In real-world applications, observations are often constrained to a small fraction of a system. Such spatial subsampling can be caused by the inaccessibility or the sheer size of the system, and cannot be overcome by longer sampling. Spatial subsampling can strongly bias inferences about a system’s aggregated properties. To overcome the bias, we derive analytically a subsampling scaling framework that is applicable to different observables, including distributions of neuronal avalanches, of number of people infected during an epidemic outbreak, and of node degrees. We demonstrate how to infer the correct distributions of the underlying full system, how to apply it to distinguish critical from subcritical systems, and how to disentangle subs...
The size distribution of neuronal avalanches in cortical networks has been reported to follow a powe...
<p><b>a)</b> Illustration: A population with 100 neurons and infinite-range correlations, the averag...
Recent studies have applied dimensionality reduction methods to understand how the multi-dimensional...
In real-world applications, observations are often constrained to a small fraction of a system. Such...
Inferring the dynamics of a system from observations is a challenge, even if one can observe all sys...
When studying real world complex networks, one rarely has full access to all their components. As an...
Complex systems are fascinating because their rich macroscopic properties emerge from the interactio...
Background Many systems in nature are characterized by complex behaviour where large cascades of eve...
Uncovering the topological properties of the brain network is essential for understanding brain func...
The power-law size distributions obtained experimentally for neuronal avalanches are an important ev...
Despite the development of large-scale data-acquisition techniques, experimental observations of com...
Self organized criticality (SOC) has been proposed to govern the dynamics of various complex systems...
When assessing spatially extended complex systems, one can rarely sample the states of all component...
Studies of anatomical and functional connectivity lay down a basis for our understanding of the brai...
Self-organized critical (SOC) systems are complex dynamical systems that may express cascades of eve...
The size distribution of neuronal avalanches in cortical networks has been reported to follow a powe...
<p><b>a)</b> Illustration: A population with 100 neurons and infinite-range correlations, the averag...
Recent studies have applied dimensionality reduction methods to understand how the multi-dimensional...
In real-world applications, observations are often constrained to a small fraction of a system. Such...
Inferring the dynamics of a system from observations is a challenge, even if one can observe all sys...
When studying real world complex networks, one rarely has full access to all their components. As an...
Complex systems are fascinating because their rich macroscopic properties emerge from the interactio...
Background Many systems in nature are characterized by complex behaviour where large cascades of eve...
Uncovering the topological properties of the brain network is essential for understanding brain func...
The power-law size distributions obtained experimentally for neuronal avalanches are an important ev...
Despite the development of large-scale data-acquisition techniques, experimental observations of com...
Self organized criticality (SOC) has been proposed to govern the dynamics of various complex systems...
When assessing spatially extended complex systems, one can rarely sample the states of all component...
Studies of anatomical and functional connectivity lay down a basis for our understanding of the brai...
Self-organized critical (SOC) systems are complex dynamical systems that may express cascades of eve...
The size distribution of neuronal avalanches in cortical networks has been reported to follow a powe...
<p><b>a)</b> Illustration: A population with 100 neurons and infinite-range correlations, the averag...
Recent studies have applied dimensionality reduction methods to understand how the multi-dimensional...