TL;DR
This paper introduces novel online quantile estimation techniques using Hermite series estimators, enabling real-time, arbitrary quantile estimation and distribution function analysis on data streams with proven consistency and competitive performance.
Contribution
It develops new Hermite series-based algorithms for online quantile and distribution function estimation, including a novel exponentially weighted expansion for dynamic settings.
Findings
Algorithms are capable of estimating arbitrary quantiles in real-time.
The methods are proven to be consistent under certain conditions.
Simulation and real data tests show competitive performance.
Abstract
Sequential quantile estimation refers to incorporating observations into quantile estimates in an incremental fashion thus furnishing an online estimate of one or more quantiles at any given point in time. Sequential quantile estimation is also known as online quantile estimation. This area is relevant to the analysis of data streams and to the one-pass analysis of massive data sets. Applications include network traffic and latency analysis, real time fraud detection and high frequency trading. We introduce new techniques for online quantile estimation based on Hermite series estimators in the settings of static quantile estimation and dynamic quantile estimation. In the static quantile estimation setting we apply the existing Gauss-Hermite expansion in a novel manner. In particular, we exploit the fact that Gauss-Hermite coefficients can be updated in a sequential manner. To treat…
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