# Unbounded knapsack problem In this section, we first solve another common knapsack problem: the unbounded knapsack, and then explore a special case of it: the coin change problem. ## Unbounded knapsack problem !!! question Given $n$ items, where the weight of the $i^{th}$ item is $wgt[i-1]$ and its value is $val[i-1]$, and a backpack with a capacity of $cap$. **Each item can be selected multiple times**. What is the maximum value of the items that can be put into the backpack without exceeding its capacity? See the example below. ![Example data for the unbounded knapsack problem](unbounded_knapsack_problem.assets/unbounded_knapsack_example.png) ### Dynamic programming approach The unbounded knapsack problem is very similar to the 0-1 knapsack problem, **the only difference being that there is no limit on the number of times an item can be chosen**. - In the 0-1 knapsack problem, there is only one of each item, so after placing item $i$ into the backpack, you can only choose from the previous $i-1$ items. - In the unbounded knapsack problem, the quantity of each item is unlimited, so after placing item $i$ in the backpack, **you can still choose from the previous $i$ items**. Under the rules of the unbounded knapsack problem, the state $[i, c]$ can change in two ways. - **Not putting item $i$ in**: As with the 0-1 knapsack problem, transition to $[i-1, c]$. - **Putting item $i$ in**: Unlike the 0-1 knapsack problem, transition to $[i, c-wgt[i-1]]$. The state transition equation thus becomes: $$ dp[i, c] = \max(dp[i-1, c], dp[i, c - wgt[i-1]] + val[i-1]) $$ ### Code implementation Comparing the code for the two problems, the state transition changes from $i-1$ to $i$, the rest is completely identical: ```src [file]{unbounded_knapsack}-[class]{}-[func]{unbounded_knapsack_dp} ``` ### Space optimization Since the current state comes from the state to the left and above, **the space-optimized solution should perform a forward traversal for each row in the $dp$ table**. This traversal order is the opposite of that for the 0-1 knapsack. Please refer to the following figures to understand the difference. === "<1>" ![Dynamic programming process for the unbounded knapsack problem after space optimization](unbounded_knapsack_problem.assets/unbounded_knapsack_dp_comp_step1.png) === "<2>" ![unbounded_knapsack_dp_comp_step2](unbounded_knapsack_problem.assets/unbounded_knapsack_dp_comp_step2.png) === "<3>" ![unbounded_knapsack_dp_comp_step3](unbounded_knapsack_problem.assets/unbounded_knapsack_dp_comp_step3.png) === "<4>" ![unbounded_knapsack_dp_comp_step4](unbounded_knapsack_problem.assets/unbounded_knapsack_dp_comp_step4.png) === "<5>" ![unbounded_knapsack_dp_comp_step5](unbounded_knapsack_problem.assets/unbounded_knapsack_dp_comp_step5.png) === "<6>" ![unbounded_knapsack_dp_comp_step6](unbounded_knapsack_problem.assets/unbounded_knapsack_dp_comp_step6.png) The code implementation is quite simple, just remove the first dimension of the array `dp`: ```src [file]{unbounded_knapsack}-[class]{}-[func]{unbounded_knapsack_dp_comp} ``` ## Coin change problem The knapsack problem is a representative of a large class of dynamic programming problems and has many variants, such as the coin change problem. !!! question Given $n$ types of coins, the denomination of the $i^{th}$ type of coin is $coins[i - 1]$, and the target amount is $amt$. **Each type of coin can be selected multiple times**. What is the minimum number of coins needed to make up the target amount? If it is impossible to make up the target amount, return $-1$. See the example below. ![Example data for the coin change problem](unbounded_knapsack_problem.assets/coin_change_example.png) ### Dynamic programming approach **The coin change can be seen as a special case of the unbounded knapsack problem**, sharing the following similarities and differences. - The two problems can be converted into each other: "item" corresponds to "coin", "item weight" corresponds to "coin denomination", and "backpack capacity" corresponds to "target amount". - The optimization goals are opposite: the unbounded knapsack problem aims to maximize the value of items, while the coin change problem aims to minimize the number of coins. - The unbounded knapsack problem seeks solutions "not exceeding" the backpack capacity, while the coin change seeks solutions that "exactly" make up the target amount. **First step: Think through each round's decision-making, define the state, and thus derive the $dp$ table** The state $[i, a]$ corresponds to the sub-problem: **the minimum number of coins that can make up the amount $a$ using the first $i$ types of coins**, denoted as $dp[i, a]$. The two-dimensional $dp$ table is of size $(n+1) \times (amt+1)$. **Second step: Identify the optimal substructure and derive the state transition equation** This problem differs from the unbounded knapsack problem in two aspects of the state transition equation. - This problem seeks the minimum, so the operator $\max()$ needs to be changed to $\min()$. - The optimization is focused on the number of coins, so simply add $+1$ when a coin is chosen. $$ dp[i, a] = \min(dp[i-1, a], dp[i, a - coins[i-1]] + 1) $$ **Third step: Define boundary conditions and state transition order** When the target amount is $0$, the minimum number of coins needed to make it up is $0$, so all $dp[i, 0]$ in the first column are $0$. When there are no coins, **it is impossible to make up any amount >0**, which is an invalid solution. To allow the $\min()$ function in the state transition equation to recognize and filter out invalid solutions, consider using $+\infty$ to represent them, i.e., set all $dp[0, a]$ in the first row to $+\infty$. ### Code implementation Most programming languages do not provide a $+\infty$ variable, only the maximum value of an integer `int` can be used as a substitute. This can lead to overflow: the $+1$ operation in the state transition equation may overflow. For this reason, we use the number $amt + 1$ to represent an invalid solution, because the maximum number of coins needed to make up $amt$ is at most $amt$. Before returning the result, check if $dp[n, amt]$ equals $amt + 1$, and if so, return $-1$, indicating that the target amount cannot be made up. The code is as follows: ```src [file]{coin_change}-[class]{}-[func]{coin_change_dp} ``` The following images show the dynamic programming process for the coin change problem, which is very similar to the unbounded knapsack problem. === "<1>" ![Dynamic programming process for the coin change problem](unbounded_knapsack_problem.assets/coin_change_dp_step1.png) === "<2>" ![coin_change_dp_step2](unbounded_knapsack_problem.assets/coin_change_dp_step2.png) === "<3>" ![coin_change_dp_step3](unbounded_knapsack_problem.assets/coin_change_dp_step3.png) === "<4>" ![coin_change_dp_step4](unbounded_knapsack_problem.assets/coin_change_dp_step4.png) === "<5>" ![coin_change_dp_step5](unbounded_knapsack_problem.assets/coin_change_dp_step5.png) === "<6>" ![coin_change_dp_step6](unbounded_knapsack_problem.assets/coin_change_dp_step6.png) === "<7>" ![coin_change_dp_step7](unbounded_knapsack_problem.assets/coin_change_dp_step7.png) === "<8>" ![coin_change_dp_step8](unbounded_knapsack_problem.assets/coin_change_dp_step8.png) === "<9>" ![coin_change_dp_step9](unbounded_knapsack_problem.assets/coin_change_dp_step9.png) === "<10>" ![coin_change_dp_step10](unbounded_knapsack_problem.assets/coin_change_dp_step10.png) === "<11>" ![coin_change_dp_step11](unbounded_knapsack_problem.assets/coin_change_dp_step11.png) === "<12>" ![coin_change_dp_step12](unbounded_knapsack_problem.assets/coin_change_dp_step12.png) === "<13>" ![coin_change_dp_step13](unbounded_knapsack_problem.assets/coin_change_dp_step13.png) === "<14>" ![coin_change_dp_step14](unbounded_knapsack_problem.assets/coin_change_dp_step14.png) === "<15>" ![coin_change_dp_step15](unbounded_knapsack_problem.assets/coin_change_dp_step15.png) ### Space optimization The space optimization for the coin change problem is handled in the same way as for the unbounded knapsack problem: ```src [file]{coin_change}-[class]{}-[func]{coin_change_dp_comp} ``` ## Coin change problem II !!! question Given $n$ types of coins, where the denomination of the $i^{th}$ type of coin is $coins[i - 1]$, and the target amount is $amt$. **Each type of coin can be selected multiple times**, **ask how many combinations of coins can make up the target amount**. See the example below. ![Example data for Coin Change Problem II](unbounded_knapsack_problem.assets/coin_change_ii_example.png) ### Dynamic programming approach Compared to the previous problem, the goal of this problem is to determine the number of combinations, so the sub-problem becomes: **the number of combinations that can make up amount $a$ using the first $i$ types of coins**. The $dp$ table remains a two-dimensional matrix of size $(n+1) \times (amt + 1)$. The number of combinations for the current state is the sum of the combinations from not selecting the current coin and selecting the current coin. The state transition equation is: $$ dp[i, a] = dp[i-1, a] + dp[i, a - coins[i-1]] $$ When the target amount is $0$, no coins are needed to make up the target amount, so all $dp[i, 0]$ in the first column should be initialized to $1$. When there are no coins, it is impossible to make up any amount >0, so all $dp[0, a]$ in the first row should be set to $0$. ### Code implementation ```src [file]{coin_change_ii}-[class]{}-[func]{coin_change_ii_dp} ``` ### Space optimization The space optimization approach is the same, just remove the coin dimension: ```src [file]{coin_change_ii}-[class]{}-[func]{coin_change_ii_dp_comp} ```