Many proteins are composed of two or more subunits, each associated with different polypeptide chains. The number and the
arrangement of subunits forming a protein are referred to as quaternary structure. The quaternary structure of a protein is important, since it characterizes the biological function of the protein when it
is involved in specific biological processes. Unfortunately, quaternary structures are not trivially deducible from protein
amino acid sequences. In this work, we propose a protein quaternary structure classification method exploiting the functional
domain composition of proteins. It is based on a nearest neighbor condensation technique in order to reduce both the portion
of dataset to be stored and the number of comparisons to carry out. Our approach seems to be promising, in that it guarantees
an high classification accuracy, even though it does not require the entire dataset to be analyzed. Indeed, experimental evaluations
show that the method here proposed selects a small dataset portion for the classification (of the order of the 6.43%) and
that it is very accurate (97.74%).