This paper suggests a nonparametric method for stochastic volatility estimation
and its comparison with other widespread econometric algorithms. A major advantage of this
approach is that the volatility can be estimated even in the case of its completely unknown
probability distribution. As demonstrated below, the new method has better characteristics
against the popular parametric algorithms based on the GARCH model and Kalman filter.