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 process from observed data, by making an explicit link between the differential entropy rate and the Shannon entropy rate of a quantised version of the original data. Estimation is performed by a Shannon entropy rate estimator, and then converted to a differential entropy rate estimate. We show that this technique inherits many important statistical properties from the Shannon entropy rate estimator. The estimator is able to provide better estimates than the defined relative measures and much quicker estimates than known absolute measures, for strongly correlated processes. Finally, we analyse the complexity of the estimation technique and test the robustness to non-stationarity, and show that none of the current techniques are robust to non-stationarity, even if they are robust to strong correlations.
翻译:在信息理论中,对固定离散的定值透视过程的精确率估算是研究周密的一个问题。然而,对固定连续定值的定值透查过程的精确率估算没有得到同样的重视。事实上,许多当前技术无法准确估计或描述高度关联过程(例如Fractional Gaussian Noise 和 ARFIMA (0,d,0)) 的差分通率的复杂度的复杂度。对于一些人甚至无法察觉进化率的趋势,例如当它增加/减少、最高或无损估计趋势时,作为其 Hurst 参数的函数。然而,最近开发的技术以高计算成本提供了准确的估算。在本文中,我们定义了一种强度的对连续定值的定值透析过程的精确率进行非对等估计的方法,通过将差异性增/减少、最大或无损趋势的精确度趋势值趋势,而我们定义的精确度的精确度估计则由一个更精确的恒定的精确度测算方法进行,而我们定义的精确度的精确度的精确度测算方法则显示这个重要的精确度测算率的精确度的精确度测算率。