NPD Entropy: A Non-Parametric Differential Entropy Rate Estimator
Andrew Feutrill, Matthew Roughan

TL;DR
This paper introduces a non-parametric method for estimating the differential entropy rate of continuous stochastic processes, effectively handling strong correlations and non-stationarity with improved accuracy and computational efficiency.
Contribution
The paper presents a robust, non-parametric technique linking differential entropy rate estimation to Shannon entropy rate of quantized data, outperforming existing methods in accuracy and speed.
Findings
The proposed estimator provides more accurate differential entropy rate estimates for strongly correlated processes.
It achieves faster computation compared to existing high-cost techniques.
The method demonstrates robustness to non-stationarity, unlike current approaches.
Abstract
The estimation of entropy rates for stationary discrete-valued stochastic processes is a well studied problem in information theory. However, estimating the entropy rate for stationary continuous-valued stochastic processes has not received as much attention. In fact, many current techniques are not able to accurately estimate or characterise the complexity of the differential entropy rate for strongly correlated processes, such as Fractional Gaussian Noise and ARFIMA(0,d,0). To the point that some cannot even detect the trend of the entropy rate, e.g. when it increases/decreases, maximum, or asymptotic trends, as a function of their Hurst parameter. However, a recently developed technique provides accurate estimates at a high computational cost. In this paper, we define a robust technique for non-parametrically estimating the differential entropy rate of a continuous valued stochastic…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Control Systems and Identification · Fault Detection and Control Systems
