Standard quadratic optimization problems (StQPs) provide a versatile
modelling tool in various applications. In this paper, we consider StQPs with a
hard sparsity constraint, referred to as sparse StQPs. We focus on various
tractable convex relaxations of sparse StQPs arising from a mixed-binary
quadratic formulation, namely, the linear optimization relaxation given by the
reformulation-linearization technique, the Shor relaxation, and the relaxation
resulting from their combination. We establish several structural properties of
these relaxations in relation to the corresponding relaxations of StQPs without
any sparsity constraints, and pay particular attention to the rank-one feasible
solutions retained by these relaxations. We then utilize these relations to
establish several results about the quality of the lower bounds arising from
different relaxations. We also present several conditions that ensure the
exactness of each relaxation.Comment: Technical Report, School of Mathematics, The University of Edinburgh,
Edinburgh, EH9 3FD, Scotland, United Kingdo