Negative selection algorithm is one of the most widely used techniques in the field of artificial immune systems. It is primarily
used to detect changes in data/behavior patterns by generating detectors in the complementary space (from given normal samples).
The negative selection algorithm generally uses binary matching rules to generate detectors. The purpose of the paper is to
show that the low-level representation of binary matching rules is unable to capture the structure of some problem spaces.
The paper compares some of the binary matching rules reported in the literature and study how they behave in a simple two-dimensional
real-valued space. In particular, we study the detection accuracy and the areas covered by sets of detectors generated using
the negative selection algorithm.