This Springer brief addresses the challenges encountered in the study of
the optimization of time-nonhomogeneous Markov chains. It develops new
insights and new methodologies for systems in which concepts such as
stationarity, ergodicity, periodicity and connectivity do not apply.
This brief introduces the novel concept of confluencity and applies a
relative optimization approach. It develops a comprehensive theory for
optimization of the long-run average of time-nonhomogeneous Markov
chains. The book shows that confluencity is the most fundamental concept
in optimization, and that relative optimization is more suitable for
treating the systems under consideration than standard ideas of dynamic
programming. Using confluencity and relative optimization, the author
classifies states as confluent or branching and shows how the
under-selectivity issue of the long-run average can be easily addressed,
multi-class optimization implemented, and Nth biases and Blackwell
optimality conditions derived. These results are presented in a book for
the first time and so may enhance the understanding of optimization and
motivate new research ideas in the area.