The communication complexity of two-party protocols is an only 15 years
old complexity measure, but it is already considered to be one of the
fundamen- tal complexity measures of recent complexity theory. Similarly
to Kolmogorov complexity in the theory of sequential computations,
communication complex- ity is used as a method for the study of the
complexity of concrete computing problems in parallel information
processing. Especially, it is applied to prove lower bounds that say
what computer resources (time, hardware, memory size) are necessary to
compute the given task. Besides the estimation of the compu- tational
difficulty of computing problems the proved lower bounds are useful for
proving the optimality of algorithms that are already designed. In some
cases the knowledge about the communication complexity of a given
problem may be even helpful in searching for efficient algorithms to
this problem. The study of communication complexity becomes a
well-defined indepen- dent area of complexity theory. In addition to a
strong relation to several funda- mental complexity measures (and so to
several fundamental problems of com- plexity theory) communication
complexity has contributed to the study and to the understanding of the
nature of determinism, nondeterminism, and random- ness in algorithmics.
There already exists a non-trivial mathematical machinery to handle the
communication complexity of concrete computing problems, which gives a
hope that the approach based on communication complexity will be in-
strumental in the study of several central open problems of recent
complexity theory.