Using hyperspheres as antibody recognition regions is an established abstraction which was initially proposed by theoretical
immunologists for use in the modeling of antibody-antigen interactions. This abstraction is also employed in the development
of many artificial immune system algorithms. Here, we show several undesirable properties of hyperspheres, especially when
operating in high dimensions and discuss the problems of hyperspheres as recognition regions and how they have affected overall
performance of certain algorithms in the context of real-valued negative selection.