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Open AccessJournal ArticleDOI

Tackling the subsampling problem to infer collective properties from limited data

Anna Levina, +2 more
- 12 Sep 2022 - 
- Vol. 4, Iss: 12, pp 770-784
TLDR
In this paper , the authors give an overview of some issues arising from spatial subsampling and review approaches developed in recent years to tackle the subsamspling problem, and also outline what they believe are the main open challenges.
Abstract
Despite the development of large-scale data-acquisition techniques, experimental observations of complex systems are often limited to a tiny fraction of the system under study. This spatial subsampling is particularly severe in neuroscience, in which only a tiny fraction of millions or even billions of neurons can be individually recorded. Spatial subsampling may lead to substantial systematic biases when inferring the collective properties of the entire system naively from a subsampled part. To overcome such biases, powerful mathematical tools have been developed. In this Perspective, we give an overview of some issues arising from subsampling and review approaches developed in recent years to tackle the subsampling problem. These approaches enable one to correctly assess phenomena such as graph structures, collective dynamics of animals, neural network activity or the spread of disease from observing only a tiny fraction of the system. However, existing approaches are still far from having solved the subsampling problem in general, and we also outline what we believe are the main open challenges. Solving these challenges alongside the development of large-scale recording techniques will enable further fundamental insights into the workings of complex and living systems.

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Citations
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Journal ArticleDOI

Model-based assessment of sampling protocols for infectious disease genomic surveillance

TL;DR: In this article , the authors compare adaptive and constant sampling strategies to assess their impact on genomic surveillance and show that adaptive sampling uncovers new variants up to five weeks earlier than constant sampling, significantly reducing detection delays and estimation errors.
Journal ArticleDOI

Detecting hidden nodes in networks based on random variable resetting method.

Weinuo Jiang, +1 more
- 01 Apr 2023 - 
TL;DR: Wang et al. as mentioned in this paper proposed a general theoretical method for detecting hidden nodes based on the random variable resetting method and theoretically analyzed the autocovariance of the time series.
Peer Review

Ecologically mapped neuronal identity: Towards standardizing activity across heterogeneous experiments

TL;DR: In this paper , the authors investigated the feasibility of identifying neurons using their activation for natural behavioral and environmental parameters, and found that motor areas might be easy to address, followed by prefrontal, hippocampal, and visual areas.
References
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MonographDOI

Causality: models, reasoning, and inference

TL;DR: The art and science of cause and effect have been studied in the social sciences for a long time as mentioned in this paper, see, e.g., the theory of inferred causation, causal diagrams and the identification of causal effects.
Journal ArticleDOI

Complex networks: Structure and dynamics

TL;DR: The major concepts and results recently achieved in the study of the structure and dynamics of complex networks are reviewed, and the relevant applications of these ideas in many different disciplines are summarized, ranging from nonlinear science to biology, from statistical mechanics to medicine and engineering.
Journal ArticleDOI

Complex network measures of brain connectivity: uses and interpretations.

TL;DR: Construction of brain networks from connectivity data is discussed and the most commonly used network measures of structural and functional connectivity are described, which variously detect functional integration and segregation, quantify centrality of individual brain regions or pathways, and test resilience of networks to insult.
Journal ArticleDOI

Power-Law Distributions in Empirical Data

TL;DR: This work proposes a principled statistical framework for discerning and quantifying power-law behavior in empirical data by combining maximum-likelihood fitting methods with goodness-of-fit tests based on the Kolmogorov-Smirnov (KS) statistic and likelihood ratios.
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