Data transfer is one of the main functions of the Internet. The Internet
consists of a large number of interconnected subnetworks or domains, known as
Autonomous Systems. Due to privacy and other reasons the information about what
route to use to reach devices within other Autonomous Systems is not readily
available to any given Autonomous System. The Border Gateway Protocol is
responsible for discovering and distributing this reachability information to
all Autonomous Systems. Since the topology of the Internet is highly dynamic,
all Autonomous Systems constantly exchange and update this reachability
information in small chunks, known as routing control packets or Border Gateway
Protocol updates. Motivated by scalability and predictability issues with the
dynamics of these updates in the quickly growing Internet, we conduct a
systematic time series analysis of Border Gateway Protocol update rates. We
find that Border Gateway Protocol update time series are extremely volatile,
exhibit long-term correlations and memory effects, similar to seismic time
series, or temperature and stock market price fluctuations. The presented
statistical characterization of Border Gateway Protocol update dynamics could
serve as a ground truth for validation of existing and developing better models
of Internet interdomain routing