I solved a variation of the knapsack problem by backtracking all of the possible solutions. Basically 0 means that item is not in the backpack, 1 means that the item is in the backpack. Cost is the value of all items in the backpack, we are trying to achieve the lowest value possible while having items of every "class". Each time that a combination of all classes is found, I calculate the value of all items and if it's lower than globalBestValue, I save the value. I do this is `verify()`

.

Now I'm trying to optimize my recursive backtrack. My idea was to iterate over my array as it's being generated and return the generator if the "cost" of my generated numbers is already higher then my current best-value, therefore the combination currently being generated can't be the new best-value and can be skipped.

However with my optimization, my backtrack is not generating all the values and it actually skips the "best" value I'm trying to find. Could you tell me where the problem is?

```
private int globalBestValue = Integer.MAX_VALUE;
private int[] arr;
public KnapSack(int numberOfItems) {
arr = new int[numberOfItems];
}
private void generate(int fromIndex) {
int currentCost = 0; // my optimisation starts here
for (int i = 0; i < arr.length; i++) {
if (currentCost > globalBestValue) {
return;
}
if (arr[i] == 1) {
currentCost += allCosts.get(i);
}
} // ends here
if (fromIndex == arr.length) {
verify();
return;
}
for (int i = 0; i <= 1; i++) {
arr[fromIndex] = i;
generate(fromIndex + 1);
}
}
public void verify() {
// skipped the code verifying the arr if it's correct, it's long and not relevant
if (isCorrect == true && currentValue < globalBestValue) {
globalBestValue = currentValue;
}else{
return;
}
}
```

`arr`

,`allCosts`

,`verifiy()`

etc. - so you might need to post a minimal reproducible example. However you actually seem to be looking for an optimization algorithm so you might search for that. Just note that there are exact algorithms that might be costlier in terms of memory and time as well as heuristic algorithms that don't cost that much but might not be able to find the best solution - just a "good enough" one. – Thomas Aug 14 '19 at 12:30`currectCost > globalBestValue`

is a typo and you mean`currentCost > globalBestValue`

. Also we'd need to know how`globalBestValue`

is set, i.e. if it is 0 or could contain only partial costs then this might be your problem. – Thomas Aug 14 '19 at 12:33`allCosts`

? How is`currentValue`

calculated? However, I suspect the problem is`if(currentCost > globalBestValue)`

- do you really want to compare thecostswith thevalue? I'm quite sure about what variation of the problem you're trying to solve but I'd assume that the value is meant to get higher while the cost is meant to get lower. The best solution might actually have higher costs than the current best's value so it would be skipped. Wouldn't you want to compare value vs. value and cost vs. cost? – Thomas Aug 14 '19 at 12:536more comments