复杂系统中高阶结构的可扩展协同效应优先骨干分解

Thomas F. Varley
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摘要

在过去的十年中,人们对多元信息论领域以及对新兴的高阶交互作用的研究产生了极大的兴趣。这些 "协同 "依赖关系反映了 "整体 "中的信息,而不是任何 "部分 "中的信息。部分信息分解(PID)可以说是探索协同作用最成功的框架。尽管 PID 具有相当大的威力,但它也有一些局限性,限制了其普遍适用性。随后,人们引入了其他启发式测量方法,如 O-信息,不过这些方法通常只能提供冗余/协同优势的汇总统计,而不能直接洞察协同效应本身。为了解决这个问题,我们提出了另一种分解方法,它以协同作用为先,比 PID 的扩展更为灵活,并且具有直接的解释。我们将协同作用定义为:一组元素的联合状态中编码的信息,在对任何单个元素进行微创扰动后都会丢失。通过将这一概念推广到元素集,我们构建了一个完全有序的部分协同原子 "骨干",它横跨整个系统的尺度。这种方法适用于熵和库尔贝克-莱布勒发散,进而适用于总相关性和单目标互信息(从而恢复 "骨干 "PID)。最后,我们展示了图中边缘的协同组合如何通过可传播性支持全局整合,从而说明这种方法可用于分解信息论之外的高阶互动。最后,我们将讨论这种协同结构视角如何加深我们对复杂系统中部分-整体关系的理解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A scalable synergy-first backbone decomposition of higher-order structures in complex systems

A scalable synergy-first backbone decomposition of higher-order structures in complex systems
In the last decade, there has been an explosion of interest in the field of multivariate information theory and the study of emergent, higher-order interactions. These “synergistic” dependencies reflect information that is in the “whole” but not any of the “parts.” Arguably the most successful framework for exploring synergies is the partial information decomposition (PID). Despite its considerable power, the PID has a number of limitations that restrict its general applicability. Subsequently, other heuristic measures, such as the O-information, have been introduced, although these measures typically only provide a summary statistic of redundancy/synergy dominance, rather than direct insight into the synergy itself. To address this issue, we present an alternative decomposition that is synergy-first, scales much more gracefully than the PID, and has a straightforward interpretation. We define synergy as that information encoded in the joint state of a set of elements that would be lost following the minimally invasive perturbation on any single element. By generalizing this idea to sets of elements, we construct a totally ordered “backbone” of partial synergy atoms that sweeps the system’s scale. This approach applies to the entropy, the Kullback-Leibler divergence, and by extension, to the total correlation and the single-target mutual information (thus recovering a “backbone” PID). Finally, we show that this approach can be used to decompose higher-order interactions beyond information theory by showing how synergistic combinations of edges in a graph support global integration via communicability. We conclude by discussing how this perspective on synergistic structure can deepen our understanding of part-whole relationships in complex systems.
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