论文标题
非指数增长配置空间的缩放扩展的信息几何形状
Information geometry of scaling expansions of non-exponentially growing configuration spaces
论文作者
论文摘要
许多随机复杂系统的特征是它们的配置空间并不能作为自由度的函数呈指数增长。使用缩放扩展是一种自然的方法,可以根据系统的缩放指数来衡量配置空间体积的渐近生长。这些缩放指数又可以用来定义唯一确定系统统计数据的通用类。每个系统都属于这些类别之一。在这里,我们得出样品空间缩放扩展的信息几何形状。特别是,我们以系统和连贯的方式呈现变形的对数和度量。我们观察到曲率的相变。相变的特征长度r可以很好地测量,对应于半径2R的球具有与统计歧管相同的曲率。相对于系统尺寸的特征长度的增加与亚指数样本空间生长有关,与强烈约束和相关的复合系统有关。特征长度的减小对应于超指数样品空间生长,例如在随着结构发展而发展的系统中发生。恒定曲率意味着与多项式统计以及传统的Boltzmann-Gibbs或Shannon统计数据相关的指数样本空间生长。这使我们能够表征与概率分布不同家族对应的统计流形之间的过渡。
Many stochastic complex systems are characterized by the fact that their configuration space doesn't grow exponentially as a function of the degrees of freedom. The use of scaling expansions is a natural way to measure the asymptotic growth of the configuration space volume in terms of the scaling exponents of the system. These scaling exponents can, in turn, be used to define universality classes that uniquely determine the statistics of a system. Every system belongs to one of these classes. Here we derive the information geometry of scaling expansions of sample spaces. In particular, we present the deformed logarithms and the metric in a systematic and coherent way. We observe a phase transition for the curvature. The phase transition can be well measured by the characteristic length r, corresponding to a ball with radius 2r having the same curvature as the statistical manifold. Increasing characteristic length with respect to the size of the system is associated with sub-exponential sample space growth is associated with strongly constrained and correlated complex systems. Decreasing of the characteristic length corresponds to super-exponential sample space growth that occurs for example in systems that develop structure as they evolve. Constant curvature means exponential sample space growth that is associated with multinomial statistics, and traditional Boltzmann-Gibbs, or Shannon statistics applies. This allows us to characterize transitions between statistical manifolds corresponding to different families of probability distributions.