My solution:

a. Create a hash table with m keys, one for each value in B. Each key in H maps to a dynamic array of sorted indices containing indices in A that are equal to B[i]. This takes O(n) time. We go through each index j in A. If key A[i] exists in H (O(1) time) then add an value containing the index j of A to the list of indices that H[A[i]] maps to.

At this point we have 'binned' n elements into m bins. However, total storage is just O(n).

b. The 2nd part of the algorithm involves maintaining a ‘left’ index and a ‘right’ index for each list in H. Lets create two arrays of size m called L and R that contain these values. Initially in our example,

We also keep track of the “best” minimum window.

We then iterate over the following actions on L and R which are inherently greedy:
i. In each iteration, we compute the minimum and maximum values in L and R.
For L, Lmax - Lmin is the window and for R, Rmax - Rmin is the window. We update the best window if one of these windows is better than the current best window. We use a min heap to keep track of the minimum element in L and a max heap to keep track of the largest element in R. These take O(m*log(m)) time to build.
ii. From a ‘greedy’ perspective, we want to take the action that will minimize the window size in each L and R. For L it intuitively makes sense to increment the minimum index, and for R, it makes sense to decrement the maximum index.

We want to increment the array position for the minimum value until it is larger than the 2nd smallest element in L, and similarly, we want to decrement the array position for the largest value in R until it is smaller than the 2nd largest element in R.

Next, we make a key observation:

If L[i] is the minimum value in L and R[i] is less than the 2nd smallest element in L, ie, if R[i] were to still be the minimum value in L if L[i] were replaced with R[i], then we are done. We now have the “best” index in list i that can contribute to the minimum window. Also, all the other elements in R cannot contribute to the best window since their L values are all larger than L[i]. Similarly if R[j] is the maximum element in R and L[j] is greater than the 2nd largest value in R, we are also done by setting R[j] = L[j]. Any other index in array i to the left of L[j] has already been accounted for as have all indices to the right of R[j], and all indices between L[j] and R[j] will perform poorer than L[j].

Otherwise, we simply increment the array position L[i] until it is larger than the 2nd smallest element in L and decrement array position R[j] (where R[j] is the max in R) until it is smaller than the 2nd largest element in R. We compute the windows and update the best window if one of the L or R windows is smaller than the best window. We can do a Fibonacci search to optimally do the increment / decrement. We keep incrementing L[i] using Fibonacci increments until we are larger than the 2nd largest element in L. We can then perform binary search to get the smallest element L[i] that is larger than the 2nd largest element in L, similar for the set R. After the increment / decrement, we pop the largest element from the max heap for R and the minimum element for the min heap for L and insert the new values of L[i] and R[j] into the heaps. This is an O(log(m)) operation.

Step ii. would terminate when Lmin can’t move any more to the right or Rmax can’t move any more to the left (as the R/L values are the same). Note that we can have scenarios in which L[i] = R[i] but if it is not the minimum element in L or the maximum element in R, the algorithm would still continue.

Runtime analysis:
a. Creation of the hash table takes O(n) time and O(n) space.
b. Creation of heaps: O(m*log(m)) time and O(m) space.
c. The greedy iterative algorithm is a little harder to analyze. Its runtime is really bounded by the distribution of elements. Worst case, we cover all the elements in each array in the hash table. For each element, we perform an O(log(m)) heap update.

Worst case runtime is hence O(n*log(m)) for the iterative greedy algorithm. In the best case, we discover very fast that L[i] = R[i] for the minimum element in L or the maximum element in R…run time is O(1)*log(m) for the greedy algorithm!

Average case seems really hard to analyze. What is the average “convergence” of this algorithm to the minimum window. If we were to assume that the Fibonacci increments / binary search were to help, we could say we only look at m*log(n/m) elements (every list has n/m elements) in the average case. In that case, the running time of the greedy algorithm would be m*log(n/m)*log(m).

Total running time
Best case: O(n + m*log(m) + log(m)) time = O(n) assuming m << n
Average case: O(n + m*log(m) + m*log(n/m)*log(m)) time = O(n) assuming m << n.
Worst case: O(n + n*log(m) + m*log(m)) = O(n*log(m)) assuming m << n.

Space: O(n + m) (hashtable and heaps) always.

Edit: Here is a worked out example:

A[5, 1, 1, 5, 6, 1, 1, 5]
B[5, 6]

H:
{
5 => {1, 4, 8}
6 => {5}
}

Greedy Algorithm:

L => {1, 1}
R => {3, 1}

Iteration 1:
a. Lmin = 1 (since H{5}[1] < H{6}[1]), Lmax = 5. Window: 5 - 1 + 1= 5
Increment Lmin pointer, it now becomes 2.

L => {2, 1}

Rmin = H{6}[1] = 5, Rmax = H{5}[3] = 8. Window = 8 - 5 + 1 = 4. Best window so far = 4 (less than 5 computed above).
We also note the indices in A (5, 8) for the best window.

Decrement Rmax, it now becomes 2 and the value is 4.

R => {2, 1}

b. Now, Lmin = 4 (H{5}[2]) and the index i in L is 1. Lmax = 5 (H{6}[1]) and the index in L is 2.
We can't increment Lmin since L[1] = R[1] = 2. Thus we just compute the window now.

The window = Lmax - Lmin + 1 = 2 which is the best window so far.

Thus, the best window in A = (4, 5).