Future communications and data networks are expected to be largely cognitive
self-organizing networks (CSON). Such networks will have the essential property
of cognitive self-organization, which can be achieved using machine learning
techniques (e.g., deep learning). Despite the potential of these techniques,
these techniques in their current form are vulnerable to adversarial attacks
that can cause cascaded damages with detrimental consequences for the whole
network. In this paper, we explore the effect of adversarial attacks on CSON.
Our experiments highlight the level of threat that CSON have to deal with in
order to meet the challenges of next-generation networks and point out
promising directions for future work.