length][text2.length]
.
Time Complexity: O(n*m), where n and m are the lengths of text1
and text2
respectively.
Space Complexity: O(n*m) for the DP table.
1#include <iostream>
2#include <vector>
3using namespace std;
4
5int longestCommonSubsequence(string text1, string text2) {
6 int n = text1.size();
7 int m = text2.size();
8 vector<vector<int>> dp(n+1, vector<int>(m+1, 0));
9
10 for (int i = 1; i <= n; i++) {
11 for (int j = 1; j <= m; j++) {
12 if (text1[i-1] == text2[j-1])
13 dp[i][j] = dp[i-1][j-1] + 1;
14 else
15 dp[i][j] = max(dp[i-1][j], dp[i][j-1]);
16 }
17 }
18
19 return dp[n][m];
20}
21
22int main() {
23 string text1 = "abcde";
24 string text2 = "ace";
25 cout << longestCommonSubsequence(text1, text2) << endl;
26 return 0;
27}
This C++ implementation uses the vector
dynamic array to maintain a 2D table dp
similar to the C solution and iteratively fills it to determine the LCS length. The function is demonstrated in main()
.
This optimization reduces space complexity by only storing data for the current and the previous row. The idea remains the same - calculating the LCS length incrementally using a dynamic programming strategy. However, instead of a full 2D table, only two 1D arrays are used, effectively reducing space usage from O(n*m) to O(min(n, m)). This is achieved by noting that each row of the DP table depends only on the previous row. So, we use two arrays that swap every iteration.
Time Complexity: O(n*m), where n is the length of text1
and m is the length of text2
.
Space Complexity: O(min(n, m))
1function longestCommonSubsequence(text1, text2) {
2 if (text1.length < text2.length) {
3 [text1, text2] = [text2, text1];
4 }
5 const n = text1.length;
6 const m = text2.length;
7
8 let previous = Array(m + 1).fill(0);
9 let current = Array(m + 1).fill(0);
10
11 for (let i = 1; i <= n; i++) {
12 current.fill(0);
13 for (let j = 1; j <= m; j++) {
14 if (text1[i - 1] === text2[j - 1]) {
15 current[j] = previous[j - 1] + 1;
16 } else {
17 current[j] = Math.max(previous[j], current[j - 1]);
18 }
19 }
20 [previous, current] = [current, previous];
21 }
22
23 return previous[m];
24}
25
26console.log(longestCommonSubsequence("abcde", "ace"));
The JavaScript solution effectively reduces the space requirement by using two arrays and iteratively swapping them, allowing for space-efficient storage of LCS computation. This makes it suitable for handling larger input sizes within a limited space budget.