Drzazga-Szczȩśniak Ewa A, Kaczmarek Adam Z, Kielak Marta, Gupta Shivam, Gnyp Jakub T, Pluta Katarzyna, Ba K Zygmunt, Szczepanik Piotr, Szczȩśniak Dominik
Department of Physics, Faculty of Production Engineering and Materials Technology, Czestochowa University of Technology, 19 Armii Krajowej Ave., 42200 Czestochowa, Poland.
Institute of Physics, Faculty of Science and Technology, Jan Dlugosz University in Czestochowa, 13/15 Armii Krajowej Ave., 42200 Czestochowa, Poland.
Entropy (Basel). 2025 Apr 10;27(4):410. doi: 10.3390/e27040410.
In this study, the cumulative effect of the empirical probability distribution of a random variable is identified as a factor that amplifies the occurrence of extreme events in datasets. To quantify this observation, a corresponding information measure is introduced, drawing upon Shannon entropy for joint probabilities. The proposed approach is validated using selected market data as case studies, encompassing various instances of extreme events. In particular, the results indicate that the introduced cumulative measure exhibits distinctive signatures of such events, even when the data are relatively noisy. These findings highlight the potential of the discussed concept for developing a new class of related indicators or classifiers.
在本研究中,随机变量的经验概率分布的累积效应被确定为一个放大数据集中极端事件发生的因素。为了量化这一观察结果,引入了一种相应的信息测度,它借鉴了联合概率的香农熵。所提出的方法通过使用选定的市场数据作为案例研究进行验证,这些案例涵盖了各种极端事件的情况。特别是,结果表明,即使数据相对有噪声,引入的累积测度也呈现出此类事件的独特特征。这些发现突出了所讨论概念在开发一类新的相关指标或分类器方面的潜力。