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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.
1function longestCommonSubsequence(text1, text2) {
2 const n = text1.length;
3 const m = text2.length;
4 const dp = Array
In this JavaScript solution, the longestCommonSubsequence function constructs a dynamic programming table dp and fills it according to character matches, similar to other language implementations. The solution is demonstrated in the console output.
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))
The optimized C solution uses two arrays previous and current to store the LCS length for the current and last iteration. After computing each row, the current becomes the previous, thereby saving space. The solution is efficient both in terms of time and space compared to the full 2D table.