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			117 lines
		
	
	
		
			4.2 KiB
		
	
	
	
		
			Java
		
	
	
	
	
	
			
		
		
	
	
			117 lines
		
	
	
		
			4.2 KiB
		
	
	
	
		
			Java
		
	
	
	
	
	
/**
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 * File: knapsack.java
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 * Created Time: 2023-07-10
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 * Author: krahets (krahets@163.com)
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 */
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package chapter_dynamic_programming;
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import java.util.Arrays;
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public class knapsack {
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    /* 0-1 Knapsack: Brute force search */
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    static int knapsackDFS(int[] wgt, int[] val, int i, int c) {
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        // If all items have been chosen or the knapsack has no remaining capacity, return value 0
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        if (i == 0 || c == 0) {
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            return 0;
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        }
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        // If exceeding the knapsack capacity, can only choose not to put it in the knapsack
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        if (wgt[i - 1] > c) {
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            return knapsackDFS(wgt, val, i - 1, c);
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        }
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        // Calculate the maximum value of not putting in and putting in item i
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        int no = knapsackDFS(wgt, val, i - 1, c);
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        int yes = knapsackDFS(wgt, val, i - 1, c - wgt[i - 1]) + val[i - 1];
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        // Return the greater value of the two options
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        return Math.max(no, yes);
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    }
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    /* 0-1 Knapsack: Memoized search */
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    static int knapsackDFSMem(int[] wgt, int[] val, int[][] mem, int i, int c) {
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        // If all items have been chosen or the knapsack has no remaining capacity, return value 0
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        if (i == 0 || c == 0) {
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            return 0;
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        }
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        // If there is a record, return it
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        if (mem[i][c] != -1) {
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            return mem[i][c];
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        }
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        // If exceeding the knapsack capacity, can only choose not to put it in the knapsack
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        if (wgt[i - 1] > c) {
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            return knapsackDFSMem(wgt, val, mem, i - 1, c);
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        }
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        // Calculate the maximum value of not putting in and putting in item i
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        int no = knapsackDFSMem(wgt, val, mem, i - 1, c);
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        int yes = knapsackDFSMem(wgt, val, mem, i - 1, c - wgt[i - 1]) + val[i - 1];
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        // Record and return the greater value of the two options
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        mem[i][c] = Math.max(no, yes);
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        return mem[i][c];
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    }
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    /* 0-1 Knapsack: Dynamic programming */
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    static int knapsackDP(int[] wgt, int[] val, int cap) {
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        int n = wgt.length;
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        // Initialize dp table
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        int[][] dp = new int[n + 1][cap + 1];
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        // State transition
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        for (int i = 1; i <= n; i++) {
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            for (int c = 1; c <= cap; c++) {
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                if (wgt[i - 1] > c) {
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                    // If exceeding the knapsack capacity, do not choose item i
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                    dp[i][c] = dp[i - 1][c];
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                } else {
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                    // The greater value between not choosing and choosing item i
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                    dp[i][c] = Math.max(dp[i - 1][c], dp[i - 1][c - wgt[i - 1]] + val[i - 1]);
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                }
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            }
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        }
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        return dp[n][cap];
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    }
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    /* 0-1 Knapsack: Space-optimized dynamic programming */
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    static int knapsackDPComp(int[] wgt, int[] val, int cap) {
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        int n = wgt.length;
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        // Initialize dp table
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        int[] dp = new int[cap + 1];
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        // State transition
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        for (int i = 1; i <= n; i++) {
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            // Traverse in reverse order
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            for (int c = cap; c >= 1; c--) {
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                if (wgt[i - 1] <= c) {
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                    // The greater value between not choosing and choosing item i
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                    dp[c] = Math.max(dp[c], dp[c - wgt[i - 1]] + val[i - 1]);
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                }
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            }
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        }
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        return dp[cap];
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    }
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    public static void main(String[] args) {
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        int[] wgt = { 10, 20, 30, 40, 50 };
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        int[] val = { 50, 120, 150, 210, 240 };
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        int cap = 50;
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        int n = wgt.length;
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        // Brute force search
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        int res = knapsackDFS(wgt, val, n, cap);
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        System.out.println("The maximum value within the bag capacity is " + res);
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        // Memoized search
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        int[][] mem = new int[n + 1][cap + 1];
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        for (int[] row : mem) {
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            Arrays.fill(row, -1);
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        }
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        res = knapsackDFSMem(wgt, val, mem, n, cap);
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        System.out.println("The maximum value within the bag capacity is " + res);
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        // Dynamic programming
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        res = knapsackDP(wgt, val, cap);
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        System.out.println("The maximum value within the bag capacity is " + res);
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        // Space-optimized dynamic programming
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        res = knapsackDPComp(wgt, val, cap);
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        System.out.println("The maximum value within the bag capacity is " + res);
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    }
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}
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