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Stochastic kernel estimation

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In statistics, a stochastic kernel estimate is an estimate of the transition function of a (usually discrete-time) stochastic process. Often, this is an estimate of the conditional density function obtained using kernel density estimation. The estimated conditional distribution can then be used to derive estimates of other properties of the stochastic process, such as the stationary distribution.