Pisimmän bitonisen osasekvenssin ongelma on löytää tietyn sekvenssin pisin osasekvenssi siten, että se ensin kasvaa ja sitten pienenee. Kasvavaan järjestykseen lajiteltu sekvenssi katsotaan Bitoniseksi ja laskeva osa tyhjäksi. Vastaavasti laskevaa järjestystä pidetään Bitonisena ja kasvava osa tyhjänä. Esimerkkejä:
kuinka palauttaa taulukko java
Input: [1 11 2 10 4 5 2 1] Output: [1 2 10 4 2 1] OR [1 11 10 5 2 1] OR [1 2 4 5 2 1] Input: [12 11 40 5 3 1] Output: [12 11 5 3 1] OR [12 40 5 3 1] Input: [80 60 30 40 20 10] Output: [80 60 30 20 10] OR [80 60 40 20 10]
sisään edellinen viesti, josta olemme keskustelleet pisimmästä bitonic Subsequence -ongelmasta. Viesti kattoi kuitenkin vain koodin, joka liittyi kasvavan osasekvenssin enimmäissumman löytämiseen, mutta ei osasekvenssin rakentamiseen. Tässä viestissä keskustelemme siitä, kuinka rakentaa itse Pisimmän Bitonic Subsequence. Olkoon arr[0..n-1] syötetaulukko. Määrittelemme vektorin LIS siten, että LIS[i] on itse vektori, joka tallentaa pisimmän kasvavan arr[0..i]:n osasekvenssin, joka päättyy arr[i]:iin. Siksi indeksille i LIS[i] voidaan kirjoittaa rekursiivisesti muodossa -
LIS[0] = {arr[O]} LIS[i] = {Max(LIS[j])} + arr[i] where j < i and arr[j] < arr[i] = arr[i] if there is no such j
Määrittelemme myös vektorin LDS siten, että LDS[i] on itse vektori, joka tallentaa arr[i..n]:n pisimmän laskevan osasekvenssin, joka alkaa arr[i]:llä. Siksi indeksille i LDS[i] voidaan kirjoittaa rekursiivisesti muodossa -
LDS[n] = {arr[n]} LDS[i] = arr[i] + {Max(LDS[j])} where j > i and arr[j] < arr[i] = arr[i] if there is no such j
Esimerkiksi taulukolle [1 11 2 10 4 5 2 1]
LIS[0]: 1 LIS[1]: 1 11 LIS[2]: 1 2 LIS[3]: 1 2 10 LIS[4]: 1 2 4 LIS[5]: 1 2 4 5 LIS[6]: 1 2 LIS[7]: 1
LDS[0]: 1 LDS[1]: 11 10 5 2 1 LDS[2]: 2 1 LDS[3]: 10 5 2 1 LDS[4]: 4 2 1 LDS[5]: 5 2 1 LDS[6]: 2 1 LDS[7]: 1
Siksi Pisin Bitoninen osasekvenssi voi olla
LIS[1] + LDS[1] = [1 11 10 5 2 1] OR LIS[3] + LDS[3] = [1 2 10 5 2 1] OR LIS[5] + LDS[5] = [1 2 4 5 2 1]
Alla yllä olevan idean toteutus -
C++/* Dynamic Programming solution to print Longest Bitonic Subsequence */ #include using namespace std; // Utility function to print Longest Bitonic // Subsequence void print(vector<int>& arr int size) { for(int i = 0; i < size; i++) cout << arr[i] << ' '; } // Function to construct and print Longest // Bitonic Subsequence void printLBS(int arr[] int n) { // LIS[i] stores the length of the longest // increasing subsequence ending with arr[i] vector<vector<int>> LIS(n); // initialize LIS[0] to arr[0] LIS[0].push_back(arr[0]); // Compute LIS values from left to right for (int i = 1; i < n; i++) { // for every j less than i for (int j = 0; j < i; j++) { if ((arr[j] < arr[i]) && (LIS[j].size() > LIS[i].size())) LIS[i] = LIS[j]; } LIS[i].push_back(arr[i]); } /* LIS[i] now stores Maximum Increasing Subsequence of arr[0..i] that ends with arr[i] */ // LDS[i] stores the length of the longest // decreasing subsequence starting with arr[i] vector<vector<int>> LDS(n); // initialize LDS[n-1] to arr[n-1] LDS[n - 1].push_back(arr[n - 1]); // Compute LDS values from right to left for (int i = n - 2; i >= 0; i--) { // for every j greater than i for (int j = n - 1; j > i; j--) { if ((arr[j] < arr[i]) && (LDS[j].size() > LDS[i].size())) LDS[i] = LDS[j]; } LDS[i].push_back(arr[i]); } // reverse as vector as we're inserting at end for (int i = 0; i < n; i++) reverse(LDS[i].begin() LDS[i].end()); /* LDS[i] now stores Maximum Decreasing Subsequence of arr[i..n] that starts with arr[i] */ int max = 0; int maxIndex = -1; for (int i = 0; i < n; i++) { // Find maximum value of size of LIS[i] + size // of LDS[i] - 1 if (LIS[i].size() + LDS[i].size() - 1 > max) { max = LIS[i].size() + LDS[i].size() - 1; maxIndex = i; } } // print all but last element of LIS[maxIndex] vector print(LIS[maxIndex] LIS[maxIndex].size() - 1); // print all elements of LDS[maxIndex] vector print(LDS[maxIndex] LDS[maxIndex].size()); } // Driver program int main() { int arr[] = { 1 11 2 10 4 5 2 1 }; int n = sizeof(arr) / sizeof(arr[0]); printLBS(arr n); return 0; }
Java /* Dynamic Programming solution to print Longest Bitonic Subsequence */ import java.util.*; class GFG { // Utility function to print Longest Bitonic // Subsequence static void print(Vector<Integer> arr int size) { for (int i = 0; i < size; i++) System.out.print(arr.elementAt(i) + ' '); } // Function to construct and print Longest // Bitonic Subsequence static void printLBS(int[] arr int n) { // LIS[i] stores the length of the longest // increasing subsequence ending with arr[i] @SuppressWarnings('unchecked') Vector<Integer>[] LIS = new Vector[n]; for (int i = 0; i < n; i++) LIS[i] = new Vector<>(); // initialize LIS[0] to arr[0] LIS[0].add(arr[0]); // Compute LIS values from left to right for (int i = 1; i < n; i++) { // for every j less than i for (int j = 0; j < i; j++) { if ((arr[i] > arr[j]) && LIS[j].size() > LIS[i].size()) { for (int k : LIS[j]) if (!LIS[i].contains(k)) LIS[i].add(k); } } LIS[i].add(arr[i]); } /* * LIS[i] now stores Maximum Increasing Subsequence * of arr[0..i] that ends with arr[i] */ // LDS[i] stores the length of the longest // decreasing subsequence starting with arr[i] @SuppressWarnings('unchecked') Vector<Integer>[] LDS = new Vector[n]; for (int i = 0; i < n; i++) LDS[i] = new Vector<>(); // initialize LDS[n-1] to arr[n-1] LDS[n - 1].add(arr[n - 1]); // Compute LDS values from right to left for (int i = n - 2; i >= 0; i--) { // for every j greater than i for (int j = n - 1; j > i; j--) { if (arr[j] < arr[i] && LDS[j].size() > LDS[i].size()) for (int k : LDS[j]) if (!LDS[i].contains(k)) LDS[i].add(k); } LDS[i].add(arr[i]); } // reverse as vector as we're inserting at end for (int i = 0; i < n; i++) Collections.reverse(LDS[i]); /* * LDS[i] now stores Maximum Decreasing Subsequence * of arr[i..n] that starts with arr[i] */ int max = 0; int maxIndex = -1; for (int i = 0; i < n; i++) { // Find maximum value of size of // LIS[i] + size of LDS[i] - 1 if (LIS[i].size() + LDS[i].size() - 1 > max) { max = LIS[i].size() + LDS[i].size() - 1; maxIndex = i; } } // print all but last element of LIS[maxIndex] vector print(LIS[maxIndex] LIS[maxIndex].size() - 1); // print all elements of LDS[maxIndex] vector print(LDS[maxIndex] LDS[maxIndex].size()); } // Driver Code public static void main(String[] args) { int[] arr = { 1 11 2 10 4 5 2 1 }; int n = arr.length; printLBS(arr n); } } // This code is contributed by // sanjeev2552
Python3 # Dynamic Programming solution to print Longest # Bitonic Subsequence def _print(arr: list size: int): for i in range(size): print(arr[i] end=' ') # Function to construct and print Longest # Bitonic Subsequence def printLBS(arr: list n: int): # LIS[i] stores the length of the longest # increasing subsequence ending with arr[i] LIS = [0] * n for i in range(n): LIS[i] = [] # initialize LIS[0] to arr[0] LIS[0].append(arr[0]) # Compute LIS values from left to right for i in range(1 n): # for every j less than i for j in range(i): if ((arr[j] < arr[i]) and (len(LIS[j]) > len(LIS[i]))): LIS[i] = LIS[j].copy() LIS[i].append(arr[i]) # LIS[i] now stores Maximum Increasing # Subsequence of arr[0..i] that ends with # arr[i] # LDS[i] stores the length of the longest # decreasing subsequence starting with arr[i] LDS = [0] * n for i in range(n): LDS[i] = [] # initialize LDS[n-1] to arr[n-1] LDS[n - 1].append(arr[n - 1]) # Compute LDS values from right to left for i in range(n - 2 -1 -1): # for every j greater than i for j in range(n - 1 i -1): if ((arr[j] < arr[i]) and (len(LDS[j]) > len(LDS[i]))): LDS[i] = LDS[j].copy() LDS[i].append(arr[i]) # reverse as vector as we're inserting at end for i in range(n): LDS[i] = list(reversed(LDS[i])) # LDS[i] now stores Maximum Decreasing Subsequence # of arr[i..n] that starts with arr[i] max = 0 maxIndex = -1 for i in range(n): # Find maximum value of size of LIS[i] + size # of LDS[i] - 1 if (len(LIS[i]) + len(LDS[i]) - 1 > max): max = len(LIS[i]) + len(LDS[i]) - 1 maxIndex = i # print all but last element of LIS[maxIndex] vector _print(LIS[maxIndex] len(LIS[maxIndex]) - 1) # print all elements of LDS[maxIndex] vector _print(LDS[maxIndex] len(LDS[maxIndex])) # Driver Code if __name__ == '__main__': arr = [1 11 2 10 4 5 2 1] n = len(arr) printLBS(arr n) # This code is contributed by # sanjeev2552
C# /* Dynamic Programming solution to print longest Bitonic Subsequence */ using System; using System.Linq; using System.Collections.Generic; class GFG { // Utility function to print longest Bitonic // Subsequence static void print(List<int> arr int size) { for (int i = 0; i < size; i++) Console.Write(arr[i] + ' '); } // Function to construct and print longest // Bitonic Subsequence static void printLBS(int[] arr int n) { // LIS[i] stores the length of the longest // increasing subsequence ending with arr[i] List<int>[] LIS = new List<int>[n]; for (int i = 0; i < n; i++) LIS[i] = new List<int>(); // initialize LIS[0] to arr[0] LIS[0].Add(arr[0]); // Compute LIS values from left to right for (int i = 1; i < n; i++) { // for every j less than i for (int j = 0; j < i; j++) { if ((arr[i] > arr[j]) && LIS[j].Count > LIS[i].Count) { foreach (int k in LIS[j]) if (!LIS[i].Contains(k)) LIS[i].Add(k); } } LIS[i].Add(arr[i]); } /* * LIS[i] now stores Maximum Increasing Subsequence * of arr[0..i] that ends with arr[i] */ // LDS[i] stores the length of the longest // decreasing subsequence starting with arr[i] List<int>[] LDS = new List<int>[n]; for (int i = 0; i < n; i++) LDS[i] = new List<int>(); // initialize LDS[n-1] to arr[n-1] LDS[n - 1].Add(arr[n - 1]); // Compute LDS values from right to left for (int i = n - 2; i >= 0; i--) { // for every j greater than i for (int j = n - 1; j > i; j--) { if (arr[j] < arr[i] && LDS[j].Count > LDS[i].Count) foreach (int k in LDS[j]) if (!LDS[i].Contains(k)) LDS[i].Add(k); } LDS[i].Add(arr[i]); } // reverse as vector as we're inserting at end for (int i = 0; i < n; i++) LDS[i].Reverse(); /* * LDS[i] now stores Maximum Decreasing Subsequence * of arr[i..n] that starts with arr[i] */ int max = 0; int maxIndex = -1; for (int i = 0; i < n; i++) { // Find maximum value of size of // LIS[i] + size of LDS[i] - 1 if (LIS[i].Count + LDS[i].Count - 1 > max) { max = LIS[i].Count + LDS[i].Count - 1; maxIndex = i; } } // print all but last element of LIS[maxIndex] vector print(LIS[maxIndex] LIS[maxIndex].Count - 1); // print all elements of LDS[maxIndex] vector print(LDS[maxIndex] LDS[maxIndex].Count); } // Driver Code public static void Main(String[] args) { int[] arr = { 1 11 2 10 4 5 2 1 }; int n = arr.Length; printLBS(arr n); } } // This code is contributed by PrinciRaj1992
JavaScript // Function to print the longest bitonic subsequence function _print(arr size) { for (let i = 0; i<size; i++) { process.stdout.write(arr[i]+' '); } } // Function to construct and print the longest bitonic subsequence function printLBS(arr n) { // LIS[i] stores the length of the longest increasing subsequence ending with arr[i] let LIS = new Array(n); for (let i = 0; i < n; i++) { LIS[i] = []; } // initialize LIS[0] to arr[0] LIS[0].push(arr[0]); // Compute LIS values from left to right for (let i = 1; i < n; i++) { // for every j less than i for (let j = 0; j < i; j++) { if (arr[j] < arr[i] && LIS[j].length > LIS[i].length) { LIS[i] = LIS[j].slice(); } } LIS[i].push(arr[i]); } // LIS[i] now stores the Maximum Increasing Subsequence of arr[0..i] that ends with arr[i] // LDS[i] stores the length of the longest decreasing subsequence starting with arr[i] let LDS = new Array(n); for (let i = 0; i < n; i++) { LDS[i] = []; } // initialize LDS[n-1] to arr[n-1] LDS[n - 1].push(arr[n - 1]); // Compute LDS values from right to left for (let i = n - 2; i >= 0; i--) { // for every j greater than i for (let j = n - 1; j > i; j--) { if (arr[j] < arr[i] && LDS[j].length > LDS[i].length) { LDS[i] = LDS[j].slice(); } } LDS[i].push(arr[i]); } // reverse the LDS vector as we're inserting at the end for (let i = 0; i < n; i++) { LDS[i].reverse(); } // LDS[i] now stores the Maximum Decreasing Subsequence of arr[i..n] that starts with arr[i] let max = 0; let maxIndex = -1; for (let i = 0; i < n; i++) { // Find maximum value of size of LIS[i] + size of LDS[i] - 1 if (LIS[i].length + LDS[i].length - 1 > max) { max = LIS[i].length + LDS[i].length - 1; maxIndex = i; } } // print all but // print all but last element of LIS[maxIndex] array _print(LIS[maxIndex].slice(0 -1) LIS[maxIndex].length - 1); // print all elements of LDS[maxIndex] array _print(LDS[maxIndex] LDS[maxIndex].length); } // Driver program const arr = [1 11 2 10 4 5 2 1]; const n = arr.length; printLBS(arr n);
Lähtö:
1 11 10 5 2 1
Aika monimutkaisuus yllä olevasta Dynaamisen ohjelmoinnin ratkaisusta on O(n2). Aputila ohjelman käyttämä arvo on O(n2).