A Large Deviation Inequality for -mixing Time Series and its
Applications to the Functional Kernel Regression Model
Abstract
We give a new large deviation inequality for sums of random variables of the form for , fixed, where the underlying process is -mixing. The inequality can be used to derive concentration inequalities. We demonstrate its usefulness in the functional kernel regression model of Ferraty et al. (2007) where we study the consistency of dynamic forecasts.
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