Jump to content

Probabilistic analysis of algorithms

From Wikipedia, the free encyclopedia
This is an old revision of this page, as edited by Nageh (talk | contribs) at 18:12, 4 March 2011. The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.

In analysis of algorithms, probabilistic analysis of algorithms is an approach to estimate the computational complexity of an algorithm or a computational problem. It starts from an assumption about a probabilistic distribution of the set of all possible inputs. This assumption is then used to design an efficient algorithm or to derive the complexity of a known algorithm.

This approach is not the same as that of probabilistic algorithms, but the two may be combined.

For non-probabilistic, more specifically, for deterministic algorithms, the most common types of complexity estimates are

  • the average-case complexity (expected time complexity)[dubiousdiscuss], in which given an input distribution, the expected time of an algorithm is evaluated
  • the almost always complexity estimates, in which given an input distribution, it is evaluated that the algorithm admits a given complexity estimate that almost surely holds.

Probabilistic Algorithms

In probabilistic analysis of probabilistic (randomized) algorithms, the distributions or averaging for all possible choices in randomized steps are also taken into an account, in addition to the input distributions.

See also