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A novel perturbation based compression complexity measure for networks

机译:一种新颖的基于扰动的网络压缩复杂度度量

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摘要

Measuring complexity of brain networks in the form of integrated information is a leading approach towards building a fundamental theory of consciousness. Integrated Information Theory (IIT) has gained attention in this regard due to its theoretically strong framework. Nevertheless, it faces some limitations such as current state dependence, computational intractability and inability to be applied to real brain data. On the other hand, Perturbational Complexity Index (PCI) is a clinical measure for distinguishing different levels of consciousness. Though PCI claims to capture the functional differentiation and integration in brain networks (similar to IIT), its link to integrated information is rather weak. Inspired by these two perspectives, we propose a new complexity measure for brain networks – ΦC using a novel perturbation based compression-complexity approach that serves as a bridge between the two, for the first time. ΦC is founded on the principles of lossless data compression based complexity measures which is computed by a perturbational approach. ΦC exhibits following salient innovations: (i) mathematically well bounded, (ii) negligible current state dependence unlike Φ, (iii) network complexity measured as compression-complexity rather than as an infotheoretic quantity, and (iv) lower computational complexity since number of atomic bipartitions scales linearly with the number of nodes of the network, thus avoiding combinatorial explosion. Our computations have revealed that ΦC has similar hierarchy to <Φ> for several multiple-node networks and it demonstrates a rich interplay between differentiation, integration and entropy of the nodes of a network.ΦC is a promising heuristic measure to characterize network complexity (and hence might be useful in contributing to building a measure of consciousness) with potential applications in estimating brain complexity on neurophysiological data.
机译:以综合信息的形式衡量大脑网络的复杂性是建立意识基础理论的一种领先方法。集成信息理论(IIT)由于其理论上强大的框架而在这方面获得了关注。尽管如此,它仍然面临一些局限性,例如当前状态依赖性,计算上的棘手性以及无法应用于真实大脑数据的能力。另一方面,摄动复杂度指数(PCI)是区分不同意识水平的临床指标。尽管PCI声称捕获了大脑网络(类似于IIT)中的功能差异和集成,但它与集成信息的联系却很薄弱。受这两种观点的启发,我们提出了一种针对大脑网络的新的复杂性度量方法- Φ C < / math>首次使用了基于扰动的新颖压缩复杂性方法,这是两者之间的桥梁。 Φ C 基于基于无损数据压缩的复杂性度量原理,通过微扰方法计算。 Φ C 具有以下显着创新:(i)数学上界良好,( ii)不同于Φ的可忽略的电流状态依赖性;(iii)以压缩复杂度而不是以信息理论量来衡量的网络复杂度;以及(iv)较低的计算复杂度,因为原子划分的数量与网络节点的数量成线性比例,因此避免组合爆炸。我们的计算表明, < mrow> Φ C 具有与<Φ>相似的层次结构几个多节点网络,它展示了网络节点的分化,集成和熵之间的丰富相互作用。 Φ C < / mrow> 是一种很有前途的启发式测量方法,用于表征网络复杂性(因此可能有助于建立意识测度),并可能用于估计神经生理数据上的大脑复杂性。

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