599 Minimum Index Sum of Two Lists

599. Minimum Index Sum of Two Lists

1. Question

Suppose Andy and Doris want to choose a restaurant for dinner, and they both have a list of favorite restaurants represented by strings.

You need to help them find out their common interest with the least list index sum. If there is a choice tie between answers, output all of them with no order requirement. You could assume there always exists an answer.

Example 1:

Input:
["Shogun", "Tapioca Express", "Burger King", "KFC"]
["Piatti", "The Grill at Torrey Pines", "Hungry Hunter Steakhouse", "Shogun"]

Output: ["Shogun"]

Explanation: The only restaurant they both like is "Shogun".

Example 2:

Input:
["Shogun", "Tapioca Express", "Burger King", "KFC"]
["KFC", "Shogun", "Burger King"]

Output: ["Shogun"]

Explanation: The restaurant they both like and have the least index sum is "Shogun" with index sum 1 (0+1).

Note:

  1. The length of both lists will be in the range of [1, 1000].

  2. The length of strings in both lists will be in the range of [1, 30].

  3. The index is starting from 0 to the list length minus 1.

  4. No duplicates in both lists.

2. Implementation

(1) Hash Table

class Solution {
    public String[] findRestaurant(String[] list1, String[] list2) {
        Map<String, Integer> map = new HashMap<>();

        for (int i = 0; i < list1.length; i++) {
            map.put(list1[i], i);
        }

        int minSum = Integer.MAX_VALUE, sum = 0;
        List<String> list = new ArrayList<>();

        for (int j = 0; j < list2.length; j++) {
            if (map.containsKey(list2[j])) {
                sum = j + map.get(list2[j]);

                if (sum < minSum) {
                    list.clear();
                    list.add(list2[j]);
                    minSum = sum;
                }
                else if (sum == minSum) {
                    list.add(list2[j]);
                }
            }
        }
        String[] res = new String[list.size()];
        int index = 0;

        for (String s : list) {
            res[index++] = s;
        }
        return res;
    }
}

3. Time & Space Complexity

Hash Table: 时间复杂度O(m + n)), m为list1的长度, n为list2的长度,空间复杂度O(m)

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