Mazur, J. E. (2006).
Mathematical models and the experimental analysis of behavior.
Journal of the Experimental Analysis of Behavior, 85, 275-
291.
The use of mathematical models in the experimental analysis of behavior has
increased over the years, and they offer several advantages. Mathematical
models require theorists to be precise and unambiguous, often allowing
comparisons of competing theories that sound similar when stated in words.
Sometimes different mathematical models may make equally accurate predictions
for a large body of data. In such cases, it is important to find and
investigate situations for which the competing models make different predictions
because, unless two models are actually mathematically equivalent, they are
based on different assumptions about the psychological processes that underlie
an observed behavior. Mathematical models developed in basic behavioral
research have been used to predict and control behavior in applied settings, and
they have guided research in other areas of psychology. A good mathematical
model can provide a common framework for understanding what might otherwise
appear to be diverse and unrelated behavioral phenomena. Because psychologists
vary in their quantitative skills and in their tolerance for mathematical
equations, it is important for those who develop mathematical models of behavior
to find ways (such as verbal analogies, pictorial representations, or concrete
examples) to communicate the key premises of their models to nonspecialists.
Key words: mathematical models, equations, behavior, reinforcement