In this paper we are dealing with the frequent itemset mining. We concentrate
on the special case that we only want to identify the most frequent itemset of
length N. To do that, we present a pattern on how to consider this search as an
optimization problem. First, we extract the frequency of all possible
2-item-sets. Then the optimization problem is to find the N objects, for which
the minimal frequency of all containing 2-item-sets is maximal. This
combinatorial optimization problem can be solved by any optimization algorithm.
We will solve them with Quantum Annealing and QUBO with QbSolv by D-Wave. The
advantages of MFIO in comparison to the state-of-the-art-approach are the
enormous reduction of time need, reduction of memory need and the omission of a
threshold. The disadvantage is that there is no guaranty for accuracy of the
result. The evaluation indicates good results