Self-similar processes are stochastic processes satisfying a mathematically precise version of the self-similarity property. Several related properties have this name, and some are defined here.

A self-similar phenomenon behaves the same when viewed at different degrees of magnification, or different scales on a dimension. Because stochastic processes are random variables with a time and a space component, their self-similarity properties are defined in terms of how a scaling in time relates to a scaling in space.

Distributional self-similarity

Definition

A continuous-time stochastic process ( X t ) t 0 {\displaystyle (X_{t})_{t\geq 0}} is called self-similar with parameter H > 0 {\displaystyle H>0} if for all a > 0 {\displaystyle a>0} , the processes ( X a t ) t 0 {\displaystyle (X_{at})_{t\geq 0}} and ( a H X t ) t 0 {\displaystyle (a^{H}X_{t})_{t\geq 0}} have the same law.

Examples

  • The Wiener process (or Brownian motion) is self-similar with H = 1 / 2 {\displaystyle H=1/2} .
  • The fractional Brownian motion is a generalisation of Brownian motion that preserves self-similarity; it can be self-similar for any H ( 0 , 1 ) {\displaystyle H\in (0,1)} .
  • The class of self-similar Lévy processes are called stable processes. They can be self-similar for any H [ 1 / 2 , ) {\displaystyle H\in [1/2,\infty )} .

Second-order self-similarity

Definition

A wide-sense stationary process ( X n ) n 0 {\displaystyle (X_{n})_{n\geq 0}} is called exactly second-order self-similar with parameter H > 0 {\displaystyle H>0} if the following hold:

(i) V a r ( X ( m ) ) = V a r ( X ) m 2 ( H 1 ) {\displaystyle \mathrm {Var} (X^{(m)})=\mathrm {Var} (X)m^{2(H-1)}} , where for each k N 0 {\displaystyle k\in \mathbb {N} _{0}} , X k ( m ) = 1 m i = 1 m X ( k 1 ) m i , {\displaystyle X_{k}^{(m)}={\frac {1}{m}}\sum _{i=1}^{m}X_{(k-1)m i},}
(ii) for all m N {\displaystyle m\in \mathbb {N} ^{ }} , the autocorrelation functions r {\displaystyle r} and r ( m ) {\displaystyle r^{(m)}} of X {\displaystyle X} and X ( m ) {\displaystyle X^{(m)}} are equal.

If instead of (ii), the weaker condition

(iii) r ( m ) r {\displaystyle r^{(m)}\to r} pointwise as m {\displaystyle m\to \infty }

holds, then X {\displaystyle X} is called asymptotically second-order self-similar.

Connection to long-range dependence

In the case 1 / 2 < H < 1 {\displaystyle 1/2 , asymptotic self-similarity is equivalent to long-range dependence. Self-similar and long-range dependent characteristics in computer networks present a fundamentally different set of problems to people doing analysis and/or design of networks, and many of the previous assumptions upon which systems have been built are no longer valid in the presence of self-similarity.

Long-range dependence is closely connected to the theory of heavy-tailed distributions. A distribution is said to have a heavy tail if

lim x e λ x Pr [ X > x ] = for all  λ > 0. {\displaystyle \lim _{x\to \infty }e^{\lambda x}\Pr[X>x]=\infty \quad {\mbox{for all }}\lambda >0.\,}

One example of a heavy-tailed distribution is the Pareto distribution. Examples of processes that can be described using heavy-tailed distributions include traffic processes, such as packet inter-arrival times and burst lengths.

Examples

  • The Tweedie convergence theorem can be used to explain the origin of the variance to mean power law, 1/f noise and multifractality, features associated with self-similar processes.
  • Ethernet traffic data is often self-similar. Empirical studies of measured traffic traces have led to the wide recognition of self-similarity in network traffic.

References

Sources

  • Kihong Park; Walter Willinger (2000), Self-Similar Network Traffic and Performance Evaluation, New York, NY, USA: John Wiley & Sons, Inc., doi:10.1002/047120644X, ISBN 0471319740

Evolution of the selfsimilar solution (2.13) plotted in (a) the

PPT Selfsimilar Distributions PowerPoint Presentation, free download

Self Similar?

Sample path of a selfsimilar process. Starting with the sample path of

Schematic representations of selfsimilar structures and selfsimilar