In probability theory, a continuousstochastic process is a type of stochastic process that may be said to be "continuous" as a function of its "time" or index parameter. Continuity is a nice property for a process to have, since it implies that they are well-behaved in some sense, and, therefore, much easier to analyze. It is implicit here that the index of the stochastic process is a continuous variable. Some authors define a "continuous process" as only requiring that the index variable be continuous, without continuity of sample paths: in some terminology, this would be a continuous-time stochastic process, in parallel to a "discrete-time process". Given the possible confusion, caution is needed.
Given a time t ∈ T, X is said to be continuous in probability at t if, for all ε > 0, Equivalently, X is continuous in probability at time t if
Continuity in distribution
Given a time t ∈ T, X is said to be continuous in distribution at t if for all points x at which Ft is continuous, where Ft denotes the cumulative distribution function of the random variableXt.
X is said to be sample continuous if Xt is continuous in t for P-almost all ω ∈ Ω. Sample continuity is the appropriate notion of continuity for processes such as Itō diffusions.
Feller continuity
X is said to be a Feller-continuous process if, for any fixedt ∈ T and any bounded, continuous and Σ-measurable function g : S → R, Ex depends continuously upon x. Here x denotes the initial state of the process X, and Ex denotes expectation conditional upon the event that X starts at x.
continuity with probability one implies continuity in probability;
continuity in mean-square implies continuity in probability;
continuity with probability one neither implies, nor is implied by, continuity in mean-square;
continuity in probability implies, but is not implied by, continuity in distribution.
It is tempting to confuse continuity with probability one with sample continuity. Continuity with probability one at time t means that P = 0, where the event At is given by and it is perfectly feasible to check whether or not this holds for each t ∈ T. Sample continuity, on the other hand, requires that P = 0, where A is an uncountableunion of events, so it may not actually be an event itself, so P may be undefined! Even worse, even if A is an event, P can be strictly positive even if P = 0 for every t ∈ T. This is the case, for example, with the telegraph process.