2024
DOI: 10.3390/e26121030
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Fractal Conditional Correlation Dimension Infers Complex Causal Networks

Özge Canlı Usta,
Erik M. Bollt

Abstract: Determining causal inference has become popular in physical and engineering applications. While the problem has immense challenges, it provides a way to model the complex networks by observing the time series. In this paper, we present the optimal conditional correlation dimensional geometric information flow principle (oGeoC) that can reveal direct and indirect causal relations in a network through geometric interpretations. We introduce two algorithms that utilize the oGeoC principle to discover the direct l… Show more

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