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Fast and exact search for the partition with minimal information loss

机译:快速准确地搜索分区,而信息丢失最少

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摘要

In analysis of multi-component complex systems, such as neural systems, identifying groups of units that share similar functionality will aid understanding of the underlying structures of the system. To find such a grouping, it is useful to evaluate to what extent the units of the system are separable. Separability or inseparability can be evaluated by quantifying how much information would be lost if the system were partitioned into subsystems, and the interactions between the subsystems were hypothetically removed. A system of two independent subsystems are completely separable without any loss of information while a system of strongly interacted subsystems cannot be separated without a large loss of information. Among all the possible partitions of a system, the partition that minimizes the loss of information, called the Minimum Information Partition (MIP), can be considered as the optimal partition for characterizing the underlying structures of the system. Although the MIP would reveal novel characteristics of the neural system, an exhaustive search for the MIP is numerically intractable due to the combinatorial explosion of possible partitions. Here, we propose a computationally efficient search to precisely identify the MIP among all possible partitions by exploiting the submodularity of the measure of information loss, when the measure of information loss is submodular. Submodularity is a mathematical property of set functions which is analogous to convexity in continuous functions. Mutual information is one such submodular information loss function, and is a natural choice for measuring the degree of statistical dependence between paired sets of random variables. By using mutual information as a loss function, we show that the search for MIP can be performed in a practical order of computational time for a reasonably large system (N = 100 ∼ 1000). We also demonstrate that MIP search allows for the detection of underlying global structures in a network of nonlinear oscillators.
机译:在分析多组件复杂系统(例如神经系统)时,识别共享相似功能的单元组将有助于理解系统的基础结构。为了找到这样的分组,评估系统的各个单元在多大程度上可分离是有用的。可以通过量化如果将系统划分为多个子系统并假设删除了子系统之间的交互作用而损失了多少信息来评估可分离性或不可分离性。由两个独立子系统组成的系统是完全可分离的,不会丢失任何信息,而由多个相互作用强的子系统组成的系统则不能在没有大量信息丢失的情况下进行分离。在系统的所有可能分区中,可以将使信息丢失最小化的分区(称为最小信息分区(MIP))视为表征系统底层结构的最佳分区。尽管MIP可以揭示神经系统的新颖特征,但是由于可能分区的组合爆炸,对MIP进行详尽的搜索在数值上是棘手的。在这里,我们提出一种计算有效的搜索,以在信息丢失量度为亚模量时,通过利用信息丢失量度的亚模量,在所有可能的分区中准确识别MIP。子模量是集合函数的数学属性,类似于连续函数中的凸性。互信息是这样一种亚模信息损失函数,并且是测量成对的随机变量集之间的统计依赖性程度的自然选择。通过使用互信息作为损失函数,我们表明对于一个相当大的系统(N = 100〜1000),可以按照计算时间的实际顺序执行对MIP的搜索。我们还证明了MIP搜索可以检测非线性振荡器网络中的基础全局结构。

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