Abstract:
We propose an adaptive algorithm for tracking historical volatility. The algorithm
borrows ideas from nonparametric statistics. In particular, we assume that the volatility is a
several times differentiable function with a bounded highest derivative. We propose an adaptive
algorithm with a Kalman filter structure, which guarantees the same asymptotics (well known
from statistical inference) with respect to the sample size $n$, $n\to\infty$. The tuning procedure for
this filter is simpler than for a GARCH filter.