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二进制通信信道中的信号波动与信息传输速率

Signal Fluctuations and the Information Transmission Rates in Binary Communication Channels.

作者信息

Pregowska Agnieszka

机构信息

Institute of Fundamental Technological Research, Polish Academy of Sciences, Pawinskiego 5B, 02-106 Warsaw, Poland.

出版信息

Entropy (Basel). 2021 Jan 10;23(1):92. doi: 10.3390/e23010092.

Abstract

In the nervous system, information is conveyed by sequence of action potentials, called spikes-trains. As MacKay and McCulloch suggested, spike-trains can be represented as bits sequences coming from Information Sources (IS). Previously, we studied relations between spikes' Information Transmission Rates (ITR) and their correlations, and frequencies. Now, I concentrate on the problem of how spikes fluctuations affect ITR. The IS are typically modeled as stationary stochastic processes, which I consider here as two-state Markov processes. As a spike-trains' fluctuation measure, I assume the standard deviation σ, which measures the average fluctuation of spikes around the average spike frequency. I found that the character of ITR and signal fluctuations relation strongly depends on the parameter s being a sum of transitions probabilities from a no spike state to spike state. The estimate of the Information Transmission Rate was found by expressions depending on the values of signal fluctuations and parameter . It turned out that for smaller s<1, the quotient ITRσ has a maximum and can tend to zero depending on transition probabilities, while for 1<s, the ITRσ is separated from 0. Additionally, it was also shown that ITR quotient by variance behaves in a completely different way. Similar behavior was observed when classical Shannon entropy terms in the Markov entropy formula are replaced by their approximation with polynomials. My results suggest that in a noisier environment (1<s), to get appropriate reliability and efficiency of transmission, IS with higher tendency of transition from the no spike to spike state should be applied. Such selection of appropriate parameters plays an important role in designing learning mechanisms to obtain networks with higher performance.

摘要

在神经系统中,信息通过一系列动作电位(称为脉冲序列)进行传递。正如麦凯和麦卡洛克所指出的,脉冲序列可以表示为来自信息源(IS)的比特序列。此前,我们研究了脉冲的信息传输速率(ITR)与其相关性和频率之间的关系。现在,我专注于脉冲波动如何影响ITR的问题。信息源通常被建模为平稳随机过程,在这里我将其视为两态马尔可夫过程。作为脉冲序列波动的度量,我采用标准差σ,它衡量了脉冲围绕平均脉冲频率的平均波动。我发现ITR与信号波动关系的特征强烈依赖于参数s,s是从无脉冲状态到有脉冲状态的转移概率之和。信息传输速率的估计是通过依赖于信号波动值和参数的表达式得出的。结果表明,对于较小的s<1,商ITRσ有一个最大值,并且根据转移概率可能趋于零,而对于1<s,ITRσ与0分离。此外,还表明ITR与方差的商表现出完全不同的行为。当马尔可夫熵公式中的经典香农熵项被其多项式近似取代时,也观察到了类似的行为。我的结果表明,在噪声较大的环境(1<s)中,为了获得适当的传输可靠性和效率,应该应用从无脉冲到有脉冲状态具有更高转移倾向的信息源。这种适当参数的选择在设计学习机制以获得高性能网络方面起着重要作用。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/70ab/7826906/e86f2bb0f005/entropy-23-00092-g001.jpg

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